首页> 外文期刊>International Journal of Innovative Computing Information and Control >A NOVEL MULTI-OBJECTIVE CHAOTIC CRAZY PSO ALGORITHM FOR OPTIMAL OPERATION MANAGEMENT OF DISTRIBUTION NETWORK WITH REGARD TO FUEL CELL POWER PLANTS
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A NOVEL MULTI-OBJECTIVE CHAOTIC CRAZY PSO ALGORITHM FOR OPTIMAL OPERATION MANAGEMENT OF DISTRIBUTION NETWORK WITH REGARD TO FUEL CELL POWER PLANTS

机译:燃料电池电厂配电网最优运行管理的新型多目标混沌疯狂粒子群算法

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This paper presents an efficient Multi-objective Crazy Chaotic Particle Swarm Optimization (MCCPSO) evolutionary algorithm to solve the Multi-objective Optimal Operation Management (MOOM) considering Fuel Cell Power Plants (FCPPs) in distribution network. The objective functions of the MOOM problem are to decrease the total electrical energy losses, the total electrical energy cost and the total pollutant emission produced by sources. For the multi-objective optimization problem, the use of weights to form a composite objective function reduces a multiple problem to a single problem. However, it also obviously loses some information in the conversion and this strategy is not expected to provide a robust solution or even help trace the efficient frontier of solutions. Our main thrust is to facilitate a string of solutions of the problem without converting to the original problem to a simpler case. This paper presents a new MCCPSO algorithm for the MOOM problem. The proposed algorithm maintains a finite-sized repository of non-dominated solutions, which gets iteratively updated in the presence of new solutions. Since the objective functions are not the same, a fuzzy clustering technique is used to control the size of the repository within the limits. The proposed algorithm is tested on a distribution test feeder and the results demonstrate the capabilities of the proposed approach to generate true and well-distributed Pareto optimal non-dominated solutions of the MOOM problem.
机译:本文提出了一种有效的多目标疯狂混沌粒子群优化算法(MCCPSO),用于求解考虑配电网中燃料电池电厂(FCPP)的多目标最优运行管理(MOOM)。 MOOM问题的目标功能是减少源产生的总电能损耗,总电能成本和总污染物排放。对于多目标优化问题,使用权重形成复合目标函数可以将多个问题简化为单个问题。但是,它显然也会在转换中丢失一些信息,并且该策略不能提供可靠的解决方案,甚至无法帮助跟踪解决方案的有效边界。我们的主要目的是在不将原始问题转换成简单问题的情况下,促进一系列问题的解决。本文提出了一种新的针对MCOM问题的MCCPSO算法。所提出的算法维护了非支配解决方案的有限大小的存储库,该存储库会在存在新解决方案的情况下进行迭代更新。由于目标函数不相同,因此使用模糊聚类技术将存储库的大小控制在限制范围内。所提出的算法在分布测试馈线上进行了测试,结果证明了所提出的方法能够生成真实且分布均匀的MOOM问题的帕累托最优非支配解的能力。

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