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Recursive Nonparametric Identification of Nonlinear Systems With Adaptive Binary Sensors

机译:自适应二进制传感器对非线性系统的递归非参数辨识

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摘要

In this paper, the problem of identifying nonlinear systems under adaptive binary-valued output measurements is considered. We follow a nonparametric approach, which directly estimates the value of the nonlinear function representing the system at any fixed point with the help of a recursive kernel-based stochastic approximation algorithm with expanding truncations (SAAWET). The thresholds of the binary sensor are adaptively designed to achieve a sufficient richness of information in the output observations. The constructed estimates are proved to converge to the true values with probability one. Two numerical examples are given showing that the simulation results are consistent with the theoretical analysis.
机译:本文考虑了在自适应二进制值输出测量下识别非线性系统的问题。我们遵循一种非参数方法,该方法借助带有扩展截断的基于递归核的随机逼近算法(SAAWET),直接估计表示系统在任何固定点的非线性函数的值。二进制传感器的阈值经过自适应设计,可在输出观测值中获得足够的信息量。证明构造的估计值以概率1收敛到真实值。给出两个数值例子,表明仿真结果与理论分析相吻合。

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