We present a technique for kernel-based identification of Wiener systems. We model the impulse response of the linear block with a Gaussian process. The static nonlinearity is modeled with a combination of basis functions. The coefficients of the static nonlinearity are estimated, together with the hyperparameters of the covariance function of the Gaussian process model, using an iterative algorithm based on the expectation-maximization method combined with elliptical slice sampling to sample from the posterior distribution of the impulse response given the data. The same sampling method is then used to find the posterior-mean estimate of the impulse response. We test the proposed algorithm on a benchmark of randomly-generated Wiener system...
We propose a new methodology for identifying Wiener systems using the data acquired from two separat...
We propose a new methodology for identifying Wiener systems using the data acquired from two separat...
We propose a new methodology for identifying Wiener systems using the data acquired from two separat...
We present a technique for kernel-based identification of Wiener systems. We model the impulse respo...
We propose a nonparametric approach for the identification of Wiener systems. We model the impulse r...
We propose a nonparametric approach for the identification of Wiener systems. We model the impulse r...
We propose a nonparametric approach for the identification of Wiener systems. We model the impulse r...
The paper addresses the problem of non-parametric estimation of the static characteristic in Wiener ...
We present a novel method for Wiener system identification. The method relies on a semiparametric, i...
We present a novel method for Wiener system identification. The method relies on a semiparametric, i...
The identification task consists of making a model of a system from measured input and output signal...
The identification task consists of making a model of a system from measured input and output signal...
We propose a new methodology for identifying Wiener systems using the data acquired from two separat...
We propose a new methodology for identifying Wiener systems using the data acquired from two separat...
We propose a new methodology for identifying Wiener systems using the data acquired from two separat...
We propose a new methodology for identifying Wiener systems using the data acquired from two separat...
We propose a new methodology for identifying Wiener systems using the data acquired from two separat...
We propose a new methodology for identifying Wiener systems using the data acquired from two separat...
We present a technique for kernel-based identification of Wiener systems. We model the impulse respo...
We propose a nonparametric approach for the identification of Wiener systems. We model the impulse r...
We propose a nonparametric approach for the identification of Wiener systems. We model the impulse r...
We propose a nonparametric approach for the identification of Wiener systems. We model the impulse r...
The paper addresses the problem of non-parametric estimation of the static characteristic in Wiener ...
We present a novel method for Wiener system identification. The method relies on a semiparametric, i...
We present a novel method for Wiener system identification. The method relies on a semiparametric, i...
The identification task consists of making a model of a system from measured input and output signal...
The identification task consists of making a model of a system from measured input and output signal...
We propose a new methodology for identifying Wiener systems using the data acquired from two separat...
We propose a new methodology for identifying Wiener systems using the data acquired from two separat...
We propose a new methodology for identifying Wiener systems using the data acquired from two separat...
We propose a new methodology for identifying Wiener systems using the data acquired from two separat...
We propose a new methodology for identifying Wiener systems using the data acquired from two separat...
We propose a new methodology for identifying Wiener systems using the data acquired from two separat...