A Method for Estimating Annual Energy Production Using Monte Carlo Wind Speed Simulation
Abstract
:1. Introduction
2. Methodology and Data
2.1. Method
- Development of the Monte Carlo wind speed simulation
- Data analysis
- Method construction
- Verification of data
- Filter the raw wind speed data with respect to unusual and unrealistic wind speed observations
- Confirm the power law equation by comparing transformed wind speed observations at 10 m to wind speed observations at 55 m
- Verify the power curve of the test wind turbines (Enercon E44 900 kW) by comparing the calculation to the actual power production data
- Verification of method
- Conduct autocorrelation analysis of the wind speed data to determine the length of blocks in the MC wind speed simulation
- Generate estimates of the wind speed densities based on the MC wind speed simulation and the Weibull wind speed simulation and compare these estimates to the density based on actual wind speed observations from the site; This is done at a 55 m measurement height
- Simulate AEP assuming the test wind turbines based on the Enercon E44 900 kW power curve and compare these values to the observed AEP to evaluate the accuracy of the two wind speed simulations
2.2. Power Law
2.3. Weibull Wind Speed Simulation
2.4. Annual Energy Production
2.5. Data
3. Development of a Monte Carlo Method
3.1. Monte Carlo Wind Speed Simulation
3.2. The Method as a Procedure
- In order to represent wind speed reasonably well, get a minimum of N = 10 years of actual/observed wind data for the relevant site. Note that the method does not assume any distribution. It is assumed that there is no trend in the data.
- If data are not available at the correct height, use the power law to extrapolate and verify the result if possible.
- For AEP calculations, make sure that the power curve for the selected wind turbine is correct.
- Estimate the seasonal mean, the seasonal standard deviation and the daily variability of the raw data.
- Compute standardized residuals by subtracting the estimated seasonal mean and the daily variability from the raw data and scaling the difference with respect to the estimated seasonal standard deviation.
- Group the standardized residuals into a fixed time interval (e.g., months).
- Calculate the sample autocorrelations for each interval using the standardized residuals.
- Plot the sample autocorrelation for individual months for visual inspection. The smallest lag, such that the sample autocorrelation goes below 0.02, is defined as the lag where the autocorrelation becomes none influential.
- Select the block size (parameter d), such that the sample autocorrelation is none influential in all months for lag d, but still as low as possible.
- Regroup all of the data into d day blocks, so that they fit into one year , i.e., a sequence of blocks forms one year. Each block location is numbered and positioned in the same place in the year sequence. The last block of the year will be longer than or equal to d days and less than days.
- A simulation of the wind speed set is made as follows:
- Each of the blocks within a year are sampled from the corresponding blocks in the previous N years, that is the first d day block of the sample is drawn with equal probability () from the first d day block of the previous N years.
- Likewise, the second d day block of the sample (the -th day to the -th day of the year) is drawn independently of the first block with equal probability () from the second d day block of the previous N years, and so on, for the other d day blocks of the year.
- The previous two steps are repeated L times to obtain L samples of yearly wind speed. L should be at least 1000.
- For each of the L years, an AEP is calculated.
- The mean and 95% interval for AEP is then calculated from the L simulated AEP values.
4. Verification of Data
4.1. Extrapolated Data Compared to Measured Data
4.2. Power Curve Compared to Actual Power Production
5. Verification of Method
5.1. Determination of d in the MC Wind Speed Simulation
5.2. Wind Speed Simulation at Burfell Using the Monte Carlo Approach and the Weibull Approach
5.3. Comparison of Simulated AEP and Observed AEP
6. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
References
- Chehouri, A.; Younes, R.; Ilinca, A.; Perron, J. Review of performance optimization techniques applied to wind turbines. Appl. Energy 2015, 142, 361–388. [Google Scholar] [CrossRef]
- Carta, J.A.; Ramirez, P.; Velazquez, S. A review of wind speed probability distributions used in wind energy analysis case studies in the canary islands. Renew. Sustain. Energy Rev. 2009, 13, 933–955. [Google Scholar] [CrossRef]
- Rocha, P.A.C.; De Sousa, R.C.; De Andrade, C.F.; Da Silva, M.E.V. Comparison of seven numerical methods for determining Weibull parameters for wind energy generation in the northeast region of brazil. Appl. Energy 2012, 89, 395–400. [Google Scholar] [CrossRef]
- Chang, T.P. Performance comparison of six numerical methods in estimating Weibull parameters for wind energy application. Appl. Energy 2011, 88, 272–282. [Google Scholar] [CrossRef]
- Ragnarsson, B.; Oddsson, G.V.; Unnthorsson, R.; Hrafnkelsson, B. Levelized cost of energy analysis of a wind power generation system at burfell in iceland. Energies 2015, 8, 9464–9485. [Google Scholar] [CrossRef]
- Usta, I.; Kantar, Y.M. Analysis of some flexible families of distributions for estimation of wind speed distributions. Appl. Energy 2012, 89, 355–367. [Google Scholar] [CrossRef]
- Zhou, J.; Erdem, E.; Li, G.; Shi, J. Comprehensive evaluation of wind speed distribution models: A case study for north dakota sites. Energy Convers. Manag. 2010, 51, 1449–1458. [Google Scholar] [CrossRef]
- Carta, J.A.; Velázquez, S.; Cabrera, P. A review of measure-correlate-predict (mcp) methods used to estimate long-term wind characteristics at a target site. Renew. Sustain. Energy Rev. 2013, 27, 362–400. [Google Scholar] [CrossRef]
- Jung, S.; Kwon, S.-D. Weighted error functions in artificial neural networks for improved wind energy potential estimation. Appl. Energy 2013, 111, 778–790. [Google Scholar] [CrossRef]
- Jung, S.; Vanli, O.A.; Kwon, S.-D. Wind energy potential assessment considering the uncertainties due to limited data. Appl. Energy 2013, 102, 1492–1503. [Google Scholar] [CrossRef]
- Kwon, S.-D. Uncertainty analysis of wind energy potential assessment. Appl. Energy 2010, 87, 856–865. [Google Scholar] [CrossRef]
- Pedersen, T.F.; Gjerding, S.; Ingham, P.; Enevoldsen, P.; Jesper, H.K. Wind Turbine Power Performance Verification in Complex Terrain and Wind Farms; Report; RISO National Laboratory: Roskilde, Denmark, 2002.
- Lackner, M.A.; Rogers, A.L.; Manwell, J.F. Uncertainty analysis in mcp-based wind resource assessment and energy production estimation. J. Solar Energy Eng. Trans. ASME 2008, 130. [Google Scholar] [CrossRef]
- Bensoussan, A.; Bertrand, P.R.; Brouste, A. Forecasting the Energy Produced by a Windmill on a Yearly Basis. Stoch. Environ. Res. Risk Assess. 2012, 26, 1109–1122. [Google Scholar] [CrossRef]
- Gass, V.; Strauss, F.; Schmidt, J.; Schmid, E. Assessing the effect of wind power uncertainty on profitability. Renew. Sustain. Energy Rev. 2011, 15, 2677–2683. [Google Scholar] [CrossRef]
- Berg, J.; Mann, J.; Nielsen, M. Introduction to Micro Meteorology for Wind Energy; Denmarks Tekniske Universitet (DTU): Kgs Lyngby, Denmark, 2013. [Google Scholar]
- Meeker, W.Q.; Escobar, L.A. Statistical Methods for Reliability Data; Wiley: New York, NY, USA, 1998. [Google Scholar]
- Nawri, N.; Petersen, G.N.; Bjornsson, H.; Hahmann, A.N.; Jonasson, K.; Hasager, C.B.; Clausen, N.E. The wind energy potential of Iceland. Renew. Energy 2014, 69, 290–299. [Google Scholar] [CrossRef]
- Petersen, J.B.; Birgisson, T.; Bjornsson, H.; Jonasson, K.; Petersen, G.N. Vindhradamaelingar og Sambreytni Vinds; Icelandic Meteorological Office: Reykjavik, Iceland, 2011. [Google Scholar]
- Torres, J.L.; Garcia, A.; Prieto, E.; Francisco, A.D. Characterization of wind speed data according to wind direction. Solar Energy 1999, 66, 57–64. [Google Scholar] [CrossRef]
- Enercon. Enercon Product Overview; Enercon Wind Turbine Manufacturer: Bremen, Germany, 2012. [Google Scholar]
- Perkin, S.; Garrett, D.; Jensson, P. Optimal wind turbine selection methodology: A case-study for burfell, iceland. Renew. Energy 2015, 75, 165–172. [Google Scholar] [CrossRef]
Wind Speed at Burfell | Mean (m/s) | Median (m/s) | Std (m/s) |
---|---|---|---|
Observed | 8.73 | 8.24 | 5.18 |
Weibull simulation | 8.70 | 7.93 | 5.29 |
MC simulation | 8.71 | 8.20 | 5.19 |
Burfell | Turbine 1 | Turbine 2 |
---|---|---|
Observed AEP (MWh) | 3185 | 2939 |
Scaled AEP (MWh) | 3228 | 3297 |
Burfell | P50 | P90 | 95% Prediction Interval |
---|---|---|---|
MC AEP (MWh) | 3172 | 2985 | (2926; 3403) |
Weibull AEP (MWh) | 3064 | 3048 | (3042; 3084) |
© 2016 by the authors; licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons by Attribution (CC-BY) license (http://creativecommons.org/licenses/by/4.0/).
Share and Cite
Hrafnkelsson, B.; Oddsson, G.V.; Unnthorsson, R. A Method for Estimating Annual Energy Production Using Monte Carlo Wind Speed Simulation. Energies 2016, 9, 286. https://doi.org/10.3390/en9040286
Hrafnkelsson B, Oddsson GV, Unnthorsson R. A Method for Estimating Annual Energy Production Using Monte Carlo Wind Speed Simulation. Energies. 2016; 9(4):286. https://doi.org/10.3390/en9040286
Chicago/Turabian StyleHrafnkelsson, Birgir, Gudmundur V. Oddsson, and Runar Unnthorsson. 2016. "A Method for Estimating Annual Energy Production Using Monte Carlo Wind Speed Simulation" Energies 9, no. 4: 286. https://doi.org/10.3390/en9040286
APA StyleHrafnkelsson, B., Oddsson, G. V., & Unnthorsson, R. (2016). A Method for Estimating Annual Energy Production Using Monte Carlo Wind Speed Simulation. Energies, 9(4), 286. https://doi.org/10.3390/en9040286