Zhenzhuo Yan, Xifeng Gao, Yifan Li, Pengyue Zhao, Z. Deng
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引用次数: 0
Abstract
The topic of position control for continuum manipulators (CMs) remains open and yet to be well explored and developed. Current applications of CMs focus on employing static or quasi-dynamic controllers built upon kinematic models or linearity in the joint space, resulting in a loss of the rich dynamics of a system. This paper presents a model-based reinforcement learning scheme for position control of a class of CMs with strong nonlinearity and input coupling, which includes a probabilistic dynamics model as the dynamic forward model and a policy update approach for the closed-loop policy. The effectiveness of the scheme is verified on a dual-segment CM actuated by pneumatic artificial muscles, and the experimental results confirm that such scheme can obtain good results with only a limited number of samples and interactions.