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Stochastic gradient based iterative identification algorithm for a class of dual-rate Wiener systems

机译:一类双速率维纳系统的基于随机梯度的迭代识别算法

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Parameter estimation problem is considered for a class of dual-rate Wiener systems whose input-output data are measured by two different sampling rate. Firstly, a polynomial transformation technique is used to derive a mathematical model for such dual-rate Wiener systems. Then, directly based on the dual-rate sampled data, a dual-rate Wiener systems stochastic gradient algorithm (DRW-SG) is presented. In order to improve the algorithm convergence rate, a dual-rate Wiener systems stochastic gradient algorithm with a forgetting factor algorithm (DRW-FF-SG) is presented. For making full use of the forgetting factor, a dual-rate Wiener systems stochastic gradient algorithm with an increasing forgetting factor algorithm (DRW-IFF-SG) is presented which performs excellently. Finally, an example is provided to test and illustrate the proposed algorithms.
机译:对于一类双速率维纳系统,考虑参数估计问题,该系统的输入输出数据是通过两个不同的采样率来测量的。首先,使用多项式变换技术来推导这种双速率维纳系统的数学模型。然后,直接基于双速率采样数据,提出了一种双速率Wiener系统随机梯度算法(DRW-SG)。为了提高算法的收敛速度,提出了一种带有遗忘因子算法的双速率维纳系统随机梯度算法(DRW-FF-SG)。为了充分利用遗忘因子,提出了一种具有较高遗忘因子算法的双速率Wiener系统随机梯度算法(DRW-IFF-SG)。最后,提供了一个示例来测试和说明所提出的算法。

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