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An extremum seeking approach to sampled-data iterative learning control of continuous-time nonlinear systems

机译:连续时间非线性系统的采样数据迭代学习控制的极值寻法

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Abstract: Iterative learning control (ILC) of continuous-time nonlinear plants with periodic sampled-data inputs is considered via an extremum seeking approach. ILC is performed without exploiting knowledge about any plant model, whereby the input signal is constructed recursively so that the corresponding plant output tracks a prescribed reference trajectory as closely as possible on a finite horizon. The ILC is formulated in terms of a non-model-based extremum seeking control problem, to which local optimisation methods such as gradient descent and Newton are applicable. Sufficient conditions on convergence to a neighbourhood of the reference trajectory are given.
机译:摘要: 采用极值寻法考虑了具有周期性采样数据输入的连续时间非线性被控的迭代学习控制(ILC)。ILC是在不利用任何被控对象模型知识的情况下执行的,输入信号是递归构造的,以便相应的被控对象输出在有限的地平线上尽可能接近地跟踪规定的参考轨迹。ILC是根据非基于模型的极值寻向控制问题制定的,该问题适用于梯度下降和牛顿等局部优化方法。给出了收敛到参考轨迹邻域的充分条件。

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