Artificial neural network based algorithm for early prediction of transient stability using wide area measurements

Mohammed Mahdi, V. M. I. Genç
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引用次数: 19

Abstract

Early prediction of the transient stability of power systems after fault occurrences has a great impact on the performance of wide area protection and control systems designed against transient instabilities. In this paper, an artificial neural networks based methodology is proposed for predicting the power system stability directly after clearing the fault. A dataset is generated to train a multilayer perceptron off-line, which is then used for early online prediction of any transient instability. The neural network is fed by the inputs, which are the pre-fault, during-fault, and post-fault voltage magnitude measurements collected from the phasor measurement units. The success and the effectiveness of the proposed method are demonstrated, as it is applied to the 37-generator 127-bus power test system and an accuracy above 99% is obtained in the early prediction of transient instabilities.
基于人工神经网络的广域测量暂态稳定早期预测算法
电力系统故障后暂态稳定性的早期预测,对广域保护与控制系统的暂态稳定性设计有着重要的影响。本文提出了一种基于人工神经网络的电力系统故障清除后直接稳定性预测方法。生成数据集用于离线训练多层感知器,然后将其用于任何暂态不稳定性的早期在线预测。神经网络的输入是由从相量测量单元收集的故障前、故障中和故障后电压测量值提供的。将该方法应用于37台发电机127母线电力测试系统,对系统暂态失稳的早期预测精度达到99%以上,证明了该方法的成功和有效性。
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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