• DocumentCode
    35504
  • Title

    Prediction Intervals for Short-Term Wind Farm Power Generation Forecasts

  • Author

    Khosravi, Abbas ; Nahavandi, S. ; Creighton, Douglas

  • Author_Institution
    Centre for Intell. Syst. Res. (CISR), Deakin Univ., Geelong, VIC, Australia
  • Volume
    4
  • Issue
    3
  • fYear
    2013
  • fDate
    Jul-13
  • Firstpage
    602
  • Lastpage
    610
  • Abstract
    Quantification of uncertainties associated with wind power generation forecasts is essential for optimal management of wind farms and their successful integration into power systems. This paper investigates two neural network-based methods for direct and rapid construction of prediction intervals (PIs) for short-term forecasting of power generation in wind farms. The lower upper bound estimation and bootstrap methods are used to quantify uncertainties associated with forecasts. The effectiveness and efficiency of these two general methods for uncertainty quantification is examined using twenty four month data from a wind farm in Australia. PIs with a confidence level of 90% are constructed for four forecasting horizons: five, ten, fifteen, and thirty minutes. Quantitative measures are applied for objective evaluation and unbiased comparison of PI quality. Demonstrated results indicate that reliable PIs can be constructed in a short time without resorting to complicate computational methods or models. Also quantitative comparison reveals that bootstrap PIs are more suitable for short prediction horizon, and lower upper bound estimation PIs are more appropriate for longer forecasting horizons.
  • Keywords
    bootstrapping; load forecasting; neural nets; power engineering computing; power system management; statistical analysis; wind power plants; PI quality; bootstrap methods; lower upper bound estimation; neural network-based methods; objective evaluation; optimal management; power systems; prediction intervals; quantitative measures; short prediction horizon; short-term wind farm power generation forecasts; uncertainty quantification; Artificial neural networks; Forecasting; Predictive models; Uncertainty; Wind farms; Wind forecasting; Wind power generation; Neural networks; prediction intervals; uncertainty; wind energy;
  • fLanguage
    English
  • Journal_Title
    Sustainable Energy, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1949-3029
  • Type

    jour

  • DOI
    10.1109/TSTE.2012.2232944
  • Filename
    6423867