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An approach to parametric nonlinear least square optimization and application to task-level learning control

机译:参数非线性最小二乘优化的一种方法及其在任务级学习控制中的应用

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This paper considers a parametric nonlinear least square (NLS) optimization problem. Unlike a classical NLS problem statement, we assume that a nonlinear optimized system depends on two arguments: an input vector and a parameter vector. The input vector can be modified to optimize the system, while the parameter vector changes from one optimization iteration to another and is not controlled. The optimization process goal is to find a dependence of the optimal input vector on the parameter vector, where the optimal input vector minimizes a quadratic performance index. The paper proposes an extension of the Levenberg-Marquardt algorithm for a numerical solution of the formulated problem. The proposed algorithm approximates the nonlinear system in a vicinity of the optimum by expanding it into a series of parameter vector functions, affine in the input vector. In particular, a radial basis function network expansion is considered. The convergence proof for the algorithm is presented. The proposed approach is applied to task-level learning control of a two-link flexible arm. Each evaluation of the system in the optimization process means completing a controlled motion of the arm.
机译:本文考虑了参数非线性最小二乘(NLS)优化问题。与经典的NLS问题陈述不同,我们假设非线性优化系统取决于两个参数:输入向量和参数向量。可以修改输入向量以优化系统,而参数向量则从一个优化迭代更改为另一个,并且不受控制。优化过程的目标是找到最佳输入向量与参数向量的依存关系,其中最佳输入向量使二次性能指标最小。本文提出了Levenberg-Marquardt算法的扩展,用于公式化问题的数值解。所提出的算法通过将非线性系统扩展为输入向量中的一系列仿射参数向量函数来逼近最优系统附近的非线性系统。特别地,考虑了径向基函数网络扩展。给出了算法的收敛性证明。所提出的方法被应用于两连杆柔性臂的任务级学习控制。在优化过程中对系统的每次评估都意味着完成手臂的受控运动。

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