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Growing Science » Engineering Solid Mechanics » Study on the surface crack monitoring method of conveyor belt under flutter condition

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Engineering Solid Mechanics

ISSN 2291-8752 (Online) - ISSN 2291-8744 (Print)
Quarterly Publication
Volume 13 Issue 3 pp. 277-284 , 2025

Study on the surface crack monitoring method of conveyor belt under flutter condition Pages 277-284 Right click to download the paper Download PDF

Authors: Bai Wen Luo, Xiao Bin Jia, Xiao Xin Zeng, Xu Dong Li, Ting Ting Liao

DOI: 10.5267/j.esm.2025.3.002

Keywords: Conveyor belt, Machine vision, Crack detection, Vibration damping device, Spring, YOLOv7

Abstract: In order to monitor the surface condition of the conveyor belt in the process of running, a method of beam structure light irradiation based on machine vision is adopted. A spring-type mechanical vibration damping device is designed to improve the focusing quality of the camera, and an algorithm is proposed to solve the selection of spring parameters under different flutter amplitudes. Yolov7 deep learning algorithm was adopted and ACmix attention mechanism was introduced to identify the surface cracks of conveyor belt. The experimental results show that the improved YOLOV7-ACmix algorithm can effectively improve the accuracy and generalization ability of image recognition.

How to cite this paper
Luo, B., Jia, X., Zeng, X., Li, X & Liao, T. (2025). Study on the surface crack monitoring method of conveyor belt under flutter condition.Engineering Solid Mechanics, 13(3), 277-284.

Refrences
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Journal: Engineering Solid Mechanics | Year: 2025 | Volume: 13 | Issue: 3 | Views: 184 | Reviews: 0

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