This work presents a novel regularization method for the identification of Nonlinear Autoregressive eXogenous (NARX) models. The regularization method promotes the exponential decay of the influence of past input samples on the current model output. This is done by penalizing the sensitivity of the NARX model simulated output with respect to the past inputs. This promotes the stability of the estimated models and improves the obtained model quality. The effectiveness of the approach is demonstrated through a simulation example, where a neural network NARX model is identified with this novel method. Moreover, it is shown that the proposed regularization approach improves the model accuracy in terms of simulation error performance compared to...
We introduce GP-FNARX: A new model for nonlinear system identification based on a nonlinear autoregr...
This article introduces the Tensor Network B-spline (TNBS) model for the regularized identification ...
Most systems encountered in the real world are nonlinear in nature, and since linear models cannot c...
This work presents a novel regularization method for the identification of Nonlinear Autoregressive ...
Generalization networks are nonparametric estimators obtained from the application of Tychonov regul...
In this paper we prove the effectiveness of using simple NARX-type (nonlinear auto-regressive model ...
Generalization networks are nonparametric estimators obtained from the application of Tychonov regul...
Regressor selection can be viewed as the first step in the system identification process. The benefi...
This paper proposes system identification on application of nonlinear AR (NAR) based on Artificial N...
The idea of using Feed-Forward Neural Networks (FFNNs) as regression functions for Nonlinear AutoReg...
The applicability of approximate NARX models of non-linear dynamic systems is discussed. The models ...
Abstract-This paper proposes system identification on application of nonlinear AR (NAR) based on Art...
Classical prediction error approaches for the identification of non-linear polynomial NARX/NARMAX mo...
Abstract — We introduce GP-FNARX: a new model for non-linear system identification based on a nonlin...
The Polynomial Nonlinear Auto-Regressive eXogenous input (P-NARX) model, a multivariable polynomial ...
We introduce GP-FNARX: A new model for nonlinear system identification based on a nonlinear autoregr...
This article introduces the Tensor Network B-spline (TNBS) model for the regularized identification ...
Most systems encountered in the real world are nonlinear in nature, and since linear models cannot c...
This work presents a novel regularization method for the identification of Nonlinear Autoregressive ...
Generalization networks are nonparametric estimators obtained from the application of Tychonov regul...
In this paper we prove the effectiveness of using simple NARX-type (nonlinear auto-regressive model ...
Generalization networks are nonparametric estimators obtained from the application of Tychonov regul...
Regressor selection can be viewed as the first step in the system identification process. The benefi...
This paper proposes system identification on application of nonlinear AR (NAR) based on Artificial N...
The idea of using Feed-Forward Neural Networks (FFNNs) as regression functions for Nonlinear AutoReg...
The applicability of approximate NARX models of non-linear dynamic systems is discussed. The models ...
Abstract-This paper proposes system identification on application of nonlinear AR (NAR) based on Art...
Classical prediction error approaches for the identification of non-linear polynomial NARX/NARMAX mo...
Abstract — We introduce GP-FNARX: a new model for non-linear system identification based on a nonlin...
The Polynomial Nonlinear Auto-Regressive eXogenous input (P-NARX) model, a multivariable polynomial ...
We introduce GP-FNARX: A new model for nonlinear system identification based on a nonlinear autoregr...
This article introduces the Tensor Network B-spline (TNBS) model for the regularized identification ...
Most systems encountered in the real world are nonlinear in nature, and since linear models cannot c...