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COMPUTING ROBUST INVERSE KINEMATICS UNDER UNCERTAINTY

机译:不确定性下的鲁棒逆运动学

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摘要

Robotic tasks, like reaching a pre-grasp configuration, are specified in the end effector space or task space, whereas, robot motion is controlled in joint space. Because of inherent actuation errors in joint space, robots cannot achieve desired configurations in task space exactly. Furthermore, different inverse kinematics (IK) solutions map joint space error set to task space differently. Thus for a given task with a prescribed error tolerance, all IK solutions will not be guaranteed to successfully execute the task. Any IK solution that is guaranteed to execute a task (possibly with high probability) irrespective of the realization of the joint space error is called a robust IK solution. In this paper we formulate and solve the robust inverse kinematics problem for redundant manipulators with actuation uncertainties (errors). We also present simulation and experimental results on a 7-DoF redundant manipulator for two applications, namely, a pre-grasp positioning and a pre-insertion positioning scenario. Our results show that the robust IK solutions result in higher success rates and also allows the robot to self-evaluate how successful it might be in any application scenario.
机译:在末端执行器空间或任务空间中指定机器人任务,例如达到预抓紧配置,而在关节空间中控制机器人运动。由于关节空间中固有的致动误差,机器人无法在任务空间中精确地实现所需的配置。此外,不同的逆运动学(IK)解决方案将关节空间误差集映射到任务空间的方式也不同。因此,对于具有规定的容错能力的给定任务,将不能保证所有IK解决方案都能成功执行该任务。不管关节空间误差的实现如何,保证可以执行任务(可能具有很高的概率)的任何IK解决方案都称为健壮IK解决方案。在本文中,我们制定并解决了具有致动不确定性(误差)的冗余机械手的鲁棒逆运动学问题。我们还介绍了针对两种应用的7自由度冗余机械手的仿真和实验结果,即预抓紧定位和预插入定位方案。我们的结果表明,强大的IK解决方案可以提高成功率,还可以使机器人自我评估在任何应用场景下其成功程度。

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