Data-Driven Identification of the Jacobian Matrix of a 2- DoF Spherical Parallel Manipulator

S. Askarinejad, A. Fahim, M. Yazdi, M. T. Masouleh
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引用次数: 2

Abstract

Modeling is the first step in identification of the behavior of a system. Moreover, the first step in controlling a system consists in identifying its behavior, accurately. In general, analytical methods were used to identify the kinematics behavior of a system. In the kinematic analysis, the most important issue is to find the Jacobian matrix which maps the angular velocities of the end-effector to the angular velocities of the actuated joints. Furthermore, the Jacobian matrix is needed for control purposes. In recent years, several data-driven methods were presented for the identification of linear and nonlinear dynamical systems. The Sparse Identification of Nonlinear Dynamics (SINDy) is one which characterizes the nonlinear equation of the system solely using input/output data. In this study, the foregoing method is applied in order to find the Jacobian matrix of a two Degree-of-Freedom Agile Eye robot which performs spherical motion. The aforementioned robot is an over-constrained mechanism which adds number of difficulties in computing the Jacobian matrix using the analytical method. Finally the nonlinear equations of the Jacobian matrix are acquired using the SINDy method. Comparing the results obtained by the SINDy method with the values obtained by simulation indicates the accuracy of the method. Moreover, the calculation time has been significantly reduced compared to the analytical approaches, which is a definite asset for real-time modeling and control purposes.
二自由度球面并联机器人雅可比矩阵的数据驱动辨识
建模是识别系统行为的第一步。此外,控制系统的第一步是准确地识别其行为。一般来说,分析方法被用来确定系统的运动学行为。在运动学分析中,最重要的问题是找到将末端执行器角速度映射到被动关节角速度的雅可比矩阵。此外,还需要雅可比矩阵来进行控制。近年来,人们提出了几种数据驱动的方法来识别线性和非线性动力系统。非线性动力学的稀疏辨识(SINDy)是一种只用输入/输出数据来表征系统非线性方程的辨识方法。在本研究中,将上述方法应用于求解一种进行球面运动的二自由度敏捷眼机器人的雅可比矩阵。上述机器人是一种过度约束机构,增加了用解析法计算雅可比矩阵的难度。最后利用SINDy方法得到雅可比矩阵的非线性方程。将SINDy方法的计算结果与仿真结果进行了比较,表明了该方法的准确性。此外,与分析方法相比,计算时间大大减少,这对于实时建模和控制目的是一个明确的资产。
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