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Nonlinear system identification using a Hammerstein model and a cumulant-based Steiglitz-McBride algorithm

机译:使用Hammerstein模型和基于累积量的Steiglitz-McBride算法进行非线性系统识别

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In this paper, we address the problem of estimating the parameters of a Hammerstein model. Hammerstein models, which consist of a nonlinear memoryless gain followed by a linear time-invariant system, have been used to identify nonlinear systems. We assume that the gain is in polynomial form, and that the system is an ARMA filter. The input and output are available, and the output is assumed to be corrupted by additive Gaussian noise of unknown covariance. Transforming the problem into the cumulant domain, we suppress the effect of the noise and estimate the model parameters using a linear, iterative method. Simulations are presented to illustrate the performance of the proposed method.
机译:在本文中,我们解决了估计Hammerstein模型参数的问题。 Hammerstein模型由非线性无记忆增益和线性时不变系统组成,已被用于识别非线性系统。我们假设增益是多项式形式,并且系统是ARMA滤波器。输入和输出可用,并且假定输出因未知协方差的加性高斯噪声而损坏。将问题转化为累积域,我们可以抑制噪声的影响,并使用线性迭代方法估算模型参数。仿真结果表明了该方法的性能。

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