结合灵敏度分析的改进遗传算法在电力系统无功优化中的应用

Yanping Chen, Yao Zhang, Ying Wei
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引用次数: 3

摘要

将SGA算法应用于实际的大型电网无功优化中,还存在搜索空间大、耗时长的问题。提出了一种改进的结合灵敏度分析的遗传算法(IGACSA)。该算法采用灵敏度分析代替SGA方法生成初始个体。在IGACSA中对SGA的交叉和突变操作进行了改进,改进的交叉操作具有快速局部调整的能力,改进的突变操作结合敏感性分析产生新个体。此外,IGACSA采用敏感性分析对IGA结果进行微调整。为了利用IGACSA确定新安装的无功补偿设备的容量,采用了两个简单的步骤,以适应实际电力系统。最后,将IGACSA算法应用到广东省韶关电网的无功优化中,验证了该算法能够缩短计算时间,取得较好的优化效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of improved genetic algorithm combining sensitivity analysis to reactive power optimization for power system
Applying SGA to practical large scale power networks reactive power optimization still existing problems like large searching space and time consuming. This paper advanced an improved genetic algorithm combining sensitivity analysis (IGACSA). The new algorithm combined sensitivity analysis to generate initial generation of individuals in stead the way of SGA. The crossover and mutation operation of SGA were improved in the IGACSA, the improved crossover operation in possession of the ability of fast local adjustment, the improved mutation operation combined sensitivity analysis to generate new individuals. Furthermore, IGACSA used sensitivity analysis to mini-adjust the result of IGA. In order to use IGACSA to fix on the capacity of new installed reactive power compensation equipments, two simple steps were adopted to suit for practical power system. In the end, applying the IGACSA to reactive power optimization for Shaoguan power network in Guangdong Province proved the algorithm proposed can cut down calculating time and achieve better results.
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