Arc flow formulations based on dynamic programming: Theoretical foundations and applications
CLAUTIAUX, François
Formulations étendues et méthodes de décomposition pour des problèmes génériques d'optimisation [EDGE]
Voir plus >
Formulations étendues et méthodes de décomposition pour des problèmes génériques d'optimisation [EDGE]
CLAUTIAUX, François
Formulations étendues et méthodes de décomposition pour des problèmes génériques d'optimisation [EDGE]
Formulations étendues et méthodes de décomposition pour des problèmes génériques d'optimisation [EDGE]
IORI, Manuel
Università degli Studi di Modena e Reggio Emilia = University of Modena and Reggio Emilia [UNIMORE]
< Réduire
Università degli Studi di Modena e Reggio Emilia = University of Modena and Reggio Emilia [UNIMORE]
Langue
en
Article de revue
Ce document a été publié dans
European Journal of Operational Research. 2022-01, vol. 296, n° 1, p. 3-21
Elsevier
Résumé en anglais
Network flow formulations are among the most successful tools to solve optimization problems. One of such formulations is the arc flow, where variables represent flows on individual arcs of the network. For NP-hard problems, ...Lire la suite >
Network flow formulations are among the most successful tools to solve optimization problems. One of such formulations is the arc flow, where variables represent flows on individual arcs of the network. For NP-hard problems, polynomial-sized arc flow models typically provide weak linear relaxations and may have too much symmetry to be efficient in practice. Instead, arc flow models with a pseudo-polynomial size usually provide strong relaxations and are efficient in practice. The interest in pseudo-polynomial arc flow formulations has grown considerably in the last twenty years, in which they have been used to solve many open instances of hard problems. A remarkable advantage of arc flow models is the possibility to solve practical-sized instances directly by a Mixed Integer Linear Programming solver, avoiding the implementation of complex methods based on column generation. In this survey, we present theoretical foundations of pseudo-polynomial arc flow formulations, by showing a relation between their network and Dynamic Programming (DP). This relation allows a better understanding of the strength of these formulations, through a link with models obtained by Dantzig-Wolfe decomposition. The relation with DP also allows a new perspective to relate state-space relaxation methods for DP with arc flow models. We also present a dual point of view to contrast the linear relaxation of arc flow models with that of models based on paths and cycles. To conclude, we review the main solution methods and applications of arc flow models based on DP in several domains such as cutting, packing, scheduling, and routing.< Réduire
Mots clés en anglais
Combinatorial Optimization
Arc Flow
Dynamic Programming
Acyclic Network
Pseudo-Polynomial
Origine
Importé de halUnités de recherche