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High-Accuracy Unsupervised Fault Detection of Industrial Robots Using Current Signal Analysis

机译:基于电流信号分析的工业机器人高精度无监督故障检测

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Robots and other similar automation machines have been widely used in various industries, such as automotive and semiconductor industries to improve productivity, quality, and safety in manufacturing processes. However, an unforeseen robot shutdown has the potential to cause an interruption in the entire production line, resulting in significant unplanned downtime, economic, production losses, and even work injuries. Thus, it is of high interest to detect incipient faults in industrial robots before they totally shut down or otherwise fail. A challenge for fault detection in industrial robots is the difficulty to obtain sufficient labeled training data under normal and abnormal health conditions. Thus, unsupervised machine learning algorithms are desired. In this work, a Gaussian mixture model-based unsupervised fault detection framework is proposed to effectively detect the faults in industrial robots using current signals. Signal preprocessing is first performed to clean the measured raw current signals. Then, motion-insensitive fault features chosen based on a system physics model that can reflect the deterioration of the industrial robots are extracted and fed into unsupervised learning algorithms for effective fault detection. The effectiveness and high accuracy of the proposed method are validated by experimental data obtained from industrial robot systems.
机译:机器人和其他类似的自动化机器已广泛用于各种行业,例如汽车和半导体行业,以提高生产过程中的生产率,质量和安全性。但是,无法预料的机器人停机可能会导致整个生产线中断,从而导致大量计划外停机,经济,生产损失,甚至造成工伤。因此,非常重要的是在工业机器人完全关闭或以其他方式失效之前检测其早期故障。工业机器人中故障检测的挑战是在正常和异常健康状况下难以获得足够的带标签训练数据。因此,需要无监督的机器学习算法。在这项工作中,提出了一种基于高斯混合模型的无监督故障检测框架,以利用电流信号有效地检测工业机器人中的故障。首先执行信号预处理以清除测得的原始电流信号。然后,提取基于系统物理模型选择的对运动不敏感的故障特征,这些特征可以反映工业机器人的退化,并将其输入到无监督学习算法中,以进行有效的故障检测。从工业机器人系统获得的实验数据验证了该方法的有效性和高精度。

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