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Predictive Maintenance of Machine Tool Systems Using Artificial Intelligence Techniques Applied to Machine Condition Data

机译:使用人工智能技术对机床状态数据进行机床系统的预测维护

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Often, manufacturing equipment is utilized without a planned maintenance approach. Such a strategy frequently results in unplanned downtime, owing to unexpected failures. Scheduled maintenance replaces components frequently to avoid unexpected equipment stoppages, but increases the time associated with machine non-operation and maintenance cost. The emergence of Industry 4.0 and smart systems is leading to increasing attention to predictive maintenance (PdM) strategies that can decrease the cost of downtime and increase the availability (utilization rate) of manufacturing equipment. PdM also has the potential to foster sustainable practices in manufacturing by maximizing the useful lives of components. In this paper, the AI-based algorithms for predictive maintenance are presented, and are applied to monitor two critical machine tool system elements: the cutting tool and the spindle motor. A data-driven modeling approach will be described, and it will be utilized to investigate the tool wear and the bearing failures.
机译:通常,在没有计划的维护方法的情况下使用制造设备。由于意外故障,这种策略经常导致计划外停机。定期维护会经常更换组件,以避免设备意外停机,但会增加与机器停止运行和维护相关的时间。工业4.0和智能系统的出现使人们越来越重视预测性维护(PdM)策略,该策略可以减少停机时间的成本并提高制造设备的可用性(利用率)。 PdM还具有通过最大化组件的使用寿命来促进制造业可持续发展实践的潜力。在本文中,提出了基于AI的预测性维护算法,并将其应用于监视机床的两个关键系统元素:切削刀具和主轴电机。将描述一种数据驱动的建模方法,并将其用于调查工具磨损和轴承故障。

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