ZhengKuang_BernardoAdolfoBastien Olvera_poster
Transcription
ZhengKuang_BernardoAdolfoBastien Olvera_poster
How are natural factors concerned in crop lands expansion: An atypical suitability analysis for corn & soybean land in Iowa Bernardo Adolfo Bastien Olvera,Zheng Kuang: final project_C188 Data source: US geological survey Question: How are natural factors Tools& Methods: concerned in the expansion of corn & soybean land? General: Background • corn & soybean are two most important cash cops in the US, taking up over 50% of all agricultural yields in the whole country; • Iowa, ranking first in the nation in corn and soybean production, is potentially an good sample for corn & soybean cultivation study. Client • researchers interested in corn & soybean land expansion pattern and it underlying logic; • Governmental land use planners. Study area: Materials: • Grid study area Land use rasters (2000, 2006, 2012) Explanations & values: Precipitation Elevation Surface analysis Slope Solar radiation Table of polygons with different combinations of natural factors Arability based on land usage pattern Union Assumptions • Farmers know their Temperature business: cultivated lands are suitable & Natural Factors Arability function land usage change is Material data rational; Process • Better lands prioritized: the Categories Tool perennial is more suitable than the rotary. 1. Arability level: Corn & soybean land 2000 land 2000 Notes Fishnet Raster • Slope and solar radiation layer + calculato Spatial r is created by elevation data join Corn & soybean land Continuous plow using TIN model; 2006 land 2000 land • Arability level is measured by the percentage of perennial Corn & soybean land 2012 land 2000 plowlands. Prediction 2. Geographically weighted regression: Dependent variables: arability level Arability level Geographically weighted regression Explanatory variables: natural factors Results: 2. Geographically weighted regression: 1.Arability level: Corn & soybean lands Precipitation Elevation Temperature • This map shows the distribution of arability level, namely the percentage of perennial lands; • no explicit pattern can be observed according to this map. Conclusion Dominant human factors • because Iowa has been long exploited for cash crops, the sophisticated modern agricultural technologies have supplanted the determinacy of natural factors; • the natural situation in Iowa in generally advantageous so that natural factors are not the major limitation. A reconsideration of suitability analysis • a suitability analysis should intuitively incorporate natural factors including but not limited to temperature, precipitation, slope etc., however this study shows this “intuition” is not absolute: for modern agriculture, human factors may well be more significant. Limitations: Insufficient computing power • on the extant accessible equipment, we had to reduce the area of study and simplify the arability function, which might have raveled the pattern. Data • crops may be susceptible to more subtle changes which are beyond the precision of the data. Expectation: More powerful computing power • so that the study area can be scaled up or may vary to capture a pattern, since the existence of pattern often depends scale. No explicit pattern observed: • regression coefficient is 0.38; • there is no explicit relation observed between natural factors and corn & soybean cultivations (surprisingly!); • reduced variables:exclude slope and solar radiation in natural factors set, but the relationship remains un clear (with a regression of coefficient of 0.637). More sophisticated regression tool • Since the potential pattern may not follow a linear function, using more sophisticated regression tool may be necessary for further research. Modeling and prediction • As it shows in the chart flow (gray arrows), if a pattern relating natural factors and crop lands expansion was established, this model can be used for prediction, whereas a more explanatory model should incorporate human factors as well.