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An Improved Catastrophic Genetic Algorithm and Its Application in Reactive Power Optimization

机译:改进的突变遗传算法及其在无功优化中的应用

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This paper presents an Improved Catastrophic Genetic Algorithm (ICGA) for optimal reactive power optimization. Firstly, a new catastrophic operator to enhance the genetic algorithms’ convergence stability is proposed. Then, a new probability algorithm of crossover depending on the number of generations, and a new probability algorithm of mutation depending on the fitness value are designed to solving the main conflict of the convergent speed with the global astringency. In these ways, the ICGA can prevent premature convergence and instability of genetic-catastrophic algorithms (GCA). Finally, the ICGA is applied for power system reactive power optimization and evaluated on the IEEE 14-bus power system, and the application results show that the proposed method is suitable for reactive power optimization in power system.
机译:本文提出了一种改进的灾难性遗传算法(ICGA),用于优化无功功率。首先,提出了一种新的灾难性算子,以提高遗传算法的收敛稳定性。然后,设计了一种新的基于代数的交叉概率算法和一种新的基于适应度值的变异概率算法,以解决收敛速度与全局收敛性之间的主要冲突。通过这些方式,ICGA可以防止遗传灾难算法(GCA)的过早收敛和不稳定性。最后,将ICGA应用于电力系统无功优化,并在IEEE 14总线电力系统上进行了评估,应用结果表明,该方法适用于电力系统无功优化。

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