Generalized disjunctive programming (GDP) is an extension of the disjunctive programming paradigm developed by Balas. The GDP formulation involves Boolean and continuous variables that are specified in algebraic constraints, disjunctions and logic propositions, which is an alternative representation to the traditional algebraic mixed-integer programming formulation. After providing a brief review of MINLP optimization, we present an overview of GDP for the case of convex functions emphasizing the quality of continuous relaxations of alternative reformulations that include the big-M and the hull relaxation. We then review disjunctive branch and bound as well as logic-based decomposition methods that circumvent some of the limitations in trad...
In this chapter we present some of the applications of MINLP and generalized disjunctive programming...
<p>Discrete-continuous optimization problems in process systems engineering are commonly modeled in ...
This work presents a review of the applications of mixed-integer nonlinear programming (MINLP) in pr...
Generalized disjunctive programming (GDP) is an extension of the disjunctive pro-gramming paradigm d...
Generalized disjunctive programming (GDP) is an extension of the disjunctive programming paradigm de...
Many optimization problems require the modelling of discrete and continuous variables, giving rise t...
<p>Many optimization problems require the modelling of discrete and continuous variables, giving ris...
This work presents a review of the main deterministic mixed-integer nonlinear programming (MINLP) so...
<p>In this work, we propose a cutting plane algorithm to improve optimization models that are origin...
<p>This work presents a review of the main deterministic mixed-integer nonlinear programming (MINLP)...
<p>In this work, we propose an algorithmic approach to improve mixed-integer models that are origina...
In this work, we propose a cutting plane algorithm to improve optimization models that are originall...
This paper is concerned with global optimization of Bilinear and Concave Generalized Disjunctive Pro...
This paper addresses the relaxations in alternative models for disjunctions, big-M and convex hull m...
A cutting plane method for solving linea oble E. G niversi arch 2 2005 Raman and Grossmann [Raman, R...
In this chapter we present some of the applications of MINLP and generalized disjunctive programming...
<p>Discrete-continuous optimization problems in process systems engineering are commonly modeled in ...
This work presents a review of the applications of mixed-integer nonlinear programming (MINLP) in pr...
Generalized disjunctive programming (GDP) is an extension of the disjunctive pro-gramming paradigm d...
Generalized disjunctive programming (GDP) is an extension of the disjunctive programming paradigm de...
Many optimization problems require the modelling of discrete and continuous variables, giving rise t...
<p>Many optimization problems require the modelling of discrete and continuous variables, giving ris...
This work presents a review of the main deterministic mixed-integer nonlinear programming (MINLP) so...
<p>In this work, we propose a cutting plane algorithm to improve optimization models that are origin...
<p>This work presents a review of the main deterministic mixed-integer nonlinear programming (MINLP)...
<p>In this work, we propose an algorithmic approach to improve mixed-integer models that are origina...
In this work, we propose a cutting plane algorithm to improve optimization models that are originall...
This paper is concerned with global optimization of Bilinear and Concave Generalized Disjunctive Pro...
This paper addresses the relaxations in alternative models for disjunctions, big-M and convex hull m...
A cutting plane method for solving linea oble E. G niversi arch 2 2005 Raman and Grossmann [Raman, R...
In this chapter we present some of the applications of MINLP and generalized disjunctive programming...
<p>Discrete-continuous optimization problems in process systems engineering are commonly modeled in ...
This work presents a review of the applications of mixed-integer nonlinear programming (MINLP) in pr...