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A feed-forward artificial neural network with enhanced feature selection for power system transient stability assessment

机译:具有增强功能选择的前馈人工神经网络用于电力系统暂态稳定评估

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摘要

This paper describes an approach where an artificial neural network is used to predict the stability status of the power system. This efficient and robust approach combines the advantages of the time-domain integration schemes and artificial neural network for on-line transient stability assessment of the power system. The transient stability index has been obtained by the extended equal area criterion method and is used as an output of the neural network. Two feature selection techniques have been used to identify the input variables best suitable for training. The proposed technique predicts the transient stability index correctly, without any false alarm. In addition, the transient stability index as an output of the neural network helps to implement possible control actions. The results obtained demonstrate the potential for neural network to be a part of any on-line dynamic security assessment tool.
机译:本文介绍了一种方法,其中使用人工神经网络来预测电力系统的稳定性状态。这种高效且鲁棒的方法结合了时域集成方案和人工神经网络的优点,用于电力系统的在线暂态稳定性评估。通过扩展的等面积准则方法获得了暂态稳定指数,并将其用作神经网络的输出。已经使用两种特征选择技术来确定最适合训练的输入变量。所提出的技术可以正确地预测暂态稳定指数,而不会产生任何误报。另外,作为神经网络输出的暂态稳定指数有助于实现可能的控制动作。获得的结果表明,神经网络有可能成为任何在线动态安全评估工具的一部分。

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