论文标题

用于全身动态运动和操纵的无碰撞MPC

A Collision-Free MPC for Whole-Body Dynamic Locomotion and Manipulation

论文作者

Chiu, Jia-Ruei, Sleiman, Jean-Pierre, Mittal, Mayank, Farshidian, Farbod, Hutter, Marco

论文摘要

在本文中,我们为无碰撞的移动操作提供了实时的全身规划师。我们在模型预测控制(MPC)方案中执行自我碰撞和环境避免的避免,该方案解决了多接触的最佳控制问题。通过对一组代表性原始碰撞机构之间的签名距离进行惩罚,机器人能够安全执行各种动态操作,同时防止任何自我碰撞。此外,通过有效的距离查询及其梯度通过欧几里得签名的距离字段,可以使无碰撞导航和操纵可行。我们通过一项比较研究证明,我们的方法仅略微增加了MPC计划的计算复杂性。最后,我们通过一组涉及动态的移动操纵任务的硬件实验来验证框架的有效性,例如潜在的碰撞,例如与摇摆臂的机车平衡,投掷重量和自主门开口。

In this paper, we present a real-time whole-body planner for collision-free legged mobile manipulation. We enforce both self-collision and environment-collision avoidance as soft constraints within a Model Predictive Control (MPC) scheme that solves a multi-contact optimal control problem. By penalizing the signed distances among a set of representative primitive collision bodies, the robot is able to safely execute a variety of dynamic maneuvers while preventing any self-collisions. Moreover, collision-free navigation and manipulation in both static and dynamic environments are made viable through efficient queries of distances and their gradients via a euclidean signed distance field. We demonstrate through a comparative study that our approach only slightly increases the computational complexity of the MPC planning. Finally, we validate the effectiveness of our framework through a set of hardware experiments involving dynamic mobile manipulation tasks with potential collisions, such as locomotion balancing with the swinging arm, weight throwing, and autonomous door opening.

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