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Data mining approach to fault detection for isolated inverter-based microgrids

机译:基于数据挖掘的隔离式逆变器微电网故障检测方法

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This study investigates the problem of fault protection in a microgrid containing inverter-based distributed generators (IBDGs). Owing to the low magnitude of short circuit currents generated by IBDGs, traditional protection techniques which relay on current (fuses and overcurrent relays) may fail to protect such networks. This study addresses the problem of finding suitable features derived from local electrical measurements that can be used by statistical classifiers to better discriminate fault events from normal network events. Given a series of simple electrical features, a study of feature selection and data mining techniques is conducted in the context of fault detection in isolated microgrids with IBDGs. Two statistical classifiers are compared and implemented in this framework: Naive Bayes and decision trees. The proposed approach is tested on a facility scale microgrid consisting of three IBDGs.
机译:这项研究调查了包含基于逆变器的分布式发电机(IBDG)的微电网中的故障保护问题。由于IBDG产生的短路电流量较小,传统的基于电流(保险丝和过电流继电器)的保护技术可能无法保护此类网络。这项研究解决了从本地电气测量中找到合适的特征的问题,统计分类器可以使用这些特征更好地将故障事件与正常网络事件区分开。给定一系列简单的电气特征,在具有IBDG的隔离微电网中进行故障检测的情况下,对特征选择和数据挖掘技术进行了研究。在此框架中比较并实现了两个统计分类器:朴素贝叶斯和决策树。在由三个IBDG组成的设施规模微电网上对提出的方法进行了测试。

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