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Assembly Sequences Based on Multiple Criteria Against Products with Deformable Parts

2020-10-21 09:12:43
Takuya Kiyokawa, Jun Takamatsu, Tsukasa Ogasawara

Abstract

This study investigates assembly sequence generation by considering two tradeoff objectives: (1) insertion conditions and (2) degrees of constraints among assembled parts. A multiobjective genetic algorithm is used to balance these two objectives for planning robotic assembly. Furthermore, the method of extracting part relation matrices including interference-free, insertion, and degree of constraint matrices is extended for application to 3D computer-aided design (CAD) models, including deformable parts. The interference of deformable parts with other parts can be easily investigated by scaling models. A simulation experiment was conducted using the proposed method, and the results show the possibility of obtaining Pareto-optimal solutions of assembly sequences for a 3D CAD model with 33 parts including a deformable part. This approach can potentially be extended to handle various types of deformable parts and to explore graspable sequences during assembly operations.

Abstract (translated)

URL

https://arxiv.org/abs/2010.10846

PDF

https://arxiv.org/pdf/2010.10846.pdf


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