Wide Area Measurement Based Online Monitoring and Event Detection Using Convolutional Neural Networks

Mert Kesici, Can Berk Saner, Mohammed Mahdi, Y. Yaslan, V. M. I. Genç
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引用次数: 8

Abstract

Online monitoring of the power system is a vital application for enhancing the situational awareness capabilities of the system. Rapid integration of phasor measurement units in the network enables transmission system operators to analyze the events in real time due to their high reporting rates. Real-time detection and classification of the fault related events as no-fault, fault-incidence, fault-on and post-fault stage with no further disturbance, is an important requirement in order to decide on the control actions to protect the system from any instability. In this paper, a sliding window based continuous online monitoring method of the power system using convolutional neural networks is proposed. The effectiveness of the proposed method is validated on the 127-bus Western Systems Coordinating Council test system.
基于广域测量的卷积神经网络在线监测与事件检测
电力系统的在线监测是提高系统态势感知能力的重要应用。由于相量测量单元的高报告率,网络中的相量测量单元的快速集成使传输系统运营商能够实时分析事件。实时检测和分类故障相关事件为无故障、故障发生、故障开启和无进一步干扰的故障后阶段,是决定控制动作以保护系统不受任何不稳定影响的重要要求。提出了一种基于滑动窗口的卷积神经网络电力系统连续在线监测方法。在西部系统协调委员会的127总线测试系统上验证了该方法的有效性。
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