IEEE Bayesian nonlinear system identification for one of the major classes of dynamic model, the nonlinear autoregressive with exogenous input (NARX) model, has not been widely studied to date. Markov chain Monte Carlo (MCMC) methods have been developed, which tend to be accurate but can also be slow to converge. In this contribution, we present a novel, computationally efficient solution to sparse Bayesian identification of the NARX model using variational inference, which is orders of magnitude faster than MCMC methods. A sparsity-inducing hyper-prior is used to solve the structure detection problem. Key results include: 1. successful demonstration of the method on low signal-to-noise ratio signals (down to 2dB); 2. successful benchmarkin...
This work details the Bayesian identification of a nonlinear dynamical system using a novel MCMC alg...
nonlinear discrete-time systems with additive process noise but without measurement noise. In partic...
Modeling and identification for high dimensional (i.e. signals with many components) data sets pose...
IEEE Bayesian nonlinear system identification for one of the major classes of dynamic model, the non...
The identification of polynomial Nonlinear Autoregressive [Moving Average] models with eXogenous var...
The identification of polynomial Nonlinear Autoregressive [Moving Average] models with eXogenous var...
The identification of polynomial Nonlinear Autoregressive [Moving Average] models with eXogenous var...
The identification of polynomial Nonlinear Autoregressive [Moving Average] models with eXogenous var...
The identification of polynomial Nonlinear Autoregressive [Moving Average] models with eXogenous var...
This paper proposes a sparse Bayesian treatment of deep neural networks (DNNs) for system identifica...
This work details the Bayesian identification of a nonlinear dynamical system using a novel MCMC alg...
We introduce GP-FNARX: A new model for nonlinear system identification based on a nonlinear autoregr...
Abstract — We introduce GP-FNARX: a new model for non-linear system identification based on a nonlin...
This work details the Bayesian identification of a nonlinear dynamical system using a novel MCMC alg...
Modeling and identification for high dimensional (i.e. signals with many components) data sets pos...
This work details the Bayesian identification of a nonlinear dynamical system using a novel MCMC alg...
nonlinear discrete-time systems with additive process noise but without measurement noise. In partic...
Modeling and identification for high dimensional (i.e. signals with many components) data sets pose...
IEEE Bayesian nonlinear system identification for one of the major classes of dynamic model, the non...
The identification of polynomial Nonlinear Autoregressive [Moving Average] models with eXogenous var...
The identification of polynomial Nonlinear Autoregressive [Moving Average] models with eXogenous var...
The identification of polynomial Nonlinear Autoregressive [Moving Average] models with eXogenous var...
The identification of polynomial Nonlinear Autoregressive [Moving Average] models with eXogenous var...
The identification of polynomial Nonlinear Autoregressive [Moving Average] models with eXogenous var...
This paper proposes a sparse Bayesian treatment of deep neural networks (DNNs) for system identifica...
This work details the Bayesian identification of a nonlinear dynamical system using a novel MCMC alg...
We introduce GP-FNARX: A new model for nonlinear system identification based on a nonlinear autoregr...
Abstract — We introduce GP-FNARX: a new model for non-linear system identification based on a nonlin...
This work details the Bayesian identification of a nonlinear dynamical system using a novel MCMC alg...
Modeling and identification for high dimensional (i.e. signals with many components) data sets pos...
This work details the Bayesian identification of a nonlinear dynamical system using a novel MCMC alg...
nonlinear discrete-time systems with additive process noise but without measurement noise. In partic...
Modeling and identification for high dimensional (i.e. signals with many components) data sets pose...