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Application of multi-objective algorithm based on particle swarm optimization in electrical short-term load forecasting

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4 Author(s)
Li Feng ; Chongqing Electric Power Corporation, Chongqing, 400014 P.R.China. ; Jianjun He ; Qingyun Kong ; Lin Guo

Based on the knowledge of historical data sets, a fuzzy rule-based classifier for electrical load pattern classification is set up. Considering with the accuracy and interpretation of fuzzy rules, multi-objective particle swarm optimization are applied to choose the Pareto optimum rules that are used to classify electrical load. In the computation experiments, the generated fuzzy rule-based classifier is used to load forecasting, the computation results show that it leads to high classification performance, and it can supply more sufficient and effective historical data for load forecasting, better performance of load forecasting is gained accordingly.

Published in:

2006 International Conference on Power System Technology

Date of Conference:

22-26 Oct. 2006