A new parametric approach is proposed for nonlinear and non-stationary system identification based on a time-varying nonlinear autoregressive with exogenous input (TV-NARX) model. The time-varying coefficients of the TV-NARX model are expanded using multi- wavelet basis functions and the model is thus transformed into a time-invariant regression problem. An ultra-orthogonal forward regression (UOFR) algorithm aided by mutual information (MI) is designed to identify a parsimonious model structure and estimate the associated model parameters. The UOFR-MI algorithm which uses not only the observed data themselves but also weak derivatives of the signals is more powerful in model structure detection. The proposed approach combining the advanta...
In the previous paper, a class of nonlinear system is mapped to a so-called skeleton linear model (S...
This paper proposes basis functions based time domain Volterra model for nonlinear system identifica...
A new iOFR-MF (iterative orthogonal forward regression--modulating function) algorithm is proposed t...
Time-varying (TV) nonlinear systems widely exist in various fields of engineering and science. Effec...
Identification of linear and nonlinear time-varying systems is investigated and a new wavelet model ...
Identification of linear and nonlinear time-varying systems is investigated and a new wavelet model ...
Inspired by the unique neuronal activities, a new time-varying nonlinear autoregressive with exogeno...
This thesis focuses on the modelling and adaptive tracking problem of both linear and nonlinear time...
This thesis focuses on the modelling and adaptive tracking problem of both linear and nonlinear time...
Identification techniques for nonlinear time-varying systems are investigated based on the NARMAX mo...
A new unified modelling framework based on the superposition of additive submodels, functional compo...
This paper concerns the construction and training of basis function networks for the identification ...
Abstract—A new class of wavelet networks (WNs) is proposed for nonlinear system identification. In t...
A method to perform time-varying (TV) nonlinear prediction of biomedical signals in the presence of ...
4The paper addresses nonlinear identification using the Wiener series. Differently from the traditio...
In the previous paper, a class of nonlinear system is mapped to a so-called skeleton linear model (S...
This paper proposes basis functions based time domain Volterra model for nonlinear system identifica...
A new iOFR-MF (iterative orthogonal forward regression--modulating function) algorithm is proposed t...
Time-varying (TV) nonlinear systems widely exist in various fields of engineering and science. Effec...
Identification of linear and nonlinear time-varying systems is investigated and a new wavelet model ...
Identification of linear and nonlinear time-varying systems is investigated and a new wavelet model ...
Inspired by the unique neuronal activities, a new time-varying nonlinear autoregressive with exogeno...
This thesis focuses on the modelling and adaptive tracking problem of both linear and nonlinear time...
This thesis focuses on the modelling and adaptive tracking problem of both linear and nonlinear time...
Identification techniques for nonlinear time-varying systems are investigated based on the NARMAX mo...
A new unified modelling framework based on the superposition of additive submodels, functional compo...
This paper concerns the construction and training of basis function networks for the identification ...
Abstract—A new class of wavelet networks (WNs) is proposed for nonlinear system identification. In t...
A method to perform time-varying (TV) nonlinear prediction of biomedical signals in the presence of ...
4The paper addresses nonlinear identification using the Wiener series. Differently from the traditio...
In the previous paper, a class of nonlinear system is mapped to a so-called skeleton linear model (S...
This paper proposes basis functions based time domain Volterra model for nonlinear system identifica...
A new iOFR-MF (iterative orthogonal forward regression--modulating function) algorithm is proposed t...