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On identification of nonstationary Hammerstein systems by the Fourier series regression estimate

机译:傅里叶系列回归估计识别非营养利党系统

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A study is made of the identification of a single-input, single-output (SISO) discrete Hammerstein system. Such a system consists of a nonlinear, memoryless subsystem followed by a dynamic, linear subsystem. The authors identify the parameters of the dynamic, linear subsystem by the correlation method. The main results concern the identification of the nonlinear, memoryless subsystem. The authors impose no conditions on the functional form of the nonlinear subsystem, recovering the nonlinearity using the Fourier series regression estimate and an input process with fixed initial conditions. They prove the density-free pointwise convergence of the estimate, that is, that the algorithm converges for all input densities. The rates of pointwise convergence are obtained for smooth input densities and for nonlinearities of the Lipschitz type.
机译:研究是对单一输入,单输出(SISO)离散Hammerstein系统的识别。这样的系统由非线性,记忆子系统组成,后跟动态,线性子系统。作者通过相关方法识别动态,线性子系统的参数。主要结果涉及非线性,记忆子系统的识别。作者对非线性子系统的功能形式没有任何条件,使用傅里叶系列回归估计和具有固定初始条件的输入过程恢复非线性。它们证明了估计的无密度的尖端会聚,即算法为所有输入密度收敛。针对光滑的输入密度和嘴唇尖型的非线性获得尖锐收敛的速率。

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