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Study on Data Mining for Grounding Fault Line Selection in 6kV Ineffectively Grounded System of Coal Mine

机译:6kV煤矿无效接地系统接地故障选线的数据挖掘研究。

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a great amount of fault wave has been recorded by the devices for detecting phase-to-ground faults in ineffectively grounded systems. However, a better method hasn't found for effectively taking advantage of these data to improve the result of fault line selection. Data mining techniques can be used for fault line selection in ineffectively grounded system to gain knowledge from the existing data and to improve the technique of fault line selection. This paper briefly describes the principles, methods and implementation of data mining techniques, classifies the fault samples of ineffectively grounded systems by using clustering analysis method, employs different fault line selection methods according to the types of faults, and consequently provides a set of criteria for modeling of typical ineffectively grounded systems and verifying the validity of real-time fault line selections. The validity of the methods has been convinced by the calculation using the data obtained from the real performance of a substation in coal mine. It has been shown to be promising to employ the data mining techniques in ineffectively grounded systems fault detection. This paper provides very good methods for resolving the difficulties with onsite tests, enhancing the techniques of fault line selection and establishing the fault detection management systems.
机译:在无效接地系统中,用于检测相接地故障的设备记录了大量故障波。然而,还没有找到一种更好的方法来有效利用这些数据来改善故障线选择的结果。数据挖掘技术可用于接地系统无效的故障线选择,以从现有数据中获取知识并改进故障线选择技术。本文简要介绍了数据挖掘技术的原理,方法和实现,通过聚类分析方法对无效接地系统的故障样本进行了分类,根据故障的类型采用了不同的故障选线方法,从而为故障提供了一套判据。对典型的无效接地系统进行建模,并验证实时故障线路选择的有效性。通过使用从煤矿变电站的实际性能获得的数据进行的计算,已经证明了该方法的有效性。事实证明,在无效接地的系统故障检测中采用数据挖掘技术是有希望的。本文为解决现场测试难题,增强故障选线技术,建立故障检测管理系统提供了很好的方法。

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