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使用零力矩点反馈的双足机器人惯性参数辨识
引用本文:吴伟国,高力扬. 使用零力矩点反馈的双足机器人惯性参数辨识[J]. 哈尔滨工业大学学报, 2021, 53(7): 20-26
作者姓名:吴伟国  高力扬
作者单位:哈尔滨工业大学 机电工程学院 仿生仿人机器人及其智能运动控制研究室,哈尔滨150090
基金项目:国家重点研发计划(2018YFB1304502)
摘    要:为解决基于关节力矩的双足机器人参数辨识方法辨识精度不高,基于完整的足底力信息和运动捕捉数据的辨识方法对实验条件要求较高的问题,提出基于ZMP(zero moment point)数据的双足机器人惯性参数辨识方法.将理论ZMP与实际ZMP的位置偏差作为目标函数,考虑参数范围和机器人总质量两类约束条件,建立只使用双足机器人...

关 键 词:双足机器人  惯性参数辨识  ZMP  梯度矢量  海塞矩阵
收稿时间:2020-11-06

Inertia parameter identification of biped robot using ZMP feedback
WU Weiguo,GAO Liyang. Inertia parameter identification of biped robot using ZMP feedback[J]. Journal of Harbin Institute of Technology, 2021, 53(7): 20-26
Authors:WU Weiguo  GAO Liyang
Affiliation:Humanoid & Gorilla Robot and Its Intelligent Motion Control Lab., School of Mechatronics Engineering, Harbin Institute of Technology, Harbin 150090, China
Abstract:The existing parameter identification method of biped robot that uses the joint torque has low identification precision. The identification method based on full contact force and motion capture data requires additional equipment, which limits the application in a large range. Regarding this problem, a method for inertial parameter identification of biped robot based on ZMP data is proposed. The objective function is defined as the position deviation of the theoretical ZMP and the actual ZMP. The range of the parameters and the total weight of robot are considered as two constraint conditions. Then the optimization model of inertial parameter identification of biped robot is established, which only needs sample data acquired from the robot itself. Because the built model cannot be split into linear form, the gradient vector and Hessian matrix of the objective function are derived with respect to the parameter vector. Also, the optimization algorithm is given based on steepest descent method and Newton method. Using the biped part of the GoRoBoT-II robot, the inertial parameter identification experiment of the leg links is carried out. The proposed method is compared with the traditional identification method based on joint torque. It is found that the result of the proposed ZMP-based identification method is closer to the nominal value of the parameters obtained by 3D geometric modeling. Also, the deviation between theoretical ZMP and actual ZMP is 4.6 mm, which is smaller than the deviation (12.4 mm) of traditional method, indicating that the proposed ZMP-based parameter identification method can obtain better results than traditional methods.
Keywords:Biped robot   inertial parameter identification   ZMP   gradient vector   Hessian matrix
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