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Identification of non-uniformly sampled Wiener systems with dead-zone non-linearities

机译:具有死区非线性的非均匀采样维纳系统的识别

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摘要

In multi-rate systems, identifying non-uniformly sampled data (NUSD) models is a challenge. This study proposes an iteratively recursive least-squares identification algorithm for non-uniformly sampled Wiener systems with dead-zone non-linearities. First, an extended information vector is designed, in which both unknown parameters and inner variables exist. Then, based on the auxiliary model and iterative method, an auxiliary model-based iteratively recursive least-squares algorithm is developed to estimate the system parameters directly. Furthermore, to improve the convergence rate and disturbance rejection, a new modified forgetting factor function is presented. Compared with no or fixed forgetting factor algorithms, the proposed algorithm has a higher convergence speed and is more robust to white noise with different variances. The numerical simulation shows the effectiveness of the proposed algorithm, and it can be extended to other NUSD non-linear systems.
机译:在多速率系统中,识别非均匀采样数据(NUSD)模型是一个挑战。这项研究提出了一种具有死区非线性的非均匀采样维纳系统的迭代递推最小二乘辨识算法。首先,设计了一个扩展的信息向量,其中未知参数和内部变量都存在。然后,基于辅助模型和迭代方法,开发了基于辅助模型的迭代递推最小二乘算法,直接估计系统参数。此外,为了提高收敛速度和抑制干扰,提出了一种新的改进的遗忘因子函数。与无遗忘因子算法或固定遗忘因子算法相比,该算法具有更高的收敛速度,并且对不同方差的白噪声具有更强的鲁棒性。数值仿真表明了该算法的有效性,可以推广到其他NUSD非线性系统。

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