Power Output vs. Turbine Blade Pitch Angle
Transcription
Power Output vs. Turbine Blade Pitch Angle
Power Output vs. Turbine Blade Pitch Angle Nick Fillion, Brian MacDonald, Alex Magill April 27, 2011 Group 3 Abstract We investigated the relationship between the power output of a wind turbine relative to the pitch of its blades and the speed at which the turbine was rotating. By modifying the tail rotor of a remote control helicopter, we were able to construct a horizontal axis wind turbine (HAWT) that could be dynamically controlled while in the wind tunnel. The results of our testing in the wind tunnel show that the range of optimal pitch angles increases as wind speed increases. The knowledge gained from this experiment is easily applicable to future turbine designs. Given the nature of our experimental rig, it would be very easy for future groups to expand upon our project and collect a more comprehensive set of data. 1 Introduction Wind is arguably the most easily accessible source of power on earth. Given the fact that there is a global trend towards using alternative energy sources, it seems likely that wind power will be a prominent alternative energy source. However, there are some issues with harnessing wind power. There is an ideal range of wind speeds for producing power, and the wind speed often fluctuates in and out of this range, making it hard to have a consistent power output from a turbine. If a turbine could adjust the pitch of its blades based on the speed of the incoming wind, it is possible for the turbine to produce close to ideal amounts of power across a large range of wind speeds. It is for this reason that we sought to investigate the relationship between wind speed, rotation rate of the turbine, and the power output of the turbine. Our project is an expansion of the 2007 experiment by M. Burgstrom et al.[1] In the 2007 experiments the group attempted to find an optimized angle of attack for a turbine regardless of speed using a fixed angle turbine. Our group will be following the ‘07 suggestion of testing attack angles over a wide range of angles. The ’07 report is useful as it gives some guidelines that our group can follow including testing at less than 40% of the maximum power in the wind tunnel. The ’07 group began to see issues with their structures at this velocity and reported that oscillations started to affect the “rotor shaft as well as the L-bracket of the mount”. Furthermore the ’07 group had a helpful equation for calculating the available power in the wind, which we will be employing: ! Pmax=!ρairAdiskVair3 (1) Testing Apparatus Our testing apparatus was a combination of several electronic and physical systems. A short description of each system used is below. Light Sensing Diode: We attached a clear tube to the mounting post for our turbine with a light sensing diode (LSD) inside of the tube. Additionally, a laser was set up outside of the tunnel and aimed directly at the diode. The LSD emits a voltage when the laser excites it. Whenever a turbine blade interrupts the laser, the LSD does not produce a voltage. By recording the voltage 2 output by the LSD, we were able to determine the rate at which the turbine was rotating, which was very helpful when determining the efficiency of the turbine. Turbine: Our turbine was constructed from the tail rotor assembly of the Thunder Tiger Raptor 0.60 Helicopter. This rotor system was then mounted on a PVC pipe, which was subsequently mounted on a wooden block that was modified to be able to attach to the load cell. We linked the turbine to a rear-mounted motor with a piece of rubber fuel tubing. This tubing acted as our driveshaft and gave us some leeway when trying to align the motor with the driveshaft of the turbine. We also attached a servo (essentially a linear actuator) to the mounting block and linked the servo to the pitch control mechanism on the rotor. From there, the servo was linked to the pitch control mechanism on the servo. This allowed us to change the pitch of the blades while in the wind tunnel. Figures 1 and 2 in Appendix B show the turbine setup. R/C System: We used the R/C system from an old remote control plane that belongs to the primary author. This system included a servo, a battery, transmitter, and receiver. One of the joysticks on the transmitter would “lock” so we could leave it at a specific setting for a long period of time. This made it very easy to test a wide range of blade pitches in a very time efficient manner, as we did not have to remove the turbine from the wind tunnel to change the orientation of the blades. Figure 4 in Appendix B demonstrates the characteristics of the R/C transmitter Inclinometer: We created an inclinometer to help determine the pitch of the blades at each setting. We attached a plumb line to a protractor and laid that perpendicular to the tip of one of our blades. We then measured the angle of the blade at each setting on the control (10 in all, plus the “zero” setting). From this, we learned that each increment on the transmitter equates to a 2.5o change in pitch. This gives our blades a range of 25o, with 0o equating to the blades being perpendicular to the airflow. Testing Procedure Before we could begin testing, we needed to calibrate the wind tunnel and our load cell to ensure accurate data collection and analysis. Wind Tunnel Calibration: The wind tunnel is run on %power, not wind speed. Before we could run any tests involving our turbine, we needed to find a relationship between the power at which the wind tunnel was running and the wind speed inside the tunnel. To calibrate the wind tunnel, 3 we put a pitot tube into the center of the wind tunnel and had it attached to a u-tube manometer. We then ran the wind tunnel at 5% power intervals from 15% power up to 100% power. We then calculated the velocity in the wind tunnel by using the equation V= 2 !"#$%& !"#$ 𝑔∆ℎ (2) From this, we were able to find a linear relation between the wind speed and power setting of the wind tunnel. This relationship is shown as 𝑦 = 0.6079𝑥 − 2.5341. (3) Where x is the power setting of the wind tunnel and y is the wind speed in m/s. From this, we were capable of calculating the wind speed inside the tunnel at any power setting. Load Cell Calibration: In order to determine the drag forces acting on our turbine, we attached it to a load cell while it was in the wind tunnel. We attached a bar to the load cell and systematically hung weights from the load cell in 0.5 kg increments, 15cm from the load cell. The load cell was attached to an NI-6009 DAQ. The load cell produces a voltage when a force is applied, and the DAQ reads this voltage and reports it to LabView, which records the voltage. With the data recorded by LabView, we were able to find a relationship between the voltage emitted by the load cell and the force applied to the load cell. This relationship is defined by the equation 𝑦 = −27060.67𝑥 − 2.62 (4) Where x is the voltage emitted by the load cell y is the force in N. By using this relationship, we were able to calculate the drag forces on the turbine. We tested our turbine from 15% power to 40% power at increments of 5%. At anything above the 40% power setting, we became concerned that the turbine would suffer a catastrophic failure. As mentioned earlier, the rotor assembly was being used in a different capacity than originally designed. We had the motor differentially wired to a nominal1 ohm resistor and a NI-6009 DAQ. With this setup, we were able to record the voltage and current passing across the resistor. We also had the load cell DAQ running in the same VI, which allowed us to see the drag forces and turbine voltages side by side. In the VI, we converted the voltage output to power via 𝑝 = plotted it. 4 !! ! and In our first run of tests, we ran our VI for 10 seconds at each pitch setting. After several cycles through, we realized that our data had far too much electric “noise” to be useful. This was attributed to the DAQ being located so closely to the motor of the wind tunnel. We combatted this by braiding the wires leading from the motor to the DAQ and setting up a butterworth filter on our voltage readings. This gave us much cleaner data, but it took roughly six seconds for the filter to initialize. Given that we were out of time, we realized that we would have to come back and test again. In our next round of tests, we realized that our VI was only reading half of the voltage being emitted by the motor (as measured via a multimeter set up before the DAQ). Given our time constraints, we decided to run the VI only for drag forces and rpms while recording the voltages by hand. We would wait for the reading on the multimeter to center around a value before recording the data. We believe that this method was accurate to within ±0.05V. Our VI for the laser break would take 500 samples at a rate of 5000Hz. All of this data was written to .lvm files and then opened in Microsoft Excel for further analysis. Data Analysis Once we had our data in Excel, we could start to look for trends within the data. The first step that we took was to use equation (3) to find the free stream velocity in the wind tunnel. From there, we used equation (1) and the physical properties of the turbine to determine the amount of power available in the wind tunnel. This information allowed us to calculate the Coefficient of Performance, CP, which is the ratio of power generated by the turbine to available power in the wind. We then took our data from the LSD system and calculated the tip speed of the blades. 𝑇! = !"#×!! !" ×𝐿 (5) Knowing the tip speed of the blades allowed us to find the tip speed ratio, 𝜆, which is the ratio of Ts to the free stream velocity. [2] 𝜆= 5 !! ! (6) We then plotted the 𝜆 vs. Pitch data that we had as well as Power vs. Pitch to try and find correlations between these values. Meaning of Data While researching the idea of unity and tip speed ratio, we noticed that the 2008 report “Optimization of Wind Turbine Blade Shapes” mentioned that there was an optimal 𝜆 for a blade design, where the Cp, and therefore power output of the turbine was highest [2], but not delve any further into the subject. After performing further research, we found that there was an equation to find this optimal 𝜆 [4] 𝜆!"# = !! ! (7) n is the number of blades on the turbine. By substituting 𝑛 = 2 into (7), we get a 𝜆!"# of 6.28. If a blade is operating at 𝜆 = 1, it is said to have achieved unity. The blade’s tips are traveling at the same speed as the wind. If the turbine is operating at 𝜆 > 1, its blades are generating lift, causing them to rotate even faster. [2] Results of Testing At 15% power (7.23 m/s), we achieved a maximum power of 0.802 W. This power output occurred when the blades had a pitch of 7.5o (In our testing, 0o pitch equated to the blades being completely perpendicular to the wind. Under these settings, 𝜆 = 5.76, which is very close to the ideal value calculated. The power output was predictably low, and as the pitch increased past 7.5o, the power output decreased. We were expecting this behavior from the turbine and were happy to see that it followed our expectations. At 20% power (9.92 m/s), the maximum power produced was 1.538 W, nearly twice the power produced at 15%. This power output also came at a 7.5o pitch and 𝜆 = 5.74, which is essentially identical to the previous 𝜆 value. However, as the pitch of the blades increased, the power output did not drop off as sharply as it had when the tunnel was operating at 15% power. The increase in power produced was proportional to the increase in wind speed. At 25% power (12.34 m/s), the turbine had a peak output of 2.56 W at a pitch of 7.50. This significant jump in power output could not be solely explained by the increase in wind velocity. 6 The turbine was operating at 𝜆 = 5.97, which is even closer to the optimal value of 6.28. As we increased the pitch of the blades, the power output stayed relatively level for two more settings and tapered off very slowly. In fact, the 𝜆 values rose, reaching a peak of 6.07 before falling in conjunction with the power output. Unfortunately, we were not able to record the turbine’s rate of rotation at higher power settings in the wind tunnel. This was due to heavy vibrations in our system, making it impossible for us to get consistent readings from our diode because it was moving in and out of the laser’s path so frequently. However, the power vs. pitch curves for tunnel settings of 30%, 35%, and 40% appear to follow the trend that we noticed in our first three tests. All of the corresponding graphs are located in Appendix A. Discussion While it appears that we have found a correlation between pitch, 𝜆, and wind speed, our testing has also left us with many questions. From research in literature and past projects, we know that wind turbines can operate at a maximum efficiency of 0.59 according to Bentz’ limit. Additionally, many modern, commercial, HAWT systems run at efficiencies in the range of 0.40.5. Our turbine was running in the range of .003-.016, which is significantly lower than the operating ranges of commercial wind turbines. We singled out two likely causes: blade design and internal inefficiencies. The blades on commercial turbines have a very noticeable “sweep” to them. While our blades were clearly airfoils capable of producing lift, they were “flat,” i.e. they did not have any sweep to them. For the purpose of converting energy from free wind into mechanical power, a swept blade is much more efficient as it is capable of capturing more of the wind flow and converting it to torque acting upon the more. As for internal inefficiencies, our rig was not designed to be used as a power-generating turbine. It is the tail-rotor of a helicopter: the blades are generally rotating parallel to the wind rather than perpendicular to it. There was likely significant power loss within the bearings of the system and the motor itself. Fortunately, these inefficiencies did not prevent us from gathering meaningful data. Conclusion From our results, it is clear that as wind speed increases, a turbine will operate near peak efficiency over a higher range of pitch settings. We had set out to try and find a relationship 7 between power output and blade angle. This data quantitatively shows that different pitch settings produce different power outputs, and that this relationship changes along with wind speed. Future groups could easily expand upon this project. Suggestions include experimenting with different blade geometries (in a slightly different manner than the ’08 group) and devising a system that will record turbine rotation data at higher wind speeds than we did. From our knowledge, no group has had great success in getting a model turbine to run safely at more than 40% or 45% in the wind tunnel. Groups could also try and design a system with fewer internal inefficiencies, which would lead to a higher power output from their turbine. References [1] Burgstrom, M., Fishback, J., Ivancic, S. “Wind Turbines: Power Control Through Pitch Regulation” (2007) [2] Ahl, B., Chebot, D., Sikes, N. “Optimization of Wind Turbine Blade Shapes” (2008) [3] Huebsch, W., Munson, B., Okiishi, T., Young, D. 2007 A Brief Introduction to Fluid Mechanics chapter 7 Wiley: Hoboken, NJ [4] Ragheb, M. “Optimal Rotor Tip Speed Ratio” (2011) 8 Appendix A: 𝜆 vs. Pitch and Power vs. Pitch Graphs Tip Speed Ra*o Tip Speed Ra*o vs. Pitch 8 6 15% Power 20% Power 4 2 0 0 5 10 15 20 25 30 Angler of A2ack (ͦDegres) Figure 1: Graph of Tip Speed Ratio vs. Pitch 15% Power (≈7.232m/s) Power (W) 1 0.5 0 0 5 10 15 20 25 30 25 30 Blade Angle (Degrees) Figure 2: Graph of Power vs. pitch at 15% 20% Power (≈9.922m/s) Power (W) 1.5 1 0.5 0 0 5 10 15 20 Blade Angle (Degrees) Figure 3: Graph of Power vs. pitch at 20% 9 25% Power (≈12.341m/s) 3 Power (W) 2.5 2 1.5 1 0.5 0 0 5 10 15 20 25 30 25 30 Blade Angle (Degrees) Figure 4: Graph of Power vs. pitch at 25% 30% Power (≈15.392m/s) Power (W) 5 4 3 2 1 0 0 5 10 15 20 Blade Angle (Degrees) Figure 5: Graph of Power vs. pitch at 30% 10 35% Power (≈18.480m/s) Power (W) 8 6 4 2 0 0 5 10 15 20 25 30 25 30 Blade Angle (Degrees) Figure 6: Graph of Power vs. pitch at 35% 40% Power (≈21.518m/s) Power (W) 10 8 6 4 2 0 0 5 10 15 20 Blade Angle (Degrees) Figure 7: Graph of Power vs. pitch at 40% 11 Appendix B: Images and Models of Turbine System and Components Figure 1: The Turbine During a Testing Run 12 Figure 2: Test rig assembly 13 Figure 3: Rotor assembly 14 Figure 4: Remote Control 15 Figure 5: Rotor assembly and PVC mount 16