An End-to-End Comprehensive Gear Fault Diagnosis Method Based on Multi-Scale Feature-Level Fusion Strategy
Journal:
arXiv
Published Date:
Mar 31, 2025
Abstract
To satisfy the requirements of the end-to-end fault diagnosis of gears, an
integrated intelligent method of fault diagnosis for gears using acceleration
signals was proposed, which was based on Gabor-based Adaptive Short-Time
Fourier Transform (Gabor-ASTFT) and Dual-Tree Complex Wavelet Transform(DTCWT)
algorithms, Dilated Residual structure and feature fusion layer, is proposed in
this paper. Initially, the raw one-dimensional acceleration signals collected
from the gearbox base using vibration sensors undergo pre-segmentation
processing. The Gabor-ASTFT and DTCWT are then applied to convert the original
one-dimensional time-domain signals into two-dimensional time-frequency
representations, facilitating the preliminary extraction of fault features and
obtaining weak feature maps.Subsequently, a dual-channel structure is
established using deconvolution and dilated convolution to perform upsampling
and downsampling on the feature maps, adjusting their sizes accordingly. A
feature fusion layer is then constructed to integrate the dual-channel
features, enabling multi-scale analysis of the extracted fault
features.Finally, a convolutional neural network (CNN) model incorporating a
residual structure is developed to conduct deep feature extraction from the
fused feature maps. The extracted features are subsequently fed into a Global
Average Pooling(GAP) and a classification function for fault classification.
Conducting comparative experiments on different datasets, the proposed method
is demonstrated to effectively meet the requirements of end-to-end fault
diagnosis for gears.