Multi-objective power distribution optimization using NSGA-II

K. Jain, Shashank Gupta, Divya Kumar
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引用次数: 1

Abstract

Abstract Power distribution is one of the major areas of electrical engineering. The issue of optimized power distribution is of great concern and here it is dealt with as a single- and multi-objective problem. We know that evolutionary algorithms have better efficiency in solving such problems. In this paper, we have applied heuristics non-dominated sorting genetic algorithm II (NSGA-II, multiple objective optimization algorithm) to optimize functions such as corona loss, efficiency, potential drop, resistive loss, and volume of the conductor. The NSGA-II has outperformed other algorithms involving the optimal solution. NSGA-II is not only simple in terms of programming but also achieves the desired high-quality optimal solutions in fewer iterations. After our experiment, we have optimized the various functions presented in this paper.
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基于NSGA-II的多目标功率分配优化
配电是电气工程的一个重要领域。优化功率分配问题是一个备受关注的问题,这里将其作为单目标和多目标问题来处理。我们知道,进化算法在解决这类问题时效率更高。本文采用启发式非支配排序遗传算法II (NSGA-II,多目标优化算法)对导线的电晕损耗、效率、电势降、电阻损耗、体积等函数进行优化。NSGA-II的性能优于其他涉及最优解的算法。NSGA-II不仅在编程方面简单,而且在更少的迭代中获得了所需的高质量最优解。经过实验,我们对本文提出的各种功能进行了优化。
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