Reactive power optimization and voltage control using an improved genetic algorithm

S. C. Liu, J. Zhang, Z. Q. Liu, H. Wang
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引用次数: 20

Abstract

This paper presents an improved dynamic genetic algorithm (IDGA) for reactive power optimization and voltage control. The problem is formulated as a mixed integer, nonlinear optimization problems considering both continuous and discrete control variables. The objective of optimization is minimizing active power losses while maintaining the quality of voltages. During evolution process, the crucial parameters, including mutation and crossover rate, are adjusted dynamically in order to get the optimal global solution. The IEEE standards 14 and 30 bus systems were used as test systems to demonstrate the applicability and efficiency of the proposed method. The results, compared with classical genetic algorithm and previous approaches reported in the literature, show that IDGA could find high-quality solutions with more reliability and efficiency.
基于改进遗传算法的无功优化与电压控制
提出了一种改进的动态遗传算法(IDGA),用于无功优化和电压控制。该问题被表述为考虑连续和离散控制变量的混合整数非线性优化问题。优化的目标是在保持电压质量的同时最小化有功功率损耗。在进化过程中,对变异率和交叉率等关键参数进行动态调整,以获得全局最优解。采用IEEE标准14和30总线系统作为测试系统,验证了所提方法的适用性和有效性。结果表明,与经典遗传算法和文献中报道的方法相比,IDGA能够以更高的可靠性和效率找到高质量的解。
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