行走两足动物的质心状态及扰动估计

Iyad Hashlamon, K. Erbatur
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引用次数: 16

摘要

在线评估机器人的平衡需要机器人动力学状态变量的信息和环境相互作用力的测量数据。然而,建模误差、外力和难以测量的状态给控制系统带来了困难。提出了一种利用运动信息估计仿人机器人的质心状态和运动扰动的方法。该运动仅从惯性测量单元(IMU)和正运动学中获得。采用卡尔曼滤波器和干扰观测器,卡尔曼滤波器用于状态估计和干扰估计,干扰观测器根据频带将干扰分解为建模误差和加速度误差。该扰动在数学上是根据先前的CoM和零矩点(ZMP)状态建模的,而不是在系统状态中增加它。利用二次规划法求解人形机器人平移运动时的约束动力学方程,估计了ZMP。采用12自由度双足机器人模型进行了全动力学三维仿真,验证了估计的有效性。结果表明,所提出的估计方法是成功的和有前途的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Center of mass states and disturbance estimation for a walking biped
An on-line assessment of the balance of the robot requires information of the state variables of the robot dynamics and measurement data about the environmental interaction forces. However, modeling errors, external forces and hard to measure states pose difficulties to the control systems. This paper presents a method of using the motion information to estimate the center of mass (CoM) states and the disturbance of walking humanoid robot. The motion is acquired from the inertial measurement unit (IMU) and forward kinematics only. Kalman filter and disturbance observer are employed, Kalman filter is used for the states and disturbance estimation, and the disturbance observer is used to decompose the disturbance into modeling error and acceleration error based on the frequency band. The disturbance is modeled mathematically in terms of previous CoM and Zero moment point (ZMP) states rather than augmenting it in the system states. The ZMP is estimated using the quadratic programming method to solve the constraint dynamic equations of the humanoid robot in translational motion. A biped robot model of 12-degrees-of-freedom (DOF) is used in the full-dynamics 3-D simulations for the estimation validation. The results indicate that the presented estimation method is successful and promising.
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