The Duffing oscillator remains a key benchmark in nonlinear systems analysis and poses interesting challenges in nonlinear structural identification. The use of particle methods or sequential Monte Carlo (SMC) is becoming a more common approach for tackling these nonlinear dynamical systems, within structural dynamics and beyond. This paper demonstrates the use of a tailored SMC algorithm within a Markov Chain Monte Carlo (MCMC) scheme to allow inference over the latent states and parameters of the Duffing oscillator in a Bayesian manner. This approach to system identification offers a statistically more rigorous treatment of the problem than the common state-augmentation methods where the parameters of the model are included as additional ...
The problem of combined state and parameter estimation in nonlinear state space models, based on Bay...
This work details the Bayesian identification of a nonlinear dynamical system using a novel MCMC alg...
This paper will introduce the use of the approximate Bayesian computation (ABC) algorithm for model ...
The Duffing oscillator remains a key benchmark in nonlinear systems analysis and poses interesting c...
The Duffing oscillator remains a key benchmark in nonlinear systems analysis and poses interesting c...
In this paper, the authors outline the general principles behind an approach to Bayesian system iden...
The aim of this paper is to demonstrate the potential of the Reversible Jump Markov Chain Monte Carl...
The aim of this paper is to utilise the concept of “highly informative training data” such that, usi...
Sequential Monte Carlo (SMC) and Markov chain Monte Carlo (MCMC) methods provide computational tools...
The Bayesian approach is well recognised in the structural dynamics community as an attractive appro...
This work details the Bayesian identification of a nonlinear dynamical system using a novel MCMC alg...
This work details the Bayesian identification of a nonlinear dynamical system using a novel MCMC alg...
This work suggests a solution for joint input-state estimation for nonlinear systems. The task is to...
The aim of the research concerns inference methods for non-linear dynamical systems. In particular, ...
Particle filters are computational methods opening up for sys-tematic inference in nonlinear/non-Gau...
The problem of combined state and parameter estimation in nonlinear state space models, based on Bay...
This work details the Bayesian identification of a nonlinear dynamical system using a novel MCMC alg...
This paper will introduce the use of the approximate Bayesian computation (ABC) algorithm for model ...
The Duffing oscillator remains a key benchmark in nonlinear systems analysis and poses interesting c...
The Duffing oscillator remains a key benchmark in nonlinear systems analysis and poses interesting c...
In this paper, the authors outline the general principles behind an approach to Bayesian system iden...
The aim of this paper is to demonstrate the potential of the Reversible Jump Markov Chain Monte Carl...
The aim of this paper is to utilise the concept of “highly informative training data” such that, usi...
Sequential Monte Carlo (SMC) and Markov chain Monte Carlo (MCMC) methods provide computational tools...
The Bayesian approach is well recognised in the structural dynamics community as an attractive appro...
This work details the Bayesian identification of a nonlinear dynamical system using a novel MCMC alg...
This work details the Bayesian identification of a nonlinear dynamical system using a novel MCMC alg...
This work suggests a solution for joint input-state estimation for nonlinear systems. The task is to...
The aim of the research concerns inference methods for non-linear dynamical systems. In particular, ...
Particle filters are computational methods opening up for sys-tematic inference in nonlinear/non-Gau...
The problem of combined state and parameter estimation in nonlinear state space models, based on Bay...
This work details the Bayesian identification of a nonlinear dynamical system using a novel MCMC alg...
This paper will introduce the use of the approximate Bayesian computation (ABC) algorithm for model ...