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A Learning Framework for High Precision Industrial Assembly

机译:高精度工业装配的学习框架

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Automatic assembly has broad applications in industries. Traditional assembly tasks utilize predefined trajectories or tuned force control parameters, which make the automatic assembly time-consuming, difficult to generalize, and not robust to uncertainties. In this paper, we propose a learning framework for high precision industrial assembly. The framework combines both the supervised learning and the reinforcement learning. The supervised learning utilizes trajectory optimization to provide the initial guidance to the policy, while the reinforcement learning utilizes actor-critic algorithm to establish the evaluation system even the supervisor is not accurate. The proposed learning framework is more efficient compared with the reinforcement learning and achieves better stability performance than the supervised learning. The effectiveness of the method is verified by both the simulation and experiment. Experimental videos are available at [1].
机译:自动装配在行业中具有广泛的应用。传统的组装任务利用预定义的轨迹或调整的力控制参数,这使自动组装很耗时,难以概括并且对不确定性不可靠。在本文中,我们提出了一种用于高精度工业装配的学习框架。该框架结合了监督学习和强化学习。监督学习利用轨迹优化为策略提供初始指导,而强化学习利用行为者批评算法建立评估系统,即使主管人员也不准确。与强化学习相比,所提出的学习框架更加有效,并且比监督学习具有更好的稳定性能。通过仿真和实验验证了该方法的有效性。实验视频可从[1]获得。

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