This paper is concerned with the parameter estimation of non-linear discrete-time systems from noisy state measurements in the state-space form. A novel sparse Bayesian convex optimisation algorithm is proposed for the parameter estimation and prediction. The method fully considers the approximation method, parameter prior and posterior, and adds Bayesian sparse learning and optimization for explicit modeling. Different from the previous identification methods, the main identification challenge resides in two aspects: first, a new objective function is obtained by our improved Stein approximation method in the convex optimization problem, so as to capture more information of particle approximation and convergence; second, another objective ...
We introduce a new Bayesian nonparametric approach to identification of sparse dynamic linear system...
Identification of accurate dynamic models is essential in analysis and design of control systems. A ...
While the theory of Bayesian system identification provides a probabilistic means for reliably and r...
This technical note considers the identification of nonlinear discrete-time systems with additive pr...
This technical note considers the identification of nonlinear discrete-time systems with additive pr...
nonlinear discrete-time systems with additive process noise but without measurement noise. In partic...
Bayesian point estimation is commonly used for system identification owing to its good properties fo...
Bayesian point estimation is commonly used for system identification owing to its good properties fo...
Abstract: This paper presents a Basis Pursuit DeNoising (BPDN) sparse estimation approach as a regul...
In this paper we propose a Maximum a Posteriori (MAP) approach for estimating a random sparse parame...
This paper is concerned with the parameter estimation of a general class of nonlinear dynamic system...
This paper is concerned with the parameter estimation of a general class of nonlinear dynamic system...
In the traditional system identification techniques, a priori model structure is widely assumed to b...
Sparse Bayesian learning (SBL) has attracted substantial interest in recent years for reliable estim...
A general framework for estimating nonlinear functions and systems is described and analyzed in this...
We introduce a new Bayesian nonparametric approach to identification of sparse dynamic linear system...
Identification of accurate dynamic models is essential in analysis and design of control systems. A ...
While the theory of Bayesian system identification provides a probabilistic means for reliably and r...
This technical note considers the identification of nonlinear discrete-time systems with additive pr...
This technical note considers the identification of nonlinear discrete-time systems with additive pr...
nonlinear discrete-time systems with additive process noise but without measurement noise. In partic...
Bayesian point estimation is commonly used for system identification owing to its good properties fo...
Bayesian point estimation is commonly used for system identification owing to its good properties fo...
Abstract: This paper presents a Basis Pursuit DeNoising (BPDN) sparse estimation approach as a regul...
In this paper we propose a Maximum a Posteriori (MAP) approach for estimating a random sparse parame...
This paper is concerned with the parameter estimation of a general class of nonlinear dynamic system...
This paper is concerned with the parameter estimation of a general class of nonlinear dynamic system...
In the traditional system identification techniques, a priori model structure is widely assumed to b...
Sparse Bayesian learning (SBL) has attracted substantial interest in recent years for reliable estim...
A general framework for estimating nonlinear functions and systems is described and analyzed in this...
We introduce a new Bayesian nonparametric approach to identification of sparse dynamic linear system...
Identification of accurate dynamic models is essential in analysis and design of control systems. A ...
While the theory of Bayesian system identification provides a probabilistic means for reliably and r...