Designing optimal harmonic filters in power systems using greedy adaptive Differential Evolution

M. Ortiz, Yigen Zenlander, N. Xiong, F. Herrera
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引用次数: 3

Abstract

Harmonic filtering has been widely applied to reduce harmonic distortion in power distribution systems. This paper investigates a new method of exploiting Differential Evolution (DE) to support the optimal design of harmonic filters. DE is a class of stochastic and population-based optimization algorithms that are expected to have stronger global ability than trajectory-based optimization techniques in locating the best component sizes for filters. However, the performance of DE is largely affected by its two control parameters: scaling factor and crossover rate, which are problem dependent. How to decide appropriate setting for these two parameters presents a practical difficulty in real applications. Greedy Adaptive Differential Evolution (GADE) algorithm is suggested in the paper as a more convenient and effective means to automatically optimize filter designs. GADE is attractive in that it does not require proper setting of the scaling factor and crossover rate prior to the running of the program. Instead it enables dynamic adjustment of the DE parameters during the course of search for performance improvement. The results of tests on several problem examples have demonstrated that the use of GADE leads to the discovery of better filter circuits facilitating less harmonic distortion than the basic DE method.
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基于贪婪自适应差分进化的电力系统谐波滤波器优化设计
谐波滤波已广泛应用于配电系统中,以降低谐波畸变。本文研究了一种利用差分演化支持谐波滤波器优化设计的新方法。DE是一类随机和基于种群的优化算法,在定位滤波器的最佳组件尺寸方面,它比基于轨迹的优化技术具有更强的全局能力。然而,DE的性能在很大程度上受到其两个控制参数的影响:比例因子和交叉率,这两个参数是问题相关的。如何为这两个参数确定合适的整定值,是实际应用中的一个实际难点。本文提出了贪心自适应差分进化算法(GADE)作为一种更方便、更有效的自动优化滤波器设计的方法。GADE很有吸引力,因为它不需要在程序运行之前正确设置比例因子和交叉率。相反,它允许在搜索性能改进的过程中动态调整DE参数。对几个问题实例的测试结果表明,与基本DE方法相比,使用GADE方法可以发现更好的滤波电路,有助于减少谐波失真。
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