配电网优化重构的群智能方法

Sushma Tatipally, Sunil Ankeshwarapu, Sydulu Maheswarapu
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引用次数: 1

摘要

有许多方法被用来减少配电系统中的功率损耗。在这项工作中,使用网络重构的概念,努力提供新的算法来减少配电系统的损耗。电网重构问题必须通过有效的分配潮流来解决。最优网络重构(ONR)策略需要两个关键组件来减少损失:首先,保证重新配置网络的径向性,其次,为最终重新配置的网络提供最优的损失。利用五种元启发式技术:遗传算法(GA)、shuffle Frog Leap算法(SFLA)、粒子群优化(PSO)、鸽子启发优化(PIO)和Jaya优化算法,解决了网络重构的复杂计算问题。这些技术考虑了相等和不相等约束,以寻找系统中功率损耗最小的最佳网络重构。以IEEE 33总线配电系统为测试用例,对测试系统进行网络重构。包括了不同算法的结果。与其他算法相比,鸽子启发优化(PIO)算法的性能优于它们。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Swarm Intelligence Methods for Optimal Network Reconfiguration of Distribution System
There are numerous approaches being used to reduce power losses in the distribution system. In this work, the concept of network reconfiguration is used in an effort to provide new algorithms to decrease distribution system losses. The network reconfiguration issue must be solved with effective distribution load flow (DLF). Two key components are required for the Optimal Network Reconfiguration (ONR) strategy to reduce losses: first, promising radiality for the reconfigured network, and second, providing optimal losses for the final reconfigured network. The complex computational problem of network reconfiguration is addressed using five meta-heuristic techniques: Genetic Algorithm (GA), Shuffled Frog Leap Algorithm (SFLA), Particle Swarm Optimization (PSO), Pigeon Inspired Optimization (PIO), and Jaya Optimization algorithm. These techniques take into account equality and inequality constraints to find the best network reconfiguration with the minimum power losses in the system. The IEEE 33 bus distribution system is used as a test case, and the test system is subjected to network reconfiguration. Results of different algorithms were included. Over the other algorithms, the Pigeon Inspired Optimization (PIO) algorithm outperforms them.
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