Summarization: The optimization of systems which are described by ordinary differential equations (ODEs) is often complicated by the presence of nonconvexities. A deterministic spatial branch and bound global optimization algorithm is presented in this paper for systems with ODEs in the constraints. Upper bounds for the global optimum are produced using the sequential approach for the solution of the dynamic optimization problem. The required convex relaxation of the algebraic functions is carried out using well-known global optimization techniques. A convex relaxation of the time dependent information is obtained using the concept of differential inequalities in order to construct bounds on the space of solutions of parameter dependent ODE...
L'idée générale de ce travail est de proposer une nouvelle classe d'algorithmes permettant d'amélior...
This paper contains a study of the global optimization of mathematical models described by ordinary ...
Many engineering optimization problems can be formulated as nonconvex nonlinear pro-gramming problem...
Summarization: Many chemical engineering systems are described by differential equations. Their opti...
Summarization: A deterministic spatial branch and bound global optimization algorithm is presented f...
My thesis focuses on global optimization of nonconvex integral objective functions subject to parame...
My thesis focuses on global optimization of nonconvex integral objective functions subject to parame...
Summarization: A deterministic spatial branch and bound global optimization algorithm for problems w...
Differential-algebraic systems of constraints, in particular, initial value ordinary differential eq...
An overview of global methods for dynamic optimization and mixed-integer dynamic optimization (MIDO)...
Background The estimation of parameter values for mathematical models of biological systems is an o...
This book presents state-of-the-art results and methodologies in modern global optimization, and has...
Paper following a presentation at the 4th conference on optimization methods and software, Dec 2017,...
This book begins with a concentrated introduction into deterministic global optimization and moves f...
This monograph deals with a general class of solution approaches in deterministic global optimizatio...
L'idée générale de ce travail est de proposer une nouvelle classe d'algorithmes permettant d'amélior...
This paper contains a study of the global optimization of mathematical models described by ordinary ...
Many engineering optimization problems can be formulated as nonconvex nonlinear pro-gramming problem...
Summarization: Many chemical engineering systems are described by differential equations. Their opti...
Summarization: A deterministic spatial branch and bound global optimization algorithm is presented f...
My thesis focuses on global optimization of nonconvex integral objective functions subject to parame...
My thesis focuses on global optimization of nonconvex integral objective functions subject to parame...
Summarization: A deterministic spatial branch and bound global optimization algorithm for problems w...
Differential-algebraic systems of constraints, in particular, initial value ordinary differential eq...
An overview of global methods for dynamic optimization and mixed-integer dynamic optimization (MIDO)...
Background The estimation of parameter values for mathematical models of biological systems is an o...
This book presents state-of-the-art results and methodologies in modern global optimization, and has...
Paper following a presentation at the 4th conference on optimization methods and software, Dec 2017,...
This book begins with a concentrated introduction into deterministic global optimization and moves f...
This monograph deals with a general class of solution approaches in deterministic global optimizatio...
L'idée générale de ce travail est de proposer une nouvelle classe d'algorithmes permettant d'amélior...
This paper contains a study of the global optimization of mathematical models described by ordinary ...
Many engineering optimization problems can be formulated as nonconvex nonlinear pro-gramming problem...