Learning-based Initialization of Trajectory Optimization for Path-following Problems of Redundant Manipulators.

ICRA(2023)

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摘要
Trajectory optimization (TO) is an efficient tool to generate a redundant manipulator's joint trajectory following a 6-dimensional Cartesian path. The optimization performance largely depends on the quality of initial trajectories. However, the selection of a high-quality initial trajectory is non-trivial and requires a considerable time budget due to the extremely large space of the solution trajectories and the lack of prior knowledge about task constraints in configuration space. To alleviate the issue, we present a learning-based initial trajectory generation method that generates high-quality initial trajectories in a short time budget by adopting example-guided reinforcement learning. In addition, we suggest a null-space projected imitation reward to consider null-space constraints by efficiently learning kinematically feasible motion captured in expert demonstrations. Our statistical evaluation in simulation shows the improved optimality, efficiency, and applicability of TO when we plug in our method's output, compared with three other baselines. We also show the performance improvement and feasibility via realworld experiments with a seven-degree-of-freedom manipulator.
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关键词
6-dimensional Cartesian path,considerable time budget,example-guided reinforcement learning,extremely large space,high-quality initial trajectory,improved optimality,initial trajectories,learning-based initial trajectory generation method,null-space constraints,null-space projected imitation reward,optimization performance,path-following problems,redundant manipulator,redundant manipulators,short time budget,solution trajectories,trajectory optimization
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