Authors:
Xingjian Jing
1
;
Natalia Angarita-Jaimes
2
;
David Simpson
2
;
Robert Allen
2
and
Philip Newland
3
Affiliations:
1
Hong Kong Polytechnic University, Hong Kong
;
2
University of Southampton, United Kingdom
;
3
School of Biological Sciences and University of Southampton, United Kingdom
Keyword(s):
Wiener models, Neuronal modelling, Noninvertible nonlinearity, Noisy data, Lyapunov stability.
Related
Ontology
Subjects/Areas/Topics:
Biomedical Engineering
;
Biomedical Signal Processing
;
Detection and Identification
;
Physiological Processes and Bio-Signal Modeling, Non-Linear Dynamics
Abstract:
The Wiener model is a natural description of many physiological systems. Although there have been a number of algorithms proposed for the identification of Wiener models, most of the existing approaches were developed under some restrictive assumptions of the system such as a white noise input, part or full invertibility of the nonlinearity, or known nonlinearity. In this study a new recursive algorithm based on Lyapunov stability theory is presented for the identification of Wiener systems with unknown and noninvertible nonlinearity and noisy data. The new algorithm can guarantee global convergence of the estimation error to a small region around zero and is as easy to implement as the well-known back propagation algorithm. Theoretical analysis and example studies show the effectiveness and advantages of the proposed method compared with the earlier approaches.