Hybrid vision-force guided fault tolerant robotic assembly for electric connectors

P. Di, Jian Huang, Fei Chen, H. Sasaki, T. Fukuda
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引用次数: 14

Abstract

To Detect and recover the errors occurred in the task of mating connectors is vital in robotic wiring harness systems. In our previous work, a set-membership approach for static piecewise affine (PWA) system was proposed. Although using the static force model, errors can be detected effectively during mating connectors, there are still some mistaken detections and unrecognized faults, due to the insufficient sensor information and limitation of model. Before the mating task, there are various kinds of grasping errors. Only using force sensor is unable to detect the grasping errors. In this study, a new hybrid vision-force guided fault tolerant approach is proposed to improve the rate of error detection. More features from the vision system are chosen as the parameters of the fault tolerant system. Multiple sensors including a force sensor, encoders and an industrial vision system are assumed to acquire the necessary information of the method. The effectiveness of these methods is finally confirmed through experiments.
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混合视觉力引导的电连接器容错机器人装配
在机器人线束系统中,检测和恢复连接器配合任务中发生的错误是至关重要的。在我们之前的工作中,提出了静态分段仿射系统的集隶属度方法。虽然采用静力模型可以有效地检测连接器配合过程中的误差,但由于传感器信息的不足和模型的限制,仍然存在一些错误检测和无法识别的故障。在配对任务前,存在着各种抓取误差。仅使用力传感器是无法检测抓取误差的。本文提出了一种新的混合视觉力引导容错方法,以提高错误率。从视觉系统中选取更多的特征作为容错系统的参数。假定包括力传感器、编码器和工业视觉系统在内的多个传感器来获取该方法的必要信息。最后通过实验验证了这些方法的有效性。
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