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Comparison of several data-driven non-linear system identification methods on a simplified glucoregulatory system example

Journal Contribution - Journal Article

In this study, several advanced data-driven non-linear identification techniques are compared on a specific problem: a simplified glucoregulatory system modelling example. This problem represents a challenge in the development of an artificial pancreas for Type 1 diabetes mellitus treatment, since for this application good non-linear models are needed to design accurate closed-loop controllers to regulate the glucose level in the blood. Block-oriented as well as state-space models are used to describe both the dynamics and the non-linear behaviour of the insulin–glucose system, and the advantages and drawbacks of each method are pointed out. The obtained non-linear models are accurate in simulating the patient’s behaviour, and some of them are also sufficiently simple to be considered in the implementation of a model-based controller to develop the artificial pancreas.
Journal: IET Control Theory & Applications
ISSN: 1751-8644
Issue: 17
Volume: 8
Pages: 1921-1930
Publication year:2014
Keywords:artificial organs, blood, closed loop systems, control system synthesis, diseases, identification, medical control systems, nonlinear control systems, patient treatment, state-space methods, sugar
  • ORCID: /0000-0003-0492-6137/work/83057001
  • WoS Id: 000345701200016
  • Scopus Id: 84917743625
CSS-citation score:1