Decomposition and reformulation of integer linear programming problems

This thesis deals with an investigation of Decomposition and Reformulation to solve Integer Linear Programming Problems. This method is often a very successful approach computationally, producing high-quality solutions for well-structured combinatorial optimization problems like vehicle routing,...

Full description

Bibliographic Details
Main Author: Furini, Fabio <1982>
Other Authors: Toth, Paolo
Format: Doctoral Thesis
Language:en
Published: Alma Mater Studiorum - Università di Bologna 2011
Subjects:
Online Access:http://amsdottorato.unibo.it/3593/
id ndltd-unibo.it-oai-amsdottorato.cib.unibo.it-3593
record_format oai_dc
spelling ndltd-unibo.it-oai-amsdottorato.cib.unibo.it-35932014-03-24T16:29:14Z Decomposition and reformulation of integer linear programming problems Furini, Fabio <1982> MAT/09 Ricerca operativa This thesis deals with an investigation of Decomposition and Reformulation to solve Integer Linear Programming Problems. This method is often a very successful approach computationally, producing high-quality solutions for well-structured combinatorial optimization problems like vehicle routing, cutting stock, p-median and generalized assignment . However, until now the method has always been tailored to the specific problem under investigation. The principal innovation of this thesis is to develop a new framework able to apply this concept to a generic MIP problem. The new approach is thus capable of auto-decomposition and autoreformulation of the input problem applicable as a resolving black box algorithm and works as a complement and alternative to the normal resolving techniques. The idea of Decomposing and Reformulating (usually called in literature Dantzig and Wolfe Decomposition DWD) is, given a MIP, to convexify one (or more) subset(s) of constraints (slaves) and working on the partially convexified polyhedron(s) obtained. For a given MIP several decompositions can be defined depending from what sets of constraints we want to convexify. In this thesis we mainly reformulate MIPs using two sets of variables: the original variables and the extended variables (representing the exponential extreme points). The master constraints consist of the original constraints not included in any slaves plus the convexity constraint(s) and the linking constraints(ensuring that each original variable can be viewed as linear combination of extreme points of the slaves). The solution procedure consists of iteratively solving the reformulated MIP (master) and checking (pricing) if a variable of reduced costs exists, and in which case adding it to the master and solving it again (columns generation), or otherwise stopping the procedure. The advantage of using DWD is that the reformulated relaxation gives bounds stronger than the original LP relaxation, in addition it can be incorporated in a Branch and bound scheme (Branch and Price) in order to solve the problem to optimality. If the computational time for the pricing problem is reasonable this leads in practice to a stronger speed up in the solution time, specially when the convex hull of the slaves is easy to compute, usually because of its special structure. Alma Mater Studiorum - Università di Bologna Toth, Paolo 2011-03-29 Doctoral Thesis PeerReviewed application/pdf en http://amsdottorato.unibo.it/3593/ info:eu-repo/semantics/openAccess
collection NDLTD
language en
format Doctoral Thesis
sources NDLTD
topic MAT/09 Ricerca operativa
spellingShingle MAT/09 Ricerca operativa
Furini, Fabio <1982>
Decomposition and reformulation of integer linear programming problems
description This thesis deals with an investigation of Decomposition and Reformulation to solve Integer Linear Programming Problems. This method is often a very successful approach computationally, producing high-quality solutions for well-structured combinatorial optimization problems like vehicle routing, cutting stock, p-median and generalized assignment . However, until now the method has always been tailored to the specific problem under investigation. The principal innovation of this thesis is to develop a new framework able to apply this concept to a generic MIP problem. The new approach is thus capable of auto-decomposition and autoreformulation of the input problem applicable as a resolving black box algorithm and works as a complement and alternative to the normal resolving techniques. The idea of Decomposing and Reformulating (usually called in literature Dantzig and Wolfe Decomposition DWD) is, given a MIP, to convexify one (or more) subset(s) of constraints (slaves) and working on the partially convexified polyhedron(s) obtained. For a given MIP several decompositions can be defined depending from what sets of constraints we want to convexify. In this thesis we mainly reformulate MIPs using two sets of variables: the original variables and the extended variables (representing the exponential extreme points). The master constraints consist of the original constraints not included in any slaves plus the convexity constraint(s) and the linking constraints(ensuring that each original variable can be viewed as linear combination of extreme points of the slaves). The solution procedure consists of iteratively solving the reformulated MIP (master) and checking (pricing) if a variable of reduced costs exists, and in which case adding it to the master and solving it again (columns generation), or otherwise stopping the procedure. The advantage of using DWD is that the reformulated relaxation gives bounds stronger than the original LP relaxation, in addition it can be incorporated in a Branch and bound scheme (Branch and Price) in order to solve the problem to optimality. If the computational time for the pricing problem is reasonable this leads in practice to a stronger speed up in the solution time, specially when the convex hull of the slaves is easy to compute, usually because of its special structure.
author2 Toth, Paolo
author_facet Toth, Paolo
Furini, Fabio <1982>
author Furini, Fabio <1982>
author_sort Furini, Fabio <1982>
title Decomposition and reformulation of integer linear programming problems
title_short Decomposition and reformulation of integer linear programming problems
title_full Decomposition and reformulation of integer linear programming problems
title_fullStr Decomposition and reformulation of integer linear programming problems
title_full_unstemmed Decomposition and reformulation of integer linear programming problems
title_sort decomposition and reformulation of integer linear programming problems
publisher Alma Mater Studiorum - Università di Bologna
publishDate 2011
url http://amsdottorato.unibo.it/3593/
work_keys_str_mv AT furinifabio1982 decompositionandreformulationofintegerlinearprogrammingproblems
_version_ 1716654362325942272