Optimum design of passive power filter (PPF) at the output of 5-level CHB-MLI using genetic algorithm (GA)

B. Alamri, C. Marouchos, M. Darwish
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引用次数: 2

Abstract

While harmonics have adverse effects on both power utilities and customers, harmonic filtering is considered the most widely applied method among different harmonic-mitigation techniques. Passive power filters (PPFs) are currently more economical and commonly applied than active power filters (APFs). The problem of passive power filter (PPF) design is considered to be a combinatorial optimisation problem that can be solved by applying artificial intelligence. For PPF design, heuristic methods are powerful optimisation techniques and have many advantages such as: no requirement for detailed information about the power system and ability to achieve optimum PPF design compared to the conventional method. In addition, the cost of PPF implementation can be added to the optimisation objective, which is not considered in conventional design. The Authors of this paper propose an optimisation model based on genetic algorithm (GA) to design a composite PPF. As a case study, the model is applied to find the optimum filter design at the output of 5-level cascaded H-bridge multilevel invert (CHB-MLI). MATLAB-SIMULINK is used for the modelling and simulation.
基于遗传算法的5级CHB-MLI输出无源电力滤波器优化设计
谐波对电力公司和用户都有不利影响,谐波滤波被认为是各种谐波缓解技术中应用最广泛的方法。无源电力滤波器(ppf)目前比有源电力滤波器(apf)更经济,应用更广泛。无源电力滤波器的设计问题被认为是一个可以应用人工智能来解决的组合优化问题。对于PPF设计而言,启发式方法是一种功能强大的优化技术,与传统方法相比,它具有不需要电力系统的详细信息,能够实现最优PPF设计等优点。此外,PPF实施的成本可以添加到优化目标中,这在传统设计中是不考虑的。本文提出了一种基于遗传算法(GA)的优化模型来设计复合PPF。以5电平级联h桥多电平逆变器(CHB-MLI)为例,应用该模型寻找输出端的最佳滤波器设计。采用MATLAB-SIMULINK进行建模和仿真。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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