Load flow solution in electrical power systems with variable configurations by progressive learning networks

A. Augugliaro, V. Cataliotti, L. Dusonchet, S. Favuzza, G. Scaccianoce
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引用次数: 1

Abstract

In recent years, interest in the application of soft computing techniques to electrical power systems has rapidly grown; in particular the application of artificial neural networks (ANN) and genetic algorithms (GA) in the solution of load-flow problem in wide electrical power systems, as valid alternative to the classical numerical algorithms, is an interesting research topic. In the present paper, a refined solution strategy based on statistical methods, on a particular the grouping genetic algorithm (GGA) and on progressive learning networks (PLN) is presented to solve load-flow problems in electrical power systems taking also into account configuration changes; in particular, a procedure to solve the system when a link is removed, or added, is described and implemented. Test results on the standard IEEE 118 bus network have demonstrated the good potential and efficiency of the procedure.
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用渐进式学习网络求解变配置电力系统的潮流问题
近年来,对软计算技术在电力系统中的应用的兴趣迅速增长;特别是人工神经网络(ANN)和遗传算法(GA)作为经典数值算法的有效替代方法,在大电网负荷流问题求解中的应用是一个有趣的研究课题。在本文中,提出了一种基于统计方法,特别是分组遗传算法(GGA)和渐进式学习网络(PLN)的改进求解策略,以解决电力系统中考虑配置变化的负载流问题;特别地,描述并实现了当一个链接被删除或添加时解决系统问题的程序。在标准IEEE 118总线网络上的测试结果表明,该程序具有良好的潜力和效率。
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