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Improving load forecasting accuracy through combination of best forecasts

conference contribution
posted on 2012-01-01, 00:00 authored by S Hassan, Abbas KhosraviAbbas Khosravi, J Jaafar
Neural network (NN) models have been widely used in the literature for short-term load forecasting. Their popularity is mainly due to their excellent learning and approximation capability. However, their forecasting performance significantly depends on several factors including initializing parameters, training algorithm, and NN structure. To minimize negative effects of these factors, this paper proposes a practically simple, yet effective and an efficient method to combine forecasts generated by NN models. The proposed method includes three main phases: (i) training NNs with different structures, (ii) selecting best NN models based on their forecasting performance for a validation set, and (iii) combination of forecasts for selected best NNs. Forecast combination is performed through calculating the mean of forecasts generated by best NN models. The performance of the proposed method is examined using real world data set. Comparative studies demonstrate that the accuracy of combined forecasts is significantly superior to those obtained from individual NN models.

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Location

Auckland, New Zealand

Language

eng

Publication classification

E1 Full written paper - refereed

Pagination

1 - 6

Start date

2012-10-30

End date

2012-11-02

ISBN-13

9781467328685

Title of proceedings

POWERCON 2012 : Proceedings of the 2012 IEEE International Conference on Power System Technology

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