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An application of on-line parametric optimization to task-level learning control

机译:在线参数优化在任务级学习控制中的应用

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This paper considers a novel statement of task-level learning control problem, which is formulated as an online nonlinear least square parametric optimization problem. The input of the optimized system is the feedforward control sequence, the output is a sampled deviation from the reference motion. In addition to the input vectors, the system output depends on the task parameter vector, which includes initial and desired final coordinates for the system. The task parameter vector changes in the course of the optimization (learning) iterations and is not controlled by the algorithm. The paper surveys the online parametric optimization algorithm and demonstrates its application to the point-to-point vibration-free control of a two-link flexible manipulator arm. The learning is performed in the course of normal operation of the arm, which is simulated to move through a sequence of randomly generated goal configurations. Without any prior knowledge of the system dynamics, the algorithm achieves high-performance control of arbitrary arm motion in about 500 iterations. Residual vibrations are very small for the motion time being only 50% longer than the main mode oscillation period.
机译:本文考虑了一种任务级学习控制问题的新颖陈述,该陈述被表述为在线非线性最小二乘参数优化问题。优化系统的输入是前馈控制序列,输出是与参考运动的采样偏差。除了输入向量之外,系统输出还取决于任务参数向量,该任务参数向量包括系统的初始坐标和所需的最终坐标。任务参数向量在优化(学习)迭代过程中发生变化,并且不受算法控制。本文考察了在线参数优化算法,并演示了其在两连杆柔性机械臂的点对点无振动控制中的应用。该学习是在手臂的正常操作过程中执行的,该操作被模拟为在一系列随机生成的目标配置中移动。在没有任何系统动力学先验知识的情况下,该算法可在约500次迭代中实现对任意手臂运动的高性能控制。残留振动非常小,运动时间仅比主模式振荡周期长50%。

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