使用准牛顿迭代法对基于斯特里贝克摩擦力的机械手模型进行动态识别

Feng Xiao, Feilong Zhang, Bing Han, Hualiang Zhang
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引用次数: 0

摘要

动态控制的性能与建模精度密切相关。然而,传统的估算方法和摩擦模型,如最小二乘法和库仑加粘性模型,无法准确反映实际特性。尤其是库仑加粘性模型的线性特征,忽略了关节摩擦在较慢速度下的非线性静态特征。为了提高模型结构的合理性,我们将 Stribeck 摩擦模型整合到库仑加粘性模型中。然而,引入这种非线性因素会影响最小二乘法的适用性。作为对策,我们提出了一种结合最小二乘法和准牛顿迭代法的新策略,以确定修改后非线性模型的参数。此外,激励轨迹的设计也是实现高识别精度的关键。我们利用观测矩阵最小奇异值的逆作为目标函数。通过使用内点法对其进行最小化,我们生成了非常适合激励动态特性的激励轨迹。然后,我们利用测量扭矩和估计扭矩之间的差异来评估机械手动态参数的精度。值得注意的是,我们提出的算法将估计扭矩的平均绝对误差降低了 20.40% 以上。最后,我们对工业机械手进行了手导向抓取和拖拽实验,结果表明所提出的方法可以为机械手提供全面的扭矩补偿。
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Dynamic Identification for a Manipulator Model based on Stribeck Friction using the Quasi-Newton Iterative Method
The performance of dynamic control is intimately tied to modeling accuracy. However, traditional estimation methods and friction models, such as the least squares method and the Coulomb plus viscous model, fail to reflect the actual characteristics accurately. Particularly, the linear nature of the Coulomb plus viscous model overlooks the nonlinear static features of joint friction at slower velocities. To improve the rationality of the model structure, we integrate the Stribeck friction model into the Coulomb plus viscous model. However, introducing such nonlinearities compromises the applicability of the least squares method. As a countermeasure, we propose a new strategy that combines the least square method and the Quasi-Newton iterative method to identify the parameters of the modified nonlinear model. Additionally, the design of the excitation trajectory is critical to achieve high identification accuracy. We utilized the inverse of the smallest singular value of the observation matrix as the objective function. By minimizing it with the interior point method, we generate the excitation trajectory well-suited to stimulate dynamic characteristics. Then we leverage the discrepancies between the measured and estimated torques to assess the precision of the dynamic parameters of the manipulator. Remarkably, our proposed algorithm reduces the mean absolute error of the estimated torque by over 20.40%. Finally, an experiment of the industrial manipulator by hand guiding grab and drag is performed and shows that the proposed approach can provide the manipulator with comprehensive torque compensation.
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