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Identification of lonely barycentric parameters of parallel kinematics mechanism with rank-deficient observation matrix

机译:用秩亏观测矩阵识别并联运动机构的孤独重心参数

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In parameter identification of dynamic system presented as linear system, the observation matrix is commonly rank-deficient. The widely used approach is transforming the system to new, full-rank system and accordingly estimating the dynamic parameters as linear combinations. The treatment becomes relatively more difficult when dealing with parallel kinematics mechanism due to lengthy expression of their inverse dynamics and hence difficulty to transform it to dynamic identification model manually. This paper presents a new approach which does not require such transformation and is able to present the estimates as lonely parameters. This is conducted by iteratively minimizing the residual instead of solving the estimates by using linear least squares technique. The transformation from the inverse dynamics model to the dynamic identification model is accomplished by symbolic computation.
机译:在以线性系统表示的动态系统的参数辨识中,观测矩阵通常是秩不足的。广泛使用的方法是将系统转换为新的全等级系统,并相应地将动态参数估计为线性组合。当处理并行运动学机制时,由于其逆动力学的冗长表达,因此处理变得相对困难,因此很难手动将其转换为动态识别模型。本文提出了一种新方法,该方法不需要进行这种转换,并且能够将估计值表示为孤独的参数。这是通过迭代地使残差最小化来实现的,而不是使用线性最小二乘法来求解估计值。从逆动力学模型到动态识别模型的转换是通过符号计算完成的。

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