Substation Transformer Failure Analysis Through Text Mining

Nanthiine Nair Ravi, Sulfeeza Mohd Drus, P. S. Krishnan, Nur Laila Abdul Ghani
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引用次数: 6

Abstract

Transformer failure could occur in terms of tripping that results in an unplanned or unseen outage. A good maintenance strategy is therefore an essential component in a power system to prevent unexpected failures. In this paper, the causes of transformer failure within the power transformer systems have been reviewed. Data is obtained from the transmission substation assets from the whole of Peninsular Malaysia for the past 5 years. However, the challenge is that the problem descriptions of the datasets are all in text formats. Thus, text mining approach is chosen for the data analysis using R. This paper covers the most common steps in R, from data preparation to analysis, and visualization through wordcloud generation. This study mainly focuses on bag-of-word text analysis approaches, which means that only word frequencies per text are used and word positions are ignored. Although this simplifies text content dramatically, research and many applications in the real world show that word frequencies alone contain adequate information for many types of analysis. As a result of analysis, keywords like "leak", "lightning", "animal", "cable" and "temperature" are identified as the main causes of transformer failures based on the number of word frequency in the tripping dataset. Further enhancement could be made in the future to predict the failure beforehand using predictive analytics approaches.
基于文本挖掘的变电站变压器故障分析
变压器故障可能发生在跳闸方面,导致计划外或未见过的停电。因此,良好的维护策略是电力系统防止意外故障的重要组成部分。本文综述了电力变压器系统中变压器故障的原因。数据来自整个马来西亚半岛近5年的输电变电站资产。然而,挑战在于数据集的问题描述都是文本格式的。因此,使用R进行数据分析时选择了文本挖掘方法。本文涵盖了R中最常见的步骤,从数据准备到分析,以及通过词云生成的可视化。本研究主要关注词袋文本分析方法,即只使用每个文本的词频,而忽略词的位置。尽管这极大地简化了文本内容,但研究和现实世界中的许多应用表明,单词频率本身就包含了许多类型的分析所需的足够信息。通过分析,根据跳闸数据集中的词频数,确定了“漏电”、“雷电”、“动物”、“电缆”、“温度”等关键词为变压器故障的主要原因。未来可以进一步增强,使用预测分析方法提前预测故障。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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