Enhancing power transformer health assessment through dimensional reduction and ensemble approaches in Dissolved Gas Analysis

IF 3.8 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Abdelmoumene Hechifa, Saurabh Dutta, Abdelaziz Lakehal, Hazlee Azil Illias, Arnaud Nanfak, Chouaib Labiod
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引用次数: 0

Abstract

Transformer health analysis using Dissolved Gas Analysis is crucial for diagnosing power transformer faults. This paper proposes an innovative approach to diagnose power transformer faults by integrating machine learning algorithms with Ensemble techniques. The method involves fusing reduced dimensional input features through Principal Component Analysis with Ensemble techniques such as Bagging, Decorate, and Boosting. Various machine learning algorithms, including Decision Tree (DT), K-Nearest Neighbours, Radial Basis Function Network, and Support Vector Machine, are employed in conjunction with Ensemble techniques. The long short-term memory algorithm was used to create synthetic data to solve the issue of data imbalance. A dataset of 683 samples is used in the study for training, testing, validation, and comparison with current techniques. The results highlight the effectiveness of Ensemble techniques, particularly Boosting, which demonstrates superior performance across all classification algorithms. The Boosting with DT algorithm achieves an impressive accuracy of 98.32%, surpassing alternative methods. In validation, the proposed Boosting Ensemble technique outperforms various approaches, showcasing its diagnostic accuracy and superiority over alternative methods. The research emphasises the model's effectiveness in smoothing input vectors, enhancing harmony with ensemble techniques, and overcoming limitations in prior methods.

Abstract Image

溶解气体分析中采用降维和集合方法加强电力变压器健康评估
利用溶解气体分析法对变压器进行健康分析是诊断变压器故障的关键。本文提出了一种将机器学习算法与集成技术相结合的电力变压器故障诊断方法。该方法包括通过主成分分析和集成技术(如Bagging、decoration和Boosting)融合降维输入特征。各种机器学习算法,包括决策树(DT)、k近邻、径向基函数网络和支持向量机,与集成技术结合使用。采用长短期记忆算法生成合成数据,解决数据不平衡问题。研究中使用了683个样本的数据集,用于训练、测试、验证以及与当前技术的比较。结果强调了集成技术的有效性,特别是Boosting,它在所有分类算法中都表现出卓越的性能。DT增强算法达到了令人印象深刻的98.32%的准确率,超过了其他方法。在验证中,所提出的Boosting Ensemble技术优于各种方法,展示了其诊断准确性和优于替代方法的优势。该研究强调了该模型在平滑输入向量、增强与集成技术的和谐以及克服先前方法的局限性方面的有效性。
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来源期刊
IET Nanodielectrics
IET Nanodielectrics Materials Science-Materials Chemistry
CiteScore
5.60
自引率
3.70%
发文量
7
审稿时长
21 weeks
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