Reinforcement Learning Control of a Reconfigurable Planar Cable Driven Parallel Manipulator.

ICRA(2023)

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摘要
Cable driven parallel robots (CDPRs) are often challenging to model and to dynamically control due to the inherent flexibility and elasticity of the cables. The additional inclusion of online geometric reconfigurability to a CDPR results in a complex underdetermined system with highly non-linear dynamics. The necessary (numerical) redundancy resolution requires multiple layers of optimization rendering its application computationally prohibitive for real-time control. Here, deep reinforcement learning approaches can offer a model-free framework to overcome these challenges and can provide a real-time capable dynamic control. This study discusses three settings for a model-free DRL implementation in dynamic trajectory tracking: (i) for a standard non-redundant CDPR with a fixed workspace; (ii) in an end-to-end setting with redundancy resolution on a reconfigurable CDPR; and (iii) in a decoupled approach resolving kinematic and actuation redundancies individually.
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关键词
actuation redundancies,cable driven parallel robots,cable elasticity,cable flexibility,complex underdetermined system,deep reinforcement learning,dynamic trajectory tracking,kinematic redundancies,model-free DRL implementation,nonlinear dynamics,online geometric reconfigurability,optimization,real-time capable dynamic control,reconfigurable CDPR,reconfigurable planar cable driven parallel manipulator,redundancy resolution,reinforcement learning control,standard nonredundant CDPR
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