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Toward Self-Supervised Feature Learning for Online Diagnosis of Multiple Faults in Electric Powertrains

Jagath Sri Lal Senanayaka, Huynh Van Khang, Kjell G. Robbersmyr

2020IEEE Transactions on Industrial Informatics39 citationsDOI

Abstract

This article proposes a novel online fault diagnosis scheme for industrial powertrains without using historical faulty or labeled training data. The proposed method combines a one-class support vector machine (SVM) based anomaly detection and supervised convolutional neural network (CNN) algorithms to online detect multiple faults and fault severities under variable speeds and loads. The one-class SVM algorithm is to derive a score for defining faults or health classes in the first stage, and the resulting health classes are used as the training data for the CNN-based classifier in the second stage. Within this framework, the self-supervised learning of the proposed CNN algorithm allows the online diagnosis scheme to learn features based on the latest data. The effectiveness of the scheme is validated via a comparison study using experimental data from an in-house test setup. Finally, the online implementation of the proposed scheme on the test setup is briefly introduced.

Topics & Concepts

Computer scienceSupport vector machineArtificial intelligenceMachine learningConvolutional neural networkPowertrainTest dataScheme (mathematics)Classifier (UML)Feature extractionData miningPattern recognition (psychology)TorquePhysicsThermodynamicsProgramming languageMathematicsMathematical analysisMachine Fault Diagnosis TechniquesFault Detection and Control SystemsAnomaly Detection Techniques and Applications
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