We present a novel method for Wiener system identification. The method relies on a semiparametric, i.e. a mixed parametric/nonparametric, model of a Wiener system. We use a state-space model for the linear dynamical system and a nonparametric Gaussian process model for the static nonlinearity. We avoid making strong assumptions, such as monotonicity, on the nonlinear mapping. Stochastic disturbances, entering both as measurement noise and as process noise, are handled in a systematic manner. The nonparametric nature of the Gaussian process allows us to handle a wide range of nonlinearities without making problem-specific parameterizations. We also consider sparsity-promoting priors, based on generalized hyperbolic distributions, to automati...
We propose a framework for modeling structured nonlinear systems using nonparametric Gaussian proces...
The paper addresses the problem of non-parametric estimation of the static characteristic in Wiener ...
The identification task consists of making a model of a system from measured input and output signal...
We present a novel method for Wiener system identification. The method relies on a semiparametric, i...
We consider a semiparametric, i.e. a mixed parametric/nonparametric, model of a Wiener system. We us...
We consider a semiparametric, i.e. a mixed parametric/nonparametric, model of a Wiener system. We us...
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...
We present a technique for kernel-based identification of Wiener systems. We model the impulse respo...
We present a technique for kernel-based identification of Wiener systems. We model the impulse respo...
We propose a framework for modeling structured nonlinear systems using nonparametric Gaussian proces...
System identification is of special interest in science and engineering. This article is concerned w...
System identification is of special interest in science and engineering. This article is concerned w...
We propose a framework for modeling structured nonlinear systems using nonparametric Gaussian proces...
We propose a framework for modeling structured nonlinear systems using nonparametric Gaussian proces...
The paper addresses the problem of non-parametric estimation of the static characteristic in Wiener ...
The identification task consists of making a model of a system from measured input and output signal...
We present a novel method for Wiener system identification. The method relies on a semiparametric, i...
We consider a semiparametric, i.e. a mixed parametric/nonparametric, model of a Wiener system. We us...
We consider a semiparametric, i.e. a mixed parametric/nonparametric, model of a Wiener system. We us...
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...
We present a technique for kernel-based identification of Wiener systems. We model the impulse respo...
We present a technique for kernel-based identification of Wiener systems. We model the impulse respo...
We propose a framework for modeling structured nonlinear systems using nonparametric Gaussian proces...
System identification is of special interest in science and engineering. This article is concerned w...
System identification is of special interest in science and engineering. This article is concerned w...
We propose a framework for modeling structured nonlinear systems using nonparametric Gaussian proces...
We propose a framework for modeling structured nonlinear systems using nonparametric Gaussian proces...
The paper addresses the problem of non-parametric estimation of the static characteristic in Wiener ...
The identification task consists of making a model of a system from measured input and output signal...