A review of predictive monitoring approaches and algorithms for material handling systems

D. Siegel, H. D. Ardakani, Jay Lee, Y. Chang, J. Lee
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引用次数: 4

Abstract

Material handling systems (MHS) include a wide range of systems and equipment that are used for handling, movement, storage and control of materials during manufacturing. MHS can represent a significant portion of the cost to make a product and there can be significant cost savings in manufacturing processes if unexpected failures of such systems can be avoided and maintenance costs lowered. This paper first surveys the common maintenance practices of MHS including three typical warehouse MHS e.g. automatic picking system (APS), goods to destination (GDS), and Erector. The survey from end users shows that the majority of the companies does not keep the record of their past failures or improve their maintenance practices after major failures occur. Even the end users with more advanced maintenance programs use more reactive maintenance approaches, as opposed to preventive maintenance approaches which have the potential to lower the chances of unexpected failures and costly repairs. The present paper also reviews the past works in predictive monitoring of MHS categorized as machine level, component level, and production level. Although there has not been a large body of research published around this topic, the existing works demonstrate the suitability of applying Prognostics and Health Management techniques for improving the reliability of such machines and reducing their downtime. The opportunity for MHS to move towards a condition-based maintenance approach is still a few years away, and many end-users of this equipment would have to first adopt a good preventive and reliably centered maintenance philosophy. Once that occurs, the OEM’s would be the most likely candidates for further developing and implementing the research work and methods for MHS predictive monitoring.
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材料处理系统的预测监测方法和算法综述
物料搬运系统(MHS)包括在制造过程中用于搬运、移动、储存和控制物料的各种系统和设备。MHS可以代表产品制造成本的很大一部分,如果可以避免此类系统的意外故障并降低维护成本,则可以在制造过程中节省大量成本。本文首先调查了MHS的常见维护实践,包括三种典型的仓库MHS,即自动拣货系统(APS),货物到目的地(GDS)和竖立机。来自终端用户的调查显示,大多数公司没有保存他们过去的故障记录,也没有在发生重大故障后改进他们的维护实践。即使是拥有更先进的维护程序的终端用户也会使用更被动的维护方法,而不是预防性维护方法,预防性维护方法有可能降低意外故障和昂贵维修的机会。本文还回顾了以往在MHS预测监测方面的工作,分为机器级、部件级和生产级。尽管围绕这一主题还没有大量的研究发表,但现有的工作证明了应用预后和健康管理技术来提高此类机器的可靠性和减少停机时间的适用性。MHS转向基于状态的维护方法的机会还需要几年的时间,许多设备的最终用户必须首先采用良好的预防性和以可靠为中心的维护理念。一旦实现,OEM将最有可能进一步开发和实施MHS预测监测的研究工作和方法。
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