This paper presents an extension of the recent multi-parametric (mp-)NCO-tracking methodology by Sun et al. [Comput. Chem. Eng. 92:64-77, 2016] for the design of robust multi-parametric controllers for constrained continuous-time linear systems in the presence of uncertainty. We propose a robust-counterpart formulation and solution of multi-parametric dynamic optimization (mp- DO), whereby the constraints are backed-o ff based on a worst-case propagation of the uncertainty using either interval analysis or ellipsoidal calculus and an ancillary linear state feedback. We address the case of additive uncertainty, and we discuss approaches to dealing with multiplicative uncertainty that retain tractability of the mp-NCO-tracking design problem,...
A robust MPC for constrained discrete-time nonlinear systems with additive uncertainties is presente...
Thls paper presents a method for designing a robust controller for linear systems with structured ti...
Dynamic optimization solutions largely rely on the accuracy of the underlying mathematical models. H...
We extend a recent methodology called multi-parametric NCO-tracking for the design of parametric con...
Process optimization for industrial applications aims to achieve performance enhancements while sati...
AbstractA methodology for combining multi-parametric programming and NCO tracking is presented in th...
© 2016 The Authors.A methodology for combining multi-parametric programming and NCO tracking is pres...
We present robust optimization techniques for dynamic systems which are affected by time-varying unc...
Dynamic optimization or optimal control problems are omnipresent in the (bio)chemical industry. In a...
This thesis presents two design methods for multiple robust controllers (MRC) and a design method fo...
© 2015 Elsevier Ltd. All rights reserved. Dynamic optimization techniques for complex nonlinear syst...
Two approaches to control system design for constrained systems are studied. The first involves theo...
This work addresses the solution to the problem of robust model predictive control (MPC) of systems ...
Multi-parametric programming is a mathematical theory to address optimization problems involving var...
A multiple model approach to the dynamics and control of chaotic chemical processes is developed in ...
A robust MPC for constrained discrete-time nonlinear systems with additive uncertainties is presente...
Thls paper presents a method for designing a robust controller for linear systems with structured ti...
Dynamic optimization solutions largely rely on the accuracy of the underlying mathematical models. H...
We extend a recent methodology called multi-parametric NCO-tracking for the design of parametric con...
Process optimization for industrial applications aims to achieve performance enhancements while sati...
AbstractA methodology for combining multi-parametric programming and NCO tracking is presented in th...
© 2016 The Authors.A methodology for combining multi-parametric programming and NCO tracking is pres...
We present robust optimization techniques for dynamic systems which are affected by time-varying unc...
Dynamic optimization or optimal control problems are omnipresent in the (bio)chemical industry. In a...
This thesis presents two design methods for multiple robust controllers (MRC) and a design method fo...
© 2015 Elsevier Ltd. All rights reserved. Dynamic optimization techniques for complex nonlinear syst...
Two approaches to control system design for constrained systems are studied. The first involves theo...
This work addresses the solution to the problem of robust model predictive control (MPC) of systems ...
Multi-parametric programming is a mathematical theory to address optimization problems involving var...
A multiple model approach to the dynamics and control of chaotic chemical processes is developed in ...
A robust MPC for constrained discrete-time nonlinear systems with additive uncertainties is presente...
Thls paper presents a method for designing a robust controller for linear systems with structured ti...
Dynamic optimization solutions largely rely on the accuracy of the underlying mathematical models. H...