household food insecurity and coping strategies among
Transcription
household food insecurity and coping strategies among
HOUSEHOLD FOOD INSECURITY AND COPING STRATEGIES AMONG SMALL SCALE FARMERS IN THARAKA CENTRAL DIVISION, KENYA NAME: ICHERIA BEATRICE KABUI REG NO: H60/10722/2008 DEPARTMENT OF COMMUNITY RESOURCE MANAGEMENT AND EXTENSION A THESIS SUBMITTED IN FULFILMENT OF THE REQUIREMENTS FOR THE AWARD OF THE DEGREE OF MASTER OF SCIENCE (COMMUNITY RESOURCE MANAGEMENT AND EXTENSION) IN THE SCHOOL OF APPLIED HUMAN SCIENCES OF KENYATTA UNIVERSITY MAY, 2012 i DECLARATION This thesis is my original work and has not been presented for a degree in any other university or any other award. Signature___________________ Date _________________ Name: Icheria Beatrice Kabui – H60/10722/2008 This thesis has been submitted for review with our approval as university supervisors. Signature___________________ Date __________________ Dr. Lucy Ngige Community Resource Management and Extension Kenyatta University Signature_____________________ Dr. Alice Ondigi School of Hospitality and Tourism Kenyatta University Date____________________ ii DEDICATION This thesis is dedicated to my mother Jeniffer Kagumo Icheria, and son Frank Ndereba. iii ACKNOWLEDGEMENTS I wish to express my sincere gratitude to my supervisors Dr. Lucy Ngige and Dr. Alice Ondigi for their guidance, instruction and supervision of my research concept paper, proposal and thesis. I also extend my sincere gratitude to Dr Dorcas Mbithe for her advice and encouragement during difficult times of my research work. Finally, I wish to thank assistant chiefs and headmen of Tharaka Central Division and residents for their support, co-operation and contribution to the study. Thank you and God bless. iv ABSTRACT Food insecurity is a major development problem that is caused by myriad of factors in the global, regional, national and local spheres of human life. Several efforts have been put in place to alleviate food insecurity globally, nationally and even locally. Despite these efforts, the situation continues to prevail and sometimes even increase in the contemporary human society. It is therefore imperative that food insecurity gets addressed appropriately. Small scale farmers play a vital role in food production especially through subsistent farming. However, their households are major casualties of food insecurity despite their efforts in food production. This study sought to investigate household food insecurity and coping strategies among small scale farmers in Tharaka Central Division of Tharaka South District, Kenya. The specific objectives of the study were to: Establish the status of household food production among small scale farmers in Tharaka Central Division; determine household food consumption patterns; establish household food sources, establish the status of household food insecurity and identify coping strategies among the households in the event of food shortage. The research design employed in the study was cross sectional descriptive survey which sought to obtain information that was to describe the existing status of household food insecurity and coping strategies among the small scale farmers. A total of 351 small scale farmers’ households were systematically sampled from the total population of 3631 small scale farming households in the division. Data was collected by use of structured questionnaire, observation checklist and key informant interview guide. Data analysis was done using SPSS (Version 11.5) computer software program. Frequency tables, pie charts, bar graphs and line graphs are used to present the findings of the study. Mean farmland sizes was 1.62 acres, food crops were cultivated at 95% of the total crop, the major months of adequate and inadequate food provisioning were June to August (40.5%) and October to January (30.2%) respectively. Crop loss was mitigated by planting drought resistant crops. Household dietary diversity score (HDDS) of the previous 24 hours was low (83.3%) while 50.7% had acceptable household food consumption score (HFCS) in the previous 7 days of food consumption. The primary source of maize was the market at 36.7%. Majority of households (44.7%) were food insecure, 43.3% vulnerable to food insecurity and 12% food secure. Reduction in size of meals was the major coping strategy. There were significant positive relationships between sizes of farms and sizes of farmlands (r = 0.653, p=0.000); between HFCS and farmland size (r=0.299, p=0.0000); significant difference between maize expected and maize harvested (t=22.927, p=0.000). There was also significant positive association between HDDS and HFCS (χ2=13.463, df=4 and p=0.009), sources of maize and the statuses of household food insecurity (χ2=160.895, df= 6, p=0.000). Low food production was precipitated by drought, food consumption patterns were mainly characterized by low HDDS, and coping strategies were not detrimental to livelihoods. It is recommended that the farmers’ local capacity should be developed through community-based participatory actions; and the GOK through the Ministry of Water and Irrigation should formulate irrigation policies and implement them in all ASAL areas to alleviate household food insecurity. v TABLE OF CONTENTS DECLARATION………………………………………………….. i DEDICATION…………………………………………………….. ii ACKNOWLEDGEMENTS………………………………………. iii ABSTRACT………………………………………………………… iv TABLE OF CONTENTS…………………………………………... v LIST OF TABLES…………………………………………………. xi LIST OF FIGURES ……………………………………………….. xiii LIST OF ACRONYMS AND ABBREVIATIONS………………. xiv CHAPTER ONE: INTRODUCTION……………………………… 1 1.1 Background to the Study…………………………………… 1 1.2 Statement of the Problem…………………………………... 3 1.3 The Purpose of the Study…………………………………... 4 1.4 Objectives of the Study…………………………................... 5 1.5 Research Hypothesis…………………………………………. 5 1.6 Significance of the Study………………………………....... 6 1.7 Conceptual Framework…………………………………..… 6 1.8 Operational Definition of Terms………………………….... 9 CHAPTER TWO: LITERATURE REVIEW……………………… 11 2.0 Introduction……………………………………………........ 11 2.1 Global Food Insecurity……………………………..………. 11 vi 2.2 Food Insecurity in Africa……………………….………...… 13 2.3 Food Insecurity in Kenya…………………………………... 14 2.4 Food Insecurity in Tharaka ………………………………... 13 2.5 Household Food Production............................……….......... 17 2.6 Small Scale Farming and Household Food Insecurity........... 18 2.7 Crop Loss Mitigation............................................................... 19 2.8 Household Food Consumption Pattern……………………… 19 2.9 Food Aid.................................................................................. 22 2.10 Sources of Household Food………………………………… 23 2.11 Estimating Levels/Status of Food Insecurity.............................. 24 2.12 Coping Strategies……………………………………………… 26 2.13 Summary of the Reviewed Literature......................................... 28 CHAPTER THREE: RESEARCH METHODOLOGY…...………. 30 3.0 Introduction………………………………………………… 30 3.1 Research Design……………………………………………. 30 3.2 Study Area…………………………….……….…………… 31 3.3 Population and Sample Size of the Study…………………. 32 3.4 Sample Size Determination……..………………………….. 33 vii 3.5 Sampling Procedure…………………….…………………. 33 3.6 Measurement of Variables……………………………...... 36 3.6.1 Independent Variables……………………………………. 36 3.6.2 Dependent Variable……………………………………….. 37 3.7 Research Instruments………………..…………………… 38 3.8 Pre-testing Research Instruments……………………….. 38 3.8.1 Reliability……………………………………………….. 39 3.8.2 Validity…………………………………………………. 40 3.9 Training Research Assistants…………………………… 40 3.10 Data Collection Procedures……………………………… 41 3.11 Ethical Considerations...…………………………………. 42 3.12 Data Analysis……………………………………………. 43 CHAPTER FOUR: FINDINGS AND DISCUSSION…………….. 45 4.0 Introduction………………………………………………… 45 4.1 Household Demographic Information……………………… 45 4.1.1 Household Size…………………………………………….. 45 4.1.2 Education Levels of Household Heads…………………… 47 4.1.3 Household Type of Housing………………………………. 48 4.1.4 Household Cooking Energy………………………………. 48 viii 4.1.5 Household Main Source of Livelihood……………………. 49 4.2 Household Food Production………..…………………….…. 51 4.2.1 Sizes of Household Farms and Farmlands………………… 51 4.2.2 Types of Crops Cultivated in March/May and October/December Seasons of 2010……………………….. 53 4.2.3 Amount of Harvests for Food Crops……………………… 55 4.2.4 Months of Household Food Provisioning…………………. 56 4.2.5 Crop Loss Mitigation……………………………………… 58 4.2.6 Droughts and Flooding……………………..……………. 59 4.3 Household Food Consumption Patterns…………………… 59 4.3.1 Meal Patterns among the Households………………………. 59 4.3.2 Main Foods Consumed in Meals………………………………. 61 4.3.3 Household Dietary Diversity of 24 Hour Recall………………. 62 4.3.4 The 7 Day Food Frequency……………………………………… 64 4.3.5 Household Food Consumption Score (HFCS)…………………... 67 4.4 Household Food Sources…….………………………………….. 68 4.4.1 Main Sources of Food Items……………………………………. 68 4.4.2 Food Aid Support………………………………………….…… 71 ix 4.4.3 Amount of Maize Received from Food Aid……………………… 72 4.5 Household Food Insecurity Status………………..………………. 72 4.5.1 Household Food Insecurity Status According to HDDS………. 73 4.5.2 Household Food Insecurity Status According to HFCS…… ….. 74 4.5.3 HDDS and HFCS…………………….………………………… 75 4.5.4 Statuses of Household Food Insecurity and Sources of Maize 77 4.6 Coping Strategies……………………………………….………. 78 4.6.1 Coping Strategies Commonly Used among Households…........ 78 4.7 Hypotheses-Testing Results………………………………........ 80 4.7.1 Relationship between Sizes of Farms and Sizes of Farmlands 80 4.7.2 Differences between Food Expected and Food Harvested… … 81 4.7.3 Relationship between the Status of HFCS and Household Size 82 4.7.4 Relationship between HFCS and Farmland Size…………... …. 83 4.7.5 Association between HDDS and HFCS…...……………….. …. 84 4.7.6 Association between Sources of Maize and the Status of Household Food Insecurity…………………………………. 85 CHAPTER FIVE: SUMMARY, CONCLUSIONS AND RECOMMENDATIONS ………………………………………….. 86 5.0 86 Introduction………………………………………………… x 5.1 Summary…………………………………………………….. 86 5.2 Conclusion…………………………………………………… 87 5.3 Recommendations………………………………………….. .. 88 5.3.1 Recommendation for Policy Making………………………… 88 5.3.2 Recommendations for Practice………………………………. 90 5.4 Suggestions for Further Research………………………......... 91 REFERENCES……………………………………………………… 92 RESEARCH INSTRUMENTS……………………………………… 98 APPENDIX 1: Respondents’ Informed Consent…………………… 98 APPENDIX 2: Questionnaire for the Household Head and Household Principal Care Giver ……………………………..……… 99 APPENDIX 3: Observation Checklist ……………..……………… 115 APPENDIX 4: Key Informant Interview Guide for the District Extension Officer and ALRMP II Manager………………………… 116 xi LIST OF TABLES Table 4.1 Household Size …........................................................ 46 Table 4.2 Education Levels of Household Heads…………….... 47 Table 4.3 Household Type of Housing.………………………… 48 Table 4.4 Household Cooking Energy…………………………. 49 Table 4.5 Household Main Source of Livelihood……………… 50 Table 4.6 Sizes of Household Farms ………………………..… 51 Table 4.7 Sizes of Household Farmlands……………………… 52 Table 4.8 Types of Crops Cultivated..…………………………. 54 Table 4.9 Months of Adequate Food Provisioning…………… . 56 Table 4.10 Months of Inadequate Food Provisioning …………. . 57 Table 4.11 Foods Consumed at Breakfast…….……………….. . 61 Table 4.12 7 Day Food Frequency….…………………….......... . 65 Table 4.13 HFCS………………………………………..………. 68 Table 4.14 Main Sources of Food Items..……………………….. 69 Table 4.15 Cross-tabulation of HDDS and HFCS……………… 75 Table 4.16 Cross-tabulation of Statuses of Household Food Insecurity and Sources of Maize…………………… . 77 xii Table 4.17 Coping Strategies Commonly Used among Households…………………………………………. Table 4.18 Differences between Food Crops Expected and Harvested………………………………………. Table 4.19 Table 4.20 79 81 Relationships between the Statuses of HFCS and Household Size………………………………… 82 Relationship between HFCS and Farmland Size….. 83 xiii LIST OF FIGURES Figure 1.1 A Conceptual Model Illustrating Household Food Consumption Approach Adapted from WFP (2006)…. 8 Figure 4.1 Meal Patterns among Households……………….……. 60 Figure 4.2 Dietary Diversity of 24 Hour Recall………………….. 63 Figure 4.3 Households’ Food Aid Support……………………. … 71 Figure 4.4 Amount of Maize Received from Food Aid………….. 72 Figure 4.5 Household Food Insecurity Status according to HDDS 73 Figure 4.6 Household Food Insecurity Status according to HFCS 74 xiv LIST OF ACRONYMS AND ABBREVIATIONS ALRMP Arid Lands Resource Management Project II ASAL Arid and Semi Arid Lands CBS Central Bureau of Statistics FANTA Food and Nutrition Technical Assistance FAO Food and Agriculture Organization FFW Food for Work GOK Government of Kenya HDDS Household Dietary Diversity Score HFCA Household Food Consumption Approach HFCS Household Food Consumption Score HFIAS Household Food Insecurity and Access Scale IFPRI International Food Policy Research Institute KARI Kenya Agricultural Research Institute MoA&L Ministry of Agriculture and Livestock MT Metric Tonnes NFP National Food Policy NFSNP National Food Security and Nutrition Policy xv $ US Dollar UNICEF United Nations Children’s Fund WFP World Food Programme WHO World Health Organization 1 CHAPTER ONE: INTRODUCTION 1.1 Background to the Study The World Food Summit of 1996 described food insecure households as those whose members do not have physical and economic access to sufficient, safe and nutritious food to meet their dietary needs and food preferences for an active and healthy life (Aiga & Dhur, 2006). Despite the right of every man, woman and child to be free from effects of food insecurity (including household food insecurity) being declared during the World Food Conference of 1974 (GOK 2008a), these effects linger in the global society. Household food insecurity is one of the major catastrophes in the Sub-Saharan Africa. In Kenya 10 million persons and their households are highly food insecure, with 3.2 million food insecure persons living in arid and semi-arid lands (ASALs) of the country (WFP, 2009). The Kenya Vision 2030 and the National Food Security and Nutrition Policy (NFSNP) stipulate that the Government of Kenya (GOK) has consistently emphasized on local food production as one of the means of alleviating household food insecurity (GOK, 2008; GOK, 2008b). However, despite the formulation of the strategic plans, household food insecurity continues to persist since there is marked reliance on relief supplies by the poor, and in Kenya, 53% of the people in rural areas are overall poor while 51% are food poor (GOK, 2008c). 2 Household food insecurity in the country is attributed to factors such as decline in agricultural productivity resulting from continuous land fragmentation. Most of the original large scale farms in Kenya have been sub-divided beyond economically sustainable agricultural production. As a result of the fragmentations, some 89% of the households in Kenya are living in less than 7.5 acres of land while 47 % live on farms less than 1.5 acres (Gitu, 2004). According to WFP (2009), farm family households in ASAL areas practise livestock production to mitigate crop losses. However, low numbers of livestock and their poor body conditions (as a result of extended trekking in search of water and pasture) has caused a 50% decline in their value. Furthermore, these households are also depending on undesirable mitigation strategies against their household food insecurity, such as charcoal production, which further degrade the environment and endanger future food production (ibid). Gitu (2004) observes that there is abandonment of indigenous drought resistant crops in ASAL areas due to changes in food tastes and preferences constraining drought resistant crop cultivation to mitigate crop losses. According to FAO’s (2007) study, there are few households in developing countries where gardens act as a major source of food to meet household consumption requirements. A study carried out in Umbumbulu in Kwa-Zulu Natal province of South Africa to investigate household coping strategies against food insecurity revealed that most households obtained foods through purchases (93%), followed by own food production (4%), gifts and payments. Households from Umbumbulu did not consume 3 sufficient food from their own production which was attributed partly to the sale of produce to purchase other foods or the purchase of other non food goods, or the households did not produce sufficient food for consumption (Mjonono, Ngidi & Hendriks, 2009). Due to varying degrees of wealth among households, different coping behaviors are adopted by households at different poverty levels (ibid). 1.2 Statement of the Problem Like other countries in Africa, Kenya looks towards achieving the Millennium Development Goals (MDGs) by 2015. The first goal is of alleviation of extreme poverty and hunger and the country plans to achieve this, by reducing the proportion of people who suffer from hunger by half by 2015, (GOK, 2008b). To achieve this, implementing the millennium strategic plans at the grass root levels (such as divisions) is imperative. This will ensure reduction of household food insecurity. Household food insecurity is a critical issue in Kenya because the magnitude of household food insecurity in the country is alarming especially in ASALs that comprise of 88% of Kenya’s land area (Gitu, 2004). Tharaka Central Division in Tharaka South District in the Eastern Province of Kenya is one such an ASAL area that has continued to experience frequent household food insecurity (GOK, 2009). This is despite of national food policy formulation of alleviating household food insecurity, especially among small scale farmers through local agricultural food production (GOK, 2008c). 4 Small scale farmers are important players in alleviating household food insecurity by increasing household food access, availability and utilization through their subsistent own crop production. However, own crop production has not played a key role as the main source of household food in Tharaka (Smucker & Wisner, 2008). Food shortages due to high levels of household food insecurity in Tharaka predispose households to employ adverse coping strategies (GOK, 2009). Not much has been documented on the status of household food production, household food consumption patterns, household sources of food, status of household food insecurity and coping strategies among small scale farmers in Tharaka Central Division. Due to the aforementioned observation, the study on household food insecurity and coping strategies among small scale farmers in Tharaka Central Division was deemed necessary. 1.3 The Purpose of the Study The purpose of the study was to establish the status of household food insecurity and identify coping strategies among small scale farmers in Tharaka Central Division of Tharaka South District, Kenya. 5 1.4 Objectives of the Study The specific objectives of the study were to: 1. Establish the status of household food production among small scale farmers in Tharaka Central Division. 2. Determine household food consumption patterns among the small scale farmers in Tharaka Central Division. 3. Establish household sources of food among small scale farmers in Tharaka Central Division. 4. Establish the status of household food insecurity among small scale farmers in Tharaka Central Division. 5. Identify coping strategies in the event of food shortage among the small scale farmers’ households. 1.5 Research Hypotheses Ho1. There is no significant relationship between farm size and farmland size at a significant level of 0.05. Ho2. There is no significant difference between food expected and food harvested at a significant level of 0.05. HO3. There is no significant relationship between the statuses of household food consumption scores and household size at a significant level of 0.05. HO4 There is no significant relationship between household food consumption score and farmland size at a significant level of 0.05. 6 HO5. There is no significant association between household dietary diversity score and household food consumption score at a significant level of 0.05. HO6. There is no significant association between sources of maize and the status of household food insecurity at a significant level of 0.05. 1.6 Significance of the Study The study aimed at establishing the status of household food insecurity and coping strategies among small scale farmers in Tharaka Central Division of Tharaka South District. The findings of the study will be shared and discussed in Tharaka Central food security stakeholder meetings. This will help build capacity among the small scale farmers concerning household food insecurity and coping strategy issues. The findings will also be shared with the Ministry of Agriculture and Livestock to provide relevant input in policy making in the area of household food insecurity and small scale farming practices. The findings will provide relevant data to local NGOs in planning food aid support programmes. The findings will also contribute to the body of knowledge in the academia and may provide insights on food security gaps for further academic research. 1.7 Conceptual Framework The conceptual framework is based on the World Food Program’s (2006) Household Food Consumption Approach model that uses dietary diversity, food frequency and food sources as household proxy indicators of household food insecurity (household food availability, access and utilization) to estimate the severity or status of household food 7 insecurity. These indicators interacted with other variables: farmland size, types of crops cultivated, amount of harvests, months of household food provisioning, crop loss mitigation, drought and flood occurrence, food aid and coping strategies. 8 Household Dietary Diversity Food Consumption Groups Household Food Frequency Acceptable Borderline Food Poor • • • • • • • • • • • • Farm size Farmland Size Types of Crops Cultivated Amount of Food Expected Amount of Food Harvested Months of Household Food Provisioning Crop Loss Mitigation Mechanisms Droughts and Floods Foods Consumed in 24 Hour Recall Number of Meals in 24 Hour Recall Frequency of Food Consumption in the previous 7 Days Sources of Foods Status of Household Food Insecurity Food Security Vulnerability to Food Insecurity Food Insecurity Food Security Groups Household Food Sources Food Secure Vulnerable to Becoming Food Insecure Food Insecure Figure 1.1: A Conceptual Model Illustrating Household Food Consumption Approach Adapted from WFP (2006) 9 1.8 Operational Definition of Terms Coping strategies: Ways of reducing impacts of a negative event once it has occurred such as household food insecurity. Farm family: Household whose livelihood orientation is farming. Farmland size: Size in acres of household land under cultivation Farm size: Size in acres of the entire household land holding Household: A unit comprising of a group of persons living together, sharing from the same dietary pot and same source of livelihood on a regular basis. Household dietary diversity: The number of food groups (a grouping of food items that have similar calorific and nutrient qualities) consumed by household members in the last 24 hours. Household food consumption frequency: The frequency that a specific food group is eaten at the household level in the last 7 days. Household food consumption patterns: The patterns in terms of diversity of food consumed and the pattern in frequency of food consumption in a household. Household food insecurity: Inability of a household to have enough food to provide and sustain its members’ dietary intake. Household food insecurity has three components: Unavailability, lack of access and non utilization of food. Household food production: Food crop cultivation and food harvests in a household Household Food Provisioning: The presence or absence of food in a household. Household principal care giver: The person who is either responsible or oversees food preparation (mainly a female). 10 Small scale farmers: Farmers whose agricultural orientation is mainly subsistence and cultivate land not exceeding 10 acres. 11 CHAPTER TWO: LITERATURE REVIEW 2.0 Introduction This chapter discusses global, Africa, Kenya, and Tharaka household food insecurity situations. Household food production, small scale farming and household food insecurity, crop loss mitigation, household food consumption patterns, food aid, sources of household food, approaches of estimating levels/status of household food insecurity, coping strategies and the summary of the reviewed literature are also covered in the chapter. Sources of the literature were internet, journals, government documents, newspapers, textbooks and the visual media. 2.1 Global Food Insecurity Despite growing attention in the world media and expanding aid efforts by many organisations, the world household food insecurity continues to worsen as many communities struggle with daily hunger and starvation (Project Concern International, 2009). A myriad of factors have been responsible for the continuing world food insecurity. One factor is the rise in prices of the world staple foods (wheat, rice and corn). It is established that inflation of wheat is 120% and rice is 75% (ibid). Another factor is poverty. An estimated 100 million people have fallen into poverty in the last two years for instance in 2007, Afghanistan households were spending 75% of their income on food (World Bank, 2008). Dependence on food imports also influences the global food insecurity. A case in point is Haiti where over 80% of staple rice is imported. The result of it is that over half of the country’s population is under-nourished and 24% of children 12 suffer chronic malnutrition. Fresh food exports, for instance the export of horticulture produce from Ghana to Europe for monetary gains has resulted in the country importing a significant proportion of its staple food such as rice, ultimately leaving the country exposed to the spiralling world food prices. Moreover, the climate change due to global warming has influenced world household food insecurity. El-ninos and La- ninas hamper good crop production in Latin America and the Sub-Saharan Africa. Droughts caused by La-ninas have caused household food insecurity especially in Ethiopia where 7 million people are classified as food insecure and a further 10 million classified as prone to drought, (ibid). Other factors that contribute to household food insecurity in the world include: Shift to more non-agricultural technology, politics, environmental degradation, insecurity and high population growth. Several consequences of global household food insecurity have manifested themselves. Demand for food aid is a serious consequence of the food insecurity. Each year, 10% of Burundi’s population requires food aid, (FAO, 2008). Another consequence is poor health status exemplified in Benin, whereby almost a quarter of children below 5 years are underweight, (ibid). There are also increased malnutrition rates globally whereby in 2004, the global malnutrition was 15%, (WHO, 2004). World household food insecurity has also increased poverty among the global population and there was also serious global hunger index of 15.1% in 2010 (Grebmer, et al., 2010). 13 2.2 Food Insecurity in Africa Various countries in Africa have experienced the devastating effects of household food insecurity. For instance, Cameroon in West Africa, Egypt in Northern Africa, Ethiopia in the Eastern Africa and South Africa in the extreme Southern Africa. The World Food Programme (WFP) describes Cameroon as a food insecure country, and has further demonstrated that food intake in households is lower now than in the early 1980s. The result of this is that 19% of young children in the country are underweight and child mortality rate is rising rather than falling (Oneworld.net (US), 2009). Egypt produces half of its demand for wheat. In spite of the average food production, the country is exposed to the escalating food prices due to its wheat imports. It is classified as the number one importer of the produce in the world. The country also has a high population growth rate of 2% per annum. Moreover, the desert terrain of the Sahara limits crop production. A report by the World Bank indicates that the baladi bread subsidy costs Egyptian government almost $ 3.5 million per annum (Oneworld.net (US), 2009). Ethiopia experiences serious household food insecurity. Over 7 million people out of Ethiopia’s population of 76.9 million people are classified as food insecure; and a further 10 million people are identified as prone to drought. High population growth rate in the country increases the food insecurity further (Chu, 2009). Although South Africa produces bumper harvests especially in the 2007/08 season, it has been affected by high food prices in the declining world economy. High food prices are causing hardship 14 particularly among the poorest family households who spend a huge proportion of their income on food (Oneworld.net (US), 2009). 2.3 Food Insecurity in Kenya Household food insecurity in Kenya is caused by inadequate farming area. It is only 18% of Kenya’s territory which is suitable for farming. Another cause is poverty. The 2007/08 United Nations Human Development Report noted that almost 24% of Kenyans are living on less than one dollar a day, therefore not food sustaining (CBS, 2009). Droughts in ASAL areas of Kenya have brought about a decline in crop and livestock production among households in these regions. Moreover floods cause displacement of people making them vulnerable to household food insecurity. It is estimated that the 2006 floods affected 700,000 people in the country; most of them cut off from food help due to impassable roads (ibid). The 2008 post election violence disrupted the March/April agricultural production. The World Food Programme reported that 50% of farmers were not sufficiently prepared for farming due to the post election turmoil. In addition, erratic rainfall exacerbates household food insecurity in the country. Poor rains in 1996 prompted the GOK to declare a state of national disaster on January the 28th (IRIN Humanitarian Report, 1997). The GOK has assisted farmers in crop production by providing farm input subsidy, by granting a 10% price reduction for seeds. The Citizen News reported that the government has also imported fertilizer thus bringing down the cost from an all-time high of Ksh5, 15 500 to Ksh2, 500 per 50 kilogram (kg) bag. Successive years of drought up to 2006 compelled the WFP to provide relief support to over 3 million people in the country. The GOK in collaboration with the WFP is also feeding 1 million people under the Emergency Intervention Programme, while another 1 million are receiving direct government aid (Daily Nation Correspondents, 2009). 2.4 Food Insecurity in Tharaka The following literature review is based on the larger Tharaka District (before it was subdivided into Tharaka South and Tharaka North districts). This is because the available literature concerning the area of study is only based on the previous district. Tharaka District is situated in the lowlands of Meru region. It experiences bimodal rains and high temperatures. The soil types range from sandy loamy soils to stony sandy soils. Tharaka Central Division is situated in the marginal mixed farming livelihood zone of the district (GOK, 2008d). Unreliable weather is a major cause of household food insecurity in the area. In 2008, poorly distributed rains in the district made crops perform dismally at less than 50% of normal crop performance (ibid). Prolonged drought in the region has brought about unsteady and low crop production. In 2005, the total cereal production was 8,014 metric tonnes against the estimated annual demand of 16,906 metric tonnes. The failure of short rains in the subsequent two years decreased crop output dismally. The low food production leaves a gap of nearly 50% which exposes the area to high food prices. The 16 cost of beans escalated from KSh40 in the early 2008 to KSh80 in 2009 (GOK, 2008e). Poor markets infrastructure hinders redistribution of food to the markets in the low potential areas of the district. Transportation is costly and constrained by poor transport and communication systems. This often results in high food prices and ultimate household food insecurity due to poorly integrated markets (GOK, 2008d). Poor Nutritional Status is one of the effects of the household food insecurity in Tharaka. In 2007, the district had 153 cases of underweight children attended to and 5 cases of protein energy malnutrition (PEM) observed and attended to (GOK, 2008c). The limited health facilities in the area are not easily accessible due to poor road infrastructure. Moreover, the doctor to patient ratio is low – 1:100,992. Malaria is the most frequently treated disease in the health facilities and contributes to high death rate especially among children below five years of age. The district has a morbidity rate of 18% and about 76 children die before their fifth birthday every year. This results into overutilization of health facilities. The district malnutrition increased from 5.7% in May 2008 to 6.2% in June 2008 among the children between 12 to 59 months which was attributable to household food insecurity situation in the year. It was also reported that out of the 1,027 assessed children across the region, 64 of them showed signs of malnutrition (ibid). The community is highly dependent on relief supplies especially in the October to December months. There have been persistent food shortages in the area during the mentioned months due to prolonged dry spells beginning in June to October; hence there 17 is no food cultivation during these periods (GOK, 2008e). The food aid support is by the Catholic Diocese of Meru, the WFP, Plan Kenya and the GOK by supplying relief food, cooking oil and food supplements to the affected (ibid). 2.5 Household Food Production In the year 2000, the food available for Kenyans was 1965 calories per capita per day, which was below the recommended 2250 calories per day and the source of calories comes mainly from maize, which accounts for 36% of foodstuff. The food availability has been declining largely because maize production was down by 44% on per capita basis in 2000 compared to 30 years before due to local staple food production being outstripped by a relatively high rate of population growth (Gitu, 2004). The major cereals produced in Kenya are maize, wheat, and to a limited extent rice in higher potential areas while traditional food crops such as sorghum, millet, cassava, vegetables, and fruits are mainly cultivated in ASAL areas (ibid). In normal rainfall years, the country produces about 2.7 million MT of maize, 270,000 MT of wheat, and 50,000 MT of rice while the production levels of cash crops that contribute to food security are coffee, tea, sugar and cotton, and the annual production for these commodities is 100,000 MT of clean coffee, 294,000 MT of processed tea, 420,000 MT of sugar and 40,000 MT of cotton lint (Gitu, 2004). Maize production during long rains ranges from 26 to 30 million 90 kg bags out of which smallholder farms produce 75 percent whereas average maize yield is 2 MT per hectare. Wheat production has 18 stagnated at just 270,000 MT against a rising demand currently estimated at 720,000 MT (ibid). Rice production is mainly through irrigation in irrigation schemes in Mwea, Ahero, West Kano and Bunyala. The average annual production of rice is estimated at 52,000 MT which accounts for 34% of national rice consumption (ibid). In spite of the different efforts in developing sorghum and millet, mainly because of their significance in drought prone areas, there has been a notable decrease in acreage over the last few years from 300,000 hectares in 1996 to 260,000 hectares in 2000. Pulse performance shown a declining trend, because of bad weather, low quality seeds, high cost of inputs and lack of suitable varieties for marginal areas while roots and tubers which are high in calorific value, are important food security crops but their production has been constrained by lack of clean planting materials (Gitu, 2004). 2.6 Small Scale Farming and Household Food Insecurity Household food insecurity is influenced among small scale farmers by continued land fragmentation, among other factors. Most of the original large-scale farms in Kenya have been sub-divided beyond economically sustainable crop production capacity. As a result of the fragmentations, some 89% of the households in Kenya are living in less than 7.5 acres while 47% of households live on farms less than 1.5 acres; therefore the country is predominantly made of small farms (93% of households in the country are of small scale farming orientation) and it is only 10% of the households that live on lands above 7.5 acres (Gitu, 2004). This constrains large crop production among the farmers. 19 2.7 Crop Loss Mitigation According to Rose (2008), mitigation strategies seek to minimize the potential impact of a hazardous event that may occur. Planting of drought-resistant crops such as cassava can reduce the shortfall of food that a household might experience in a year of low rainfall. Effective storage also mitigates crop losses by stabilizing food supply at the household level by smoothing seasonal food production (Thamaga-Chitsa, etal., 2004). Inadequate post-harvest storage contributes to household food insecurity, and more so in areas with high humidity. Crop storage efficiency depends on storage length, losses during storage (including quality deterioration) and storage volume. Losses are largely due to pests and oxidative damage. For storage to be effective, crop losses must be minimized. Inefficient storage increases the likelihood of grain vermin and pest to access the stored grains therefore increasing losses and compromising the quality and safety of the stored grain, and again, farm family households in ASAL areas of Kenya are said to mitigate crop losses mainly by livestock production (WFP, 2009). 2.8 Household Food Consumption Pattern A good household consumption pattern is achieved when the consumption of food is adequate in terms of quantity, is safe and is of good quality to make up a healthy diet (Agriculture and Consumer Protection, 2010). However, there are adverse dietary changes (nutrition transition) due to changes in lifestyle, which include shifts in the structure of the diet towards a higher energy density diet with a greater role for fat and added sugars in foods, greater saturated fat intake (mostly from animal sources), reduced intakes of complex carbohydrates and dietary fibre, and reduced fruit and vegetable 20 intakes (ibid). Household food consumption patterns are influenced by household income, food prices, intra-household preferences and beliefs, cultural practices, geographical, environmental, social and economic factors (Agriculture and Consumer Protection, 2010). Household Food Consumption pattern can be measured by estimating gross household production and purchases over a period of time, estimating growth or depletion of food stocks held over that period of time and presuming that the food that has come into a household’s possession and ‘disappeared’ has been consumed. Household food consumption can also be measured by undertaking 24 hour recalls of food consumption for individual members of a household, and analyzing each food type mentioned for calorific content. In such a study, respondents are required to remember the consumption quantities for food (IFPRI, 2008). A household food consumption pattern may encompass household dietary diversity and household food frequency. According to GOK (2008c), dietary diversity is the number of individual foods or food groups consumed over a fixed period of time and it is also reflective of adequate nutrient intake. Dietary diversity encompasses nutrient adequacy and calculation of number of different food groups rather than calculating different individual foods - because food groups offer diversity in micro and macronutrients, (ibid). There are 12 food groups adopted from FAO and WHO by National Food Security and Nutrition Strategy (NFSNS) in calculating household dietary diversity score (HDDS): cereals, roots and tubers, vegetables, fruits, meat-poultry-and-offal, eggs, fish 21 and sea food, pulses-legumes-and-nuts, milk and milk products, oil/fats, sugar and honey, miscellaneous (ibid). Dietary diversity as an indicator of household food insecurity is characterized by consuming a variety of foods within and across food groups, and increased dietary diversity has been reported in several studies to relate with adequate intake of energy and essential nutrients, thus leading to improved overall nutritional quality of diets (Moikabi, 2011). Increase in dietary diversity is associated with high socio-economic status and good household food security (Haddinot & Yohannes, 2002). Household dietary diversity score (HDDS) is the sum of the different food groups consumed, and HDDS of 24 hour recall involves the 12 food groups consumed by households and it is classified thus: ≤3, 4 to 5 and ≥6 as lowest dietary diversity, medium dietary diversity and high dietary diversity respectively (Kennedy, Ballard, & Dop, 2011). Household food frequency is the frequency of consumption of food groups by household members in the previous 7 days. Household Food Consumption Score (HFCS) is a frequency-weighted HDDS. The HFCS is calculated using the frequency of consumption of eight different food groups consumed by a household during the 7 days before a survey or a study according to the following procedure by IFPRI (2008) - which uses 8 food groups in calculating HFCS: Main staples, pulses, vegetables, fruits, meat and fish, milk, sugar, oil. HFCS is measured using standard 7 day food data by classifying food items into food groups; summing the consumption frequencies of food items within the same group (any consumption frequency greater than 7 is recoded as 7; multiplying the 22 value obtained for each food group by its weight for example 2, 3, 1, 1, 4, 4, 0.5 and 0.5 are weights for main staples (cereals, roots and tubers), pulses, vegetables, fruit, meat/fish/eggs, milk, sugar and fat/oil respectively; summing the weighted food group scores and finally recoding the variable HFCS from a continuous variable into a categorical variable for the food consumption groups using appropriate thresholds: 0-21 as food poor, 21.5-35 as borderline and >35 as acceptable, (IFPRI, 2008). The main advantage of using household dietary diversity and household food frequency as proxy indicators of household food insecurity is objectivity and measurability (Aiga & Dhur, 2006). 2.9 Food Aid Food aid to households is an important relief for emergencies during food short falls in households and also increases access to food by households (FAO, 2008). Food aid from various donors such as USA and EU acts as relief for emergencies during shortfalls of food production globally (Gitu, 2004). The United States is the world’s largest food aid donor and provides approximately half of all food aid to vulnerable populations throughout the world; and in 2008, the US government provided more than 2.6 million MT of food commodities worth more than $2.6 billion to 56 million beneficiaries worldwide (USAID, 2009). 23 Most common application of food aid include: General distribution of free food to vulnerable groups based on vulnerability criteria and needs assessment; food for work (FFW) - if the emergency intervention is mounted rapidly enough so that it begins before people have been badly affected by the crisis, since food for work is not an appropriate intervention for people who are already malnourished or who lack the energy necessary to undertake physical labour; specific feeding programmes including supplementary or therapeutic feeding for acutely affected sub-groups, and occasionally, the strategic use of monetization, or the sale of food aid in local markets - can be used as a means of controlling food price hikes in the event of acute food shortages and rapidly rising prices, particularly in urban areas or among populations that are heavily dependent on the market for their food (Maxwell, et al., 2008). 2.10 Sources of Household Food Food aid by food agencies such as WFP and NGOs increases access to food by households, (Rose, 2008) and is a relief for emergencies during shortfalls of food production among farm family households in ASAL areas (Gitu, 2004). According to FAO’s (2007), there are few households in developing countries where gardens act as a major source of food to meet household consumption requirements. A study carried out in Umbumbulu in Kwa-Zulu Natal province of South Africa to investigate household coping strategies against food insecurity revealed that most households obtained foods through purchases (93%), followed by own food production (4%), gifts and payments. Households from Umbumbulu did not consume sufficient food from their own 24 production which was attributed partly to the sale of produce to purchase other foods or the purchase of non food goods, or the households did not produce sufficient food for consumption (Mjonono, Ngidi, & Hendriks, 2009). 2.11 Estimating Levels/Status of Food Insecurity There are various approaches of estimating levels of household food insecurity. However, there is no single approach that is universally accepted as the standard measure of the levels (Aiga & Dhur, 2006). Global household food insecurity levels can be described by high food prices, high levels of malnutrition, high levels of maternal mortality, high levels of vulnerability and high levels of poverty (UN Food Security Taskforce, 2008). Vulnerability, for those concerned with food insecurity, is the probability of an acute decline in food access or consumption due to hazards in the physical or social environment. Typical hazards include weather disturbances, such as drought, or man-made disturbances, such as civil war or extreme price fluctuations (Rose, 2008). One of the main problems with measuring household food insecurity is the absence of a single indicator that could capture the definition of ‘food-insecure households’ hence, the results of household food insecurity measurement may vary according to who conducts each assessment (Aiga & Dhur, 2006). To contribute to efforts to standardize household food insecurity measurement, WFP (2006) has explored the use of an indicator that could adequately estimate the severity of household food insecurity by adopting Household 25 Food Consumption Approach (HFCA) that uses a variety of indicators and approaches to describe multifaceted dimensions of household food insecurity and the status of household food availability, access and utilization; and the indicators are household food consumption pattern indicators - dietary diversity, food frequency and food sources (ibid). HDDS of 24 hour recall involves 12 food groups and are classified thus: ≤3, 4 to 5 and ≥6 as lowest dietary diversity, medium dietary diversity and high dietary diversity, and are further referred to as poor, borderline and acceptable food security status respectively (Kennedy, Ballard, & Dop, 2011). HFCS thresholds of 7 day food frequency are classified thus: 0-21 as food poor, 21.5-35 as borderline and >35 as acceptable (IFPRI, 2008). However, for households that consume oil and sugar nearly daily, the thresholds for the three consumption groups are raised from 21 and 35 to 28 and 42 according to WFP (2007) to avoid serious underestimation of food insecurity status (ibid). A research carried out in 2005 in Darfur by WFP’s Humanitarian Practice Network estimated the proportion of food insecure households in two steps. In the first step, households were classified into three food consumption groups as acceptable, borderline and food poor according to the diversity of the diet and food consumption frequency. The other step was classification of households depending on the primary source of food, specifically whether from food aid, and the households were classified into three food security groups as food secure, vulnerable to becoming food insecure and food insecure. 26 This classification aimed at estimating the sustainability of the then food consumption levels through the analysis of the primary source of food consumed (Aiga and Dhur, 2006). A research carried out by Food and Nutrition Technical Assistance (FANTA) Project to identify scientifically validated, easier and more user friendly approaches to measuring the access component of household food insecurity used Household Food Insecurity and Access Scale (HFIAS) approach by classifying households as food secure, mildly food insecure, moderately food insecure and severely food insecure. The indicators of food insecurity were according to household dietary diversity score and months of inadequate household food provisioning (Swindale & Bilinsky, 2009). 2.12 Coping Strategies Coping strategies are how households adapt to the presence or threat of food shortages, and the person within the household who has primary responsibility for preparing and serving meals is asked a series of questions regarding how households are responding to food shortages (Maxwell, et al., 2008). The impact of household food insecurity can be minimized post its occurrence through coping strategies. Coping strategies are 'ex post' measures in that they seek to reduce the impact of a negative event once it has happened (Rose, 2008). Among coping strategies are relying on less preferred/inexpensive food; borrowing food, or relying on help from friends or relatives; gathering wild food, hunting or harvesting immature crops; consuming seed stock held for the next season; sending 27 household members to eat elsewhere; limiting portion size at meal times; restricting adult consumption in favour of small children; reducing the number of meals eaten in a day; skipping entire days without eating and begging from neighbours or friends (Mjonono, Ngidi & Hendriks, 2009). Increased reliance on coping strategies is associated with lower food availability and the higher the weighted sums of coping strategies, the more a household is food insecure, (Maxwell, et al., 2008). One way of calculating a weighted sum of different coping strategies, (where the weights reflect the frequency of use by the household) is to make the weights consecutive, so that "often" is counted as a 4, "sometimes" is counted as a 3, "rarely" is counted as a 2, and "never" is counted as a 1. The higher the sum, the more food insecure the household is. Calculating a weighted sum of these different coping strategies, where the weights reflect the frequency of use and the severity of the household's response is to ascribe a weight of 1 to the use of strategies such as eating less preferred foods, reducing portion sizes served to household members, reducing the quantity of food served to adults and reducing the quantity of food served to children, a weight of 2 is ascribed to skipping meals and a weight of 3 to skipping eating all day (ibid). Different ascribing of scores is used because coping strategies vary in severity, and therefore, a household where no one eats for an entire day is clearly more food insecure than one where people have simply switched from consuming rice to cassava, (Maxwell, et al., 2008). 28 Modest dietary adjustments (eating less-preferred foods or reducing portion size) are easily reversible strategies that do not jeopardize longer-term prospects; more extreme behaviors (sale of productive assets) suggest more serious long-term consequences and, many researchers have noted that as food insecurity worsens, households are more likely to employ strategies that are less reversible, and therefore represent a more severe form of coping and greater food insecurity (ibid). Farm family households in ASAL regions of Kenya are depending on undesirable coping strategies to reduce the impacts of their households’ food insecurity, such as charcoal production which degrade the environment ultimately endangering future crop production (WFP, 2009). 2.13 Summary of the Reviewed Literature From the reviewed literature, it is evident that household food insecurity is a serious problem especially in the developing countries. Among alternatives towards alleviating household food insecurity, especially among small scale farmers is agricultural food production. In spite of the GOK’s encouraging local food production as a means of alleviating household food insecurity, more needs to be accomplished in order to achieve household food security in the country. From the available literature, no in-depth studies have tended to focus on status of food production, food consumption patterns, food sources, status of household food insecurity and coping strategies against household food insecurity among small scale farmers at grass root levels such as division. Due to this observation, the study on household food insecurity and coping strategies among small scale farmers in Tharaka Central Division of Tharaka South District, Kenya is timely. 29 This is so, especially due to the fact that small scale farmers are important players in alleviating household food insecurity through their subsistence crop production. 30 CHAPTER THREE: METHODOLOGY 3.0 Introduction This chapter discusses methodologies used in the study under the following areas: Research design, study area, population and sample size, sample size determination, sampling procedure, measurement of variables, research instruments, pre-testing research instruments, training of research assistants, data collection procedures, ethical considerations, and data analysis. 3.1 Research Design Cross sectional descriptive survey design was used to undertake the study in investigating household food insecurity and coping strategies among small scale farmers in Tharaka Central Division of Tharaka South District, Kenya. The study was carried out in March and April, 2011. The design was applied in the study to enable the researcher investigate household food production, household food consumption patterns, household food sources, household food insecurity and coping strategies against household food insecurity. According to Mugenda & Mugenda (2003), the design enables a researcher to investigate and describe an existing status of a behavoiur. The design was also considered appropriate because it allowed the use of a structured questionnaire as the research instrument. It also produced statistical information about the existing status of household food insecurity and coping strategies for analysis, which is supported by Olsen & Marie (2004) who assert that the design allows the use of structured questionnaire and also produces statistical information for analysis. 31 3.2 Study Area Tharaka South District is an arid and semi-arid region in the Eastern part of the larger Meru Region in the Eastern Province of Kenya. The district experiences a bimodal rainfall pattern with annual rainfall averaging between 500 - 800mm per year (GOK, 2009). The short rain season occurs in March/May while long rains are received in the October/December period. Generally, rains in Tharaka South are erratic. Temperatures range between 29oC - 36oC, though at certain periods they can rise to as high as 40oC (ibid). Food crops cultivated in the area are millet, sorghum, maize, pigeon peas, green grams and cow peas. Cash crops are hardly cultivated but if done, they comprise cotton, sunflower and castor. The District borders Imenti South, Meru Central and Imenti North to the North West, Mbeere, Maara and Meru South districts to the South. It also borders Tharaka North District to the North. The district is divided into five administrative divisions, namely, Tharaka South, Turima, Nkondi, Tunyai and Tharaka Central divisions. Tharaka Central Division has administrative locations Marimanti, Gituma and Ntugi (CBS, 2010). Tharaka Central Division covers an area of 213 square kilometres and comprises of a total population of 16796 persons (8195 males and 8601 females). It is comprised of 3822 households of which 3631 are farm families (Ministry of Agriculture & Livestock [MoA&L] Office, Tharaka South District, 2011). The division is sub-divided into 3 locations namely, Marimanti, Gituma and Ntugi. Marimanti Location comprises of 32 Kamatungu, Kirangare, Kithigiri and Marimanti sub-locations. Gituma Location comprises of Gituma and Kaguma sub-locations; while Ntugi Location comprises of Kanyuru and Rukenya sub-locations. The study area was chosen for the study because it has salient characteristics of ASAL areas. Food insecurity is one of challenges of concern in such areas. 3.3 Population and Sample Size of the Study The target population was small scale farmers in Tharaka Central Division of Tharaka South District. The accessible population was the 3631 farm family households in the division. Marimanti, Gituma and Ntugi locations have 2058, 625 and 948 farm families respectively (CBS, 2010). The sample size was 351 farm family households. The farm family households were focused on because they were able to reflect the situation of food production and household food insecurity in the study area. Respondents of the study were household heads and principal care givers of the households. Household heads were considered as the main respondents because of their knowledge about food production and land use. In cases where the household head was different from the principal care giver, he/she was requested to identify the person responsible for preparing or overseeing preparation of food for consumption, to answer questions on household food consumption patterns and coping strategies. In some households, the household head was the household principal care giver. 33 3.4 Sample Size Determination The sample size of the study was 351 respondents according to Sample Size Determination Table by Krejcie & Morgan (1970) at an alpha level 0.05 and a t value of 1.96 for a sample size derived from a population size of 4000 of categorical data (Bartlett et al, 2001). Despite the fact that the population size of the study was 3631, it was deemed necessary to consider deriving the sample size from 4000 population size since according to Bartlett et al (2001), increasing sample size is vital to account for natural attrition and uncooperative subjects because data collection method of voluntary participation in interviews may lead to such phenomena and ultimately produce a response rate below 100%. 3.5 Sampling Procedure Purposive sampling as part of multi-stage sampling is used to get the location in which units of observation (study) have the required characteristics, (Mugenda & Mugenda, 2003). It is also relevant when a researcher wishes to use cases that have the required information with respect to the objectives of his study (ibid). Tharaka Central Division was purposely identified from a list of five administrative divisions of Tharaka South District because of the following reasons: drought resistant crops such as millet, green grams, and cowpeas are cultivated in the area. Such crops are commonly cultivated in ASAL areas. Marimanti Town which is the headquarters of Tharaka Central Division is a major market and therefore was considered to investigate the role it played as households’ food source. Thirdly the area is centrally situated in Tharaka South District 34 therefore would produce reliable data about household food insecurity from a central point in the district. Simple random sampling was used to select five Sub-locations in the division. Eight pieces of paper were cut, written names Kamatungu, Rukenya, Kirangare, Kithigiri, Kaguma, Marimanti, Gituma and Kanyuru. The pieces of paper were rub-folded, put in a container, shaken and poured on a table. Five pieces were handpicked with eyes closed. The names on the pieces of paper were confirmed to be Rukenya, Kirangare, Kithigiri, Kaguma and Kanyuru. Five out of the eight – more than 50% sub-locations were selected to allow for variations in the nature of farm family households between the areas (Saunders, 2009). The sub-locations have 435, 293, 676, 333 and 513 farm family households respectively making a total of 2250. Systematic random sampling was then used in acquiring the sample from the 2250 farm family households. The farm families are the rural population households (CBS, 2010; MoA & L, 2011). Systematic random sampling was used in order to ensure even sampling from the homogenous population of farm family households in the rural areas. Lists of farm family households in the sub-locations were prepared and randomized into a list comprising all the farm family households in the selected areas. The households were then assigned numbers 001 to 2250. The total population 2250 was divided by the sample size 351 to get the sampling interval (K) 6. Starting point of picking sampling units was determined by blindly picking any number from number 001 to 006. Number 35 005 was picked as the starting point. Every 6th number from the starting point was picked to get the 351 sampling units of the study. The formula below illustrates how the 351 households were systematically sampled. K= N/n 6=2250/351 K=sampling interval, N=population size, n=sample size Multi-stage sampling was applied in this study by considering the above mentioned sampling techniques to overcome the problems associated with the area’s geographically dispersed population. Dispersed population in a wide geographical area is a major challenge to conduct face-to-face interviews because they are too expensive to conduct; and it also takes a lot of time to construct a sampling frame for interviews on the entire area (Saunders, Lewis & Thornhill, 2009). The area ALRMP II Manager and Agricultural Extension Officer were purposively selected as key informants because they possessed vital information concerning household food insecurity as well as agricultural aspects. Interviews were conducted with the two officers to get insights on household food insecurity. Information concerning land use such as sizes of farmlands, food production such as types of drought resistant crops cultivated in the area was obtained from the Agricultural Extension officer. 36 3.6 Measurement of Variables Several variables were used in establishing household food insecurity and coping strategies among small scale farmers in Tharaka Central Division. 3.6.1 Independent Variables To establish the status of household food production, household sizes of farms and farmlands, types of crops cultivated in the two rainy seasons of 2010, amount of food expected, amount of food harvested, months of household food provisioning, crop loss mitigation mechanisms and experience with droughts and floods were used. The indicators of household food insecurity in this study were: dietary diversity, food frequency and food sources. The independent variables for household dietary diversity were number of meals in 24 hour recall. The type of foods consumed among the households in 24 hour recall helped in determining household dietary diversity. This was done by grouping food items into food groups. Three or less food groups were lowest food diversity, four to five food groups were medium dietary diversity and 6 and more food groups were highest food diversity. Household food frequency was determined by considering the frequency of food consumption in the previous 7 days as independent variable. It was used to establish household food consumption frequency score (HFCS). This was done by summing the frequency of the frequency of consumption of food items in the same food groups, multiplying the value obtained for each food group by its weight and then summing the 37 weighted food group scores. Zero to twenty eight score was classified as poor, 28.5 to 42 borderline and 42.5 and above as acceptable household food consumption frequencies. The independent variables of household sources of food were: market; own production; gifts from relatives, neighbours and friends and free relief food. In order to identify coping strategies among the households, the following variables were employed: reduction in the number of meals per day, reduction in size of meals, restrict consumption of adults to allow more for children, swapped consumption to less preferred or cheaper foods, borrow food from a friend or relative, consume normal wild food, consume immature crop, sale of milking livestock and sale of charcoal and/or firewood. 3.6.2 Dependent Variable The dependent variable of this study was household food insecurity. There were 3 domains of the independent variable as adapted from WFP’s (2006) Household Food Consumption Approach. They are household food security, vulnerability to household food insecurity and household food insecurity. 38 3.7 Research Instruments The study employed three sets of data collection instruments. Interviewer-administered structured questionnaire, observation checklist and key informant interview guide. The questionnaire was divided into four sections. Section A was used to collect information on household data. The subsequent sections B, C and D were used to collect data on household food production, food consumption/and food sources; and coping strategies respectively. Observation checklist comprised of 7 questions concerning: household farmland size, types of food crops cultivated, types of house, assets, food available in household, foodstuff sold at the nearest market, prices of foodstuff, nearest water source and presence of water in the household. These questions helped in depicting the circumstances of food insecurity the households were in; and to validate the data obtained from the respondents. The key informant interview guide questions were used to seek insight on household food insecurity and coping strategies among the small scale farmers. 3.8 Pre-testing Research Instruments Pre-testing the structured questionnaire was carried out among 10 households randomly selected from Kamatungu, Marimanti and Gituma sub-locations. These sub-locations were not considered in the main study. The first pre-test was carried out among 5 subjects drawn from Kamatungu and Marimanti in the second day of the week and the 39 second pre-test was done among 5 subjects in Gituma on the fifth day. The pre-test was done in different locations and on different days so as ascertain the homogeneity of responses. Comments and suggestions concerning the instrument clarity and relevance were sought from the respondents, and relevant alterations done to enhance its validity and reliability. Adjustments made on the questionnaire after the pre-test were increasing response spaces and rephrasing unclear questions. This was to ensure questions which did not elicit intended answers were corrected and made clear and that responses would not be overcrowded or be omitted when putting them down on paper. This process was to make sure that the questions in the instruments elicited reliable data. 3.8.1 Reliability The reliability coefficient of the instruments was calculated using Cronbach’s Coefficient Alpha formula. The total variance was calculated, followed by individual variances, and then the sum of individual variances was calculated. Finally the reliability coefficient alpha was gotten by applying the Cronbach’s formula. N/ (N-1) (Total Variance – Sum of individual variance)/Total variance 14/ (14-1) (281.9-30.359)/281.9=0.960 N= number of questions in the instrument A reliability coefficient of 0.80 or more implies that the items correlate well among themselves and also there is a high degree of reliability of the data (Yu, 2010; Mugenda & Mugenda, 2003). 40 3.8.2 Validity Content validity was established by seeking the expertise of the study supervisors. The supervisors ensured that correct variables relevant to the study were included in the questionnaire. The questionnaire was constructed and revised according to the instructions of the experts. This is in accordance with Mugenda and Mugenda (2003), who says content validity judgement is made better by a team of experts in the field of the research. 3.9 Training Research Assistants Training of research assistants is important to standardize data collection to minimize variations in data collection procedures that may bias the results (Mugenda & Mugenda 2003). Four research assistants were trained to help collect data from the 5 sub-locations of the study area. Each research assistant was assigned a sub-location (the researcher conducted the study in Kanyuru). The researcher trained her research assistants by engaging them in rehearsal sessions on question asking, probing skills and translating questions into Kitharaka. The researcher engaged the research assistants on research etiquette such as introducing themselves to the respondents and clarifying the purpose of the study to respondents so as to create good rapport before embarking on the actual study. The research assistants were also trained on how to summarize lengthy responses into short summaries to avoid information overload and also to ensure that responses fitted in the response spaces in the questionnaire. The importance of involving research assistants in the study was to save on time, energy and finances of having to conduct the 41 research over a lengthy duration thereby incurring huge expenses and getting exhausted due to fatigue. 3.10 Data Collection Procedures The household farm head was the main respondent for questions on food production and land use. The principal care giver, mostly a female was the main respondent in questions dealing with food consumption and coping strategies which was in accordance with Haddinott (2006) who says, the principal person responsible for preparing meals is asked how much food she prepared over a period of time and how her household members are responding to food shortage. The respondents were visited in their homes for interview sessions conducted through the use of structured questionnaires administered by the researcher and research assistants. There were elaborations and probing as was deemed necessary. Interview responses were filled in the questionnaires. Observations were done after the interview sessions. Information on observed phenomena was filled in the observation checklist. What was observed included: sizes of the farmlands, type of food cultivated in the season, type of houses in the homestead, household assets, types of food available in the household, foodstuff sold at the nearest market, prices of the foodstuff at the markets, nearest water source and presence of water in the household. The researcher booked appointments with the area ALRMP II Manager and the area Agricultural Extension Officer to conduct key informant interviews with them. Upon their consent, the extension officer was visited by the researcher at his office in 42 Marimanti Town; and thereafter the area ALRMP II Manager was visited in his office for interview. Their responses were recorded in form of notes and summaries. Counter checking of filled questionnaires was done every day of the study by the researcher to check for completeness and clarity of entries. 3.11 Ethical Considerations Application and permission for authority to conduct the research was sought from the Ministry of Higher Education, Science and Technology. A copy of the permit by the permit was submitted to Tharaka South District Commissioner. Permission to collect data in Rukenya, Kirangare, Kithigiri, Kaguma and Kanyuru was sought from assistantchiefs of the sub-locations. These administrators further notified headmen about the study. These leaders created awareness to the community about the impeding field research (especially during public meetings and during food relief supply days). This ensured that the community appreciated the research and gave consent to get interviewed. The respondents’ voluntary and informed consent of participation in the study was sought before data collection, informing and clarifying to them that the study was for academic purpose only. The respondents were also assured of the confidentiality of the information they were to give. This was done during the visit to their homes for the study. The researcher booked appointments with key informants prior to conducting interviews with them and they were also informed that the purpose of the study was academic. 43 3.12 Data Analysis Quantitative data collected was analyzed using the computer software programme Statistical Package for Social Sciences (SPSS) Version 11.5 to make the analysis easier and to obtain accurate results. The data collected was assembled, grouped into categories, meanings extracted, coded and entered into SPSS and analyzed to get results. Qualitative data obtained was organized into distinct categories, patterns and themes identified. The data was further evaluated and analyzed to determine its adequacy, its credibility and usefulness to objectives of the study. SPSS (Version 11.5) was used to analyze data on 24 hour dietary recall and 7 day food frequency to establish household dietary diversity score, household food consumption score and main sources of household food. Number of food groups were used to establish 24 hour recall HDDS while the weighted factors of food groups of 7 day food frequency were used to establish HFCS. Household food insecurity status was determined by considering the results of HDDS, HFCS and the primary source of household food according to WFP (2006) and Aiga & Dhur (2006). HDDS was established by considering 12 food groups while HFCS was established by considering the consumption of 8 food groups: main staples (cereals, roots and tubers), pulses, meat/fish/eggs, milk, vegetables, fruit, sugar/honey and fats/oil, and were factored with 2, 3, 4, 4, 1, 1, 0.5 and 0.5 respectively. HFCS of 0-28, 28.5-42 and 42.5 and above 44 were considered food poor, borderline and acceptable household food security status respectively. Descriptive statistics such as percentages, frequencies, and the mean were used to describe and organize both qualitative and quantitative data. Frequency tables, pie charts, bar graphs, cross-tabulation and line graphs are used to present the findings. Pearson Product Moment Correlation tests were used to determine the magnitude and direction of relationships between non-categorical variables sizes of farms and farmland sizes; statuses of HFCS and household size; and HFCS and farmland sizes. T test was done to establish whether a significant difference existed between the amount of food expected and amount harvested. Chi square tests were done to establish whether significant associations existed between HDDS and HFCS; and between sources of maize and statuses of household food insecurity. 45 CHAPTER FOUR: FINDINGS AND DISCUSSION 4.0 Introduction The presentation and discussion of the findings include demographic characteristics of the households, household food production, household food consumption patterns, household sources of food, household food insecurity status, and household coping strategies in the event of food shortage among the small scale farmers. 4.2 Household Demographic Information The demographic characteristics of the study included: household size, household head education levels, type of housing, cooking energy, and sources of livelihood. 4.2.1 Household Size Sizes of the respondents’ households are presented as follows (Table 4.1). 46 Table 4.1: Household Size Household Size Frequency Percentage 1 6 1.7 2 4 1.1 3 50 14.2 4 85 24.2 5 100 28.5 6 43 12.3 7 19 5.4 8 37 10.5 9 3 0.9 10 4 1.1 351 100 Total The total number of persons in the 351 households was 1758 with a mean of 5. Majority of households (69.7%) had 5 or less members. According to Alem and Shumiye (2007), a shift to smaller family size (smaller than the sample mean family size) decreases the probability of food insecurity. Following this assertion, majority of households would be deemed to be less food insecure because majority had 5 or less than the mean members. The finding on household size is comparable (although slightly higher) with that of Kenya Demographic and Health Survey (KDHS), 2008 – 2009 which reports that the mean size of a Kenyan household is 4.2 persons (GOK, 2010b). 47 4.2.2 Education Levels of Household Heads Table 4.2 Education Levels of Household Heads Level of Education Frequency Percentage None 126 35.9 Primary 149 42.4 Secondary 36 10.3 Post Secondary 40 11.4 Total 351 100 The household heads were of diverse levels of education: No education (35.9%), primary level (42.4%), secondary level (10.3%) and post secondary (11.4%). It can therefore be observed that majority of the heads (78.3%) were uneducated or of primary education level. The number of years spent in formal education is one of the important determinants of increased household food production and adoption of new behaviours. Further, education catalyses the process of information flow and leads persons to explore as wide as possible, different pathways of getting information about agriculture and food security (Ersado, 2001). Following this observation, there was limitation in information flow and adoption of new food production behaviours among this group because of their low education levels. Further GOK (2008e) indicates low literacy rates of 77% among Tharaka District residents. 48 4.1.3 Household Type of Housing Table 4.3: Household Type of Housing Type of House Modern Semi-modern Traditional Huts Total Frequency Percentage 36 10.3 280 79.7 35 10 351 100 The houses were mostly semi-modern (79.7%) made of iron sheet roofs (90.3%), mud walls (79.5%) and earth flour (71.5%). The shift to semi-modern housing is attributable to the fact that the community is transitioning from grass thatches to iron sheets. The respondents said their house walls were made of mud because it was naturally available and less expensive compared with stones and bricks. Floors were earthen due to tradition. Households in rural areas of Kenya mainly have houses with floors made from earth, sand, or dung at 71% and the housing characteristics reflect the household’s socioeconomic situation (such as ability to access food GOK (2010b). Considering their housing characteristics, the ability to access food by the households was a bit constrained. 4.2.3 Household Cooking Energy The respondents were asked to mention sources of their cooking energy and gave the information in (Table 4.4). 49 Table 4.4: Household Cooking Energy Cooking Energy Frequency Percentage Firewood 254 72.4 Charcoal 53 15.1 Firewood/Charcoal 44 12.5 0 0 351 100 Others Total Firewood was the most common source of cooking energy (72.4%) because it was readily available in the study area. During dry seasons trees and shrubs dry up offering firewood to the households. Charcoal was also used at 15.1% as it was prepared from the dry woods. The statistics of the finding is higher than the country’s statistic and lower than the country’s rural statistic of KDHS 2008-09 Report which stipulates that the most common cooking fuel in Kenya is wood, used by 63% of the country’s households and by 83% of its rural households (GOK, 2010b). Following the findings of the study, the small scale farmers did not have a lot of problems in cooking food since firewood and charcoal offered affordable sources of cooking energy. 4.2.5 Household Main Source of Livelihood The small scale farmer households’ sources of livelihood are as shown in (Table 4.5). 50 Table 4.5: Household Main Source of Livelihood Source of Livelihood Frequency Percentage Agriculture 263 75.1 Agro-pastoralism 15 4.3 Formal Employment 54 15.4 Casual Labour 17 4.9 2 0.3 351 100 Others Total The findings indicate that agriculture (75.1%) was the main source of livelihood for the households, followed by formal employment at 15.4%. Much of the food consumed in rural households in Kenya (whose main livelihood is agriculture) is obtained from the farm (Kaloi, et al., 2005). This was supposed to imply that the major source of food for the households was own crop production, since their major source of livelihood was agriculture. The finding is also comparable with that of Tharaka District Development Plan 2008-2012 Report, which stipulates that agriculture is the major mainstay of the economy and livelihood of the people in Tharaka District and, it is estimated that 80% of the population depends on farming (GOK, 2008b). 51 4.3 Household Food Production Establishing household food production involved investigating household sizes of farmlands, types of crops cultivated in the two rainy seasons of 2010, amount of harvests, months of household food provisioning, crop loss mitigation mechanisms and respondents’ experience with drought and flooding. 4.2.1 Sizes of Household Farms and Farmlands The respondents were asked to state sizes of their farms and gave the following information presented in (Table 4.6). Table 4.6: Sizes of Household Farms Acreage Farm Frequency Percentage ≤1 61 17.3 2 96 27.4 3 60 17.1 4 68 19.4 5 49 14 7 17 4.8 351 100 Total Majority of respondents (27.4%) possessed 2 acres of farm. This was followed by 19.4% who owned 4 acres of land. The mean household farm size was 3.05 acres. The farm holdings were utilized as farmlands for crop cultivation and as pasture land for livestock 52 grazing. It is estimated that 80% and 60% of Tharaka population draws their livelihood from agriculture and livestock keeping respectively (GOK, 2009). These findings are in agreement with a study by Gitu (2004) which observed that due to continued land fragmentations in Kenya, some 89% of the households in the country are living in less than 7.5 acres of farms, while 47% of households live on less than 1.5 acres. This is comparable with the results of the study which show all respondents had farms of sizes 7 or less acres, and some 44.7% of households had 2 or less acres of land. Table 4.7: Sizes of Household Farmlands Acreage Farmland Frequency Percentage ≤1 136 38.7 2 176 50.2 3 38 10.8 4 1 0.3 7 351 100 Majority of households (50.2%) possessed 2 acres of farmland, while 38.7% owned 1 or less acre of farmland. The mean size of household farmlands was 1.62 acres. Although there were large potential cultivation lands, it was found that the respondents did not want to cultivate vast farmlands which they were not capable of controlling weed invasion and weed prevalence. For instance, on probing a respondent in Kanyuru Sublocation on why he had a farmland as small as less than acre while he owned 4 acres of 53 land, he responded thus: “What is the importance of cultivating a large portion and see, almost everything get consumed by weeds? See my house (hut). Does it seem to belong to a rich person with money to hire labour for weed control?” Weeds do not let crops mature nor produce fruits. According to Alem and Shumiye (2007), small farmland size increases vulnerability to household food insecurity because the smaller the farmland size, the smaller the volume of crop output (if other variables are held constant). 4.2.2 Types of Crops Cultivated in March/May and October/December, 2010 The respondents were asked to give the estimates in Kgs of the crops they had expected, harvested, sold, consumed, stored and the period the harvests lasted. They gave the information (Table 4.8). 54 Table 4.8: Types of Crops Cultivated Crops Mean Amount (kg) Expected Harvested Sold Consumed Stored Duration of post harvest storage mm mm Od Mm od mm od mm od mm Od Od Maize 350 366 270 91 160 1 123 82 40 8 4 <1 Millet 155 274 218 78 101 38 114 19 83 21 5 2 Sorghum 88 29 113 15 27 14 22 0 4 <1 Green grams 450 200 362 96 314 74 44 12 70 10 4 <1 Pigeon Peas 242 0 173 0 86 0 0 47 0 4 0 Cowpeas 81 39 48 28 22 27 14 10 2 1 <1 107 70 84 mm= March/May Season 82 od= October/December Season The findings indicate that food crops were the major crops cultivated among the households at 95% of all crop output. Cereals provided staple food while pulses could be consumed as well as get sold for money to pay school fees and purchase clothes. According to Rose (2008), production of staple food crops contribute to household food availability; since when foodstuff is available in a household, it increases the chances of a household being food secure. The types of food crops cultivated by households were similar with those listed in GOK (2009) as being grown in Tharaka: maize, sorghum, millet, green grams, pigeon peas, cowpeas. Moreover, Gitu (2004) stipulates that these crops are mainly cultivated in ASAL areas. A cash crop (cotton) was cultivated along with food crops by 5% of the households and their low cultivation was attributed to lack 55 of seed and lack of market. The type of cash crop cultivated is similar with the Tharaka District Development Plan 2008-2012 that indicate that the main cash crop cultivated in the area is cotton (GOK, 2009). 4.2.3 Amount of Harvests for Food Crops The major cereals produced during March/May Season were maize and millet at a mean of 270 kg and 218 kg respectively (Table 4.8). Maize was the primary crop cultivated which explains that it was among crops harvested in the largest quantities during the season. The October/December season was the most significant for analysis of food production because it was highly reflective of the existing status of household food availability among the small scale farmers’ households during the time of the study. In October/December season, food crop production was much lower than the previous season (maize and millet outputs were at a mean of 91 kg and 78 kg respectively) as opposed to the previous season’s 270 kg and 218 kg respectively (Table 4.8). The farmers had expected bumper harvests in the season since it was the long rains season. However, their anticipation was not realized because of the drought which precipitated the harvest of food quantities much lower than the previous season. The finding on maize harvested in October/December season among the households is comparable with that of Makueni County (which is also ASAL area) whose households had harvested a mean of 89 kg of maize during the same season (Scribd, 2011). 56 The results on food crop harvests were attributable to bumper harvest of March/May season (due to enough rains); and low harvests of the subsequent season due to erratic rains experienced. According to the results, the households were deemed to be more food secure in the March/May post-harvest period and more food insecure in the post-harvest of October/December Season. The findings are divergent with usual expectations about the seasons; whereby bumper harvests are expected in October/December season than March/May season (GOK, 2009). 4.2.4 Months of Household Food Provisioning According to FANTA (2006), months of household food provisioning are characterized by adequate or inadequate food provisioning (GOK, 2008c). Tables 4.9 and 4.10 illustrate the findings. Table 4.9: Months of Adequate Food Provisioning Month Frequency Percentage June to August 142 40.5 June to September 36 10.3 June to October 17 4.8 June to November 17 4.8 June, August and February 67 19.1 June, August and May 19 5.4 May to September, January to February 17 4.8 Other Months 36 10.3 57 Majority of households (40.5%) had enough food provisioning during the months of June to August. June, August and February had enough food provisioning at 19.1%. The months of enough food provisioning are immediate to post-harvest seasons. This implied that the households’ food access and availability was good during these months. Harvesting is done in June and January for March/May and October/December seasons respectively. These findings support those of GOK (2008d) which indicate cultivation of crops done during short rains boost food security in June to August in Tharaka, and those of Long Rain Assessment Report (GOK, 2008e) that there is good food provisioning among households in Tharaka in January and February which are the post-harvest periods of long rains. Table 4.10: Months of Inadequate Food Provisioning Months Frequency Percentage August to December 37 10.5 September to January 83 23.6 106 30.2 November to January 87 24.8 March to April/other Months 122 34.8 October to January The respondents mentioned different intervals in months of inadequate food provisioning. October to January had the most inadequate food provisioning at 30.2%. Other month intervals of inadequate food provisioning were November to January at 24.8% and 58 September to January at 23.6%. The access and availability of food among the households was compromised because the months were too far from post-harvest seasons. The findings are supported by the report of Tharaka District Development Plan 2008-2012 that says, there have been persistent food shortages in Tharaka in October to December due to prolonged dry spells beginning in June which are months of no cultivation of food (GOK, 2009). 4.2.5 Crop Loss Mitigation There were various mechanisms employed by households in mitigating crop loss due to erratic rains or pest infestation. Maize, millet and sorghum potential loss was reduced by planting drought resistant varieties. For example 85% of households cultivated drought resistant varieties of maize. Pest control was practised by spraying crops on the farm (79.8%) and dusting foodstuff (85%) with pesticides so as to reduce the amount of crop destruction on the farm and to prevent post harvest foodstuff loss respectively. Some of pests that infested crops on farms were chaffer grabs, termites, suckers and they cut young crop shoots, cut maize stems and sucked crop fruits respectively. The common pests that invaded foodstuff in stores were great grain borer (Osama meaning ‘destroyer’) and moths. They bored and disintegrated foodstuff into pieces and into powder form. 59 4.2.6 Droughts and Flooding When asked if they had experienced drought(s) in the past two rainy seasons, all the respondents said yes and no for flooding. The respondents indicated that in spite of cultivating droughts resistant crops, the preceding drought was so severe that their crops dried immaturely thus constraining their harvests. This exposed them into vulnerability to household food insecurity. Droughts increase a community’s vulnerability to household food insecurity (Rose 2008). 4.3 Household Food Consumption Patterns Household food consumption patterns were investigated by asking household principal caregivers (mainly female) food consumption questions. 4.3.1 Meal Patterns among the Households The study sought information concerning meal patterns by asking the respondents to mention foods their households had consumed during different meals. The information on the meal patterns is illustrated in (Figure 4.1). 60 Figure 4.1: Meal Patterns among the Households The highly consumed meal was breakfast by 85.4% of the households, followed by supper at 72.9%. Lunch was consumed by 35.6% of the households. The consumption of breakfast was to gain energy to start up their day and consumption of supper was to replenish the lost energies during day time. There was positive implication of consumption of breakfast among the households because it was highly consumed. Breakfast is the first meal taken after rising from a night's sleep, most often eaten in the early morning before undertaking the day's work. Nutritional experts have regarded breakfast as the most important meal of the day, because people who skip breakfast are disproportionately likely to have problems with concentration, metabolism and weight (Wikipedia, 2011). 61 Many households skipped lunch due to the impacts of food shortage precipitated by the drought during October/December rain Season. This finding corroborates with Reliefweb (2011) findings that the population that is highly and moderately food insecure and unable to meet a significant proportion of their food needs in Kenya rose to 2.4 million people in January 2011, from 1.6 million in December 2010. This is due to the impacts of failed rains on crop production (close to 80% October/December crop was lost) in ASAL areas. Skipping lunch was a coping mechanism against household food insecurity. 4.3.2 Main Foods Consumed in Meals The main foods taken at breakfast are presented in (Table 4.11), and the main foods consumed in different meals are also discussed. Table 4.11: Foods Consumed at Breakfast Foods Frequency Percentage Githeri 153 43.7 Traditional ugali 19 5.4 Tea 70 19.9 Porridge/gruel 54 15.2 Other foods 4 1.2 None 51 14.5 Total 300 85.4 62 The main foods consumed at breakfast were githeri by 43.7% of the households, tea by 19.9%, traditional ugali (cereal flour mixed with green vegetables) by 5.4%, gruel/porridge by 15.2% and other foods at 1.2%. Githeri and traditional ugali eaten during breakfast were the remnants of the preceding night’s supper. The types of food for breakfast were different from the normal Kenyan breakfast menu. The traditional Kenyan breakfast menu comprises tea and chapatti, mandazi (local pastry), bread spread with margarine (KenyaZone.com, 2011). The main food consumed for lunch and supper was githeri by 35% and 65% respectively. For mid-morning snack and afternoon snack, the main food was porridge/gruel taken by 20.2%, 28.7% respectively. The major ingredient in the githeri was maize which is Kenya’s staple food according to GOK (2008c). 4.3.3 Household Dietary Diversity of 24 Hour Recall There is no international consensus on which food groups to include in the scores of HDDS and therefore this study adopts 12 food groups proposed by FAO, WHO and FANTA (2006) in calculating HDDS: cereals, roots and tubers, vegetables, fruits, meatpoultry-and-offal, eggs, fish and sea food, pulses-legumes-and-nuts, milk and milk products, oil/fats, sugar and honey, miscellaneous (GOK, 2008c). HDDS of 24 hour recall 12 food groups are thus: 3 or less food groups, 4 to 5 food groups and 6 or more food groups are classified as lowest dietary diversity, medium dietary diversity and high dietary diversity. There are no established cut-off points in terms of number of food groups to indicate adequate or inadequate dietary diversity for the HDDS and, so, it is 63 recommended to use the mean score or distribution of scores for analytical purposes (Kennedy, Ballard & Dop, 2011). Figure 4.2: Dietary Diversity of 24 Hour Recall The HDDS of the previous 24 hours was generally poor with 83.3% of households having consumed 1 to 3 food groups which was low, 16.2% had consumed medium dietary diversity of 4 and 5 food groups and 0.3% more than 5 food groups which was high dietary diversity according to HDDS thresholds by Kennedy et al (2011). These findings are different with the findings of Integrated Smart Survey carried in Makueni County, Kenya in April 2011 which found that Makueni’s HDDS was as follows: low dietary diversity of 3 or less food groups was 11.5%, medium dietary diversity of 4 to 5 food groups was 20.3%, and high dietary diversity of 6 or more food groups was 68.2% (Scribd, 2011). Both studies were conducted in March/April 2011 and April 2011, and both areas are ASALs. 64 4.3.4 The 7 Day Food Frequency The 7 day food frequency of the study adopts the quantitative aspect of food consumption pattern by IFPRI (2008) that uses 8 food groups - main staples, pulses, vegetables, fruit, meat and fish, milk, sugar and oil. Respondents were asked how many times their households had consumed the food groups in the previous 7 days, and their responses were as shown in (Table 4.12). 65 Table 4.12: The 7 Day Food Frequency Food Type Total Consumption by Households (%) Frequency of Consumption Households (%) 0 1 2 Maize 96.6 0.6 4.8 Pulses 94.6 5.4 0 Milk 54.4 45.6 0 Millet 54.1 45.9 Fats/oils 50.1 Honey/sugar 3 4.8 4 by Food Adequacy (%) 5 Yes No 4.8 10.5 74.4 30.9 65.7 14.8 20.3 15.1 44.4 5.1 89.5 0.3 0 0.3 53.8 5.1 49.3 5.1 0 0 0 49.0 0.3 53.8 49.9 0 4.8 4.8 0 40.5 14.8 35.3 49.6 50.4 0 5.1 0 0 44.5 15.1 34.5 Banana 38.5 61.5 33.6 0 0 4.9 0 0 38.5 Cowpeas leaves 35.1 64.9 35.1 0 0 0 0 0 35.1 Rice 31.6 68.4 26.5 0 5.1 0 0 5.1 26.5 Cabbage 30.2 69.8 5.1 25.1 0 0 0 10.3 19.9 Wheat 25.4 84.6 5.1 10 5.7 0.3 4.3 0.3 25.1 80 20.0 0 0 0 0 0 20.0 0 19.9 Eggs 20 Finger millet 19.9 80.1 4.8 5.1 0 0 10.0 Sorghum 15.1 84.9 5.1 0 0 0 10.0 10.0 Red meat 15.1 84.9 15.1 0 0 0 0 0 15.1 Mango 14.8 85.2 14.8 0 0 0 0 4.8 10.0 5.1 Poultry meat 9.7 90.3 9.7 0 0 0 0 0 9.7 Fish 9.6 90.4 0 4.8 4.8 0 0 4.8 4.8 Kales 4.9 95.1 0 4.9 0 0 0 0 4.9 66 Results show that maize was widely consumed by the majority of (96.6%) households during the past one week. This was because it was available and culturally acceptable as an ingredient of githeri - the main staple food among the households (74.4% consumed it 5 or more times). This finding is in agreement that maize is the main staple food of Kenya and averages over 80% of total cereals consumed and 41% source of the daily calorie (Kaloi, Tayebwa & Bashaasha, 2005). However, only 30.9% of households indicated that it was adequate for their household consumption. Pulses, milk (in tea/porridge) and millet followed suit at 94.6%, 54.4% and 54.1% respectively. Despite the fact that many households consumed these food items, 89.5%, 49.3% and 53.8% said that the quantity of these items were inadequate respectively. Pulses and milk were good sources of proteins for household members. Main vegetables consumed among the households were cowpeas leaves and cabbage by 35.1% and 30.2% of households respectively. Some respondents (35.1%) and 19.9% respectively said the vegetables were not adequate for their household consumption. Main fruits consumed were banana and mango by 38.5% and 14.8% of households respectively. Although bananas were the most common and affordable fruits in the markets, all the respondents said they were not adequate. Generally, cereals were the main food consumed among the households. However, their quantities were inadequate. The results on the consumption of cereals were in concurrence with those of Makueni County where the major food group consumed were cereals by 90.3% of households, (Scribd, 2011). Inadequate quantities of food would 67 predispose household members to nutritional deficiencies, which are said to be prevalent in Kenya as energy, protein, iron and vitamin A deficiencies (GOK, 2008c). 4.3.5 Household Food Consumption Score (HFCS) Household Food Consumption Score (HFCS) is a frequency-weighted HDDS (IFPRI, 2008). The HFCS is calculated using the frequency of consumption of 8 different food groups consumed: main staples, pulses, vegetables, fruits, meat and fish, milk, sugar, oil. HFCS is measured using standard 7 day food data by classifying food items into food groups; summing the consumption frequencies of food items within the same group (any consumption frequency greater than 7 is recoded as 7; multiplying the value obtained for each food group by its weight. Thus 2, 3, 1, 1, 4, 4, 0.5 and 0.5 are weights for main staples (cereals, roots and tubers), pulses, vegetables, fruit, meat/fish/eggs, milk, sugar and fat/oil respectively. Then summing the weighted food group scores is done, and finally recoding the variable HFCS from a continuous variable into a categorical variable for the food consumption groups using appropriate thresholds: 0-28 food poor, 28.5-42 borderline and above 42 acceptable, according to (WFP, 2007; IFPRI, 2008). The limitation of the findings on HFCS is that, weighting of food groups was done without considering their adequacy. 68 Table 4.13: HFCS Profile HFCS Frequency Percentage Poor 0-28 93 26.5 Borderline 28.5-42 80 22.8 Acceptable >42 178 50.7 351 100 Total The findings indicate that 26.5% of households had poor HFCS of 0 to 28 and majority (50.7%) had acceptable HFCS of above 42 in the previous 7 days of household food consumption. This means that the overall HFCS was relatively good. The findings on HFCS are attributable to high consumption of cereals and pulses as illustrated in Table 4.12. These results are supportable by upward consumption trend of world cereals from 2006/07 to 2009/10 as reported in Economic Review of Agriculture (GOK, 2010c). 4.4 Household Food Sources The principal caregiver, mainly the female was asked to respond to questions concerning the main sources of household food. 4.4.1 Main Sources of Food Items The main sources of food items in a household are as presented in (Table 4.14). 69 Table 4.14: Main Sources of Food Items Food Type Pulses Total Consumption by Households (%) Main Sources of Food Items (%) Gifts Market Own Production relatives, neighbours friends from Free food and 94.6 50.1 34.5 0 10.0 Honey/sugar 49.6 49.6 0 0 0 Banana 38.5 38.5 0 0 0 Maize 96.6 36.7 18.3 5.7 35.9 Rice 31.6 31.6 0 0 Millet 54.1 30.2 19.1 4.8 0 Cabbage 30.2 30.2 0 0 0 Cowpeas leaves 35.1 30.2 4.9 0 0 Fats/oils 50.1 25.4 0 0 24.7 Wheat 25.4 25.1 0.3 0 0 Red meat 15.1 15.1 0 0 0 Finger millet 19.9 10.0 10.0 0 0 Milk 54.4 9.7 44.7 0 0 Sorghum 15.1 5.1 10.0 0 0 Eggs 20.0 5.1 14.8 0 0 Poultry meat 9.7 4.8 4.8 0 0 Fish 9.6 4.8 4.8 0 0 Kales 4.9 4.8 0 0 0 Mango 14.8 4.8 5.2 4.8 0 relief 70 The findings show that the households’ main source of all food items was from markets as illustrated in Table 4.14. Maize was mainly sourced from markets at 36.7% and from free relief food at 35.9%; and it was the main cereal consumed (96.6%) among the households. Millet was mainly sourced from markets at 30.2% and own production at 19.1%. Sourcing millet mainly from markets was attributed to depletion of millet stock from stores due to a period of non crop production from January and February. The findings are further supported by the result of probing respondents on their main source of all their household food and 86.9% said it was markets. This implies that the households did not consume sufficient food from their own production, because according to Mjonono, et al (2009), small scale farmers are major potential contributor to household food security (they consume sufficient food) through own crop production. These findings are divergent from Kaloi, et al (2005) and Gitu (2004) points of view that much of the food consumed in rural households in Kenya is obtained from the farm and very little is purchased from the market and, on the average 30% of the food consumed by rural households is purchased while 70% is derived from own farm production. This contradiction is due to the seasonality of the study (drought period). However, the findings tend to corroborate with the findings about Makueni County in April 2011 that showed 64.5% of households’ main source of food was market (Scribd, 2011). Food consumption and food sources are likely to vary depending on the proximity of the harvest (Aiga & Dhur, 2006). 71 4.4.2 Food Aid Support To get insightful information concerning salient sources of household food, respondents were asked whether their households were getting food assistance through food aid. Their responses are as shown on (Figure 4.3). Received =55.3% Not received =44.7% Figure 4.3: Households’ Food Aid Support Majority of households (55.3%) had received food aid in a period of less than a month and the major food commodity received was maize. They mentioned Catholic Diocese of Meru and Plan International as some of the organizations that supplied the food aid. This agrees with GOK (2008a) which stipulates that some of organizations that provide food aid support in Tharaka are Plan International, GOK and WFP through the Catholic Diocese of Meru. Food aid support is a source of relief for emergency in natural disasters and slow-onset crises (Maxwell et al, 2008). 72 4.4.3 Amount of Maize Received from Food Aid Maize was the major food item received by households from food aid. Figure 4.4: Amount of Maize Received Five kilograms of maize was received by 5.1%, 10kg by 35.3%, 15 kg by 4.9% and 20 kg by 10%. Of all the maize commodity received, 50.1% was consumed in the households while 5.1% was shared with kin. The maize support helped in increasing household access to cereal food group as Rose (2008) observes that food aid increases household access to food. 4.5 Household Food Insecurity Status Household food insecurity status was established by considering the results of HDDS and HFCS. Further the statuses of household food insecurity were cross-tabulated with sources of maize to establish their interaction. The findings are presented hereunder. 73 4.5.1 Household Food Insecurity Status According to HDDS Household food insecurity status according to HDDS is illustrated on (Figure 4.5). Acceptable – 0.3% Borderline – 16.2% Food Poor – 83.3% Figure 4.5: Household Food Insecurity Status According to HDDS The findings indicate that majority of households (83.3%) had low HDDS of between 1 and 3 food groups, 16.2% had medium HDDS of 4 and 5 food groups and 0.3% had high HDDS of 6 and above food groups in the previous 24 hours; with the mean food groups of 3. This translates into the status of household food insecurity being 83.3% food poor, 16.2% borderline and 0.3% acceptable. Tharaka South District is one of the areas classified as moderately food insecure according to Kenya Food Security Update (2009) that classified status of food insecurity in Kenya – generally food secure, moderately food insecure, highly food insecure and extremely food insecure (WFP, 2009). 74 4.5.2 Household Food Insecurity Status According to HFCS Household food insecurity status according to HFCS is illustrated hereunder (Figure 4.6). Figure 4.6: Household Food Insecurity Status According to HFCS The 7 day food frequency showed that the status of household food insecurity was not desperate with slightly higher than half of the households (50.7%) having acceptable HFCS of more than 42. A good proportion of households (26.5%) had poor HFCS of less than 28. The classification of household food insecurity status was thus: 26.5% food poor, 22.8% borderline and 50.7% acceptable according to household food frequency. These findings are comparable with the results of Mwingi by Kaloi, et al (2008) which indicate households found to be food insecure in the district were 38%. 75 4.6.3 HDDS and HFCS The findings of cross-tabulating HDDS and HFCS are as shown (Table 4.15). Table 4.15: Cross-tabulation of HDDS and HFCS % of Households Categories of HFCS Poor = 0 – 28 Categories of HDDS Low = ≤3 Medium = 4 &5 Borderline = Acceptable= 28.5 – 42 ≥42 Total Frequency 85 72 136 293 HDDS 29% 24.6% 46.4% 100% HFCS 91.4% 90% 76.4% 83.5% Frequency 8 8 41 57 HDDS 14% 71.9% 100% 10% 23% 16.2% 0 1 1 HFCS High ≥6 Total 14% 8.6% = Frequency 0 HDDS 0% 0% 100% 100% HFCS 0% 0% 0.6% 0.3% Frequency 93 80 178 351 HDDS 26.5% 22.8% 50.7% 100% HFCS 100% 100% 100% 100% χ2=13.463, df=4 and p=0.009. 44.7%=Food Insecure 43.3%=Vulnerable to Food Insecurity 12= Food Secure 76 The households that had low HDDS and poor HFCS were 85, low HDDS/borderline HFCS were 72. The cut offs for the household food insecure households was determined by adding the frequency (n=85) and frequency (n=72) to get n=157 which is, 44.7% of households classified as food poor. Those that had low HDDS/acceptable HFCS were 136, medium HDDS/poor HFCS were 8 and medium HDDS/borderline HFCS were 8. These frequencies were summed up and their percentage calculated to establish households’ vulnerability to food insecurity (borderline). The households at borderline were 43.3%. The households that had medium HDDS and acceptable HFCS were 41. Neither did any household have high HDDS and poor HFCS, nor high HDDS and borderline HFCS and only one household had high HDDS and acceptable HFCS. Frequency (n=41) and frequency (n=1) were summed up to get n=42. Therefore 42 (12%) households’ food security was acceptable. The analysis of household food insecurity status was in accordance with an analysis by WFP’s Humanitarian Practice Network’s study carried out in Darfur in 2005 for emergency food security and nutrition assessment that first classified households into three food consumption groups (‘acceptable’, ‘borderline’ and ‘poor’) according to the diversity of the diet and consumption frequency (Aiga & Dhur, 2006). The classification of the households in the study area according to status of household food insecurity was thus: 44.7% food poor, 43.3% borderline food security and 12% acceptable food security. This translates into 44.7% households were food insecure, 43.3% were vulnerable to food insecurity while 12% were food secure according to WFP (2006). 77 4.5.4 Statuses of Household Food Insecurity and Sources of Maize The interaction between the statuses of household food insecurity and sources of maize were established by cross-tabulating the variables (Table 4.16). Table 4.16: Cross-tabulation of statuses of household food insecurity and sources of maize Status of Food Insecurity Food Insecure Sources of Maize Market Own Production Gifts from Free Relatives and Relief Friend Food Total 48 3 0 106 157 1.9% 0% 67.5% 100% 46 20 17 152 30.3% 13.2% 11.2% 100% 20 0 3 42 Percentage 45.2% 47.6% 0% 7.1% 100% Frequency 69 20 126 351 19.7 5.7 35.9% 100% Frequency Percentage 30.6% Vulnerable to Frequency 69 Food Percentage 45.4% Insecurity Food Secure Total Frequency 19 136 Percentage 38.7% χ2=160.895, df=6, p=0.000 Maize was selected as an indicator for sources of food because it was the main staple food among the small scale farmers’ households. Majority of food insecure households (n=106) sourced maize from free relief food. This category received food aid because they were likely to be poor therefore could not afford to purchase maize from the market. This proposition is supported by (GOK, 2008c) which stipulates that limited accessibility 78 of food by food insecure households is linked to poverty (whereby about half of the Kenyan population fall below the poverty line), and inadequate incomes coupled with low employment rates. Majority of households vulnerable to food insecurity also sourced their maize from market (n=69), while the main source of maize for the food secure households was own production (n=20) and the market (n=19). Farming (own food production) did not act as the main source of food among majority of the households because their crops did not mature up to yield enough food for sustained consumption. The drought experienced in October/December rain season of 2010 caused this. These findings are supportable by the findings which showed that low crop production reduced the availability of food for consumption and exposed farmers in Umbululu into getting food from other sources, such as purchases (Mjonono, et al., 2009). 4.7 Coping Strategies Coping strategies used among households during food shortages were as shown below (Table 4.17). 4.6.1 Coping Strategies Commonly Used among Households Assessing the magnitude of a coping strategy entails measuring the frequencies of the strategy by ascribing weights, summing up the weights and then putting the result as a score (Maxwell, 2008). Weights 0, 1, 2, 3 and 4 were ascribed for this study as never, 79 hardly, sometimes, often and always respectively. The weights were multiplied by the percentage of their frequencies and then were summed up to get scores of every coping strategy. Table 4.17: Coping Strategies Commonly Used among Households Coping Strategy (in the previous 7 days) Total Weights Relative Frequency % Never Hardly Sometimes Often Always Reduction in size of 0 meals 4.9 39.7 35.4 20 270.5 Reduction in the number 0.3 of meals per day 9.7 35 40.2 14.8 259.5 Consume immature crop 20 59.7 10.3 0 170.3 Restrict consumption of 29.4 adults to allow more for children 10.3 45.4 14.9 0 145.8 Swapped consumption 25.4 to less preferred or cheaper foods 24.6 39.4 0.6 10 145.2 Borrow food from a 14.9 friend or relative 34 51.1 0 0 136.2 Consume normal wild 24.9 food 25.1 45.1 4.9 0 130 Sale of livestock milking 40.3 15.1 30 14.6 0 118.9 Sale of charcoal and/or 55.9 firewood 19.3 20.0 4.8 0 73.7 10 Reduction in size of meals had the highest score of 270.5. It was followed by reduction in the number of meals per day at 259.5 and consumption of immature crop at 170.3. 80 Other coping strategies employed by the households are shown above (Table 4.17). Some of these coping strategies are similar with the coping strategies identified by Wiley (2007) among Tharaka District households, which were: seeking assistance for food from relatives and neighbours, sale of livestock and collecting bush food by poor households. The findings therefore are implicative that small scale farmers in Tharaka Central Division relied on a variety of coping strategies to counter their household food insecurity; which is in agreement that increased reliance on coping strategies is associated with lower food availability (Mjonono, et al., 2009). 4.7 Hypotheses-Testing Results The findings on the hypotheses testing were established by carrying out 2 tailed Pearson correlation tests, 2 tailed t test and 2 tailed chi square tests. 4.7.1 Relationship between Sizes of Farms and Sizes of Farmlands Ho1. There is no significant relationship between farm size and farmland size at a significant level of 0.05. The hypothesis stating that there was no significant relationship between farm size and farmland size was tested by carrying out 2 tailed Pearson Moment correlation test. The test showed that there was significant relationship (positive correlation) between sizes of farms and sizes of farmlands of r = 0.653 and p=0.000. This means that the more farm a household owned, the larger its farmland. The null hypothesis was rejected. 81 4.7.2 Differences between Food Expected and Food Harvested Ho2. There is no significant difference between food expected and food harvested at a significant level of 0.05. The null hypothesis stating that there was no significant difference between food expected and food harvested at a significant level of 0.05 was tested by carrying out a 2 tailed t test on food crops expected and harvested as shown (Table 4.18). Table 4.18: Differences between Food Crops Expected and Harvested Food Crop Expected Factor Versus Harvested Mean Difference Standard Error t value p value Difference Maize 27.625 283.6 12.374 22.927 0.000 Millet 3.111 195.53 6.781 28.832 0.000 Sorghum 69.507 78.64 15.390 5.110 Green grams 103.515 247.57 13.010 19.029 0.000 Cow peas 124.936 68.75 5.530 12.341 0.000 0.000 A 2 tailed t test on food expected and harvested in October/December season showed a significant difference of 22.927 at a p value of 0.000 on maize. This shows that there was significant difference between maize expected and maize harvested during the season. Millet, sorghum, green grams and cowpeas also showed significant differences at similar p value with maize. Following these results, the null hypothesis was rejected. The decline in the amount of harvest during the season is comparable with that of Makueni County whose households indicated a decline in the amount of harvest during the season 82 as compared with the previous season (Scribd, 2011). The decline predisposed the households into vulnerability to food insecurity. 4.7.3 Relationship between the Status of HFCS and Household Size HO3. There is no significant relationship between the status of household food consumption score and household size at a significant level of 0.05. The null hypothesis stating that there was no significant relationship between the status of HFCS and household size at a significant level of 0.05 was tested by carrying out Pearson correlation test. Table 4.19: Relationships between the Statuses of HFCS and Household Size HFCS/ Pearson Correlation (r) P Value Poor -0.123 0.239 Borderline 0.491 0.000 Acceptable -0.313 0.000 Household Size A 2 tailed Pearson correlation test on the relationships between the statuses of HFCS and household size revealed different coefficients. The relationship between poor HFCS and household size was not significant. The correlation between borderline HFCS and household size revealed a positive relationship of r=0.491 at a p=0.000. acceptable HFCS revealed a negative correlation of r=0.313 at p=0.000. While 83 The relationship between borderline and household size was positively significant implying that the more persons per household, the more vulnerable to food insecurity it was. An overall 2 tailed Pearson correlation was also carried out on HFCS and household size and it revealed a negative correlation of r=-0.476 at a p value of 0.000; meaning that the more persons a household had, the poorer the status of HFCS therefore the more food insecure it was. Thus the null hypothesis was rejected. These findings were in corroboration with Alem and Shumiye (2007) report which observed that the smaller a family size, the more acceptable its household food consumption. 4.7.4 Relationship between HFCS and Farmland Size HO4 There is no significant relationship between household food consumption score and farmland size at a significant level of 0.05. The null hypothesis stating that there was no significant relationship between HFCS and farmland size at a significant level of 0.05 was tested by conducting Pearson correlation test. The results are as shown (Table 4.20). Table 4.20: Relationships between HFCS and Farmland Size HFCS/Farmland Size Pearson Correlation (r) P Value Poor 0.163 0.118 Borderline 0.533 0.000 Acceptable -0.030 0.690 84 The relationship between borderline and farmland size was significant at a correlation of r=0.533 at a p value of 0.000, meaning that the larger the farmland size of a household, the better was their HFCS. There was no significant relationship between acceptable HFCS and farmland size. An overall 2 tailed Pearson correlation test was done on HFCS and farmland size, and the correlation obtained was r=0.299 at a p=0.000. This meant that the more the farmland size a household possessed, the more improved was its HFCS, and therefore the more food secure it was deemed to be. Following this result, the null hypothesis was rejected. 4.7.5 Association between HDDS and HFCS HO5. There is no significant association between household dietary diversity score and household food consumption score at a significant level of 0.05. The null hypothesis stating that there was no significant association between HDDS and HFCS at a significant level of 0.05 was tested by carrying out 2 tailed Chi square test as shown in (Table 4.15). The test showed a significant association between HDDS and HFCS of χ2=13.463, df=4 and p=0.009. In view of these findings, the null hypothesis was rejected. This meant that the higher the HDDS, the more acceptable the HFCS. It is ordinary to expect that households with acceptable HFCS would also have high and medium HDDS; which is supportable by IFPRI (2008) assertion that HFCS is a frequency-weighted HDDS. 85 4.7.6 Association between Sources of Maize and the Status of Household Food Insecurity HO6. There is no significant association between sources of maize and the status of Household food insecurity at a significant level of 0.05. A 2 tailed Chi square test was carried out to test the null hypothesis stating that there was no significant association between sources of maize and the status of household food insecurity at a significant level of 0.05. The results are as shown in (Table 4.16). A 2 tailed Chi square test showed that there was significant relationship between sources of maize and the status of household food insecurity of χ2=160.895, df= 6 and p=0.000. Thus the null hypothesis was rejected. 86 CHAPTER FIVE: SUMMARY, CONCLUSION AND RECOMMENDATIONS 5.0 Introduction This chapter highlights the summary, conclusion, recommendations of the study and suggestions for further research. 5.1 Summary i. The major source of livelihood for the small scale farmers’ househods in Tharaka Division was agriculture. ii. Food crops such as maize, millet, green grams were the major crops cultivated, and potential crop loss was mitigated by planting drought resistant crop varieties. Many households had enough food provisioning during the months of June to August while in October to January food provisioning was inadequate. iii. The most highly consumed meal in the previous 24 hours was breakfast followed by supper. Lunch was the most skipped meal. Generally, the HDDS in the previous 24 hours was low. Maize was the main food item consumed among households during the past one week and the major HFCS was acceptable. iv. The main source of household food was market and the households that were receiving food aid got maize as the major food commodity. v. The main household food security status was found to be poor according to HDDS, with slightly more than half of all households having acceptable household food security according to HFCS. The classification of household food 87 insecurity status by combining HDDS and HFCS showed that majority of households were food insecure. vi. The main coping strategies employed by the households in the case of food shortages were reduction in size of meals, reduction in the number of meals per day and consumption of immature crop. vii. There were significant relationships between farm size and farmland size, status of household food consumption score and household size, household food consumption score and farmland size at a significant level of 0.05. There was also significant difference between food expected and food harvested at a significant level of 0.05. Further, the hypotheses testing results showed significant associations between household dietary diversity score and household food consumption score, sources of maize and the status of household food insecurity at a significant level of 0.05. 5.2 Conclusion i. The status of food production was lower than expected and was exacerbated by frequent droughts. This had exposed households to food insecurity. ii. Food consumption patterns were mainly characterized by low HDDS but majority of households had acceptable HFCS. iii. The small scale farmers depended mainly on markets as their main source of household food as opposed to usual expectation that own crop production would 88 be the lead source. This means own crop production played a supplementary role in food access. iv. Majority of households were in the status food insecurity. v. Among the main coping strategies identified were reduction in size of meals and reduction in the number of meals per day. These coping strategies were not detrimental to the small scale farmers’ livelihoods; therefore the households were resilient to food insecurity. vi. All the hypotheses were rejected because they all showed significant relationships, differences and associations among the tested variables. 5.3 Recommendations Several recommendations of dealing with household food insecurity in Tharaka Central Division are proposed herein. They focus on means of improving household food production, means of improving household food consumption patterns, means of improving food access through food purchases, means of reducing the status of household food insecurity and means of improving the use of less drastic coping strategies in cases of household food insecurity. 5.3.1 i. Recommendations for Policy Making Household food production among small scale farmers in Tharaka Central Division were influenced by several factors. Small farmland sizes in the study area were influenced by the high cost of production such as the cost of weed control. It is therefore important for agricultural extension officers in the area to 89 create awareness and empower the small scale farmers on the need to use herbicides that kill weeds in large scale rather than over relying on manual methods of weed control. This will enable cultivation of vast farmlands for improved crop production. ii. Tharaka Central Division is frequently afflicted by droughts causing poor crop production. It is for this reason that the GOK through the Ministry of Water and Irrigation should create irrigation policies and implement these policies in all ASAL regions in Kenya to ensure sustainable crop production. iii. Household food consumption patterns were poor because of several factors such as lack of a variety of food items for consumption. Good market infrastructure for cash crops that thrive in the area should be made available by the government and the private sector through constructing cotton ginneries and ensuring good market capital for cotton, sunflower and castor. The GOK should also supply the farmers with cash crop seeds to enable them grow the crops. In this way, the households would be economically empowered to purchase variety of food items for improved HDDS and HFCS. 90 5.3.2 Recommendations for Practice i. The households in collaboration with the government and the local the NGOs should plan, source and implement irrigation projects so as to improve household crop production when rains are erratic. This would mitigate crop loss and minimize the use of coping strategies. ii. The main source of food among the small scale farmers was market while own food production played a secondary role. The small scale farmers should invest in education to improve their literacy levels and also access formal employment for improved capacity and better food purchasing powers from the markets. This is because majority of them had no education or were of primary level and only a few whose livelihood source was employment. iii. Household food insecurity prevalence among the small scale farmers was found to be high. To alleviate the situation, development of local capacity through community-based participatory actions is suggested as a means of improving program outcomes as well as promoting human rights of household food security. Apart from providing food relief responses, the GOK together with food relief stakeholders should lay out sustainable food policies, implement them to the letter and conduct capacity building with the small scale farmers through arranging and conducting training seminars and sessions to equip the community with appropriate household food security information. 91 5.4 Suggestions for Further Research The following further researches are recommended, based on the findings of the study on household food insecurity and coping strategies among small scale farmers in Tharaka Central Division. i. A similar study could be done covering a wider geographical region in Arid and Semi-Arid Lands. ii. 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An Introduction to Computing and Interpreting Cronbach Coefficient Alpha in SAS. Tempe: Education Data Communication, Assessment and Evaluation. Zenda, M. (2002). A Systems Approach to Marketing in less Developed Agriculture with Reference to Bululwane Irrigation Scheme. Unpublished MSc Thesis. University of Fort Hare. 98 RESEARCH INSTRUMENTS APPENDIX 1 Respondents’ Informed Consent My name is Beatrice Kabui Icheria. I am a master’s student at Kenyatta University carrying an academic research entitled Household Food Insecurity and Coping Strategies among Small Scale Farmers in Tharaka Central Division of Tharaka District, Kenya. The purpose of this study is academic; and I wish to interview you on the same. I am kindly requesting for your cooperation during the interview session. I further wish to clarify that the information you give for this interview will be confidential and anonymous. 99 APPENDIX 2 Questionnaire for the Household Head and Household Principal Care Giver for the Study of Household Food Insecurity and Coping Strategies among Small Scale Farmers in Tharaka Central Division of Tharaka South District, Kenya. Division _____________ Sub-location ____________ Household Code _______ (A). HOUSEHOLD DATA 1. Household Size: How many people live in this household and share meals? Age group Name and personal ID Relationship to Household Age Head Years Months Under 1. 5 years 2. 3. 4. 5 to 5. 18 6. 7. 8. 9. Over 18 10. 11. 12. 13. 14. Sex Main occupation Education level 100 2. Wealth of household: Does your household own the following items? Code Item 1 Type of house (modern, semi-modern, traditional huts, shanty) 2 Type of house wall (mud, stone, concrete, brick, timber, other) 3 House roof (grass thatch, iron sheets, asbestos, tile, other) 4 House floor (earth, cement, cow dung and mud, other) 5 Mobile transport assets (bicycle, motorcycle, vehicle, ox/donkey-cart, other) 6 House lighting (kerosene, solar power, electricity, light from firewood, others) 7 Cooking energy (firewood, charcoal, kerosene, cooking gas, electricity, other) 8 Bedding (timber bed, raft bed, mattress, palm mat, reed mat, skin mat) 9 Livestock (cows, goats, sheep, poultry) Response Source of Sources of income in the last 3 months Tick income (3 most important sources) a. Sale of livestock b. Sale of livestock product c. Sale of fish d. Sale of ration food e. Sale of own crop f. Wage/casual labour g. Salary 101 h. Sale of charcoal/firewood i. Weaving j. Others (specify) Source of Please indicate the main source of livelihood livelihood for the household a. Pastoralism b. Agriculture c. Agro-pastoralism d. Formal employment e. Casual labour f. Fishing g. Trading h. Others (specify) Tick 102 (B). HOUSEHOLD FOOD PRODUCTION: 3. Size of farm in acres ______________ 4. Size of the farmland (area under cultivation) in acres _______________ 5. Types of crops cultivated in March /May Season: March/May Season Crops Food Crops Expected Harvested Sold Maize Millet Sorghum Finger millet Others (specify) Green grams Pigeon Peas Cowpeas Others (specify) Cash Crops Amount (kg) Cotton Sunflower Castor Consumed Stored Duration of post harvest storage 103 Others (specify) i. Did you harvest what you expected? _______________________________ ii. If not, why? __________________________________________________ 6. Types of crops cultivated in October/December Season: October/December Season Expected Harvested Sold Consumed Stored Duration of post harvest storage Crops Food Crops Maize Millet Sorghum Finger millet Others (specify) Green grams Pigeon Peas Cowpeas Others (specify) Cash Crops Amount (kg) Cotton Sunflower 104 Castor Others (specify) (i) Did you harvest what you expected? ________________________________ (ii) If not, why? ___________________________________________________ (iii) Besides farm produce, how else do you provide food for your family? _____________________________________________________________________ 7. How do you mitigate crop losses? Code Mitigation Strategy previous month) (in the Relative Frequency Never Hardly Sometimes Often Always 1 Planting of cassava 2 Katumani variety of millet 3 Katumani variety of maize 4 Katumani variety of pigeon peas 5 Kaguru variety of sorghum 6 Crop on the farm spray 7 Dusting foodstuff with pesticides 8 Goat, cattle and sheep rearing 9 Poultry keeping 10 Employment activities in non-farm 105 11 Others (specify) 8. Crop pest and disease i. Which pests invade crops in your farm? _________________________________ ii. How do they affect the crop? _______________________________________ _________________________________________________________________ iii. Which pests invade grains in your store? ________________________________ iv. How do they affect the grains? _______________________________________ v. Mention signs of/or crop diseases in your farm? __________________________ vi. In what way do they affect crop? ______________________________________ _________________________________________________________________ 9. Droughts and Floods: i. Have you experienced drought(s) in the recent two crop production seasons? ii. If yes, in what way did the drought(s) affect crop production? ________________________________________________________________ iii. Mention any flood episode that you have experienced in the recent two crop production seasons. ________________________________________________ 10. Household food provisioning: (i) Which months do your household have enough food? ______________________ (ii) Which months when your household do not have enough food? ______________ 106 (C). HOUSEHOLD FOOD CONSUMPTION (to be answered by the household principal care giver) 11. 24 Hour Dietary Recall for Dietary Diversity (i) Beginning from morning to evening yesterday, please mention all foods and drinks your household members consumed. (ii) What amounts of foods and drinks did your household members consume? Meal Age Household Dish group members’ codes Under 1 5 yrs 2 B 3 r 4 e a k f 5 5-18 yrs 6 7 8 a 9 s t Over 10 18 yrs 11 12 13 14 S Under 1 Ingredients Adequate Yes (1) No (2) 107 n 5 yrs 2 a 3 c 4 k 5-18 years 5 6 7 8 9 Over 18 10 11 12 13 14 u Under 1 5 yrs 2 n 3 c 4 L h 5-18 yrs 5 6 7 8 9 Over 18 10 11 12 13 108 14 n Under 1 5 yrs 2 a 3 c 4 S k 5-18 yrs 5 6 7 8 9 Over 18 10 11 12 13 14 u Under 1 5 yrs 2 p 3 p 4 S e r 5-18 yrs 5 6 7 8 9 Over 10 18 yrs 11 109 12 13 14 n Under 1 5 yrs 2 a 3 c 4 S k 5-18 yrs 5 6 7 8 9 Over 10 18 yrs 11 12 13 14 12. 7 Day Food Frequency and Main Food Sources (i) How many times does your household consume the following foods? (i) What are the sources of these foods, and does the household get enough of it? 110 Food type 1 Maize 2 Sorghum 3 Wheat 4 Rice 5 Finger millet 6 Arrow root 7 Irish potato 8 Cassava 9 Sweet potato 10 Honey/sugar 11.Fats/oils 12 Other carbohydrate (specify) 13 Milk 14 Red meat 15 Poultry meat 16 Fish Frequency of consumption per week Main Source of food None Once (1 – 7) Twice 3 times 4 5 and times more times Enough 1= yes 2=no 111 17 Eggs 18 Pulses (beans, pigeon peas, green grams, cow peas) 19 Nuts 20 Other proteins (specify) 21 Kales (sukuma wiki) 22 Spinach 23 Cabbage 24 Cow peas leaves 25 Carrot 26 Other vegetables (specify) 27 Mango 28 Paw paw 29 Banana 30 Oranges 31 Guava 32 Other fruit (specify) 112 Codes for main source of food: 1=Market 2=Own production 3=Gifts from relatives, neighbours and friends 4=Food-for-work 5=Free relief food 6=Wild food 7=Other (specify) 13. Food Aid Support: i. Have you received food aid in the last three months? (please circle) 1 = yes 2 = no ii. If yes, when? 1 = less than 1 month 2 = 1 and 2 months 3= over 2 months iii. Food commodities received in the last distribution, quantity received, how it was utilized and duration each food commodity lasted. Food Aid Commodity Code 1 2 3 4 5 6 Commodity Quantity Resold Bartered Shared in the for other with kin (Kgs) market item Saved for seed Consumed by household members Duration (days) each food commodity lasted 113 (D) COPING STRATEGIES: 14. Has your household done any of the following in the previous 7 days? Tick appropriately Code Coping Strategy previous 7 days) (in the 1 Reduction in the number of meals per day 2 Skip food consumption for an entire day 3 Reduction in size of meals 4 Restrict consumption of adults to allow more for children 5 Feed working members at the expense of non-working 6 Swapped consumption to less preferred or cheaper foods 7 Borrow food from a friend or relative 8 Purchase food on credit 9 Consume normal wild food 10 Consume immature crop 11 Consume dead animals (cows, goats and others) 12 Consume taboo foods (acacia pod, bitter fruits) 13 Food consumption of seed stock 14 Send household members to eat elsewhere (women groups’ tea parties, schools, churches) Relative Frequency Never Hardly Sometimes Often Always 114 15 Withdraw school children 16 Begging or engaging degrading jobs 17 Individual migration out of the area 18 Household migration out of the area 19 Sale of farm implements 20 Sale of milking livestock 21 Sale of household assets 22 Disintegration of families 23 Abandonment of children or elderly 24 Sale of firewood 25 Others (specify) charcoal from in and/or 115 APPENDIX 3 Observation Checklist for the Study of Household Food Insecurity and Coping Strategies among Small Scale Farmers in Tharaka Central Division of Tharaka South District, Kenya. Division _____________ Sub-location ____________ Household Code __________ 1. Size of farmland ______________ 2. Type of food cultivated in the season: i. Millet____ Sorghum______ Maize______ Any other Cereal_______ ii. Green grams_____ Pigeon Peas____ Cowpeas____ Beans___ Other ____ iii. Cash Crops _____________________________________________ 3. Type of house ________________________________________________ 4. Household assets _____________________________________________ 5. Types of food available in household _______________________________________ ________________________________________________________________________ ________________________________________________________________________ 6. Foodstuff sold at the nearest market _______________________________________ ________________________________________________________________________ ________________________________________________________________________ 7. Prices of the foodstuff___________________________________________________ ________________________________________________________________________ 7. Nearest water source ____________________________________________________ 8. Presence of water in the household ________________________________________ 116 APPENDIX 4 Key Informant Interview Guide for the District Extension Officer and ALRMP Manager for the Study of Household Food Insecurity and Coping Strategies among Small Scale farmers in Tharaka Central Division of Tharaka South District, Kenya. 1. What organizations in collaboration with your department are involved in helping small scale farmers in Tharaka Central Division achieve food access for their households? 2. What help did they render the community? 3. Has the help provided had positive impacts towards achieving household food security? 4. What challenges have you experienced during the implementation of the food assistance plans? 5. What would you recommend as a sustainable solution to household food insecurity among the small scale farmers in Tharaka Central Division? 6. Please mention coping strategies against hunger among household of the division. 7. If you can, please tell me the range and average farmland size in Tharaka South District and/ or Tharaka Central Division. 8. What types of drought resistant crops are cultivated in Tharaka Central Division?