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Multi-objective reactive power planning based on fuzzy clustering and learning automata

机译:基于模糊聚类和学习自动机的多目标无功规划

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Reactive power planning (VAR Planning) is one of the most challenging issues in the domain of power system research. It is a mixed integer nonlinear optimization problem with a large number of variables and uncertain parameters. In this paper, first, the fuzzy clustering method is employed to select candidate locations for installing new shunt VAR sources. Specifically, U/U0 index, G index, and a critical voltage magnitude index are employed to form data matrix of fuzzy clustering. Second, a multi-objective optimization model is proposed for VAR optimization considering generation cost, VAR device cost, voltage stability and active power loss. A P-model learning automata algorithm is used to provide the multi-objective optimization solutions. Test results on a IEEE 57-bus system clearly demonstrate that a learning automata is a feasible method to produce a multi-objective trade-off analysis; and the combination of fuzzy clustering and learning automata can be a prospective method for multi-objective reactive power planning.
机译:无功功率规划(VAR Planning)是电力系统研究领域最具挑战性的问题之一。它是一个具有大量变量和不确定参数的混合整数非线性优化问题。在本文中,首先,采用模糊聚类方法来选择候选位置以安装新的并联VAR源。具体而言,采用U / U 0 指数,G指数和临界电压幅值指数形成模糊聚类的数据矩阵。其次,考虑发电成本,VAR设备成本,电压稳定性和有功功率损耗,提出了一种多目标优化模型,用于VAR优化。 P模型学习自动机算法用于提供多目标优化解决方案。在IEEE 57总线系统上的测试结果清楚地表明,学习自动机是进行多目标权衡分析的可行方法。模糊聚类与学习自动机相结合可以成为多目标无功规划的一种预期方法。

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