Short-term load forecast of electrical power system by radial basis function neural network and new stochastic search algorithm

Summary In this paper a new model of radial basis function (RBF) neural network based on a novel stochastic search algorithm is presented for short‐term load forecast (STLF). STLF is an important operation function in both regulated and deregulated power systems. Accurate STLF is effective for area...

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Published inInternational transactions on electrical energy systems Vol. 26; no. 7; pp. 1511 - 1525
Main Authors Abedinia, Oveis, Amjady, Nima
Format Journal Article
LanguageEnglish
Published Hoboken Blackwell Publishing Ltd 01.07.2016
John Wiley & Sons, Inc
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ISSN2050-7038
2050-7038
DOI10.1002/etep.2160

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Summary:Summary In this paper a new model of radial basis function (RBF) neural network based on a novel stochastic search algorithm is presented for short‐term load forecast (STLF). STLF is an important operation function in both regulated and deregulated power systems. Accurate STLF is effective for area generation control and resource dispatch as well as electricity market clearing. The proposed STLF method optimizes the structure of the RBF‐based forecasting engine. Random selection of the number of hidden neurons may cause overfitting or underfitting problem of the network. For this purpose, a new stochastic search algorithm is presented to find the optimum number of neurons for the hidden layer. To demonstrate the effectiveness of the proposed STLF approach, it is tested on three real‐world engineering case studies, and the obtained results are compared with the results of several other recently published STLF methods. These comparisons confirm the validity of the developed approach. Copyright © 2015 John Wiley & Sons, Ltd.
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ISSN:2050-7038
2050-7038
DOI:10.1002/etep.2160