Affiliation:
1. Merchant Marine College, Shanghai Maritime University, Shanghai 201306, China
Abstract
The wear particle classification algorithm proposed is based on an integrated ResNet50 and Vision Transformer, aiming to address the problems of a complex background, overlapping and similar characteristics of wear particles, low classification accuracy, and the difficult identification of small target wear particles in the region. Firstly, an ESRGAN algorithm is used to improve image resolution, and then the Separable Vision Transformer (SepViT) is introduced to replace ViT. The ResNet50-SepViT model (SV-ERnet) is integrated by combining the ResNet50 network with SepViT through weighted soft voting, enabling the intelligent identification of wear particles through transfer learning. Finally, in order to reveal the action mechanism of SepViT, the different abrasive characteristics extracted by the SepViT model are visually explained using the Grad-CAM visualization method. The experimental results show that the proposed integrated SV-ERnet has a high recognition rate and robustness, with an accuracy of 94.1% on the test set. This accuracy is 1.8%, 6.5%, 4.7%, 4.4%, and 6.8% higher than that of ResNet101, VGG16, MobileNetV2, AlexNet, and EfficientV1, respectively; furthermore, it was found that the optimal weighting factors are 0.5 and 0.5.
Funder
Shanghai Engineering Research Center of Intelligent Ship Operation and Energy Efficiency Monitoring, Shanghai Science and Technology Program
Key Project of Natural Science Foundation of Anhui Province
Subject
Surfaces, Coatings and Films,Mechanical Engineering
Reference36 articles.
1. Automatic wear-particle classification using neural networks;Peng;Tribol. Lett.,1998
2. The investigation of the condition and faults of a spur gearbox using vibration and wear debris analysis techniques;Ebersbach;Wear,2006
3. WPC-SS: Multi-label wear particle classification based on semantic segmentation;Fan;Mach. Vis. Appl.,2022
4. Ferrography Wear Particle Pattern Recognition Based on Support Vector Machine;Gu;China Mech. Eng.,2006
5. Chang, J., Fu, X., Zhan, K., Zhao, X., Dong, J., and Wu, J. (2023). Target Detection Method Based on Adaptive Step-Size SAMP Combining Off-Grid Correction for Coherent Frequency-Agile Radar. Remote Sens., 15.
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