an artificial neural networks forecasting for malaysia’s load

an artificial neural networks forecasting for malaysia’s load

;Norizan Mohamed;Maizah Hura Ahmad;Zuhaimy Ismail;Khairil Anuar Arshad
palgrave communications 2014 Vol. 8 pp. -
64
mohamed2014statistikaan

Abstract

In this paper, two artificial neural networks models, namely the multilayer feedforward neural network and the recurrent neural network are applied for Malaysia's load forecasting. A half hourly load data is divided equally into three distinct sets for training, validation and testing. Backpropagation is selected as the learning algorithm whereas the transfer function for both hidden layer and output layer is sigmoid the function. The forecasting performances were compared between these two models. The results show that, the sum squared error (SSE) of multilayer feedforward neural network were the lowest hence the multilayer feedforward neural network is a better model for a half hourly Malaysia's load.

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