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A Novel Stochastic Framework Based on Cloud Theory and -Modified Bat Algorithm to Solve the Distribution Feeder Reconfiguration

机译:基于云理论和改进的Bat算法的新随机框架解决配电馈线重构

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Distribution feeder reconfiguration (DFR) is a precious operation strategy that can improve the system from different aspects including total cost, reliability, and power quality. Nevertheless, the high complexity of the new smart grids has resulted in much uncertainty in the DFR problem that necessities the use of a sufficient stochastic framework to deal with them. In this way, this paper proposes a new stochastic framework based on cloud theory to account the uncertainties associated with multiobjective DFR problem from the reliability point of view. Cloud theory is constructed based on fuzzy theory and probability idea. In comparison with the Monte Carlo simulation method, cloud models can give more information on the uncertainties associated with the problem. This special aspect of cloud models makes it possible to integrate the fuzziness and randomness of qualitative concepts through the cloud drops and then transforms them to the quantitative model. In order to solve the proposed problem, a fast and powerful optimization technique is required. To deal with this issue, a new optimization algorithm designated as -bat algorithm is proposed in this paper. The feasibility and satisfying performance of the proposed method are examined on the 32-bus and 69-bus IEEE distribution test system.
机译:配电馈线重新配置(DFR)是一种宝贵的操作策略,可以从不同方面改善系统,包括总成本,可靠性和电能质量。然而,新智能电网的高度复杂性已导致DFR问题中的很多不确定性,这需要使用足够的随机框架来处理它们。通过这种方式,本文提出了一种基于云理论的新随机框架,从可靠性的角度考虑了与多目标DFR问题相关的不确定性。云理论是建立在模糊理论和概率思想的基础上的。与蒙特卡罗模拟方法相比,云模型可以提供更多与问题相关的不确定性信息。云模型的这一特殊方面使得通过云滴整合定性概念的模糊性和随机性成为可能,然后将它们转换为定量模型。为了解决所提出的问题,需要一种快速而强大的优化技术。针对这一问题,本文提出了一种新的优化算法,称为-bat算法。在32总线和69总线IEEE配电测试系统上研究了该方法的可行性和令人满意的性能。

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