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现代矿业 ›› 2024, Vol. 40 ›› Issue (04): 246-.

• • 上一篇    下一篇

皮带机故障预测与维护策略探究

为了提升皮带机的运行效率并减少由故障导致的停机时间,针对皮带机故障预测及维
护策略的关键问题进行了深入的分析。通过综合考察传统方法、机器学习技术,以及基于深度学习
的先进预测方法,比较了不同方法在故障检测精度和提前预警能力方面的性能。研究表明,传统方
法在处理简单故障时有效,深度学习方法在处理复杂故障模式和提前预测方面展现出显著优势。进
一步探讨了结合预测技术来优化预防性和检修性维护策略的可能性,以提高设备可靠性和运维效
率。分析强调了采用数据驱动和智能化维护策略的重要性,指出未来的发展趋势将集中于利用人工
智能技术优化维护体系,实现皮带机的高效且可靠运行。
  

  1. 1. 河北钢铁集团沙河中关铁矿有限公司;
    2. 河北省复杂铁矿低碳智能高效开采技术创新中心
  • 出版日期:2024-04-15 发布日期:2024-08-13

Exploring Belt Conveyor Fault Prediction and Maintenance Strategies

In order to improve the operation efficiency of the belt conveyor and reduce the downtime
caused by the fault,the key problems of the fault prediction and maintenance strategy of the belt conveyor
are analyzed in depth. By comprehensively investigating traditional methods,machine learning techniques,
and advanced prediction methods based on deep learning,the performance of different methods in fault de⁃
tection accuracy and early warning ability is compared. The research shows that the traditional method is ef⁃
fective in dealing with simple faults,and the deep learning method shows significant advantages in dealing
with complex fault modes and early prediction. The possibility of combining predictive technology to opti⁃
mize preventive and repairable maintenance strategies is further explored to improve equipment reliability
and operational efficiency. The importance of adopting data-driven and intelligent maintenance strategies
were emphasized,and pointed out that the future development trend will focus on using artificial intelli⁃
gence technology to optimize the maintenance system and realize the efficient and reliable operation of the
belt conveyor
.
  

  1. 1. Shahe Zhongguan Iron Mine Co.,Ltd.,Hebei Iron and Steel Group;
    2. Hebei Province Complex Iron Mine Low Carbon Intelligent High Efficiency Mining Technology Innovation Center
  • Online:2024-04-15 Published:2024-08-13

摘要:

为了提升皮带机的运行效率并减少由故障导致的停机时间,针对皮带机故障预测及维
护策略的关键问题进行了深入的分析。通过综合考察传统方法、机器学习技术,以及基于深度学习
的先进预测方法,比较了不同方法在故障检测精度和提前预警能力方面的性能。研究表明,传统方
法在处理简单故障时有效,深度学习方法在处理复杂故障模式和提前预测方面展现出显著优势。进
一步探讨了结合预测技术来优化预防性和检修性维护策略的可能性,以提高设备可靠性和运维效
率。分析强调了采用数据驱动和智能化维护策略的重要性,指出未来的发展趋势将集中于利用人工
智能技术优化维护体系,实现皮带机的高效且可靠运行。

Abstract:

In order to improve the operation efficiency of the belt conveyor and reduce the downtime
caused by the fault,the key problems of the fault prediction and maintenance strategy of the belt conveyor
are analyzed in depth. By comprehensively investigating traditional methods,machine learning techniques,
and advanced prediction methods based on deep learning,the performance of different methods in fault de⁃
tection accuracy and early warning ability is compared. The research shows that the traditional method is ef⁃
fective in dealing with simple faults,and the deep learning method shows significant advantages in dealing
with complex fault modes and early prediction. The possibility of combining predictive technology to opti⁃
mize preventive and repairable maintenance strategies is further explored to improve equipment reliability
and operational efficiency. The importance of adopting data-driven and intelligent maintenance strategies
were emphasized,and pointed out that the future development trend will focus on using artificial intelli⁃
gence technology to optimize the maintenance system and realize the efficient and reliable operation of the
belt conveyor
.

Key words: