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Probabilistic interactive fuzzy satisfying generation and transmission expansion planning using fuzzy adaptive chaotic binary PSO algorithm

机译:基于模糊自适应混沌二进制PSO算法的概率交互式模糊满足发电和输电扩展计划

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摘要

In this paper, an interactive fuzzy satisfying method based on fuzzy adaptive chaotic binary particle swarm optimization (FACBPSO) algorithm is proposed to investigate the multi-objective Generation and Transmission Expansion Planning (G-TEP). The objective functions of the G-TEP problem, which are modeled by fuzzy sets, present the total investment/operation cost and the total pollutant emission. In modern power systems, the necessity of considering the wind/solar energy resources in Generation Expansion Planning (GEP) studies is important. In addition, HVDC links, transmitting renewable resource power from remote sites, should be considered in TEP problem. The use of the wind/solar energy due to the uncertainty of their generation and the integration of HVDC links would consequently impose more complexity to solution of the G-TEP problem. In this paper, the proposed algorithm is tested on an IEEE test system based on economic and environmental considerations to generate an optimal expansion plan.
机译:提出了一种基于模糊自适应混沌二进制粒子群算法(FACBPSO)的交互式模糊满足方法,研究了多目标发电与输电扩展计划(G-TEP)。用模糊集建模的G-TEP问题的目标函数表示总投资/运营成本和总污染物排放。在现代电力系统中,在发电扩展计划(GEP)研究中考虑风/太阳能资源的必要性很重要。此外,在TEP问题中应考虑从远程站点传输可再生资源电力的HVDC链路。由于风/太阳能发电的不确定性和高压直流输电线路的整合而导致的使用,因此将给解决G-TEP问题带来更多的复杂性。在本文中,基于经济和环境考虑,在IEEE测试系统上对提出的算法进行了测试,以生成最佳的扩展计划。

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