Evolutionary approach for solving economic dispatch in power system

B. Rahimullah, E. Ramlan, T. Rahman
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引用次数: 16

Abstract

The problem or economic dispatch has been forwarded and solved by numerous methods. This paper provides alternative methods to solve the problem. In this paper, evolutionary programming (EP) is used as one of the techniques to solve the problem of economic dispatch in power system. Log-normal Gaussian mutation or commonly known as metaEP, is used as the essential operator of generating the sufficient power in order to fulfill demand at a minimum cost. The proposed EP method provides a solution consisting suitable power generated of each generator and meeting the demand with minimum total cost. The study also investigates the differences of using standard EP against metaEP to solve the same problem. The comparisons between the both methods and GA solution to solve the problems are also highlighted in this paper. The study findings show that both EP methods perform better compared to GA in solving the economic dispatch problem. However, metaEP seems to be more robust in solving problems in a bigger search space compared to the original EP. The study conducted for the comparison is based on the solution and performance of each algorithm in solving the problem.
求解电力系统经济调度的演化方法
经济调度问题被提出并通过多种方法解决。本文提供了解决这一问题的替代方法。本文将进化规划(EP)作为解决电力系统经济调度问题的技术之一。采用对数正态高斯突变算子(俗称metaEP)作为以最小成本产生足够电力以满足需求的基本算子。所提出的EP方法提供了一种以最小的总成本使每台发电机产生合适的功率并满足需求的解决方案。研究还探讨了使用标准EP和metaEP解决相同问题的差异。本文还重点比较了这两种方法与遗传算法解决问题的方法。研究结果表明,两种方法在解决经济调度问题上都优于遗传算法。然而,与原始EP相比,metaEP在解决更大搜索空间中的问题方面似乎更加健壮。进行比较的研究是基于每个算法在解决问题时的解决方案和性能。
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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