Litcius/Paper detail

Cross-domain gearbox diagnostics under variable working conditions with deep convolutional transfer learning

Moslem Azamfar, Jaskaran Singh, Xiang Li, Jay Lee

2020Journal of Vibration and Control37 citationsDOI

Abstract

This study proposes a novel 1D deep convolutional transfer learning method that is able to learn the high-dimensional domain-invariant feature from the labeled training dataset and perform diagnosis tasks on the unlabeled testing dataset subjected to a domain shift. To obtain the domain-invariant features, the cross-entropy loss in the source domain classifier and the maximum mean discrepancies between the source and target domain data are minimized simultaneously. To evaluate the performance of the proposed method, an experimental study is conducted on a gearbox under significant speed variation. Because of inherent limitations of the vibration data, in this research, the effectiveness of torque measurement signals has been explored for gearbox fault diagnosis. Comprehensive studies on network parameters and the training sample size are performed to illustrate the robustness and effectiveness of the proposed method. A comparison study is performed on similar techniques to illustrate the superiority and high performance of the proposed diagnosis method. The achieved results illustrate the effectiveness of torque signal in multiclass cross-domain fault diagnosis of gearboxes.

Topics & Concepts

Computer scienceRobustness (evolution)Artificial intelligenceTransfer of learningPattern recognition (psychology)Time domainClassifier (UML)TorqueConvolutional neural networkFeature extractionEntropy (arrow of time)Machine learningComputer visionBiochemistryGeneQuantum mechanicsChemistryThermodynamicsPhysicsMachine Fault Diagnosis TechniquesDomain Adaptation and Few-Shot LearningNon-Destructive Testing Techniques