A New Approach to Load Forecasting: Using Semi-parametric Method and Neural Networks

نویسندگان

  • Abhisek Ukil
  • Jaco A. Jordaan
چکیده

A new approach to electrical load forecasting is investigated. The method is based on the semi-parametric spectral estimation method that is used to decompose a signal into a harmonic linear signal model and a non-linear part. A neural network is then used to predict the nonlinear part. The final predicted signal is then found by adding the neural network predicted non-linear part and the linear part. The performance of the proposed method seems to be more robust than using only the raw load data.

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تاریخ انتشار 2006