TL;DR
This paper introduces a hybrid vibration analysis method combining wavelet packet transform, Fourier analysis, and Bayesian-optimized Random Forest classification to improve the speed and accuracy of rolling bearing fault diagnosis.
Contribution
It presents a novel approach that reduces system delay while maintaining high diagnostic accuracy in condition monitoring of rolling bearings.
Findings
Achieves high fault detection accuracy
Reduces system delay in monitoring process
Effective across varying motor speeds
Abstract
Vibration-based condition monitoring techniques are commonly used to detect and diagnose failures of rolling bearings. Accuracy and delay in detecting and diagnosing different types of failures are the main performance measures in condition monitoring. Achieving high accuracy with low delay improves system reliability and prevents catastrophic equipment failure. Further, delay is crucial to remote condition monitoring and time-sensitive industrial applications. While most of the proposed methods focus on accuracy, slight attention has been paid to addressing the delay introduced in the condition monitoring process. In this paper, we attempt to bridge this gap and propose a hybrid method for vibration-based condition monitoring and fault diagnosis of rolling bearings that outperforms previous methods in terms of accuracy and delay. Specifically, we address the overall delay in…
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