Dynamically Feasible Trajectory Generation for Soft Robots

Haley Sanders, Marc D. Killpack
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Abstract

Potential applications for large-scale soft robots include interacting with humans while carrying a heavy load, navigating in clutter, executing impact tasks like hammering a nail into a wall, and so much more. Because of their compliance and lack of fragile gear trains, soft robots are uniquely suited to these tasks. However, we expect that path planning may be more constrained by soft robot kinematics and dynamics than traditional rigid robots. Generating dynamically feasible trajectories for soft robots (especially large-scale soft robots with higher payloads) is critical to the success of low-level controllers tracking reference trajectories. This paper introduces an optimization method to generate task and joint space trajectories for soft robots that satisfy kinematic and dynamic constraints which are unique to large-scale soft robots. The method presented in this paper is an offline trajectory generator that is then fed to a low-level PID joint angle controller. We conduct two experiments to validate this method on a continuum pneumatic soft robot of length 1.19 meters in both simulation and on hardware. We show that this is a viable method of planning trajectories for soft robots with a reported median magnitude of error of 0.032 meters between the planned and actual end effector trajectories.
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柔性机器人动态可行轨迹生成
大型软体机器人的潜在应用包括在搬运重物时与人类互动,在杂乱中导航,执行像把钉子钉进墙上这样的冲击任务,等等。由于它们的顺应性和缺乏脆弱的齿轮传动系统,软机器人非常适合这些任务。然而,我们预计路径规划可能会受到软机器人运动学和动力学的约束,而不是传统的刚性机器人。生成动态可行的软机器人(特别是具有较高有效载荷的大型软机器人)轨迹对于低级控制器跟踪参考轨迹的成功至关重要。针对大型软机器人所特有的运动学和动力学约束,提出了一种生成任务和关节空间轨迹的优化方法。本文提出的方法是一个离线轨迹发生器,然后将其馈送到低级PID关节角度控制器。在长度为1.19 m的连续气动软机器人上进行了仿真和硬件实验,验证了该方法的有效性。我们表明,这是一种可行的软机器人轨迹规划方法,报告的规划和实际末端执行器轨迹之间的中位数误差为0.032米。
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