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A Novel Double-Stacked Autoencoder for Power Transformers DGA Signals With An Imbalanced Data Structure

Dongsheng Yang, Jia Qin, Yongheng Pang, Tingwen Huang

2021IEEE Transactions on Industrial Electronics98 citationsDOI

Abstract

Artificial intelligence is the general trend in the field of power equipment fault diagnosis. However, limited by operation characteristics and data defects, the application of the intelligent diagnosis method in power transformers is still in the initial stage. To fill this research gap, in this article, a novel double-stacked autoencoder (DSAE) is proposed for a fast and accurate judgment of power transformer health conditions with an imbalanced data structure. Three problems affecting the diagnosis effectiveness are overcome by a DSAE framework, an aging-tolerance criterion, and an advanced sparse deep clustering network. The proposed DSAE method is validated by two case studies based on an actual power transformer dataset. The results indicate that the proposed DSAE method can achieve a fairly reliable diagnosis with a higher accuracy and less time than the other methods, which demonstrates the superiority and effectiveness of the proposed approach.

Topics & Concepts

AutoencoderCluster analysisTransformerComputer scienceArtificial intelligenceData miningPattern recognition (psychology)Machine learningArtificial neural networkReliability engineeringEngineeringVoltageElectrical engineeringPower Transformer Diagnostics and InsulationHigh voltage insulation and dielectric phenomenaPower System Reliability and Maintenance
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