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An autoencoder with adaptive transfer learning for intelligent fault diagnosis of rotating machinery

Zhi Tang, Lin Bo, Xiaofeng Liu, Daiping Wei

2020Measurement Science and Technology39 citationsDOI

Abstract

Abstract Under variable working conditions, a problem arises, which is that it is difficult to obtain enough labeled data; to address this problem, an adaptive transfer autoencoder (ATAE) is established to diagnose faults in rotating machinery. First, a data adaptation module, which calculates the maximum mean discrepancy for the network hidden-layer data in reproducing kernel Hilbert space, is introduced to the autoencoder network, thus making the classification model operate under variable working conditions. Variation particle-swarm optimization is then invoked to optimize the data adaptation parameters. Finally, the k-nearest neighbors algorithm, as the classification layer of the network, identifies the state of health of the rotating machinery. The capabilities of the intelligent fault-diagnosis network are verified using vibration signals from a bearing test rig and a gearbox test rig. The experimental results suggest that, compared with state-of-the-art diagnosis methods, the proposed ATAE network can significantly boost diagnostic performance in the absence of target vibration signal labels.

Topics & Concepts

AutoencoderFault (geology)Computer scienceParticle swarm optimizationArtificial intelligenceBearing (navigation)VibrationPattern recognition (psychology)Test dataAdaptation (eye)Control theory (sociology)Artificial neural networkMachine learningProgramming languageControl (management)Quantum mechanicsSeismologyGeologyOpticsPhysicsMachine Fault Diagnosis TechniquesFault Detection and Control SystemsEngineering Diagnostics and Reliability