基于最优突变和精英化的遗传算法的最优潮流

M. Usman Aslam, Muhammad Usman Cheema, Muhammad Samran, Muhammad Bilal Cheema
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引用次数: 3

摘要

最优潮流的目标是在满足多种运行约束的情况下找到一个发电成本最小的工作点。多年来,已经引入了几种技术来解决这个非线性优化问题。本文采用最优非均匀突变率和精英化的遗传算法来解决这一问题。该算法在MATLAB中实现后,对巴基斯坦的IEEE 30总线实际电力系统和NTDC 32总线测试系统的数据进行了最优潮流求解,并与之前使用的技术进行了比较。简单遗传算法(SGA)、线性规划(LP)、蚁群优化(ACO)、差分进化(DE)和人工蜂群算法(ABC)。事实证明,所提出的解决方案比以前使用的技术更具成本效益。该技术可为NTDC 32总线测试系统每年节省成本6061630.92美元。这样节省下来的资金可以用来偿还循环债务,从而可以缓解巴基斯坦的减负荷问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal power flow based upon genetic algorithm deploying optimum mutation and elitism
The aim of optimal power flow is to discover an operating point that minimizes the generation cost while satisfying multiple operating constraints. Over the years, several techniques have been introduced to solve this non-linear optimization problem. In this paper, genetic algorithm deploying optimum non-uniform mutation rate and elitism has been used to solve this problem. After implementation of this algorithm in MATLAB, the data of IEEE 30-bus practical power system and NTDC 32-bus test system of Pakistan have been solved for optimal power flow and results have been compared with the previously used techniques such as; simple genetic algorithm (SGA), linear programming (LP), ant colony optimization (ACO), differential evolution (DE) and artificial bee colony algorithm (ABC). It has been established that the proposed solution proves to be more cost effective than previously used techniques. The proposed technique offers annual cost saving of $6061630.92 for NTDC 32-bus test system. The capital thus saved can be utilized to pay back circular debt and hence the problem of load shedding in Pakistan can be alleviated.
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