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Capacitor and passive filter placement in distribution systems by nondominated sorting genetic algorithm-II

机译:非支配排序遗传算法在配电系统中电容器和无源滤波器的布置-II

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摘要

The optimization of passive filters in distribution systems has been addressed through different approaches. In general, these approaches can be classified as single-objective and multi-objective formulations. The single-objective formulations normally try to determine the least costly filters that ensure compliance with the relevant power quality standards. In multi-objective approaches, other goals are added. In general, most studies consider the reactive power of filters at a fundamental frequency to be equal to a previously determined magnitude, and the optimization is devoted to calculate the other parameters of the filters that are required to minimize the distortion indices of the network. In the present approach, the capacitor placement and passive filter placement problems are considered as a unified problem in which a set of passive compensators (capacitors and/or tuned filters) that allow to obtain the maximum annual saving in cost and maximum improvement of the power quality of the circuit are determined. In this study, the annual saving is calculated as the equivalent present value of the compensation project to simultaneously account for the benefits of the reactive power compensation and the cost of investment in the compensators. Although many studies have solved the multi-objective problem by minimizing a single function comprising several subobjectives, this study employs the nondominated sorting genetic algorithm for the optimization of several objective functions. The present approach is tested with two example circuits from literature. (C) 2016 Elsevier B.V. All rights reserved.
机译:配电系统中无源滤波器的优化已通过不同的方法解决。通常,这些方法可以分为单目标和多目标公式。单目标公式通常试图确定成本最低的滤波器,以确保符合相关的电能质量标准。在多目标方法中,添加了其他目标。通常,大多数研究认为滤波器在基本频率上的无功功率等于先前确定的幅度,并且优化专门用于计算滤波器的其他参数,这些参数需要使网络的失真指数最小化。在本方法中,电容器放置和无源滤波器放置问题被视为一个统一的问题,在该问题中,一组无源补偿器(电容器和/或调谐滤波器)允许获得最大的年度成本节省和最大的功率改善确定电路的质量。在本研究中,将每年节省的费用计算为补偿项目的等效现值,以同时考虑无功补偿的收益和补偿器的投资成本。尽管许多研究通过最小化包含多个子目标的单个函数解决了多目标问题,但本研究还是采用非支配排序遗传算法来优化多个目标函数。用文献中的两个示例电路测试了本方法。 (C)2016 Elsevier B.V.保留所有权利。

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