An ANN based network reconfiguration approach for voltage stability improvement of distribution network

P. Kayal, S. Chanda, C. K. Chanda
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引用次数: 12

Abstract

Recent trend in power sector is to automate distribution system to improve their reliability, efficiency and service quality. To facilitate automation of distribution system, an Artificial Neural Network (ANN) based novel methodology for enhancement of voltage stability by network reconfiguration is presented in this paper. Network reconfiguration is a process which alters the feeder topological structure by changing the open/close status of the sectionalizing (normally closed) and ties switches (normally open) in the system. A new voltage stability index is developed for voltage stability assessment of whole distribution network. In this work, a two stage search of switching option i.e. local search and global search is implemented to achieve desired network configuration. A multilayer ANN model with Error Back Propagation Learning (EBPL) algorithm is simulated for global search to obtained optimal set of candidate switching. The proposed scheme is tested on an 11 kV practical radial distribution system consisting of 52 buses. The experimental results are promising and encouraging. After reconfiguration, better voltage stable condition of the system is attained. Other objectives which are also satisfied are minimization of active and reactive power losses and improvement of voltage profile of most of the buses.
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基于人工神经网络的配电网电压稳定性改进网络重构方法
为提高配电系统的可靠性、效率和服务质量,配电系统自动化是电力行业发展的新趋势。为了促进配电网的自动化,提出了一种基于人工神经网络的配电网重构增强电压稳定性的新方法。网络重构是通过改变系统中分路开关(常闭)和纽带开关(常开)的开/关状态来改变馈线拓扑结构的过程。提出了一种新的配电网电压稳定评价指标。本文通过对交换选项进行局部搜索和全局搜索两阶段搜索,实现理想的网络配置。仿真了基于误差反向传播学习(EBPL)算法的多层人工神经网络模型,并对其进行全局搜索以获得最优候选交换集。该方案在一个由52根母线组成的11 kV实用径向配电系统上进行了试验。实验结果是令人鼓舞的。改造后的系统达到了较好的电压稳定状态。其他目标也得到了满足,最大限度地减少了有功和无功功率的损失,并改善了大多数母线的电压分布。
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