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Data filtering based recursive least squares estimation algorithm for a class of Wiener nonlinear systems

机译:一类Wiener非线性系统的基于数据滤波的递推最小二乘估计算法

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Based on the filtering theory, we present a filtering based recursive least squares algorithm for a class of Wiener nonlinear systems. The basic idea is to use an estimated noise transfer function to filter the input-ouput data, to obtain two identification models containing the parameters of the system model and the noise model, respectively, and to present the filtering based recursive least squares method to identify the parameters of these two models, by replacing the unmeasurable terms in the information vectors with their estimates. The illustrative example indicates that the proposed algorithm can generate more accurate parameter estimates compared with the recursive least squares algorithm.
机译:基于滤波理论,针对一类维纳非线性系统,提出了一种基于滤波的递推最小二乘算法。基本思想是使用估计的噪声传递函数对输入输出数据进行滤波,获得分别包含系统模型和噪声模型参数的两个识别模型,并提出基于滤波的递归最小二乘法进行识别。通过将信息向量中不可测量的项替换为它们的估计值,来确定这两个模型的参数。说明性示例表明,与递归最小二乘算法相比,所提出的算法可以生成更准确的参数估计。

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