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Maximum Likelihood identification of Wiener-Hammerstein system with process noise

机译:具有过程噪声的Wiener-Hammerstein系统的最大似然识别

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The Wiener-Hammerstein model is a block-oriented model consisting of two linear blocks and a static nonlinearity in the middle. We address the identification problem of this model, when a disturbance affects the input of the non-linearity, i.e. process noise. For this case, a Maximum Likelihood estimator is derived, which delivers a consistent estimate of the model parameters. In the presence of process noise, in fact, a standard Prediction Error Method normally leads to biased results. The Maximum Likelihood estimate is then used together with the Best Linear Approximation of the system, in order to implement a complete identification scheme when the parametrization of the linear blocks is not known a priori. The computation of the likelihood function requires numerical integration, which is solved by Monte Carlo and Metropolis-Hastings techniques. Numerical examples show the effectiveness of the identification scheme.
机译:Wiener-Hammerstein模型是一个面向块的模型,由两个线性块和一个中间的静态非线性组成。当干扰影响非线性的输入即过程噪声时,我们解决了该模型的识别问题。对于这种情况,派生了最大似然估计器,它提供了模型参数的一致估计。实际上,在存在过程噪声的情况下,标准的“预测误差方法”通常会导致结果有偏差。然后,将最大似然估计与系统的最佳线性近似一起使用,以便在先验未知线性块的参数化时实施完整的识别方案。似然函数的计算需要数值积分,这可以通过Monte Carlo和Metropolis-Hastings技术解决。数值算例表明了该识别方案的有效性。

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