基于多传感器信息融合和一维卷积神经网络的工业机器人故障诊断

Jiaxing Wang, Dazhi Wang, Xinghua Wang
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引用次数: 9

摘要

工业机器人伺服系统(IRSS)的性能取决于两个因素,一是系统设计时的控制算法和机械加工精度,二是系统运行时的维护。基于状态维护策略,可以维持工业机器人伺服系统长期稳定的高性能运行。为了通过工业机器人的预测性维护来提高伺服系统的性能,我们需要在设备运行过程中对其运行状态进行监控,并使用智能算法来识别运行状态。以轴承故障诊断为代表的工业机器人故障诊断在IRSS优化中起着至关重要的作用。在故障早期,通过在线准确诊断,实现预测性维护,提高IRSS的性能。本文提出了一种新的多传感器信息融合技术,该技术将多个传感器的信号作为一维卷积神经网络(CNN)的输入,并通过改进的CNN实现故障分类方法。在凯斯西储大学的公共数据集和辛辛那提大学的IMS轴承数据库上对该方法进行了验证。与传统的一维或二维CNN等故障分类方法相比,该模型进行了简化,可以使用更少的数据和更简单的计算复杂度实现更高的故障分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault Diagnosis of Industrial Robots Based on Multi-sensor Information Fusion and 1D Convolutional Neural Network
The performance of the industrial robot servo system (IRSS) depends on two factors, one is the control algorithm and mechanical processing accuracy during system design, and the other is maintenance during system operation. Based on the strategy of condition-based maintenance, the long-term stable high-performance operation of the industrial robot servo system can be maintained. In order to improve the performance of the servo system through the predictive maintenance of industrial robots, we need to monitor the operating state of the equipment during its operation and use intelligent algorithms to identify the operating state. The fault diagnosis of industrial robots represented by bearing fault diagnosis plays a crucial role in the optimization of IRSS. In the early stages of faults, online and accurate diagnosis can achieve predictive maintenance and improve the performance of IRSS. In this paper, a new multi-sensor information fusion technology is proposed, which uses the signals of multiple sensors as the input of a one-dimensional (1D) convolutional neural network (CNN), and implements a fault classification method through an improved CNN. This method is verified on the public data set of Case Western Reserve University and the IMS bearing database of the University of Cincinnati. Compared with the traditional 1D or 2D CNN and other fault classification methods, the model is simplified and can be used more Less data and simpler calculation complexity achieve higher fault classification accuracy.
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