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A predictive model for the maintenance of industrial machinery in the context of industry 4.0

机译:工业4.0下工业机械维护的预测模型

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摘要

The Industry 4.0 paradigm is being increasingly adopted in the production, distribution and commercialization chains worldwide. The integration of the cutting-edge techniques behind it entails a deep and complex revolution - changing from scheduled-based processes to smart, reactive ones - that has to be thoroughly applied at different levels. Aiming to shed some light on the path towards such evolution, this work presents an Industry 4.0 based approach for facing a key aspect within factories: the health assessment of critical assets. This work is framed in the context of the innovative project SiMoDiM, which pursues the design and integration of a predictive maintenance system for the stainless steel industry. As a case of study, it focuses on the machinery involved in the production of high-quality steel sheets, i.e. the Hot Rolling Process, and concretely on predicting the degradation of the drums within the heating coilers of Steckel mills (parts with an expensive replacement that work under severe mechanical and thermal stresses). This paper describes a predictive model based on a Bayesian Filter, a tool from the Machine Learning field, to estimate and predict the gradual degradation of such machinery, permitting the operators to make informed decisions regarding maintenance operations. For achieving that, the proposed model iteratively fuses expert knowledge with real time information coming from the hot rolling processes carried out in the factory. The predictive model has been fitted and evaluated with real data from similar to 118k processes, proving its virtues for promoting the Industry 4.0 era.
机译:工业4.0范式在全球的生产,分销和商业化链中越来越多地被采用。集成最先进的技术背后需要进行深刻而复杂的革命-从基于计划的流程转变为智能,反应式的流程-必须在不同的层次上全面应用。为了阐明这种发展的道路,这项工作提出了一种基于工业4.0的方法来应对工厂中的一个关键方面:关键资产的健康评估。这项工作是在创新项目SiMoDiM的框架内进行的,该项目致力于设计和集成不锈钢行业的预测性维护系统。作为研究案例,它着重于生产高质量钢板的机械,即热轧工艺,并具体地预测了Steckel轧机加热卷取机内滚筒的退化(零件更换成本高昂)在严重的机械和热应力下工作)。本文介绍了一种基于贝叶斯过滤器的预测模型,该模型是机器学习领域的一种工具,用于估计和预测此类机器的逐渐退化,从而使操作员可以就维护操作做出明智的决策。为了实现这一目标,提出的模型将专家知识与来自工厂热轧过程的实时信息进行了迭代融合。该预测模型已通过类似于118k流程的真实数据进行拟合和评估,证明了其在推动工业4.0时代的优势。

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