Electricity Consumption Prediction Based on Combination Optimization Theory
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    Abstract:

    In order to improve the prediction precision, a novel electricity consumption prediction model is proposed based on combination optimization theory. Firstly, the learning samples is obtained by phase space reconstruction. Then the learning samples are input into least square support vector machine and train, which the parameters of model are optimized by artificial fish swarm algorithm, and electricity consumption prediction model is established. Finally, the performance of model is test by simulation experiment. The results show that the proposed model can describe electricity consumption change rule, and improve the prediction precision.

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陈景柱.基于组合优化理论的用电量预测模型.计算机系统应用,2015,24(8):176-180

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History
  • Received:December 12,2014
  • Revised:February 02,2015
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  • Online: September 03,2015
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