Advanced Predictive Maintenance with Machine Learning Failure Estimation in Industrial Packaging Robots

Onur Koca, O. Kaymakci, M. Mercimek
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引用次数: 11

Abstract

In production systems, the repeated breakdowns of the operation have to be taken into account with great importance. The continuation of long malfunctioning states as well as the temporary interventions involve excessive time and money costs. Industry 4.0 technologies extensively use real-time Big Data collected from the machinery, and this enables potential problems to be addressed and resolved before they become an avalanche for the company. Permanent solutions can be produced, and thereby production efficiency can be established. In this paper, utilizing the Mean Time to Failure (MTTF) values and the past breakdown history of the robot system of the production line an Artificial Neural Network (ANN) model is established for system failure prediction. The proposed model successfully manages predictive maintenance of the machinery without the use of Internet of Things (IoT) technology.
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基于机器学习故障估计的工业包装机器人高级预测性维护
在生产系统中,必须非常重视操作的反复故障。长期故障状态的持续以及临时干预涉及过多的时间和金钱成本。工业4.0技术广泛使用从机器中收集的实时大数据,这使得潜在的问题能够在它们成为公司的雪崩之前得到解决。可以产生永久的解决方案,从而可以建立生产效率。本文利用生产线机器人系统的平均故障时间(MTTF)值和过去的故障历史,建立了用于系统故障预测的人工神经网络(ANN)模型。该模型在不使用物联网(IoT)技术的情况下成功地管理了机器的预测性维护。
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