The majority of control design approaches assume that an accurate first-principle model of the system to control is available. However, in many real-world applications, deriving an accurate model is extremely difficult, since the system dynamics may be not well known and/or too complex. In this paper, a polynomial model predictive control (PMPC) approach for nonlinear systems is presented, relying on the identification from data of a polynomial prediction model. The main advantages of this approach over the standard methods are that it does not require a detailed knowledge of the plant to control and it is computationally efficient. A real- data application is presented, concerned with regulation of blood glucose concentration in a type 1 diabetic patient. This application shows that the PMPC approach can be effective in the biomedical field, where accurate first-principle model can seldom be found.

Data-driven polynomial MPC and application to blood glucose regulation in a diabetic patient / Novara, Carlo; Rabbone, Ivana; Tinti, Davide. - (2018), pp. 1722-1727. (Intervento presentato al convegno 2018 European Control Conference (ECC) tenutosi a Limassol, Cyprus).

Data-driven polynomial MPC and application to blood glucose regulation in a diabetic patient

Carlo Novara;
2018

Abstract

The majority of control design approaches assume that an accurate first-principle model of the system to control is available. However, in many real-world applications, deriving an accurate model is extremely difficult, since the system dynamics may be not well known and/or too complex. In this paper, a polynomial model predictive control (PMPC) approach for nonlinear systems is presented, relying on the identification from data of a polynomial prediction model. The main advantages of this approach over the standard methods are that it does not require a detailed knowledge of the plant to control and it is computationally efficient. A real- data application is presented, concerned with regulation of blood glucose concentration in a type 1 diabetic patient. This application shows that the PMPC approach can be effective in the biomedical field, where accurate first-principle model can seldom be found.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11583/2712548
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