基于电流信号的工业机器人关节无监督故障检测

Ran Fu, Lei Xiao, Baiteng Ma
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引用次数: 0

摘要

工业机器人已广泛应用于各种工业制造公司,以提高生产效率。随着工业机器人使用时间的增加,工业机器人关节失效或故障的可能性也随之增加。由于关节之间的运动传播,一些工业机械臂在关节没有故障的情况下,也会出现工作不正常的情况。虽然已经成功建立了一些基于振动的工业机器人关节故障检测方法,但仅利用电流信号检测工业机器人关节故障仍然存在一定的困难,特别是没有足够的标签来区分故障或正常电流信号。针对上述问题,本文提出了一种基于谱聚类和电流信号敏感特性的无监督故障检测方法。为了放大样本,根据寻峰函数将采集到的一定时间内的电流信号分成几段。然后根据灵敏度选择广泛采用的时域特征。将选择的特征输入到光谱聚类中,以检测工业机器人关节之间的故障定位。通过一个工业机器人的可靠性试验,验证了该方法的有效性。
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Unsupervised Fault Detection of Industrial Robot Joints Using Current Signal
Industrial robots have been widely used in various industrial manufacturing companies to improve production efficiency. With the service time gained of an industrial robot, the possibility of failure or fault of an industrial robot joint gains. Due to the motion propagation among the joints, some industrial robot arms show abnormal performance even though there is no fault in their joints. Although some vibration-based detection methods for industrial robot joint faults have been successfully established, it is still difficult to detect industrial robot joint faults by using only the current signal, especially, there is no sufficient label to classify fault or normal current signal. To deal with the above issues, this paper proposes an unsupervised fault detection method based on spectral clustering and the sensitive features of the current signal. To enlarge the samples, the collected current signal in a certain time is divided into several pieces according to the peak finding function. Then widely adopted time-domain features are selected according to the sensitivity. The selected features are fed into the spectral clustering to detect the fault location among the industrial robot joints. The proposed method is validated by a reliability-test industrial robot.
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