基于学习的冗余机械手路径跟踪问题轨迹优化初始化

Minsung Yoon, Mincheul Kang, Daehyung Park, S.-E. Yoon
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引用次数: 3

摘要

轨迹优化是一种生成冗余机器人关节轨迹的有效工具。优化性能在很大程度上取决于初始轨迹的质量。然而,由于解轨迹的空间非常大,并且缺乏配置空间中任务约束的先验知识,因此选择一个高质量的初始轨迹是非常重要的,并且需要大量的时间预算。为了解决这个问题,我们提出了一种基于学习的初始轨迹生成方法,该方法采用实例引导强化学习,在短时间内生成高质量的初始轨迹。此外,我们提出了一个零空间投影模仿奖励,通过有效地学习专家演示中捕获的运动学可行运动来考虑零空间约束。与其他三个基线相比,我们在模拟中的统计评估显示,当我们插入我们的方法输出时,TO的最优性、效率和适用性得到了改进。我们还通过一个七自由度机械臂的实际实验证明了性能的改进和可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning-based Initialization of Trajectory Optimization for Path-following Problems of Redundant Manipulators
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 real-world experiments with a seven-degree-of-freedom manipulator.
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