Implementation of Power Load Forecasting Based on the Improved Neural Network Model

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Abstract:

This paper introduces the importance of power load forecasting, and makes forecasting based on the power load values collected in Botou City within a week. The conclusion shows that the accuracy of PSO - ELMAN network forecasting results is much higher than that of PSO - BP network forecasting results.

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468-471

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February 2015

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© 2015 Trans Tech Publications Ltd. All Rights Reserved

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