Litcius/Paper detail

Belt Tear Detection for Coal Mining Conveyors

Xiaoqiang Guo, Xinhua Liu, Hao Zhou, Rafał Stanisławski, Grzegorz Królczyk, Zhixiong Li

2022Micromachines36 citationsDOIOpen Access PDF

Abstract

The belt conveyor is the most commonly used conveying equipment in the coal mining industry. As the core part of the conveyor, the belt is vulnerable to various failures, such as scratches, cracks, wear and tear. Inspection and defect detection is essential for conveyor belts, both in academic research and industrial applications. In this paper, we discuss existing techniques used in industrial production and state-of-the-art theories for conveyor belt tear detection. First, the basic structure of conveyor belts is discussed and an overview of tear defect detection methods for conveyor belts is studied. Next, the causes of conveyor belt tear are classified, such as belt aging, scratches by sharp objects, abnormal load or a combination of the above reasons. Then, recent mainstream techniques and theories for conveyor belt tear detection are reviewed, and their characteristics, advantages and shortcomings are discussed. Furthermore, image dataset preparation and data imbalance problems are studied for belt defect detection. Moreover, the current challenges and opportunities for conveyor belt defect detection are discussed. Lastly, a case study was carried out to compare the detection performance of popular techniques using industrial image datasets. This paper provides professional guidelines and promising research directions for researchers and engineers based on the leading theories in machine vision and deep learning.

Topics & Concepts

Conveyor beltBelt conveyorCoal miningEngineeringMining engineeringArtificial intelligenceComputer scienceCoalPattern recognition (psychology)Automotive engineeringMechanical engineeringWaste managementBelt Conveyor Systems EngineeringMineral Processing and GrindingAdvanced Machining and Optimization Techniques