2023
DOI: 10.12688/cobot.17579.1
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Fast peg-in-hole assembly policy for robots based on experience fusion proximal optimization

Abstract: Background: As an important part of robot operation, peg-in-hole assembly has problems such as a low degree of automation, a large amount of tasks and low efficiency. It is still a huge challenge for robots to automatically complete assembly tasks because the traditional assembly control policy requires complex analysis of the contact model and it is difficult to build the contact model. The deep reinforcement learning method does not require the establishment of complex contact models, but the long training t… Show more

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