A Multi-size Kernel based Adaptive Convolutional Neural Network for Bearing Fault Diagnosis
Guangwei Yu, Gang Li, Xingtong Si, and Zhuoyuan Song

TL;DR
This paper introduces MSKACNN, a novel adaptive convolutional neural network that effectively diagnoses bearing faults from raw vibration signals, improving accuracy and efficiency over traditional methods.
Contribution
The paper proposes a multi-size kernel adaptive CNN for bearing fault diagnosis, demonstrating high accuracy and generalization on real-world and benchmark datasets.
Findings
MSKACNN achieves high fault classification accuracy.
The model effectively detects ball mixing faults.
It is suitable for real-time industrial applications.
Abstract
Bearing fault identification and analysis is an important research area in the field of machinery fault diagnosis. Aiming at the common faults of rolling bearings, we propose a data-driven diagnostic algorithm based on the characteristics of bearing vibrations called multi-size kernel based adaptive convolutional neural network (MSKACNN). Using raw bearing vibration signals as the inputs, MSKACNN provides vibration feature learning and signal classification capabilities to identify and analyze bearing faults. Ball mixing is a ball bearing production quality problem that is difficult to identify using traditional frequency domain analysis methods since it requires high frequency resolutions of the measurement signals and results in a long analyzing time. The proposed MSKACNN is shown to improve the efficiency and accuracy of ball mixing diagnosis. To further demonstrate the effectiveness…
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Taxonomy
TopicsMachine Fault Diagnosis Techniques · Gear and Bearing Dynamics Analysis · Fault Detection and Control Systems
