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Q-learning trajectory planning based on Takagia??Sugeno fuzzy parallel distributed compensation structure of humanoid manipulator

机译:基于Takagia-Sugeno模糊并行分布式仿人机器人补偿结构的Q学习轨迹规划

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NAO is the first robot created by SoftBank Robotics. Famous around the world, NAO is a tremendous programming tool and he has especially become a standard in education and research. Aiming at the large error and poor stability of the humanoid robot NAO manipulator during trajectory tracking, a novel framework based on fuzzy controller reinforcement learning trajectory planning strategy is proposed. Firstly, the Takagia??Sugeno fuzzy model based on the dynamic equation of the NAO right arm is established. Secondly, the design and the gain solution of the state feedback controller based on the parallel feedback compensation strategy are studied. Finally, the ideal trajectory of the motion is planned by reinforcement learning algorithm so that the end of the manipulator can track the desired trajectory and realize the valid obstacle avoidance. Simulation and experiment shows that the end of the manipulator based on this scheme has good controllability and stability and can meet the accuracy requirements of trajectory tracking accuracy, which verifies the effectiveness of the proposed framework.
机译:NAO是由SoftBank Robotics创建的第一个机器人。 NAO是举世无双的编程工具,在世界范围内广为人知,他尤其已成为教育和研究的标准。针对仿人机器人NAO机械手轨迹跟踪过程中误差大,稳定性差的问题,提出了一种基于模糊控制器强化学习轨迹规划策略的框架。首先,建立了基于NAO右臂动力学方程的Takagia-Sugeno模糊模型。其次,研究了基于并行反馈补偿策略的状态反馈控制器的设计和增益解。最后,通过强化学习算法来规划运动的理想轨迹,从而使机械手的末端能够跟踪所需的轨迹并实现有效的避障。仿真和实验表明,基于该方案的机械手末端具有良好的可控性和稳定性,可以满足轨迹跟踪精度的精度要求,验证了所提框架的有效性。

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