Litcius/Paper detail

PeriodNet: Noise-Robust Fault Diagnosis Method Under Varying Speed Conditions

Ruixian Li, Jianguo Wu, Yongxiang Li, Yao Cheng

2023IEEE Transactions on Neural Networks and Learning Systems34 citationsDOI

Abstract

Rolling bearings are critical components in modern mechanical systems and have been extensively equipped in various rotating machinery. However, their operating conditions are becoming increasingly complex due to diverse working requirements, dramatically increasing their failure risks. Worse still, the interference of strong background noises and the modulation of varying speed conditions make intelligent fault diagnosis very challenging for conventional methods with limited feature extraction capability. To this end, this study proposes a periodic convolutional neural network (PeriodNet), which is an intelligent end-to-end framework for bearing fault diagnosis. The proposed PeriodNet is constructed by inserting a periodic convolutional module (PeriodConv) before a backbone network. PeriodConv is developed based on the generalized short-time noise resist correlation (GeSTNRC) method, which can effectively capture features from noisy vibration signals collected under varying speed conditions. In PeriodConv, GeSTNRC is extended to the weighted version through deep learning (DL) techniques, whose parameters can be optimized during training. Two open-source datasets collected under constant and varying speed conditions are adopted to assess the proposed method. Case studies demonstrate that PeriodNet has excellent generalizability and is effective under varying speed conditions. Experiments adding noise interference further reveal that PeriodNet is highly robust in noisy environments.

Topics & Concepts

Computer scienceNoise (video)Convolutional neural networkInterference (communication)Generalizability theoryVibrationBearing (navigation)Fault (geology)Artificial intelligenceFeature extractionPattern recognition (psychology)Control theory (sociology)Channel (broadcasting)MathematicsAcousticsImage (mathematics)GeologySeismologyPhysicsControl (management)StatisticsComputer networkMachine Fault Diagnosis TechniquesGear and Bearing Dynamics AnalysisLubricants and Their Additives
PeriodNet: Noise-Robust Fault Diagnosis Method Under Varying Speed Conditions | Litcius