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Adaptive suboptimal tracking under bounded Lipshitz uncertainty in a discrete minimum-phase object

机译:离散最小相位对象中有界Lipshitz不确定性下的自适应次优追踪

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摘要

We consider a deterministic problem of asymptotically suboptimal tracking of a bounded reference signal with the output of a scalar discrete minimum-phase object with unknown transition function under a bounded external disturbance and bounded nonlinear stationary uncertainty satisfying a generalized Lipschitz condition. Suboptimality of the tracking is achieved with online estimation and compensation for nonparametric Lipschitz uncertainty in addition to estimating an unknown transition function. To solve the problem we use two parallel estimation algorithms, one of which provides stability for the closed adaptive system, the other, asymptotic tracking optimality with desired accuracy.
机译:我们考虑渐近参考信号的渐近参考信号的确定性问题,其与标量离散的最小相位对象的输出,其中包含未知的过渡功能下的过渡功能,在束缚的外部干扰和束缚的非线性固定不确定度满足广义嘴唇尖端条件下。 除了估计未知的转换函数之外,通过在线估计和对非参数嘴唇Chitz不确定性的替代和补偿来实现跟踪的子内容。 为了解决问题,我们使用两个并行估计算法,其中一个并行估计算法为闭合自适应系统提供稳定性,另一个,具有所需精度的其他渐近跟踪最优性。

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