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Real-time monitoring of long-term voltage stability via convolutional neural network

机译:通过卷积神经网络实时监控长期电压稳定性

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Convolutional Neural Network (CNN) is one of the most promising deep learning technique that has achieved great success in many areas. In this paper, we implement a CNN for real-time monitoring of long-term voltage stability margin (VSM). To clarify our motivations of introducing CNN in this problem, we first discuss the essence and the complicity of VSM prediction, and summarize the limitations of existing methods, then point out the input structure of CNN inherently contains the topology information of power network, thus could have great potential in solving the problem. An CNN architecture, together with an input encoding method that strengthens topology information, is proposed and tested on IEEE 30-bus system. Preliminary results show that it can achieve better prediction performance comparing to some existing methods, and can be successfully employed in online voltage stability monitoring.
机译:卷积神经网络(CNN)是最有前途的深度学习技术之一,在许多领域都取得了巨大的成功。在本文中,我们实现了CNN,用于实时监测长期电压稳定裕度(VSM)。为了阐明在此问题中引入CNN的动机,我们首先讨论VSM预测的本质和复杂性,总结现有方法的局限性,然后指出CNN的输入结构固有地包含电网的拓扑信息,因此可以具有解决问题的巨大潜力。提出并在IEEE 30总线系统上测试了CNN体系结构,并结合了增强拓扑信息的输入编码方法。初步结果表明,与现有的一些方法相比,该方法可以获得更好的预测性能,并且可以成功地用于在线电压稳定性监测中。

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