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Experimental study on the life prediction of servo motors through model-based system degradation assessment and accelerated degradation testing

机译:基于模型的系统降解评估和加速降解测试的伺服电机寿命预测的实验研究

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摘要

The advent of smart factories has resulted in the frequent utilization of industrial robots within factories to increase production automation and efficiency. Due to the increase in the number of industrial robots, it has become more important to prevent any unexpected breakdowns of the factory. As a result, the lifespan prediction of machinery has become a crucial factor because such failures can be directly associated with factory productivity resulting in significant losses. Most of the failures occur within one of the core components of the robot arm, the servo motor, and thus we will focus on the analysis of the servo motor in this study. However, sensor attachment to such equipment is considered difficult due to the dynamic movement of the robot arm, meaning that internal instrumentation should be utilized during analysis. In addition, no definite measure to determine the degradation of the motor exists, and thus a new degradation index is proposed in this study. Therefore, in this study, the lifespan of the servo motor will be estimated through accelerated degradation testing methods based on a new system degradation assessment method, which estimates the fault of the system using observer-based residuals with encoder data obtained from internal instrumentation.
机译:智能工厂的出现导致工厂内的工业机器人经常利用,以提高生产自动化和效率。由于工业机器人数量的增加,防止工厂意外故障变得更加重要。结果,机器的寿命预测已经成为一个关键因素,因为这种失败可以与工厂生产率直接相关,导致显着的损失。大多数故障发生在机器人臂,伺服电机的核心部件之一内,因此我们将专注于本研究中伺服电机的分析。然而,由于机器人臂的动态运动,因此认为传感器附着到这种设备,这意味着在分析期间应该使用内部仪器。此外,没有确定存在电动机的降解的明确措施,因此在本研究中提出了一种新的降解指标。因此,在本研究中,伺服电机的寿命将通过基于新的系统劣化评估方法的加速降级测试方法来估算,这估计了使用基于观察者的残差与从内部仪器获得的编码器数据的系统的故障估算。

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