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基于改进RT-DETR的井下输送带跑偏故障检测算法

安龙辉 王满利 张长森

工矿自动化2025,Vol.51Issue(3):54-62,9.
工矿自动化2025,Vol.51Issue(3):54-62,9.DOI:10.13272/j.issn.1671-251x.2024080089

基于改进RT-DETR的井下输送带跑偏故障检测算法

Fault detection algorithm for underground conveyor belt deviation based on improved RT-DETR

安龙辉 1王满利 1张长森1

作者信息

  • 1. 河南理工大学物理与电子信息学院,河南焦作 454000
  • 折叠

摘要

Abstract

Current research on conveyor belt deviation detection mainly focuses on extracting the straight-line features of belt edges.The method requires setting specific thresholds and is easily affected by environmental factors,resulting in slow detection speed and low accuracy.To address the issue,an underground conveyor belt deviation fault detection algorithm based on an improved real-time detection transformer(RT-DETR)was proposed.The improved RT-DETR was used to directly detect a set of idlers and identify deviation based on the exposure degree of the left and right idlers.Three improvements were made to the RT-DETR backbone network:① To reduce the number of parameters and floating-point operations(FLOPs),FasterNet Block was used to replace the BasicBlock in ResNet34.② To enhance model accuracy and efficiency,the concept of structural reparameterization was introduced into the FasterNet Block structure.③ To improve the feature extraction capability of FasterNet Block,an efficient multi-scale attention(EMA)Module was incorporated to capture both global and local feature maps more effectively.To expand the receptive field and capture more effective and comprehensive contextual information for richer feature representation,an improved high-level screening feature fusion pyramid network(HS-FPN)was adopted to optimize multi-scale feature fusion.Experimental results showed that compared to the baseline model,the improved RT-DETR reduced parameters and FLOPs by 8.4×10 6 and 17.8 G,respectively.The mAP@0.5 reached 94.5%,with a severe deviation detection accuracy of 99.2%and a detection speed of 41.0 frame per second,outperforming TOOD and ATSS object detection models,meeting the real-time and accuracy requirements of coal mine production.

关键词

输送带跑偏/目标检测/实时检测转换器/结构重参数化/高效多尺度注意力机制/多尺度特征融合

Key words

conveyor belt deviation/target detection/real-time detection transformer(RT-DETR)/structural reparameterization/efficient multi-scale attention mechanism/multi-scale feature fusion

分类

矿业与冶金

引用本文复制引用

安龙辉,王满利,张长森..基于改进RT-DETR的井下输送带跑偏故障检测算法[J].工矿自动化,2025,51(3):54-62,9.

基金项目

国家自然科学基金项目(52074305) (52074305)

河南省科技攻关项目(242102221006). (242102221006)

工矿自动化

OA北大核心

1671-251X

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