4.8 Article

Outage Cause Detection in Power Distribution Systems Based on Data Mining

期刊

IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS
卷 17, 期 1, 页码 640-649

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TII.2020.2966505

关键词

Meteorology; Data mining; Substations; Vegetation; Data visualization; Animals; Feature extraction; Artificial intelligence; association rules; data mining; power system; reliability

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By analyzing outage data and using association rule mining techniques, this article identifies the main factors causing power system outages and demonstrates the effectiveness and validity of the proposed method.
Realizing the factors involved in power system outages can be effective in reliability improvement. In this article, we analyze the distribution power network outage data to find dominant factors in occurring vegetation-, animal-, and equipment-related outages. After their integration, real outage, weather, and load as the input data are used to extract associated features. In this article, visualization techniques are initially utilized to show the impact of features on the outage occurrence and then association rule mining is used to find factors correlated with each outage type as well as each other. Association rules are mined using Apriori technique, considering the chi-square and lift index as the measures of interestingness. The outage analyses are also performed for each equipment separately to find the associated rules. The results showing the effectiveness and validity of the proposed method to identify the factors connected with outage occurrences can be used for future planning and the operation schedule of distribution power networks.

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