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Optimization of humanoid's motions under multiple constraints in vehicle ingress task

机译:车内重组中多个约束下的人形运动的优化

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摘要

This paper presents an approach on whole-body motion optimization for a humanoid robot to enter a ground vehicle. Motion capture system (mocap) was used to plan an initial suboptimal motion. Reinforcement learning was then implemented to optimize the trajectories with respect to kinematic and torque limits at the both body and the joint level. The cost functions in the body level calculated a robot's static balancing ability, collisions and validity of the end-effector movement. Balancing and collision checks were computed from kinematic models of the robot and the vehicle model. Energy consumption such as torque limit obedience was checked at the joint level. Energy cost was approximated as joint torque, measured from a dynamic model. Various penalties such as joint angle and velocity limits were also computed in the joint level. Physical limits of each joint ensured both spatial and temporal smoothness of the generated trajectories. Finally, experimental evaluations of the presented approach were demonstrated through simulation and physical platforms in a real environment.
机译:本文提出了一种对人形机器人的全身运动优化的方法,进入地面车辆。运动捕获系统(Mocap)用于规划初始的次优运动。然后实施强化学习以优化对体内和接头水平的运动和扭矩限制的轨迹。体级的成本函数计算了机器人的静态平衡能力,末端效应器运动的碰撞和有效性。从机器人和车辆模型的运动模型计算平衡和碰撞检查。在联合水平检查诸如扭矩限制顺从的能量消耗。能量成本近似为从动态模型测量的关节扭矩。在联合水平中也计算了诸如关节角度和速度限制的各种惩罚。每个关节的物理限制确保了所生成的轨迹的空间和时间平滑度。最后,通过真实环境中的仿真和物理平台来证明所提出的方法的实验评估。

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