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simmediumroboticsmetric · varies

Learning-Based Strategy for Composite Robot Assembly Skill Adaptation

Description

Contact-rich robotic skills remain challenging for industrial robots due to tight geometric tolerances, frictional variability, and uncertain contact dynamics, particularly when using position-controlled manipulators. This paper presents a reusable and encapsulated skill-based strategy for peg-in-hole assembly, in which adaptation is achieved through Residual Reinforcement Learning (RRL). The assembly process is represented using composite skills with explicit pre-, post-, and invariant conditio

Source

http://arxiv.org/abs/2604.06949v1