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首页> 外文期刊>IEEE Transactions on Power Systems >Power Distribution Fault Cause Identification With Imbalanced Data Using the Data Mining-Based Fuzzy Classification $E$-Algorithm
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Power Distribution Fault Cause Identification With Imbalanced Data Using the Data Mining-Based Fuzzy Classification $E$-Algorithm

机译:基于数据挖掘的模糊分类$ E $-算法,利用不平衡数据识别配电故障原因

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摘要

Power distribution systems have been significantly affected by many outage-causing events. Good fault cause identification can help expedite the restoration procedure and improve the system reliability. However, the data imbalance issue in many real-world data sets often degrades the fault cause identification performance. In this paper, the E-algorithm, which is extended from the fuzzy classification algorithm by Ishibuchi to alleviate the effect of imbalanced data constitution, is applied to Duke Energy outage data for distribution fault cause identification. Three major outage causes (tree, animal, and lightning) are used as prototypes. The performance of E-algorithm on real-world imbalanced data is compared with artificial neural network. The results show that the E-algorithm can greatly improve the performance when the data are imbalanced
机译:配电系统已受到许多中断事件的严重影响。良好的故障原因识别可以帮助加快恢复过程并提高系统可靠性。但是,许多实际数据集中的数据不平衡问题通常会降低故障原因识别性能。本文将Ishibuchi的模糊分类算法扩展到E算法,以减轻不平衡数据构成的影响,将其应用于杜克能源中断数据以进行配电故障原因识别。原型使用了三个主要的中断原因(树木,动物和闪电)。将电子算法在现实世界中不平衡数据上的性能与人工神经网络进行了比较。结果表明,当数据不平衡时,电子算法可以大大提高性能。

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