A Novel Stochastic Framework for the Optimal Placement and Sizing of Distribution Static Compensator

Reza Khorram-Nia, Aliasghar Baziar, A. Kavousi-fard
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引用次数: 16

Abstract

This paper proposes a new stochastic framework based on the probabilistic load flow to consider the uncertainty effects in the Distribution Static Compensator (DSTATCOM) allocation and sizing problem. The proposed method is based on the point estimate method (PEM) to capture the uncertainty associated with the forecast error of the loads. In order to explore the search space globally, a new optimization algorithm based on bat algorithm (BA) is proposed too. The objective functions to be investigated are minimization of the total active power losses and reducing the voltage deviation of the buses. Also to reach a proper balance between the optimization of both the objective functions, the idea of interactive fuzzy satisfying method is employed in the multi-objective formulation. The feasibility and satisfying performance of the proposed method is examined on the 69-bus IEEE distribution system.
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分布静态补偿器最优布局和尺寸的一种新的随机框架
本文提出了一种基于概率潮流的随机框架来考虑分配静态补偿器(DSTATCOM)分配和规模问题中的不确定性影响。该方法基于点估计法(PEM)来捕获与负荷预测误差相关的不确定性。为了对搜索空间进行全局探索,提出了一种基于蝙蝠算法(BA)的优化算法。研究的目标函数是使总有功损耗最小化和减小母线电压偏差。为了在两个目标函数的优化之间达到适当的平衡,在多目标公式中采用了交互式模糊满足法的思想。在69总线的IEEE配电系统上验证了该方法的可行性和令人满意的性能。
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