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Nonlinear autoregressive integrated neural network model for short-term load forecasting

  • T. W S Chow
  • , C. T. Leung

Research output: Journal Publications and ReviewsRGC 22 - Publication in policy or professional journal

Abstract

A novel neural network technique for electric load forecasting based on weather compensation is presented. The proposed method is a nonlinear generalisation of Box and Jenkins approach for nonstationary time-series prediction. A nonlinear autoregressive integrated (NARI) model is identified to be the most appropriate model to include the weather compensation in short-term electric load forecasting. A weather compensation neural network based on an NARI model is implemented for one-day ahead electric load forecasting. This weather compensation neural network can accurately predict the change of electric load consumption of the coming day. The results, based on Hong Kong Island historical load demand, indicate that this methodology is capable of providing more accurate load forecast with a 0.9% reduction in forecast error. © IEE, 1996.
Original languageEnglish
Pages (from-to)500-506
JournalIEE Proceedings: Generation, Transmission and Distribution
Volume143
Issue number5
Publication statusPublished - 1996

Research Keywords

  • Nonlinear autoregressive integrated model
  • Short-term load forecasting
  • Weather compensation neural network

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