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Data analytics for predictive maintenance of industrial robots

机译:用于工业机器人预测维护的数据分析

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The predictive maintenance of industrial machines is one of the challenging applications in the new era of Industry 4.0. Thanks to the predictive capabilities offered by the emerging smart data analytics, data-driven approaches for condition monitoring are becoming widely used for early detection of anomalies on production machines. The aim of this paper is to provide insights on the predictive maintenance of industrial robots and the possibility of building a condition-monitoring system based on the data analysis of robot's power measurements. A predictive modeling approach is proposed to detect robot manipulator accuracy errors based on robot's current data analysis for predictive maintenance purposes. An experimental procedure is also carried out to oversee the correlation between the robot accuracy error and a set of extracted features from current time-series, and to evaluate the proposed predictive modeling. The obtained results are satisfactory and prove the feasibility of building a data-driven condition monitoring of robot manipulators using the electrical power time-series data analysis.
机译:工业机器的预测维护是工业4.0新时代的具有挑战性的应用之一。由于新兴智能数据分析所提供的预测能力,条件监测的数据驱动方法正在广泛用于生产机器上的异常的早期检测。本文的目的是提供有关工业机器人的预测维护的见解,以及基于机器人功率测量的数据分析的基于数据分析建立条件监测系统的可能性。提出了一种预测性建模方法,以检测基于机器人当前数据分析的机器人操纵器精度误差,以进行预测维护目的。还进行了实验程序来监督机器人精度误差与来自当前时间序列的一组提取特征之间的相关性,并评估所提出的预测建模。所获得的结果令人满意,并证明使用电力时间序列数据分析构建机器人操纵器的数据驱动状态监测的可行性。

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