基于改进粒子群算法的热液和可再生能源系统调度

Prahlad Mundotiya, Parul Mathuria, H. Tiwari, Vikash Kumar Sharma
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引用次数: 0

摘要

新兴电力系统的经济性在很大程度上取决于热液调度问题。本文的目的是提出基于软计算的增强粒子群优化技术来处理短期热液调度问题。本文采用一个由水力、火力发电厂和风力发电厂组成的多流级联系统测试系统,在考虑经济和环境因素的同时找到最佳解决方案。应用数学模型求解了上述电厂在IEEE-30总线系统中的出水、发电成本和有害排放。统计数据被用来衡量所建议算法的可靠性和一致性。为了找到传统调度问题的最优生成调度,采用了鲁棒启发式搜索算法求解。开发的启发式方法优于传统的软计算方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scheduling of Hydrothermal and Renewable Energy Systems Using Enhanced PSO Technique
The economics of emerging power systems heavily depend on the subject of hydrothermal scheduling. The purpose of this article is to suggest soft computing-based enhanced particle swarm optimization techniques for dealing with short-term hydrothermal scheduling problem. The article uses a test system made up of a multi-stream cascaded system with hydro, thermal plants and wind farms, to find the best solution while taking economic and environmental considerations into account. The mathematical models applied to solve the water outflow, generating cost, and harmful emissions from the above-mentioned power plants included in the IEEE-30 Bus system. Statistics have been used to gauge the dependability and consistency of the suggested algorithm. In order to find the optimal generating schedule for conventional scheduling issue, a solution technique called robust heuristic search algorithm has been used. The developed heuristic methodology has outperformed conventional and soft computing methodology.
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