Distribution Network Reconfiguration with Different Load Models using Adaptive Quantum inspired Evolutionary Algorithm

G. Manikanta, Ashish Mani, H. P. Singh, D. Chaturvedi
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引用次数: 5

Abstract

Distribution network has high power losses and poor voltage regulation as compared with transmission system due to high admittance ratio. Reconfiguration is one of the methods used in distribution system to reduce the power losses. Distribution networks are primarily designed in meshed structure, under normal operating conditions they are operated in radial configuration. Two types of switches viz., sectionalizing and tie line switches are normally used in distribution system. The operational performance of distribution system can be improved by changing the functional links between the switches or branches. Service restoration, improvement in voltage profile, load balancing and reduction in power loss are some of major advantages produced by reconfiguration. Since many switching combinations are possible, the optimal switching configuration of a power distribution network is a difficult non linear combinatorial optimization problem. In this paper, an Adaptive Quantum inspired Evolutionary Algorithm (AQiEA) approach is used to determine the optimal switching configuration of a power distribution network. Voltage dependent load models viz., constant current load, constant impedance and constant power load are used to reduce the power losses with reconfiguration. The main criterion addressed in this paper is minimizing the active power loss with network reconfiguration for different load models. A class of mix load model is also considered. Comparative study is performed on IEEE 33 bus system which demonstrates the performance, accuracy and effectiveness of the proposed algorithm.
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基于自适应量子进化算法的不同负荷模型配电网重构
配电网导纳比高,与输电系统相比,其功率损耗大,调压差。重新配置是配电系统减少电力损耗的方法之一。配电网主要设计成网状结构,在正常运行条件下,配电网以径向运行。配电系统中通常使用两种类型的开关:分路开关和联络线开关。通过改变开关或分支之间的功能联系,可以提高配电系统的运行性能。业务恢复,电压分布的改善,负载平衡和功率损耗的减少是一些主要的好处,通过重新配置。配电网的最优开关配置是一个复杂的非线性组合优化问题,因为可能存在多种开关组合。本文采用自适应量子启发进化算法(AQiEA)来确定配电网的最优开关配置。采用电压相关负载模型,即恒流负载、恒阻抗负载和恒功率负载,通过重构来降低功率损耗。本文讨论的主要准则是在不同负荷模型下,通过网络重构使有功功率损耗最小化。还考虑了一类混合荷载模型。在IEEE 33总线系统上进行了对比研究,验证了该算法的性能、准确性和有效性。
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Informatian Retrieval of Indonesian Translated version of Al Quran and Hadith Bukhori Muslim Load Flow Analysis of IEEE 14 Bus System Using ANN Technique Low Cost Smartphone Controlled Wireless UAV A Survey Of Microwave Bandpass Filter Using Coupled Line Resonator -Research Design And Development SEEMS 2018 Author Index
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