Restoring the missing high-frequency fluctuations in a wind power model based on reanalysis data

被引:13
|
作者
Olauson, Jon [1 ]
Bergstrom, Haps [2 ]
Bergkvist, Mikael [1 ]
机构
[1] Uppsala Univ, Dept Engn Sci, Div Elect, Uppsala, Sweden
[2] Uppsala Univ, Dept Earth Sci, Uppsala, Sweden
关键词
Wind power variability; Statistical modelling; Machine learning; Power spectral density; MERRA reanalysis dataset; VARIABILITY; DRIVEN;
D O I
10.1016/j.renene.2016.05.008
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
A previously developed model based on MERRA reanalysis data underestimates the high-frequency variability and step changes of hourly, aggregated wind power generation. The goal of this work is to restore these fluctuations. Since the volatility of the high-frequency signal varies in time, machine learning techniques were employed to predict the volatility. As predictors, derivatives of the output from the original "MERRA model" as well as empirical orthogonal functions of several meteorological" variables were used. A FFT-IFFT approach, including a search algorithm for finding appropriate phase angles, was taken to generate a signal that was subsequently transformed to simulated high-frequency fluctuations using the predicted volatility. When comparing to the original MERRA model, the improved model output has a power spectral density and step change distribution in much better agreement with measurements. Moreover, the non-stationarity of the high-frequency fluctuations was captured to a large degree. The filtering and noise addition however resulted in a small increase in the RMS error. (C) 2016 Elsevier Ltd. All rights reserved.
引用
收藏
页码:784 / 791
页数:8
相关论文
共 50 条
  • [41] Analysis of Wind Farm Output: Estimation of Volatility Using High-Frequency Data
    Agrawal, Manju R.
    Boland, John
    Ridley, Barbara
    ENVIRONMENTAL MODELING & ASSESSMENT, 2013, 18 (04) : 481 - 492
  • [42] On the use of high-frequency SCADA data for improved wind turbine performance monitoring
    Gonzalez, E.
    Stephen, B.
    Infield, D.
    Melero, J. J.
    WINDEUROPE CONFERENCE & EXHIBITION 2017, 2017, 926
  • [43] Wind turbine gearbox fault prognosis using high-frequency SCADA data
    Verma, Ayush
    Zappala, Donatella
    Sheng, Shawn
    Watson, Simon J.
    SCIENCE OF MAKING TORQUE FROM WIND, TORQUE 2022, 2022, 2265
  • [44] Method for Estimation of Marine Hydro-Kinetic Power based on High-frequency Radar Data
    Itiki, Rodney
    Chowdhury, Prithwiraj Roy
    Kamal, Faria
    Manjrekar, Madhav
    Chowdhury, Badrul
    Bonner, George G.
    OCEANS 2021: SAN DIEGO - PORTO, 2021,
  • [45] Analysis of Wind Farm Output: Estimation of Volatility Using High-Frequency Data
    Manju R. Agrawal
    John Boland
    Barbara Ridley
    Environmental Modeling & Assessment, 2013, 18 : 481 - 492
  • [46] Using solar panels for business purposes: Evidence based on high-frequency power usage data
    Weisser C.
    Lenel F.
    Lu Y.
    Kis-Katos K.
    Kneib T.
    Development Engineering, 2021, 6
  • [47] Polishing missing data for wind power based on MRMR of relevance vector machine
    Yang, Mao (yangmao820@163.com), 1600, Science Press (38):
  • [48] Missing interpolation model for wind power data based on the improved CEEMDAN method and generative adversarial interpolation network
    Zhao, Lingyun
    Wang, Zhuoyu
    Chen, Tingxi
    Lv, Shuang
    Yuan, Chuan
    Shen, Xiaodong
    Liu, Youbo
    GLOBAL ENERGY INTERCONNECTION-CHINA, 2023, 6 (05): : 517 - 529
  • [49] Risk minimization with incomplete information in a model for high-frequency data
    Frey, R
    MATHEMATICAL FINANCE, 2000, 10 (02) : 215 - 225
  • [50] A model for unpacking big data analytics in high-frequency trading
    Seddon, Jonathan J. J. M.
    Currie, Wendy L.
    JOURNAL OF BUSINESS RESEARCH, 2017, 70 : 300 - 307