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Data-Efficient Process Monitoring and Failure Detection for Robust Robotic Screwdriving

机译:具有鲁棒机器人螺丝刀的数据高效的过程监控和故障检测

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摘要

Screwdriving is one of the most prevalent assembly methods, yet its full automation is still challenging, especially for small screws. A critical reason is that existing techniques perform poorly in process monitoring and failure prediction. In addition, most solutions are essentially data-driven, thereby requiring lots of training data and laborious labeling. Moreover, they are not robust against varying environment conditions and suffer from generalization issues. To this end, we propose a stage and result prediction framework that combines knowledge-based process models with a hidden Markov model. The novelty of this work is the incorporation of operation-invariant characteristics such as screwdriving mechanics and stage transition graph, enabling our system to generalize across different experimental settings and largely reduce the required data and labeling. In our experiments, a system trained on M1.4x4 screws adapted with very little non-labeled data to three other screws (M1.2x3, M2.5x5, and M1.4x4) with widely varying tightening current, motor velocity, insertion force, and tightening force.
机译:螺丝刀是最普遍的装配方法之一,但其完整的自动化仍然具有挑战性,特别是对于小螺钉。一个关键原因是现有技术在过程监测和故障预测中表现不佳。此外,大多数解决方案基本上是数据驱动的,从而需要大量的培训数据和费力标记。此外,它们对不同环境状况不起市并遭受泛化问题。为此,我们提出了一个阶段和结果预测框架,将基于知识的进程模型与隐藏的马尔可夫模型结合起来。这项工作的新颖性是掺入操作不变的特性,如螺丝螺纹力学和阶段转换图,使我们的系统能够拓展不同的实验设置,并且在很大程度上减少所需的数据和标签。在我们的实验中,一个系统培训的M1.4x4螺钉,适用于三个其他螺钉(M1.2x3,M2.5x5和M1.4x4)的较小的非标记数据,具有广泛变化的紧固电流,电机速度,插入力,紧缩力量。

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