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Minimizing harmonic distortion in power system with optimal design of hybrid active power filter using differential evolution

机译:利用差分演进,最大限度地减少电力系统中的谐波失真,具有混合有源电力滤波器的最佳设计

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Hybrid active power filter (HAPF) is an advanced form of harmonic filter combining advantages of both active and passive filters. In HAPF, selection of active filter gain, passive inductive and capacitive reactances, while satisfying system constraints on individual and overall voltage and current harmonic distortion levels, is the main challenge. To optimize HAPF parameters, this paper proposes an approach based on differential evolution (DE) algorithm called L-SHADE. SHADE is the success history based parameter adaptation technique of DE optimization process for a constrained, multimodal non-linear objective function. L-SHADE improves the performance of SHADE with linearly reducing the population size in successive generations. The study herein considers two frequently used topologies of HAPF for parameter estimation. A single objective function consisting of both total voltage harmonic distortion (VTHD) and total current harmonic distortion (ITHD) is formulated and finally harmonic pollution (HP) is minimized in a system comprising of both non-linear source and non-linear loads. Several case studies of a selected industrial plant are performed. The output results of L-SHADE algorithm are compared with a similar past study and also with other well-known evolutionary algorithms. (C) 2017 Elsevier B.V. All rights reserved.
机译:混合有源电力滤波器(HAPF)是一种高级谐波滤波器的先进形式,可实现主动和无源滤波器的优点。在HAPF中,选择有源滤波器增益,无源电感和电容式电抗,同时满足个体和整体电压和电流谐波失真水平的系统限制,是主要挑战。为了优化HAPF参数,本文提出了一种基于差分演进(DE)算法的方法,称为L-SHADE。 SHADE是一种基于成功历史的参数适应技术,用于约束,多模式非线性目标函数的DE优化过程。 L-Shade提高了阴影的性能,在连续几代人口线性降低人口大小。这里的研究考虑了两个常用的HAPF拓扑,用于参数估计。由总电压谐波失真(VTHD)和总电流谐波失真(ITH)组成的单个物理函数被配制,最后在包括非线性源和非线性负载的系统中最小化谐波污染(HP)。进行了几种所选工业厂的案例研究。 L-SHADE算法的输出结果与类似的过去的研究和其他众所周知的进化算法进行了比较。 (c)2017 Elsevier B.v.保留所有权利。

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