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A Power Transformer Fault Prediction Method through Temporal Convolutional Network on Dissolved Gas Chromatography Data

Mengda Xing, Weilong Ding, Han Li, Tianpu Zhang

2022Security and Communication Networks21 citationsDOIOpen Access PDF

Abstract

The power transformer is an example of the key equipment of power grid, and its potential faults limit the system availability and the enterprise security. However, fault prediction for power transformers has its limitations in low data quality, binary classification effect, and small sample learning. We propose a method for fault prediction for power transformers based on dissolved gas chromatography data: after data preprocessing of defective raw data, fault classification is performed based on the predictive regression results. Here, Mish-SN Temporal Convolutional Network (MSTCN) is introduced to improve the accuracy during the regression step. Several experiments are conducted using data set from China State Grid. The discussion of the results of experiments is provided.

Topics & Concepts

Dissolved gas analysisComputer scienceTransformerData miningData pre-processingPreprocessorBinary classificationConvolutional neural networkArtificial intelligencePattern recognition (psychology)Reliability engineeringSupport vector machineTransformer oilEngineeringVoltagePhysicsQuantum mechanicsPower Transformer Diagnostics and InsulationRough Sets and Fuzzy LogicTime Series Analysis and Forecasting