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Rolling Element Bearing Fault Diagnosis by the Implementation of Elman Neural Networks With Long Short-Term Memory Strategy

Vishal G. Salunkhe, S. M. Khot, Nitesh P. Yelve, T. Jagadeesha, R. G. Desavale

2024Journal of Tribology23 citationsDOI

Abstract

Abstract Bearing clearance is a common issue in mechanical systems due to unavoidable assembly errors, leading to weak fault features that are challenging to detect. This study introduces a novel diagnostic technique for detecting bearing clearance faults using the Elman neural network (ENN)-based long short-term memory (LSTM). The raw vibration data from an accelerometer are processed using the fast Fourier transform (FFT) to extract frequency-domain features. ENN is employed to identify clearance faults under various operating conditions, while LSTM captures temporal dependencies in the data. This hybrid ENN-LSTM approach eliminates the need for manual feature extraction, reducing the risk of errors associated with expert-driven methods. The proposed method demonstrates robust generalization performance and achieves an average fault identification accuracy of 99.16% across different operating conditions. This research offers valuable insights for improving fault diagnostics in rotor-bearing systems.

Topics & Concepts

Bearing (navigation)Element (criminal law)Term (time)Fault (geology)Rolling-element bearingArtificial neural networkLong short term memoryComputer scienceArtificial intelligenceStructural engineeringEngineeringGeologyRecurrent neural networkSeismologyPolitical scienceAcousticsLawPhysicsQuantum mechanicsVibrationAdvanced machining processes and optimizationGear and Bearing Dynamics AnalysisMachine Fault Diagnosis Techniques
Rolling Element Bearing Fault Diagnosis by the Implementation of Elman Neural Networks With Long Short-Term Memory Strategy | Litcius