移动机械手工作空间监测与避碰的组合

Angelika Zube
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引用次数: 6

摘要

避免碰撞是实现人机安全交互与共存的基本前提。因此,在本贡献中,提出了一种用于固定基座和移动机械手的非线性模型预测控制方法,该方法允许在执行笛卡尔空间中定义的任务时避免自碰撞以及与静态和动态障碍物的碰撞。避碰不仅要考虑末端执行器,还要考虑由平台和机械手组成的整个机器人,并依赖于多个深度传感器信息融合得到的三维障碍物表示。障碍物表征适用于各种物体。它考虑障碍物后面的遮挡物和机器人对障碍物大小的保守假设。为了实现对障碍物的实时反应,在一个控制步骤中使用的障碍物信息被限制为距离计算确定的最相关的障碍物。通过仿真验证了该方法的有效性,并将其应用于一个10自由度的全向移动机械臂。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combined workspace monitoring and collision avoidance for mobile manipulators
For safe human-robot interaction and co-existence, collision avoidance is a fundamental prerequisite. Therefore, in this contribution a Nonlinear Model Predictive Control approach for fixed-base and mobile manipulators is presented that allows for avoiding self-collisions and collisions with static and dynamic obstacles while performing tasks defined in the Cartesian space. The collision avoidance takes not only the end-effector but the complete robot consisting of both platform and manipulator into account and relies on a 3D obstacle representation obtained by fusing information from multiple depth sensors. The obstacle representation is applicable to all kinds of objects. It considers occlusions behind the obstacles and the robot to make a conservative assumption on the obstacle size. In order to achieve realtime reactions to obstacles, the obstacle information used in one control step is restricted to the most relevant obstacles determined by distance computation. The method is validated by means of simulation and by application to an omnidirectional mobile manipulator with 10 degrees of freedom.
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