− | High wind control losses are caused by the turbine cut-in and cut-out strategy. The turbines will cut-off when cut-out wind speed is reached and will not re-cut-in until wind sped is below a defined wind speed level, lower than the cut-out level. A reduction factor of 0.1% to the gross energy output was applied to take these effects into account. 7.5.2 Wind Speed related Uncertainties Uncertainties cover the inaccuracy of the data processing from the measurement, the internal data processing and the long-term prediction. A percentage value describes the Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 103 LI / GE6 25 0477 final report ashegoda standard deviation of scattering results around the expected true value. For the energy calculation, these wind speed-related uncertainty values have to be transformed to the energy production level. Additional uncertainties have to be determined for modelling and mathematical algorithms. 7.5.2.1 Uncertainties of the WAsP-Model The WAsP (Wind Atlas Analysis and Application Program) software is a proven tool used in the wind industry for more than 15 years. As every model it has limitations and uncertainties mainly due to the simplifications behind it which had been done to handle the calculations on desktop computers in an acceptable time frame. Mesoscalic meteorological models require powerful computers and a calculation time of several days. However, WAsP has been used for a considerable time worldwide and the uncertainties have been evaluated over the years. In case of Ashegoda, the existence of modestly shaped hills and ridges lead to a suffiecient quality of the calculation. Transfer Wind to Energy The discrete wind flow from discrete wind directions is simplified to 10-minute average values for 12 direction sectors and statistically preprocessed before being applied to the power curve. The uncertainty of this step can be set to 1%. Site modelling Consists basically of two input parameters: the topographical model and the surface description (roughness description). The topographical data is gained from the digital 1:12.500 map delivered by EEPCO to LI for the wind park area itself and from the SRTM (Shuttle Radar Topographical Mission) Satellite height data base for the vicinity of the site. Quality and resolution of both data are good, the uncertainty is low. As the surface structure of the earth in the area around Mekelle is not complex, it can be described with acceptable accuracy. The uncertainty of the Site Model is set accordingly to the below-average value of 2.5%. Flow modelling WasP has been developed for use in areas with only modestly shaped hills which is the case at Ashogoda site. The uncertainty of the flow modelling is set to the medium value of 3.0% . Wake modelling Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 104 LI / GE6 25 0477 final report ashegoda The uncertainty of the selected wake model (N.O.Jensen) is low and as the area of the wind farm itself is nearly plain (no additional uncertainties due to the influence of the terrain) it can be set to 0.5%. wind-related uncertainties for the WAsP-model Source Uncertainty Comments Transfer Wind to Energy 1.0% typical value Site Model 2.5% below average Flow Model 3.0% medium average value Wake Model 0.5% typical value Uncertainty WAsP 4.1% To calculate the total uncertainty all single uncertainties can be considered as stochastically independent and the commonly used way of estimating the joint uncertainty of independent (un-correlated) uncertainties is to calculate the RMS (root mean square) value. Total wind speed related uncertainty WAsP = 0.012 0.0252 0.032 0.0052 0.041 7.5.2.2 Uncertainties of the Wind Data The reliability of the WAsP calculation is highly dependent on the quality of the input parameters of which wind data is the most important one. The collection and processing of wind date is subject to several uncertainties. Anemometer calibration Anemometers should be calibrated in order to secure that the measured wind speed equals the actual wind speed. The anemometers of the Ethiopian wind measurement campaign have been calibrated according to MEASNET standards, the calibration protocols have been handed over to LI. The assignment of the individual calibration protocols to the individual anemometers of the measuring campaign is not possible but as nothing significantly conspicuous has been detected the uncertainty of the calibration process can be set to the average value of 1.5 %. Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 105 LI / GE6 25 0477 final report ashegoda Anemometer characteristics Describes the uncertainty of the quality the anemometer detects the wind flow and processes the values to digital data. Can be set to the lower value of 0.5% as calibrated first class anemometers have been used. Mounting error The anemometer has to be vertically mounted. The uncertainty describes the effect if this is not done properly. As can be seen in Figure 5-3, mast 13 Ashegoda II is not properly vertical aligned. For the other mast the mounting is more accurately. The average uncertainty for the mounting error is set to 1.0 %. Data recording Describes the uncertainties related to processing and storage of the data provided by the anemometer and the wind vane in the data logger. Set to 0.4 %. Terrain description Describes the uncertainty of the influence of the terrain to the measurement. Inclined wind flow and strong turbulence can not be measured accurately by a cup anemometer. At Ashegoda site, mast 4 Ashegoda I is located close to a steep descent in main wind direction (height difference 20 m), mast 13 Ashegoda II is situated on a small plateau on a modestly shaped ridge. The uncertainty for the terrain description is set to the average value of 1.5 %. Long term correlation The data used for the long term correlation as well as the MCP-Process includes uncertainties; as long-term reference data of 25 years is available the uncertainty for this category can be set to the moderate value of 3.0 %. This can be decreased when using measured long-term data near the site (NCEP data are recalculated data). To calculate the total uncertainty all single uncertainties can be considered as stochastically independent and the commonly used way of estimating the joint uncertainty of independent (un-correlated) uncertainties is to calculate the RMS value. The total uncertainty of 4.1 % refers to the wind speed at hub height for each single turbine. Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 106 LI / GE6 25 0477 final report ashegoda Uncertainties for Wind Database Source Uncertainty Comments Anemometer calibration 1.5% typical average value, Anemometer characteristics 0.5% typical lower value, Mounting error 1.0% increased value Data recording 0.4% typical value Terrain description 1.5% modestly shaped terrain Long term correlation 3.0% data base satisfactorily Uncertainty Wind 3.9% Total uncertainty Wind Data = 0.0152 0.052 0.012 0.0042 0.0152 0.032 0.039 7.5.2.3 Total Wind related Uncertainty The total wind related uncertainty is the RMS value of Total uncertainty WAsP and Total uncertainty Wind which is 5.6%. 7.5.2.4 Uncertainties of the Power Curve It has to be considered that the power curve used for the gross energy calculation is also subject to uncertainties which had been described in chapter 7.4.1. Due to the non linear relation of mean wind speed and energy these uncertainties can not be integrated into the uncertainties of wind conditions but have to be dealt with separately. In chapter 7.5.3 the calculation of the uncertainties of the energy yield for the different wind turbine types is performed; the uncertainty of the power curve is, assuming the power performance of the turbine as independent of the energy deviation due to wind uncertainties, connected to the uncertainties of the energy yield by the following equation: Total uncertainty = 2 2 uncertainty energy yield uncertainty power curve Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 107 LI / GE6 25 0477 final report ashegoda The turbine supplier usually gives a guarantee of 95 % of the energy values, which leads to an uncertainty to the predicted figures of 5 %; the actual guarantee value has to be negotiated with the manufacturer, the uncertainty can be adapted accordingly. This figure has been taken for every wind turbine type as it is sufficiently conservative for both calculated and measured power curves. 7.5.3 Uncertainties Energy Yield The interpretation of uncertainty in energy yield from the total uncertainty in wind speed is not straightforward. The theoretical cubic relation of wind speed and energy does not give a correct description of the phenomena. For the long term mean wind speed averaged over all turbine locations at hub height the average wind speed value is derived from the wind data processing. The uncertainty is equivalent to a reduction to the mean wind speed when considering the worst case. To translate this reduced mean wind speed into energy yield the parameters of a Weibull distribution are adapted and this new Weibull distribution is then applied to the individual turbine power curves. The results for the considered wind park layout can be found in the examinations in the following tables Deviation of Energy due to wind uncertainties , indicating an energy deviation due to the uncertainty in wind speed assessment. Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 108 LI / GE6 25 0477 final report ashegoda 7.5.3.1 Enercon E-48 The transformation of the wind speed related uncertainties into the energy related uncertainty by appropriately reducing the wind speed at hub height leads to the following results displayed in Table 7-4: Table 7-4: Deviation of Energy due to wind uncertainties Mean wind speed [m/s] Deviation wind speed A-factor [m/s] k-factor Energy Yield [MWh/y] Deviation Energy calculated WAsP 8.78 0.0% 9.75 3.62 252,175 0.0% reduced wind speed; uncertainties taken into account 8.29 5.6% 9.20 3.62 217,290 13.83% Assuming the power performance of the turbine as independent of the energy deviation due to wind uncertainties, the total uncertainty for energy yield can be determined from the uncertainties of wind conditions (13.83 %) and power curve (5%) to 14.71 % ( (13.83)2 52 ). The analysis of uncertainties is an important step for the risk assessment of the project. From the predicted annual energy and from the total uncertainty on the energy level of 16.5 % the probability of exceeding of certain energy yields can be calculated by statistical methods. Applying a Gauss process for the statistic analysis, the calculated gross annual energy can be understood as the mean annual energy yield having the highest rate of probability of all single results. The uncertainty shall be understood as standard deviation of the expected results around the most probable event. Figure 7-11 displays the probabilities that a certain amount of annual electricity production is exceeded. Gross annual energy describes the energy yield as calculated and net annual energy the energy yield considering the losses and uncertainties. Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 109 LI / GE6 25 0477 final report ashegoda 150,000 160,000 170,000 180,000 190,000 200,000 210,000 220,000 230,000 240,000 250,000 260,000 270,000 280,000 290,000 0.0% 10.0% 20.0% 30.0% 40.0% 50.0% 60.0% 70.0% 80.0% 90.0% 100.0% gross annual energy net annual energy Probability of Exceedance 50 % 75% 90% MWh/y 197,392 177,82 219,133 Figure 7-11: Probability of exceedance for Ashegoda wind park, Enercon E-48 layout Besides the uncertainties for wind conditions and power curve, the losses for electricity transmission (2.8 %) and reduced availability of the turbines (95 %) have also to be considered as constant factors, reducing the estimated energy yield. For the Enercon E-48 800kW wind turbine described within section 6.2 the energy calculations, the results for different levels of exceedance are displayed on the following table: Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 110 LI / GE6 25 0477 final report ashegoda Table 7-5: Energy Calculations for Ashegoda Wind Park, Enercon E-48 layout Enercon E-48 800 kW; 57 m hub height at Ashegoda Wind Park Turbine Type Enercon E-48 Enercon E-48 Enercon E-48 Enercon E-48 Turbine Capacity kW 800 800 800 800 Number of WTG 86 86 86 86 Installed park capacity MW 68.8 68.8 68.8 68.8 Hub Height m 57 57 57 57 Rotor Diameter m 48 48 48 48 Specific Rotor Area m2/kW 2.26 2.26 2.26 2.26 Probability % 50 75 90 95 Gross energy production MWh/y 252,175 227,155 204,637 191,160 Wind park array losses % 5.8 5.8 5.8 5.8 Turbine availability % 95.0 95.0 95.0 95.0 Electrical losses % 2.8 2.8 2.8 2.8 Miscellaneous losses % 0.10 0.10 0.10 0.10 Net Output MWh/y 219,133 197,392 177,824 166,113 Specific Energy Production kWh/m2 1,408 1,268 1,143 1,067 Full load hours h/a 3,185 2,869 2,585 2,414 Capacity Factor % 36.4 32.8 29.5 27.6 Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 111 LI / GE6 25 0477 final report ashegoda 7.5.3.2 Vestas V52 The transformation of the wind speed related uncertainties into the energy related uncertainty by appropriately reducing the wind speed at hub height leads to the following results displayed in Table 7-4: Table 7-6: Deviation of Energy due to wind uncertainties Mean wind speed [m/s] Deviation wind speed A-factor [m/s] k-factor Energy Yield [MWh/y] Deviation Energy calculated WAsP 8.84 0.0% 9.81 3.62 248,854 0.0% reduced wind speed; uncertainties taken into account 8.35 5.6% 9.26 3.62 218,642 12.14% Assuming the power performance of the turbine as independent of the energy deviation due to wind uncertainties, the total uncertainty for energy yield can be determined from the uncertainties of wind conditions (12.14 %) and power curve (5 %) to 13.13 % ( (12.14)2 52 ). The analysis of uncertainties is an important step for the risk assessment of the project. From the predicted annual energy and from the total uncertainty on the energy level of 15.10% the probability of exceeding of certain energy yields can be calculated by statistical methods. Applying a Gauss process for the statistic analysis, the calculated gross annual energy can be understood as the mean annual energy yield having the highest rate of probability of all single results. The uncertainty shall be understood as standard deviation of the expected results around the most probable event. Figure 7-12 displays the probabilities that a certain amount of annual electricity production is exceeded. Gross annual energy describes the energy yield as calculated and net annual energy the energy yield considering the losses and uncertainties. Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 112 LI / GE6 25 0477 final report ashegoda 150,000 160,000 170,000 180,000 190,000 200,000 210,000 220,000 230,000 240,000 250,000 260,000 270,000 280,000 0.0% 10.0% 20.0% 30.0% 40.0% 50.0% 60.0% 70.0% 80.0% 90.0% 100.0% gross annual energy net annual energy Probability of Exceedance 50 % 75% 90% MWh/y 198,771 181,38 218,084 Figure 7-12: Probability of exceedance for Ashegoda wind park, Vestas V52 layout Besides the uncertainties for wind conditions and power curve, the losses for electricity transmission (2.8 %) and reduced availability of the turbines (95 %) have also to be considered as constant factors, reducing the estimated energy yield. For the Vestas V52 850kW wind turbine described within section 6.2 the energy calculations, the results for different levels of exceedance are displayed on the following table: Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 113 LI / GE6 25 0477 final report ashegoda Table 7-7: Energy Calculations for Ashegoda Wind Park, Vestas V52 layout Vestas V52 850 kW; 60 m hub height at Ashegoda Wind Park Turbine Type Vestas V52 Vestas V52 Vestas V52 Vestas V52 Turbine Capacity kW 850 850 850 850 Number of WTG 86 86 86 86 Installed park capacity MW 73.1 73.1 73.1 73.1 Hub Height m 60 60 60 60 Rotor Diameter m 52 52 52 52 Specific Rotor Area m2/kW 2.50 2.50 2.50 2.50 Probability % 50 75 90 95 Gross energy production MWh/y 248,854 226,816 206,981 195,110 Wind park array losses % 5.0 5.0 5.0 5.0 Turbine availability % 95.0 95.0 95.0 95.0 Electrical losses % 2.8 2.8 2.8 2.8 Miscellaneous losses % 0.10 0.10 0.10 0.10 Net Output MWh/y 218,084 198,771 181,388 170,985 Specific Energy Production kWh/m2 1,194 1,088 993 936 Full load hours h/a 2,983 2,719 2,481 2,339 Capacity Factor % 34.1 31.0 28.3 26.7 Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 114 LI / GE6 25 0477 final report ashegoda 7.5.3.3 Gamesa G 58 The transformation of the wind speed related uncertainties into the energy related uncertainty by appropriately reducing the wind speed at hub height leads to the following results displayed in Table 7-4: Table 7-8: Deviation of Energy due to wind uncertainties Mean wind speed [m/s] Deviation wind speed A-factor [m/s] k-factor Energy Yield [MWh/y] Deviation Energy calculated WAsP 8.87 0.0% 9.84 3.62 299,064 0.0% reduced wind speed; uncertainties taken into account 8.37 5.6% 9.28 3.62 265,865 11.10% Assuming the power performance of the turbine as independent of the energy deviation due to wind uncertainties, the total uncertainty for energy yield can be determined from the uncertainties of wind conditions (11.10 %) and power curve (5 %) to 12.17 % ( (11.10)2 52 ). The analysis of uncertainties is an important step for the risk assessment of the project. From the predicted annual energy and from the total uncertainty on the energy level of 14.02% the probability of exceeding of certain energy yields can be calculated by statistical methods. Applying a Gauss process for the statistic analysis, the calculated gross annual energy can be understood as the mean annual energy yield having the highest rate of probability of all single results. The uncertainty shall be understood as standard deviation of the expected results around the most probable event. Figure 7-13 displays the probabilities that a certain amount of annual electricity production is exceeded. Gross annual energy describes the energy yield as calculated, and net annual energy the energy yield considering the losses and uncertainties. Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 115 LI / GE6 25 0477 final report ashegoda 190,000 200,000 210,000 220,000 230,000 240,000 250,000 260,000 270,000 280,000 290,000 300,000 310,000 320,000 330,000 340,000 0.0% 10.0% 20.0% 30.0% 40.0% 50.0% 60.0% 70.0% 80.0% 90.0% 100.0% gross annual energy net annual energy Probability of Exceedance 50 % 75% 90% MWh/y 239,804 220,49 261,258 Figure 7-13: Probability of exceedance for Ashegoda wind park, Gamesa G58 layout Besides the uncertainties for wind conditions and power curve, the losses for electricity transmission (2.8 %) and reduced availability of the turbines (95 %) have also to be considered as constant factors, reducing the estimated energy yield. For the Gamesa G58 850kW wind turbine described within section 6.2 the energy calculations, the results for different levels of exceedance are displayed on the following table: Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 116 LI / GE6 25 0477 final report ashegoda Table 7-9: Energy Calculations for Ashegoda Wind Park, Gamesa G58 layout Gamesa G58 850 kW; 60 m hub height at Ashegoda Wind Park Turbine Type Gamesa G58 Gamesa G58 Gamesa G58 Gamesa G58 Turbine Capacity kW 850 850 850 850 Number of WTG 86 86 86 86 Installed park capacity MW 73.1 73.1 73.1 73.1 Hub Height m 60 60 60 60 Rotor Diameter m 58 58 58 58 Specific Rotor Area m2/kW 3.11 3.11 3.11 3.11 Probability % 50 75 90 95 Gross energy production MWh/y 299,064 274,505 252,402 239,174 Wind park array losses % 5.3 5.3 5.3 5.3 Turbine availability % 95.0 95.0 95.0 95.0 Electrical losses % 2.8 2.8 2.8 2.8 Miscellaneous losses % 0.10 0.10 0.10 0.10 Net Output MWh/y 261,258 239,804 220,494 208,939 Specific Energy Production kWh/m2 1,150 1,055 970 920 Full load hours h/a 3,574 3,280 3,016 2,858 Capacity Factor % 40.8 37.4 34.4 32.6 Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 117 LI / GE6 25 0477 final report ashegoda 7.5.3.4 Enercon E-53 The transformation of the wind speed related uncertainties into the energy related uncertainty, by appropriately reducing the wind speed at hub height, leads to the following results displayed in Table 7-4: Table 7-10: Deviation of Energy due to wind uncertainties Mean wind speed [m/s] Deviation wind speed A-factor [m/s] k-factor Energy Yield [MWh/y] Deviation Energy calculated WAsP 8.79 0.0% 9.75 3.62 286,452 0.0% reduced wind speed; uncertainties taken into account 8.30 5.6% 9.20 3.62 251,976 12.04% Assuming the power performance of the turbine as independent of the energy deviation due to wind uncertainties, the total uncertainty for energy yield can be determined from the uncertainties of wind conditions (12.04 %) and power curve (5 %) to 13.03 % ( (12.04)2 52 ). The analysis of uncertainties is an important step for the risk assessment of the project. From the predicted annual energy and from the total uncertainty on the energy level of 14.88 % the probability of exceeding of certain energy yields can be calculated by statistical methods. Applying a Gauss process for the statistic analysis, the calculated gross annual energy can be understood as the mean annual energy yield having the highest rate of probability of all single results. The uncertainty shall be understood as standard deviation of the expected results around the most probable event. Figure 7-14 displays the probabilities that a certain amount of annual electricity production is exceeded. Gross annual energy describes the energy yield as calculated and net annual energy the energy yield considering the losses and uncertainties. Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 118 LI / GE6 25 0477 final report ashegoda 180,000 190,000 200,000 210,000 220,000 230,000 240,000 250,000 260,000 270,000 280,000 290,000 300,000 310,000 320,000 0.0% 10.0% 20.0% 30.0% 40.0% 50.0% 60.0% 70.0% 80.0% 90.0% 100.0% gross annual energy net annual energy Probability of Exceedance 50 % 75% 90% MWh/y 227,278 207,56 249,183 Figure 7-14: Probability of exceedance for Ashegoda wind park, Enercon E-53 layout Besides the uncertainties for wind conditions and power curve, the losses for electricity transmission (2.8 %) and reduced availability of the turbines (95 %) have also to be considered as constant factors, reducing the estimated energy yield. For the Enercon E-53 800kW wind turbine described within section 6.2 the energy calculations, the results for different levels of exceedance are displayed on the following table: Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 119 LI / GE6 25 0477 final report ashegoda Table 7-11: Energy Calculations for Ashegoda Wind Park, Enercon E-53 layout Enercon E-53 800 kW; 57 m hub height at Ashegoda Wind Park Turbine Type Enercon E-53 Enercon E-53 Enercon E-53 Enercon E-53 Turbine Capacity kW 800 800 800 800 Number of WTG 86 86 86 86 Installed park capacity MW 68.8 68.8 68.8 68.8 Hub Height m 57 57 57 57 Rotor Diameter m 53 53 53 53 Specific Rotor Area m2/kW 2.76 2.76 2.76 2.76 Probability % 50 75 90 95 Gross energy production MWh/y 286,451 261,271 238,608 225,045 Wind park array losses % 5.7 5.7 5.7 5.7 Turbine availability % 95.0 95.0 95.0 95.0 Electrical losses % 2.8 2.8 2.8 2.8 Miscellaneous losses % 0.10 0.10 0.10 0.10 Net Output MWh/y 249,183 227,278 207,564 195,765 Specific Energy Production kWh/m2 1,313 1,198 1,094 1,032 Full load hours h/a 3,622 3,303 3,017 2,845 Capacity Factor % 41.3 37.7 34.4 32.5 Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 120 LI / GE6 25 0477 final report ashegoda 7.6 Summary The four layouts scenarios for Ashegoda wind park show the following energy yield, related to the P75 value: Net Energy Production, 198,771 Net Energy Production, 197,392 Net Energy Production, 239,804 Net Energy Production, 227,278 0.000 50.000 100.000 150.000 200.000 250.000 300.000 Energy in MW/h Vestas V52 Enercon E-48 Gamesa G58 EnerconE-53 Probability 75% Miscellaneous losses Electrical losses Turbine availability Wind park array losses Net Energy Production Gross Energy production 226,816 KW/h Gross energy production 274,505 KW/h Gross energy production 227,155 KW/h Gross energy production 261,271 KW/h Figure 7-15: P75 energy production of the different scenarios of Ashegoda wind park The higher energy yield calculated for the Gamesa G58 and Enercon E-53 wind turbines is mainly related to the larger rotor diameter of these turbines compared to the Enercon E-48 and Vestas V52 turbines. The focusing to the generated energy yield however is not sufficient. Investment costs, indicated by the ratio specific investment costs ( per kWh) are more significant, for details refer to the economical part of the Feasibility Study for the presented specific data in per kWh.
| + | High wind control losses are caused by the turbine cut-in and cut-out strategy. The turbines will cut-off when cut-out wind speed is reached and will not re-cut-in until wind speed is below a defined wind speed level, lower than the cut-out level. A reduction factor of 0.1% to the gross energy output was applied to take these effects into account. |
| + | *Terrain description <br>Describes the uncertainty of the influence of the terrain to the measurement. Inclined wind flow and strong turbulence can not be measured accurately by a cup anemometer. Long term correlation The data used for the long term correlation as well as the MCP-Process includes uncertainties; as long-term reference data of 25 years is available the uncertainty for this category can be set to the moderate value of 3.0 %. This can be decreased when using measured long-term data near the site (NCEP data are recalculated data). To calculate the total uncertainty all single uncertainties can be considered as stochastically independent and the commonly used way of estimating the joint uncertainty of independent (un-correlated) uncertainties is to calculate the RMS value. The total uncertainty of 4.1 % refers to the wind speed at hub height for each single turbine. Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 106 LI / GE6 25 0477 final report ashegoda Uncertainties for Wind Database Source Uncertainty Comments Anemometer calibration 1.5% typical average value, Anemometer characteristics 0.5% typical lower value, Mounting error 1.0% increased value Data recording 0.4% typical value Terrain description 1.5% modestly shaped terrain Long term correlation 3.0% data base satisfactorily Uncertainty Wind 3.9% Total uncertainty Wind Data = 0.0152 0.052 0.012 0.0042 0.0152 0.032 0.039 7.5.2.3 Total Wind related Uncertainty The total wind related uncertainty is the RMS value of Total uncertainty WAsP and Total uncertainty Wind which is 5.6%. 7.5.2.4 Uncertainties of the Power Curve It has to be considered that the power curve used for the gross energy calculation is also subject to uncertainties which had been described in chapter 7.4.1. Due to the non linear relation of mean wind speed and energy these uncertainties can not be integrated into the uncertainties of wind conditions but have to be dealt with separately. In chapter 7.5.3 the calculation of the uncertainties of the energy yield for the different wind turbine types is performed; the uncertainty of the power curve is, assuming the power performance of the turbine as independent of the energy deviation due to wind uncertainties, connected to the uncertainties of the energy yield by the following equation: Total uncertainty = 2 2 uncertainty energy yield uncertainty power curve Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 107 LI / GE6 25 0477 final report ashegoda The turbine supplier usually gives a guarantee of 95 % of the energy values, which leads to an uncertainty to the predicted figures of 5 %; the actual guarantee value has to be negotiated with the manufacturer, the uncertainty can be adapted accordingly. This figure has been taken for every wind turbine type as it is sufficiently conservative for both calculated and measured power curves. 7.5.3 Uncertainties Energy Yield The interpretation of uncertainty in energy yield from the total uncertainty in wind speed is not straightforward. The theoretical cubic relation of wind speed and energy does not give a correct description of the phenomena. For the long term mean wind speed averaged over all turbine locations at hub height the average wind speed value is derived from the wind data processing. The uncertainty is equivalent to a reduction to the mean wind speed when considering the worst case. To translate this reduced mean wind speed into energy yield the parameters of a Weibull distribution are adapted and this new Weibull distribution is then applied to the individual turbine power curves. The results for the considered wind park layout can be found in the examinations in the following tables Deviation of Energy due to wind uncertainties , indicating an energy deviation due to the uncertainty in wind speed assessment. Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 108 LI / GE6 25 0477 final report ashegoda 7.5.3.1 Enercon E-48 The transformation of the wind speed related uncertainties into the energy related uncertainty by appropriately reducing the wind speed at hub height leads to the following results displayed in Table 7-4: Table 7-4: Deviation of Energy due to wind uncertainties Mean wind speed [m/s] Deviation wind speed A-factor [m/s] k-factor Energy Yield [MWh/y] Deviation Energy calculated WAsP 8.78 0.0% 9.75 3.62 252,175 0.0% reduced wind speed; uncertainties taken into account 8.29 5.6% 9.20 3.62 217,290 13.83% Assuming the power performance of the turbine as independent of the energy deviation due to wind uncertainties, the total uncertainty for energy yield can be determined from the uncertainties of wind conditions (13.83 %) and power curve (5%) to 14.71 % ( (13.83)2 52 ). The analysis of uncertainties is an important step for the risk assessment of the project. From the predicted annual energy and from the total uncertainty on the energy level of 16.5 % the probability of exceeding of certain energy yields can be calculated by statistical methods. Applying a Gauss process for the statistic analysis, the calculated gross annual energy can be understood as the mean annual energy yield having the highest rate of probability of all single results. The uncertainty shall be understood as standard deviation of the expected results around the most probable event. Figure 7-11 displays the probabilities that a certain amount of annual electricity production is exceeded. Gross annual energy describes the energy yield as calculated and net annual energy the energy yield considering the losses and uncertainties. Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 109 LI / GE6 25 0477 final report ashegoda 150,000 160,000 170,000 180,000 190,000 200,000 210,000 220,000 230,000 240,000 250,000 260,000 270,000 280,000 290,000 0.0% 10.0% 20.0% 30.0% 40.0% 50.0% 60.0% 70.0% 80.0% 90.0% 100.0% gross annual energy net annual energy Probability of Exceedance 50 % 75% 90% MWh/y 197,392 177,82 219,133 Figure 7-11: Probability of exceedance for Ashegoda wind park, Enercon E-48 layout Besides the uncertainties for wind conditions and power curve, the losses for electricity transmission (2.8 %) and reduced availability of the turbines (95 %) have also to be considered as constant factors, reducing the estimated energy yield. For the Enercon E-48 800kW wind turbine described within section 6.2 the energy calculations, the results for different levels of exceedance are displayed on the following table: Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 110 LI / GE6 25 0477 final report ashegoda Table 7-5: Energy Calculations for Ashegoda Wind Park, Enercon E-48 layout Enercon E-48 800 kW; 57 m hub height at Ashegoda Wind Park Turbine Type Enercon E-48 Enercon E-48 Enercon E-48 Enercon E-48 Turbine Capacity kW 800 800 800 800 Number of WTG 86 86 86 86 Installed park capacity MW 68.8 68.8 68.8 68.8 Hub Height m 57 57 57 57 Rotor Diameter m 48 48 48 48 Specific Rotor Area m2/kW 2.26 2.26 2.26 2.26 Probability % 50 75 90 95 Gross energy production MWh/y 252,175 227,155 204,637 191,160 Wind park array losses % 5.8 5.8 5.8 5.8 Turbine availability % 95.0 95.0 95.0 95.0 Electrical losses % 2.8 2.8 2.8 2.8 Miscellaneous losses % 0.10 0.10 0.10 0.10 Net Output MWh/y 219,133 197,392 177,824 166,113 Specific Energy Production kWh/m2 1,408 1,268 1,143 1,067 Full load hours h/a 3,185 2,869 2,585 2,414 Capacity Factor % 36.4 32.8 29.5 27.6 Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 111 LI / GE6 25 0477 final report ashegoda 7.5.3.2 Vestas V52 The transformation of the wind speed related uncertainties into the energy related uncertainty by appropriately reducing the wind speed at hub height leads to the following results displayed in Table 7-4: Table 7-6: Deviation of Energy due to wind uncertainties Mean wind speed [m/s] Deviation wind speed A-factor [m/s] k-factor Energy Yield [MWh/y] Deviation Energy calculated WAsP 8.84 0.0% 9.81 3.62 248,854 0.0% reduced wind speed; uncertainties taken into account 8.35 5.6% 9.26 3.62 218,642 12.14% Assuming the power performance of the turbine as independent of the energy deviation due to wind uncertainties, the total uncertainty for energy yield can be determined from the uncertainties of wind conditions (12.14 %) and power curve (5 %) to 13.13 % ( (12.14)2 52 ). The analysis of uncertainties is an important step for the risk assessment of the project. From the predicted annual energy and from the total uncertainty on the energy level of 15.10% the probability of exceeding of certain energy yields can be calculated by statistical methods. Applying a Gauss process for the statistic analysis, the calculated gross annual energy can be understood as the mean annual energy yield having the highest rate of probability of all single results. The uncertainty shall be understood as standard deviation of the expected results around the most probable event. Figure 7-12 displays the probabilities that a certain amount of annual electricity production is exceeded. Gross annual energy describes the energy yield as calculated and net annual energy the energy yield considering the losses and uncertainties. Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 112 LI / GE6 25 0477 final report ashegoda 150,000 160,000 170,000 180,000 190,000 200,000 210,000 220,000 230,000 240,000 250,000 260,000 270,000 280,000 0.0% 10.0% 20.0% 30.0% 40.0% 50.0% 60.0% 70.0% 80.0% 90.0% 100.0% gross annual energy net annual energy Probability of Exceedance 50 % 75% 90% MWh/y 198,771 181,38 218,084 Figure 7-12: Probability of exceedance for Ashegoda wind park, Vestas V52 layout Besides the uncertainties for wind conditions and power curve, the losses for electricity transmission (2.8 %) and reduced availability of the turbines (95 %) have also to be considered as constant factors, reducing the estimated energy yield. For the Vestas V52 850kW wind turbine described within section 6.2 the energy calculations, the results for different levels of exceedance are displayed on the following table: Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 113 LI / GE6 25 0477 final report ashegoda Table 7-7: Energy Calculations for Ashegoda Wind Park, Vestas V52 layout Vestas V52 850 kW; 60 m hub height at Ashegoda Wind Park Turbine Type Vestas V52 Vestas V52 Vestas V52 Vestas V52 Turbine Capacity kW 850 850 850 850 Number of WTG 86 86 86 86 Installed park capacity MW 73.1 73.1 73.1 73.1 Hub Height m 60 60 60 60 Rotor Diameter m 52 52 52 52 Specific Rotor Area m2/kW 2.50 2.50 2.50 2.50 Probability % 50 75 90 95 Gross energy production MWh/y 248,854 226,816 206,981 195,110 Wind park array losses % 5.0 5.0 5.0 5.0 Turbine availability % 95.0 95.0 95.0 95.0 Electrical losses % 2.8 2.8 2.8 2.8 Miscellaneous losses % 0.10 0.10 0.10 0.10 Net Output MWh/y 218,084 198,771 181,388 170,985 Specific Energy Production kWh/m2 1,194 1,088 993 936 Full load hours h/a 2,983 2,719 2,481 2,339 Capacity Factor % 34.1 31.0 28.3 26.7 Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 114 LI / GE6 25 0477 final report ashegoda 7.5.3.3 Gamesa G 58 The transformation of the wind speed related uncertainties into the energy related uncertainty by appropriately reducing the wind speed at hub height leads to the following results displayed in Table 7-4: Table 7-8: Deviation of Energy due to wind uncertainties Mean wind speed [m/s] Deviation wind speed A-factor [m/s] k-factor Energy Yield [MWh/y] Deviation Energy calculated WAsP 8.87 0.0% 9.84 3.62 299,064 0.0% reduced wind speed; uncertainties taken into account 8.37 5.6% 9.28 3.62 265,865 11.10% Assuming the power performance of the turbine as independent of the energy deviation due to wind uncertainties, the total uncertainty for energy yield can be determined from the uncertainties of wind conditions (11.10 %) and power curve (5 %) to 12.17 % ( (11.10)2 52 ). The analysis of uncertainties is an important step for the risk assessment of the project. From the predicted annual energy and from the total uncertainty on the energy level of 14.02% the probability of exceeding of certain energy yields can be calculated by statistical methods. Applying a Gauss process for the statistic analysis, the calculated gross annual energy can be understood as the mean annual energy yield having the highest rate of probability of all single results. The uncertainty shall be understood as standard deviation of the expected results around the most probable event. Figure 7-13 displays the probabilities that a certain amount of annual electricity production is exceeded. Gross annual energy describes the energy yield as calculated, and net annual energy the energy yield considering the losses and uncertainties. Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 115 LI / GE6 25 0477 final report ashegoda 190,000 200,000 210,000 220,000 230,000 240,000 250,000 260,000 270,000 280,000 290,000 300,000 310,000 320,000 330,000 340,000 0.0% 10.0% 20.0% 30.0% 40.0% 50.0% 60.0% 70.0% 80.0% 90.0% 100.0% gross annual energy net annual energy Probability of Exceedance 50 % 75% 90% MWh/y 239,804 220,49 261,258 Figure 7-13: Probability of exceedance for Ashegoda wind park, Gamesa G58 layout Besides the uncertainties for wind conditions and power curve, the losses for electricity transmission (2.8 %) and reduced availability of the turbines (95 %) have also to be considered as constant factors, reducing the estimated energy yield. For the Gamesa G58 850kW wind turbine described within section 6.2 the energy calculations, the results for different levels of exceedance are displayed on the following table: Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 116 LI / GE6 25 0477 final report ashegoda Table 7-9: Energy Calculations for Ashegoda Wind Park, Gamesa G58 layout Gamesa G58 850 kW; 60 m hub height at Ashegoda Wind Park Turbine Type Gamesa G58 Gamesa G58 Gamesa G58 Gamesa G58 Turbine Capacity kW 850 850 850 850 Number of WTG 86 86 86 86 Installed park capacity MW 73.1 73.1 73.1 73.1 Hub Height m 60 60 60 60 Rotor Diameter m 58 58 58 58 Specific Rotor Area m2/kW 3.11 3.11 3.11 3.11 Probability % 50 75 90 95 Gross energy production MWh/y 299,064 274,505 252,402 239,174 Wind park array losses % 5.3 5.3 5.3 5.3 Turbine availability % 95.0 95.0 95.0 95.0 Electrical losses % 2.8 2.8 2.8 2.8 Miscellaneous losses % 0.10 0.10 0.10 0.10 Net Output MWh/y 261,258 239,804 220,494 208,939 Specific Energy Production kWh/m2 1,150 1,055 970 920 Full load hours h/a 3,574 3,280 3,016 2,858 Capacity Factor % 40.8 37.4 34.4 32.6 Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 117 LI / GE6 25 0477 final report ashegoda 7.5.3.4 Enercon E-53 The transformation of the wind speed related uncertainties into the energy related uncertainty, by appropriately reducing the wind speed at hub height, leads to the following results displayed in Table 7-4: Table 7-10: Deviation of Energy due to wind uncertainties Mean wind speed [m/s] Deviation wind speed A-factor [m/s] k-factor Energy Yield [MWh/y] Deviation Energy calculated WAsP 8.79 0.0% 9.75 3.62 286,452 0.0% reduced wind speed; uncertainties taken into account 8.30 5.6% 9.20 3.62 251,976 12.04% Assuming the power performance of the turbine as independent of the energy deviation due to wind uncertainties, the total uncertainty for energy yield can be determined from the uncertainties of wind conditions (12.04 %) and power curve (5 %) to 13.03 % ( (12.04)2 52 ). The analysis of uncertainties is an important step for the risk assessment of the project. From the predicted annual energy and from the total uncertainty on the energy level of 14.88 % the probability of exceeding of certain energy yields can be calculated by statistical methods. Applying a Gauss process for the statistic analysis, the calculated gross annual energy can be understood as the mean annual energy yield having the highest rate of probability of all single results. The uncertainty shall be understood as standard deviation of the expected results around the most probable event. Figure 7-14 displays the probabilities that a certain amount of annual electricity production is exceeded. Gross annual energy describes the energy yield as calculated and net annual energy the energy yield considering the losses and uncertainties. Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 118 LI / GE6 25 0477 final report ashegoda 180,000 190,000 200,000 210,000 220,000 230,000 240,000 250,000 260,000 270,000 280,000 290,000 300,000 310,000 320,000 0.0% 10.0% 20.0% 30.0% 40.0% 50.0% 60.0% 70.0% 80.0% 90.0% 100.0% gross annual energy net annual energy Probability of Exceedance 50 % 75% 90% MWh/y 227,278 207,56 249,183 Figure 7-14: Probability of exceedance for Ashegoda wind park, Enercon E-53 layout Besides the uncertainties for wind conditions and power curve, the losses for electricity transmission (2.8 %) and reduced availability of the turbines (95 %) have also to be considered as constant factors, reducing the estimated energy yield. For the Enercon E-53 800kW wind turbine described within section 6.2 the energy calculations, the results for different levels of exceedance are displayed on the following table: Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 119 LI / GE6 25 0477 final report ashegoda Table 7-11: Energy Calculations for Ashegoda Wind Park, Enercon E-53 layout Enercon E-53 800 kW; 57 m hub height at Ashegoda Wind Park Turbine Type Enercon E-53 Enercon E-53 Enercon E-53 Enercon E-53 Turbine Capacity kW 800 800 800 800 Number of WTG 86 86 86 86 Installed park capacity MW 68.8 68.8 68.8 68.8 Hub Height m 57 57 57 57 Rotor Diameter m 53 53 53 53 Specific Rotor Area m2/kW 2.76 2.76 2.76 2.76 Probability % 50 75 90 95 Gross energy production MWh/y 286,451 261,271 238,608 225,045 Wind park array losses % 5.7 5.7 5.7 5.7 Turbine availability % 95.0 95.0 95.0 95.0 Electrical losses % 2.8 2.8 2.8 2.8 Miscellaneous losses % 0.10 0.10 0.10 0.10 Net Output MWh/y 249,183 227,278 207,564 195,765 Specific Energy Production kWh/m2 1,313 1,198 1,094 1,032 Full load hours h/a 3,622 3,303 3,017 2,845 Capacity Factor % 41.3 37.7 34.4 32.5 Feasibility Study for Windpark Development in Ethiopia and Capacity Building August 2006, Final Report - page 120 LI / GE6 25 0477 final report ashegoda 7.6 Summary The four layouts scenarios for Ashegoda wind park show the following energy yield, related to the P75 value: Net Energy Production, 198,771 Net Energy Production, 197,392 Net Energy Production, 239,804 Net Energy Production, 227,278 0.000 50.000 100.000 150.000 200.000 250.000 300.000 Energy in MW/h Vestas V52 Enercon E-48 Gamesa G58 EnerconE-53 Probability 75% Miscellaneous losses Electrical losses Turbine availability Wind park array losses Net Energy Production Gross Energy production 226,816 KW/h Gross energy production 274,505 KW/h Gross energy production 227,155 KW/h Gross energy production 261,271 KW/h Figure 7-15: P75 energy production of the different scenarios of Ashegoda wind park The higher energy yield calculated for the Gamesa G58 and Enercon E-53 wind turbines is mainly related to the larger rotor diameter of these turbines compared to the Enercon E-48 and Vestas V52 turbines. The focusing to the generated energy yield however is not sufficient. Investment costs, indicated by the ratio specific investment costs ( per kWh) are more significant, for details refer to the economical part of the Feasibility Study for the presented specific data in per kWh. |