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An efficient hybrid evolutionary algorithm based on PSO and HBMO algorithms for multi-objective Distribution Feeder Reconfiguration

机译:基于PSO和HBMO算法的高效混合进化算法用于多目标配电馈线重构

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This paper introduces a robust searching hybrid evolutionary algorithm to solve the multi-objective Distribution Feeder Reconfiguration (DFR). The main objective of the DFR is to minimize the real power loss, deviation of the nodes' voltage, the number of switching operations, and balance the loads on the feeders. Because of the fact that the objectives are different and no commensurable, it is difficult to solve the problem by conventional approaches that may optimize a single objective. This paper presents a new approach based on norm3 for the DFR problem. In the proposed method, the objective functions are considered as a vector and the aim is to maximize the distance (norm2) between the objective function vector and the worst objective function vector while the constraints are met. Since the proposed DFR is a multi objective and non-differentiable optimization problem, a new hybrid evolutionary algorithm (EA) based on the combination of the Honey Bee Mating Optimization (HBMO) and the Discrete Particle Swarm Optimization (DPSO), called DPSO-HBMO, is implied to solve it. The results of the proposed reconfiguration method are compared with the solutions obtained by other approaches, the original DPSO and HBMO over different distribution test systems.
机译:本文提出了一种鲁棒的搜索混合进化算法来解决多目标配电馈线重构问题。 DFR的主要目标是最大程度地减少实际功率损耗,节点电压的偏差,开关操作的次数并平衡馈线上的负载。由于目标是不同的且不可估量,因此很难通过可以优化单个目标的常规方法来解决问题。本文提出了一种基于norm3的DFR问题的新方法。在提出的方法中,将目标函数视为一个向量,目的是在满足约束的情况下最大化目标函数向量与最差目标函数向量之间的距离(norm2)。由于拟议的DFR是一个多目标且不可微的优化问题,因此基于蜜蜂交配优化(HBMO)和离散粒子群优化(DPSO)相结合的新混合进化算法(EA),称为DPSO-HBMO ,暗示要解决它。将建议的重新配置方法的结果与其他方法(在不同的分布测试系统上,原始的DPSO和HBMO)获得的解决方案进行了比较。

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