This paper presents a nonparametric identification of continuous-time nonlinear systems by using a Gaussian process (GP) model. The GP prior model is trained by artificial bee colony algorithm. The nonlinear function of the objective system is estimated as the predictive mean function of the GP, and the confidence measure of the estimated nonlinear function is given by the predictive covariance of the GP. The proposed identification method is applied to modeling of a simplified electric power system. Simulation results are shown to demonstrate the effectiveness of the proposed method
This paper describes model-based predictive control based on Gaussian processes. Gaussian process mo...
This paper describes model-based predictive control based on Gaussian processes. Gaussian process mo...
Gaussian process models provide a probabilistic non-parametric modelling approach for black-box iden...
This paper presents an investigation into the development of system identification using the artific...
Abstract — Different models can be used for nonlinear dy-namic systems identification and the Gaussi...
This paper describes the identification of nonlinear dynamic systems with a Gaussian process (GP) pr...
In this paper an alternative approach to black-box identification of non-linear dynamic systems is c...
In this paper an alternative approach to black-box identification of non-linear dynamic systems is c...
In this paper an alternative approach to black-box identification of non-linear dynamic systems is c...
This thesis is concerned with investigating the use of Gaussian Process (GP) models for the identifi...
This thesis is concerned with investigating the use of Gaussian Process (GP) models for the identifi...
This thesis is concerned with investigating the use of Gaussian Process (GP) models for the identifi...
Gaussian process prior models are known to be a powerful non-parametric tool for stochastic data mod...
Abstract: The Gaussian process model is an example of a flexible, probabilistic, nonparametric model...
This paper describes model-based predictive control based on Gaussian processes. Gaussian process mo...
This paper describes model-based predictive control based on Gaussian processes. Gaussian process mo...
This paper describes model-based predictive control based on Gaussian processes. Gaussian process mo...
Gaussian process models provide a probabilistic non-parametric modelling approach for black-box iden...
This paper presents an investigation into the development of system identification using the artific...
Abstract — Different models can be used for nonlinear dy-namic systems identification and the Gaussi...
This paper describes the identification of nonlinear dynamic systems with a Gaussian process (GP) pr...
In this paper an alternative approach to black-box identification of non-linear dynamic systems is c...
In this paper an alternative approach to black-box identification of non-linear dynamic systems is c...
In this paper an alternative approach to black-box identification of non-linear dynamic systems is c...
This thesis is concerned with investigating the use of Gaussian Process (GP) models for the identifi...
This thesis is concerned with investigating the use of Gaussian Process (GP) models for the identifi...
This thesis is concerned with investigating the use of Gaussian Process (GP) models for the identifi...
Gaussian process prior models are known to be a powerful non-parametric tool for stochastic data mod...
Abstract: The Gaussian process model is an example of a flexible, probabilistic, nonparametric model...
This paper describes model-based predictive control based on Gaussian processes. Gaussian process mo...
This paper describes model-based predictive control based on Gaussian processes. Gaussian process mo...
This paper describes model-based predictive control based on Gaussian processes. Gaussian process mo...
Gaussian process models provide a probabilistic non-parametric modelling approach for black-box iden...