An application of grey wolf optimizer for optimal power flow of wind integrated power systems

M. Siavash, C. Pfeifer, A. Rahiminejad, B. Vahidi
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引用次数: 10

Abstract

In this paper, the problem of optimal power flow (OPF) is solved in a system integrated with wind farms with the aim of reducing the cost of power production and the reduction of power grid loss by applying the Grey Wolf Optimization (GWO) Algorithm. The variable nature of wind farm output is modeled using two additional cost components corresponding to the states of under estimation and over estimation, where the available power is higher and lower than the scheduled output, respectively. On one side, in the case where there is lower power regards to the planned power, a penalty is added to the cost function. On the other side, if the produced power would be more than the planned power, an additional cost would be added to the cost function because of not buying the overall power of the wind farms. A recently introduced optimization method known as Grey Wolf Optimization Algorithm is employed in this article. The problem of OPF based on proposed approach has been applied on a modified version of IEEE 30-bus test system. The results of this study are compared with the results of Genetic Algorithm (GA). The results show the superiority of the proposed method, both in the convergence speed as well as the final result comparing to other method.
灰狼优化器在风电综合系统潮流优化中的应用
本文以降低发电成本和减少电网损耗为目标,应用灰狼优化算法求解风电场集成系统的最优潮流问题。在可用功率高于计划输出和低于计划输出的情况下,使用两个额外的成本分量分别对应于估计不足和估计过高的状态,对风电场输出的可变性质进行建模。一方面,在计划功率较低的情况下,在成本函数中增加了一个惩罚。另一方面,如果发电量超过计划发电量,由于不购买风力发电场的总发电量,成本函数中会增加额外的成本。本文采用了最近引入的一种优化方法——灰狼优化算法。基于该方法的OPF问题已应用于改进版的IEEE 30总线测试系统。将研究结果与遗传算法(GA)的结果进行了比较。结果表明,与其他方法相比,该方法在收敛速度和最终结果上都具有优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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