溶解气体分析
变压器
诊断模型
计算机科学
短时记忆
变压器油
工程类
人工智能
数据挖掘
电气工程
电压
人工神经网络
循环神经网络
作者
Gadepalli Srirama Sarma,B. Ravindranath Reddy,Pradeep M. Nirgude,Pudi Vasudeva Naidu
出处
期刊:International Journal of Power Electronics and Drive Systems
日期:2022-06-01
卷期号:13 (2): 1266-1266
被引量:3
标识
DOI:10.11591/ijpeds.v13.i2.pp1266-1276
摘要
<span lang="EN-US">The most significant tool for defect diagnostics in transformers is dissolved gas analysis (DGA). The time series prediction of dissolved gas levels in oil, when combined with dissolved gas analysis, provides a foundation for transformer fault diagnosis and an early warning. A long short-term memory (LSTM) based prediction model is developed in this paper to train the digital twin for identifying the essential fault in the transformer via DGA. The model is fed with three different gas concentrations as input. This study achieves the performance evaluation in terms of validation accuracy. The suggested model exhibits significant validation accuracy of 99.83%, as indicated by the analyses, thus the early prediction of transformer maintenance is aided. It can be validated that the LSTM model for fault identification and analysis using dissolved gas in the transformer has a lot of research potential.</span>
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