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刮板输送机断链智能监测技术研究

李灵锋 张洁 陈茁 查天任 尹瑞

工矿自动化2025,Vol.51Issue(3):63-69,77,8.
工矿自动化2025,Vol.51Issue(3):63-69,77,8.DOI:10.13272/j.issn.1671-251x.2024110068

刮板输送机断链智能监测技术研究

Research on intelligent technology for broken chain monitoring on scraper conveyors

李灵锋 1张洁 1陈茁 1查天任 1尹瑞2

作者信息

  • 1. 河北建材职业技术学院机电工程系,河北秦皇岛 066004
  • 2. 中煤张家口煤矿机械有限责任公司,河北 张家口 076250||河北省高端智能矿山装备技术创新中心,河北 张家口 076250
  • 折叠

摘要

Abstract

To address the issues of existing AI algorithm-based broken chain monitoring technologies for underground coal mine scraper conveyors,including poor online learning ability,low detection accuracy,instability,and inadequate adaptability and reliability in complex scenarios,an online sequential extreme learning machine(OSELM)network was developed by integrating incremental online training into the extreme learning machine(ELM).This approach enabled both offline and real-time online learning.Based on this,an OSELM-based intelligent broken chain monitoring technology for scraper conveyors was proposed.The OSELM network algorithm,trained on a large dataset of underground scraper conveyor chain monitoring images(offline samples),was embedded into an AI camera.The AI camera was installed at the tail of the scraper conveyor to monitor the operation status of the chain in real-time while performing continuous online learning.The AI cameras output control decisions,with recognition results displayed in real-time on the centralized control system platform for the scraper conveyor.The results of industrial tests in underground mining environments demonstrated that the OSELM network exhibited strong self-learning ability,high generalization ability,and robustness.The mean average precision,accuracy,and precision for chain breakage identification on the scraper conveyor reached 98.6%,99.3%,and 91.7%,respectively,with a detection speed of 205.6 frames per second.The overall performance outperforms models such as Deep Neural Network Fusion Network,RT-DETR,YOLOv5,YOLOv8,and ELM,achieving precise and real-time detection of the chain status of scraper conveyors.

关键词

刮板输送机/链条状态识别/断链监测/AI摄像仪/在线贯序极限学习机网络

Key words

scraper conveyor/chain status identification/broken chain monitoring/AI camera/online sequential extreme learning machine

分类

矿业与冶金

引用本文复制引用

李灵锋,张洁,陈茁,查天任,尹瑞..刮板输送机断链智能监测技术研究[J].工矿自动化,2025,51(3):63-69,77,8.

基金项目

国家重点研发计划项目(2017YFF0210606) (2017YFF0210606)

河北省高等学校科学研究项目(ZD2022018). (ZD2022018)

工矿自动化

OA北大核心

1671-251X

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