• DocumentCode
    3693100
  • Title

    Machine learning based multi-physical-model blending for enhancing renewable energy forecast - improvement via situation dependent error correction

  • Author

    Siyuan Lu; Youngdeok Hwang;Ildar Khabibrakhmanov;Fernando J. Marianno; Xiaoyan Shao;Jie Zhang;Bri-Mathias Hodge;Hendrik F. Hamann

  • Author_Institution
    IBM Thomas J. Watson Research Center, Yorktown Heights, NY 10598, USA
  • fYear
    2015
  • fDate
    7/1/2015 12:00:00 AM
  • Firstpage
    283
  • Lastpage
    290
  • Abstract
    With increasing penetration of solar and wind energy to the total energy supply mix, the pressing need for accurate energy forecasting has become well-recognized. Here we report the development of a machine-learning based model blending approach for statistically combining multiple meteorological models for improving the accuracy of solar/wind power forecast. Importantly, we demonstrate that in addition to parameters to be predicted (such as solar irradiance and power), including additional atmospheric state parameters which collectively define weather situations as machine learning input provides further enhanced accuracy for the blended result. Functional analysis of variance shows that the error of individual model has substantial dependence on the weather situation. The machine-learning approach effectively reduces such situation dependent error thus produces more accurate results compared to conventional multi-model ensemble approaches based on simplistic equally or unequally weighted model averaging. Validation over an extended period of time results show over 30% improvement in solar irradiance/power forecast accuracy compared to forecasts based on the best individual model.
  • Keywords
    "Predictive models","Atmospheric modeling","Wind forecasting","Clouds","Accuracy","Numerical models"
  • Publisher
    ieee
  • Conference_Titel
    Control Conference (ECC), 2015 European
  • Type

    conf

  • DOI
    10.1109/ECC.2015.7330558
  • Filename
    7330558