Deep learning-based damage detection of mining conveyor belt

The mining conveyor belt is an important component of the coal mine belt conveyor, which plays the role of carrying materials and transmitting power. Aiming at the problem that mining conveyor belts are easily damaged under severe working conditions, based on the reclassification and definition of c...

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Veröffentlicht in:Measurement : journal of the International Measurement Confederation 2021-04, Vol.175, p.109130, Article 109130
Hauptverfasser: Zhang, Mengchao, Shi, Hao, Zhang, Yuan, Yu, Yan, Zhou, Manshan
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container_title Measurement : journal of the International Measurement Confederation
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Shi, Hao
Zhang, Yuan
Yu, Yan
Zhou, Manshan
description The mining conveyor belt is an important component of the coal mine belt conveyor, which plays the role of carrying materials and transmitting power. Aiming at the problem that mining conveyor belts are easily damaged under severe working conditions, based on the reclassification and definition of conveyor belt damage types, a special data set for conveyor belt damage was established and a new detection method that can simultaneously detect multiple faults based on improved Yolov3 algorithm was proposed. The EfficientNet was adopted as the backbone feature extraction network instead of Darknet53 in the improved algorithm, comprehensively considers the balance between network depth, width, and image resolution for network scaling to improve the accuracy of the algorithm in limited computing resources. Experiments have proved that the improved algorithm in this paper takes into account both detection speed and detection accuracy. The detection speed can reach 42 FPS, and the mean average precision can reach 97.26%. Compared with the original Yolov3 algorithm, the accuracy is increased by 10.4%, with the speed 45.9%, which provides new ideas and methods for ensuring the safe and stable work of conveyor belts. •A direct detection method for mining conveyor belt damage based on deep learning.•Detection of multiple damage types of conveyor belts.•The improved Yolov3 considering model scaling reaches higher accuracy.
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source ScienceDirect Journals (5 years ago - present)
subjects Algorithms
Belt conveyor
Belt conveyors
Coal mines
Conveyor belt
Conveyors
Damage detection
Deep learning
Fault detection
Feature extraction
Image resolution
Machine vision
Mining industry
Seat belts
Sensors
Work environment
title Deep learning-based damage detection of mining conveyor belt
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