• Title of article

    Fine tuning support vector machines for short-term wind speed forecasting

  • Author/Authors

    Zhou، نويسنده , , Junyi and Shi، نويسنده , , Jing and Li، نويسنده , , Gong، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2011
  • Pages
    9
  • From page
    1990
  • To page
    1998
  • Abstract
    Accurate forecasting of wind speed is critical to the effective harvesting of wind energy and the integration of wind power into the existing electric power grid. Least-squares support vector machines (LS-SVM), a powerful technique that is widely applied in a variety of classification and function estimation problems, carries great potential for the application of short-term wind speed forecasting. In this case, tuning the model parameters for optimal forecasting accuracy is a fundamental issue. This paper, for the first time, presents a systematic study on fine tuning of LS-SVM model parameters for one-step ahead wind speed forecasting. Three SVM kernels, namely linear, Gaussian, and polynomial kernels, are implemented. The SVM parameters considered include the training sample size, SVM order, regularization parameter, and kernel parameters. The results show that (1) the performance of LS-SVM is closely related to the dynamic characteristics of wind speed; (2) all parameters investigated greatly affect the performance of LS-SVM models; (3) under the optimal combination of parameters after fine tuning, the three kernels give comparable forecasting accuracy; (4) the performance of linear kernel is worse than the other two kernels when the training sample size or SVM order is small. In addition, LS-SVMs are compared against the persistence approach, and it is found that they can outperform the persistence model in the majority of cases.
  • Keywords
    wind speed , Least-squares support vector machines (LS-SVM) , Short-term forecasting , Parameter tuning , Persistence method
  • Journal title
    Energy Conversion and Management
  • Serial Year
    2011
  • Journal title
    Energy Conversion and Management
  • Record number

    2335602