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首页> 外文期刊>Sadhana >Influence of crossover methods used by genetic algorithm-based heuristic to solve the selective harmonic equations (SHE) in multi-level voltage source inverter
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Influence of crossover methods used by genetic algorithm-based heuristic to solve the selective harmonic equations (SHE) in multi-level voltage source inverter

机译:基于遗传算法的启发式交叉方法对多电平电压源逆变器选择谐波方程(SHE)求解的影响

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摘要

Genetic Algorithms (GA) has always done justice to the art of optimization. One such endeavor has been made in employing the roots of GA in a most proficient way to determine the switching moments of a cascaded H-bridge seven level inverter with equal DC sources. Evolutionary techniques have proved themselves efficient to solve such an obscurity. GA is one of the methods to achieve the objective through biological mimicking. The extraordinary property of crossover is extracted using Random 3-Point Neighbourhood Crossover (RPNC) and Multi Midpoint Selective Bit Neighbourhood crossover (MMSBNC). This paper deals with solving of the selective harmonic equations (SHE) using binary coded GA specific to knowledge based neighbourhood multipoint crossover technique. This is directly related to the switching moments of the multilevel inverter under consideration. Although the previous root-finding techniques such as N-R or resultant like methods endeavor the same, the latter offers faster convergence, better program reliability and wide range of solutions. With an acute algorithm developed in Turbo C, the switching moments are calculated offline. The simulation results closely agree with the hardware results.
机译:遗传算法(GA)一直对优化技术公道。已经做出了这样的努力,即以最熟练的方式利用GA的根来确定具有相等DC源的级联H桥七电平逆变器的开关力矩。进化技术已经证明自己可以有效地解决这种模糊性。遗传算法是通过生物模拟达到目标的方法之一。交叉的非凡特性是使用随机三点邻域交叉(RPNC)和多中点选择性位邻域交叉(MMSBNC)提取的。本文使用基于知识的邻域多点交叉技术的二进制编码GA解决选择性谐波方程(SHE)。这与所考虑的多电平逆变器的开关力矩直接相关。尽管之前的寻根技术(例如N-R或类似的结果方法)都力求相同,但后者提供了更快的收敛速度,更好的程序可靠性和广泛的解决方案。利用Turbo C中开发的一种敏锐算法,可以离线计算开关力矩。仿真结果与硬件结果非常吻合。

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