Application of Artificial Neural Networks in Determining Critical Clearing Time in Transient Stability Studies

D. Rama Krishna, K. V. S. Ramachandra Murthy, G. Govinda Rao
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引用次数: 6

Abstract

This paper describes a neural network based adaptive pattern recognition approach by making a thorough analysis on a power system for estimation of the critical clearing time. A nine bus system is considered for the purpose of transient stability analysis. Faults at five locations are assumed at different instants. Critical clearing times for all five faults at six different loading levels are obtained. Out of thirty cases, 24 cases corresponding to four faults have been used for training the neural network and remaining six CCTs corresponding to the fifth fault at six loading levels obtained by ANN as well as modified Eular method. The same is repeated for all five faults. Nueral network designed with 12 input neurons, 8 hidden neurons and one output neuron. Back propagation technique is used to adjust the weights. Analytical calculations are compared with the values obtained by neural network. Results show that ANN gives accurate results.
人工神经网络在暂态稳定研究中确定临界清除时间的应用
本文通过对某电力系统进行深入分析,提出了一种基于神经网络的自适应模式识别方法来估计临界清净时间。本文考虑了一个九母线系统的暂态稳定性分析。假定五个位置的断层在不同时刻发生。在六个不同的负载水平下,获得了所有五个故障的临界清除时间。在这30个案例中,24个案例对应4个故障用于训练神经网络,剩下的6个cct对应6个负载水平下的第5个故障,分别由人工神经网络和改进的Eular方法得到。对所有五种错误都重复同样的步骤。由12个输入神经元、8个隐藏神经元和1个输出神经元组成的神经网络。采用反向传播技术对权重进行调整。将解析计算结果与神经网络计算结果进行了比较。结果表明,人工神经网络给出了准确的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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