多级输电系统优化规划的改进遗传算法

Xiuli Wang, Xifan Wang, Yubin Mao
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引用次数: 15

摘要

提出了一种改进的遗传算法求解多级输电网规划问题。构造了包含投资和过载约束的适应度函数。通过直流潮流检测过载。提出了一种简洁的编码模型——冗余二进制编码技术。该方法可以在基因内部进行交叉操作,从而很好地利用了交叉算子的重组和搜索功能。采用模拟退火选择器对进化过程中的适应度函数进行调整。为了加快算法的收敛速度,采用了保留优良种子、对突变等改进措施。基于所提出的模型,开发了一个计算程序。通过三个实例分析,验证了多级输电网规划模型的有效性和实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved genetic algorithm for optimal multistage transmission system planning
This paper presents an improved GA approach to optimal multistage transmission network planning. A fitness function including investment and overload constraint is constructed. The overload is checked by DC load flow. A concise codification model called redundant binary coded technique is proposed. By this technique the crossover operation can be executed inside the gene so that the re-combinatorial and search function of the crossover operator are well utilized. The simulated annealing selector is used to adjust the fitness function in the evolution process. Some improvements are employed to speed up the algorithm convergence such as keeping excellent seeds, mutation in pair, etc. Based on the proposed model, a computational program has been developed. Three case studies are applied to demonstrate the usefulness and effectiveness of the suggested multistage transmission network planning model.
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