Optimization of combined economic and emission dispatch problem — A comparative study

R. Bharathi, M.J. Kumar, D. Sunitha, S. Premalatha
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引用次数: 46

Abstract

This paper presents an evolutionary computation (EC) method called genetic algorithm (GA) and a metaheuristic algorithm called ant colony search algorithm (ACSA) to solve the combined economic and emission dispatch (EED) problem with transmission losses. Economic load dispatch (ELD) and economic emission dispatch (EED) have been applied to obtain optimal fuel cost and optimal emission of generating units, respectively. Combined economic emission dispatch (CEED) problem is obtained by considering both the economy and emission objectives. A real coded GA has been implemented to minimize both the dispatch cost as well as emission while satisfying all the equality and inequality constraints. ACSA is also developed to provide a means of comparison and it is a new cooperative agents approach, which is inspired by the observation of the behaviors of real ant colonies on the topic of ant trail formation and foraging methods. In the ACSA, a set of cooperating agents called "ants" cooperates to find a good solution for economic dispatch problem. The merits of ACSA are parallel search and optimization capabilities. The feasibility of the proposed method is tested on a power system network and the experimental results of both GA and ACSA are compared with the solutions of conventional Lamda iteration method.
经济与排放联合调度优化问题的比较研究
提出了一种进化计算方法遗传算法(GA)和一种元启发式算法蚁群搜索算法(ACSA)来解决考虑输电损耗的经济与排放联合调度问题。经济负荷调度(ELD)和经济排放调度(EED)分别用于发电机组的最优燃料成本和最优排放。综合考虑了经济目标和排放目标,得到了综合经济排放调度问题。实现了一种实数编码遗传算法,在满足所有等式和不等式约束的情况下,使调度成本和排放最小化。ACSA是一种新的协作智能体方法,它是由对真实蚁群行为的观察启发而发展起来的,用于研究蚂蚁路径形成和觅食方法。在ACSA中,一组被称为“蚂蚁”的合作代理相互合作,以寻找经济调度问题的良好解决方案。ACSA的优点是并行搜索和优化能力。在电力系统网络上验证了该方法的可行性,并将遗传算法和ACSA算法的实验结果与传统Lamda迭代法的解进行了比较。
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