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Global motion planning and redundancy resolution for large objects manipulation by dual redundant robots with closed kinematics

机译:全局运动规划和冗余分辨率,通过具有封闭运动学的双冗余机器人进行大型物体操作

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摘要

The multi-arm robotic systems consisting of redundant robots are able to conduct more complex and coordinated tasks, such as manipulating large or heavy objects. The challenges of the motion planning and control for such systems mainly arise from the closed-chain constraint and redundancy resolution problem. The closed-chain constraint reduces the configuration space to lower-dimensional subsets, making it difficult for sampling feasible configurations and planning path connecting them. A global motion planner is proposed in this paper for the closed-chain systems, and motions in different disconnected manifolds are efficiently bridged by two type regrasping moves. The regrasping moves are automatically chosen by the planner based on cost-saving principle, which greatly improve the success rate and efficiency. Furthermore, to obtain the optional inverse kinematic solutions satisfying joint physical limits (e.g., joint position, velocity, acceleration limits) in the planning, the redundancy resolution problem for dual redundant robots is converted into a unified quadratic programming problem based on the combination of two diff erent-level optimizing criteria, i.e. the minimization velocity norm (MVN) and infinity norm torque-minimization (INTM). The Dual-MVN-INTM scheme guarantees smooth velocity, acceleration profiles, and zero final velocity at the end of motion. Finally, the planning results of three complex closed-chain manipulation task using two Franka Emika Panda robots and two Kinova Jaco2 robots in both simulation and experiment demonstrate the effectiveness and efficiency of the proposed method.
机译:由冗余机器人组成的多臂机器人系统能够执行更复杂和协调的任务,例如操纵大型或重型物体。此类系统的运动规划与控制的挑战主要来自闭链约束和冗余解决问题。闭链约束将配置空间缩小到低维子集,难以对可行的配置进行采样和规划连接路径。该文提出了一种针对闭链系统的全局运动规划器,通过两种类型的重新抓取运动有效地桥接了不同断开流形中的运动。重新抓取动作由规划者根据成本节约原则自动选择,大大提高了成功率和效率。此外,为了获得在规划中满足关节物理极限(如关节位置、速度、加速度极限)的可选逆运动学解,将双冗余机器人的冗余解决问题转化为基于最小化速度范数(MVN)和无穷大范数转矩最小化(INTM)两个差分级优化准则组合的统一二次规划问题。Dual-MVN-INTM 方案保证了平稳的速度、加速度曲线和运动结束时的零最终速度。最后,使用2个Franka Emika Panda机器人和2个Kinova Jaco2机器人进行3个复杂闭链操纵任务的仿真和实验结果验证了所提方法的有效性和效率。

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