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Data-Efficient Process Monitoring and Failure Detection for Robust Robotic Screwdriving | IEEE Conference Publication | IEEE Xplore

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


Abstract:

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 ...Show More

Abstract:

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.
Date of Conference: 22-26 August 2019
Date Added to IEEE Xplore: 19 September 2019
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ISSN Information:

Conference Location: Vancouver, BC, Canada
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I. Introduction

Screwdriving is one of the most common assembly methods [1]. In the consumer electronics industry, hundreds of billions of tiny screws are assembled every year; however, fully automating this huge-volume assembly remains challenging, especially for smartphones [1], [2], [3]. Smaller screws require tighter tolerance and higher alignment accuracy [4]. Moreover, compared to the well-studied peg-in-hole problem (e.g., in [5], jamming diagrams for flexible dual peg-in-hole task were well-studied through large/small deformation stages, providing theoretical basis for control strategy design), screwdriving has more process stages and failure modes; most stages have complicated mechanics involving multiple contacts with highly variant discontinuous surfaces [6]. A system capable of online process monitoring, failure prediction and recovery is necessary for highly automated solutions [3]. However, existing work is still preliminary. Most of the previous work can only perform result classification given known failure modes, which alone cannot detect irreversible process failures [7] or unknown failures. Moreover, previous methods are not guaranteed to work when experimental conditions (e.g., screw sizes) change.

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