2016
DOI: 10.1002/aic.15396
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Explicit model predictive control of hybrid systems and multiparametric mixed integer polynomial programming

Abstract: Hybrid systems are dynamical systems characterized by the simultaneous presence of discrete and continuous variables. Model-based control of such systems is computationally demanding. To this effect, explicit controllers which provide control inputs as a set of functions of the state variables have been derived, using multiparametric programming mainly for the linear systems. Hybrid polynomial systems are considered resulting in a Mixed Integer Polynomial Programming problem. Treating the initial state of the … Show more

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Cited by 40 publications
(21 citation statements)
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“…The mathematical formulation for MPC at the i th step used in this work is given by (Charitopoulos and Dua, 2016;Rawlings and Mayne, 2015):…”
Section: Case Studies For Criterion Kmentioning
confidence: 99%
“…The mathematical formulation for MPC at the i th step used in this work is given by (Charitopoulos and Dua, 2016;Rawlings and Mayne, 2015):…”
Section: Case Studies For Criterion Kmentioning
confidence: 99%
“…An alternative formulation could be the treatment of integer parameters as continuous parameters (similar to handling binary variables in Ref. 133) since the integer value realization of the parameter is a subset of their continuous values and the realization is not an mpMPC decision.…”
Section: Design Of the Multi-parametric Model Predictive Controllermentioning
confidence: 99%
“…Hence, a multiparametric programming approach was proposed to overcome these limitations by obtaining model parameters as an explicit function of measurements in our earlier work (Che Mid and Dua, 2017). Multiparametric programming provides the optimization variables as an explicit function of the parameter (Dua and Pistikopoulos, 1999, Pistikopoulos, 2009, Oberdieck et al, 2016, Pistikopoulos et al, 2007b, Pistikopoulos et al, 2007a, Charitopoulos and Dua, 2016. In that work, the model parameters were considered as optimization variables and the measurements as the parameters in the context of multiparametric programming.…”
Section: Introductionmentioning
confidence: 99%