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Hammerstein system identification by non-parametric instrumental variables

机译:通过非参数工具变量识别Hammerstein系统

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摘要

A mixed, parametric_non-parametric routine for Hammerstein system identification is presented. Parameters of a non-linear characteristic and of ARMA linear dynamical part of Hammerstein system are estimated by least squares and instrumental variables assuming poor a priori knowledge about the random input and random noise. Both subsystems are identified separately, thanks to the fact that the unmeasurable interaction inputs and suitable instrumental variables are estimated in a preliminary step by the use of a non-parametric regression function estimation method. A wide class of non-linear characteristics including functions which are not linear in the parameters is admitted. It is shown that the resulting estimates of system parameters are consistent for both white and coloured noise. The problem of generating optimal instruments is discussed and proper non-parametric method of computing the best instrumental variables is proposed. The analytical findings are validated using numerical simulation results.
机译:提出了用于Hammerstein系统识别的混合,非参数参数例程。 Hammerstein系统的非线性特性和ARMA线性动力部分的参数是通过最小二乘和工具变量来估计的,前提是他们对随机输入和随机噪声的先验知识不足。这两个子系统是分开确定的,这是由于以下事实:在不可预见的交互输入和合适的工具变量中,是通过使用非参数回归函数估计方法在初步步骤中估计出的。广泛的非线性特性包括在参数中不是线性的函数。结果表明,系统参数的估计值对于白噪声和有色噪声都是一致的。讨论了生成最佳工具变量的问题,并提出了计算最佳工具变量的适当非参数方法。使用数值模拟结果验证了分析结果。

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