Error Identification and Recovery in Robotic Snap Assembly

Yusuke Hayami, Weiwei Wan, Keisuke Koyama, Peihao Shi, J. Rojas, K. Harada
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引用次数: 2

Abstract

Existing methods for predicting robotic snap joint assembly cannot predict failures before their occurrence. To address this limitation, this paper proposes a method for predicting error states before the occurence of error, thereby enabling timely recovery. Robotic snap joint assembly requires precise positioning; therefore, even a slight offset between parts can lead to assembly failure. To correctly predict error states, we apply functional principal component analysis (fPCA) to 6Dforce/torque profiles that are terminated before the occurence of an error. The error state is identified by applying a feature vector to a decision tree, wherein the support vector machine (SVM) is employed at each node. If the estimation accuracy is low, we perform additional probing to more correctly identify the error state. Finally, after identifying the error state, a robot performs the error recovery motion based on the identified error state. Through the experimental results of assembling plastic parts with four snap joints, we show that the error states can be correctly estimated and a robot can recover from the identified error state.
机器人扣片装配中的错误识别与恢复
现有的预测机器人卡扣装配的方法不能在故障发生之前预测故障。为了解决这一限制,本文提出了一种在错误发生之前预测错误状态的方法,从而能够及时恢复。机器人卡扣装配要求精确定位;因此,即使零件之间的轻微偏移也会导致装配失败。为了正确预测误差状态,我们将功能主成分分析(fPCA)应用于误差发生前终止的6d力/扭矩曲线。通过对决策树应用特征向量来识别错误状态,其中在每个节点上使用支持向量机(SVM)。如果估计精度较低,我们执行额外的探测以更正确地识别错误状态。最后,机器人在识别出错误状态后,根据识别出的错误状态进行错误恢复运动。通过对带有四个卡扣的塑料零件进行装配的实验结果表明,该方法可以正确地估计误差状态,并且机器人可以从识别的误差状态中进行恢复。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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