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Neural networks approach to online identification of multiple failures of protection systems

机译:神经网络方法在线识别保护系统的多个故障

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摘要

In complex emergency situations, failed protection relays and circuit breakers (CBs) have to be identified in order to begin the restoration process of a power system. This paper proposes a novel neural-network approach to identify multiple failures of protection relays and/or CBs. The approach uses information received from protection systems in the form of alarms and is able to deal with incomplete and distorted data. All possible emergencies are simulated and analyzed separately for each section of a power system. Taking into consideration supervisory control and data-acquisition system malfunctions, the corrupted patterns are used to train neural networks. The preliminary classification of emergencies into two different classes is applied to improve the system's performance. The evaluation of results shows that the overall error rate does not exceed 5%. The developed system was tested on a real power system.
机译:在复杂的紧急情况下,必须确定发生故障的保护继电器和断路器(CB),才能开始电力系统的恢复过程。本文提出了一种新颖的神经网络方法来识别保护继电器和/或断路器的多个故障。该方法使用警报形式从保护系统收到的信息,并且能够处理不完整和失真的数据。针对电力系统的每个部分分别对所有可能的紧急情况进行模拟和分析。考虑到监督控制和数据采集系统故障,已损坏的模式用于训练神经网络。将紧急情况的初步分类分为两个不同的类别,以提高系统的性能。结果评估表明总错误率不超过5%。开发的系统已在实际电源系统上进行了测试。

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