用于电压稳定监测的人工神经网络的发展

S. Sahari, A. F. Abidin, T. Rahman
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引用次数: 26

摘要

本文介绍了基于人工神经网络的电网电压稳定指标预测方法的发展及其应用。本文的主要特点是介绍了用C语言编程开发神经网络反向传播的方法及其在预测电网电压稳定指标方面的准确性。该神经网络以各负载母线的实功率Pd和无功功率Qd作为输入信息,以覆盖各负载母线稳定性的电压稳定指标L信息作为输出信息来完成训练。对所开发的神经网络在大量随机荷载工况下的泛化能力进行了测试。获得了性能快速、评估准确、预测良好的电压稳定指标。介绍并讨论了在ieee6总线测试系统上的测试结果。
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Development of artificial neural network for voltage stability monitoring
This paper presents the development and an application artificial neural network (ANN) based method for predicting of voltage stability index in power system network. The main feature of this paper is to introduce the approach in developing neural network backpropagation by using C programming and its accuracy in predicting voltage stability index in the power system network. The training developed neural network was accomplished by using real power Pd and reactive power Qd at each load bus as input information, and voltage stability index L information covering stability at each individual load bus as output information. The generalization capability of the developed neural networks under large number of random operation of loading conditions has been tested. Fast performance, accurate evaluation and good prediction for voltage stability index have been obtained. Results of tests conducted on IEEE 6-bus test system are presented and discussed.
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