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End to end machine learning for fault detection and classification in power transmission lines

机译:端到端机器学习用于电力传输线路故障检测和分类

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摘要

This paper proposes a new machine learning approach for fault detection and classification tasks in electrical power transmission networks. This method exploits the temporal sequence of the power system's operational data and develops an 'end to end' model employing Long Short-Term Memory (LSTM) units working directly on the operational data instead of features. The temporal sequences are different in the case of normal and faulty conditions. End to end learning simplifies the decision-making process and eliminates the need for complex feature extraction process by learning directly from the labelled datasets. The method is rigorously tested for all types of faults, which are further subjected to a range of fault resistance, distance, loading conditions, system parameters and noise levels. The proposed method can also work under power swing conditions. The method is also tested on WSCC 9 bus system. The proposed method has shown fast response in terms of time performance and is resilient towards operational conditions.
机译:本文提出了一种用于电力传输网络中的故障检测和分类任务的新机器学习方法。该方法利用电力系统的运行数据的时间序列,并开发使用直接在操作数据而不是特征上直接工作的长短期内存(LSTM)单元的“端到端”模型。在正常和故障的情况下,时间序列是不同的。结束到终学习简化了决策过程,并通过直接从标记的数据集学习来消除复杂特征提取过程的需求。对于所有类型的故障,该方法严格地测试了所有类型的故障,这进一步受到一系列故障电阻,距离,装载条件,系统参数和噪声水平。所提出的方法还可以在动力摆动条件下工作。该方法还在WSCC 9总线系统上进行了测试。该方法在时间性能方面表现出快速响应,并且对操作条件具有弹性。

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