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Blind maximum likelihood identification of Hammerstein systems

机译:Hammerstein系统的盲最大似然识别

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This paper is about the identification of discrete-time Hammerstein systems from output measurements only (blind identification). Assuming that the unobserved input is white Gaussian noise, that the static nonlinearity is invertible, and that the output is observed without errors, a Gaussian maximum likelihood estimator is constructed. Its asymptotic properties are analyzed and the Cramer-Rao lower bound is calculated. In practice, the latter can be computed accurately without using the strong law of large numbers. A two-step procedure is described that allows to find high quality initial estimates to start up the iterative Gauss-Newton based optimization scheme. The paper includes the illustration of the method on a simulation example. A theoretical analysis demonstrates that additive output measurement noise introduces a bias that is proportional to the variance of that additive, unmodeled noise source. The simulations support this result, and show that this bias is insignificant beyond a certain Signal-to-Noise Ratio (40 dB in the example).
机译:本文仅关于基于输出测量的离散时间Hammerstein系统的识别(盲识别)。假设未观察到的输入是高斯白噪声,静态非线性是可逆的,并且观察到输出没有误差,则构造一个高斯最大似然估计器。分析其渐近性质,并计算Cramer-Rao下界。实际上,可以在不使用大数定律的情况下准确地计算后者。描述了一个两步过程,该过程允许找到高质量的初始估计值以启动基于迭代高斯-牛顿的优化方案。本文在一个仿真示例中包括了该方法的说明。理论分析表明,附加输出测量噪声会引入与该附加未建模噪声源方差成正比的偏差。仿真结果支持了这一结果,并表明该偏差在一定的信噪比(本例中为40 dB)之外是微不足道的。

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