Metaheuristics for the Online Printing Shop Scheduling Problem
June 22, 2020 Β· Declared Dead Β· π European Journal of Operational Research
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Authors
Willian T. Lunardi, Ernesto G. Birgin, DΓ©bora P. Ronconi, Holger Voos
arXiv ID
2006.12344
Category
cs.AI: Artificial Intelligence
Citations
33
Venue
European Journal of Operational Research
Last Checked
4 months ago
Abstract
In this work, the online printing shop scheduling problem introduced in (Lunardi et al., Mixed Integer Linear Programming and Constraint Programming Models for the Online Printing Shop Scheduling Problem, Computers & Operations Research, to appear) is considered. This challenging real scheduling problem, that emerged in the nowadays printing industry, corresponds to a flexible job shop scheduling problem with sequencing flexibility; and it presents several complicating specificities such as resumable operations, periods of unavailability of the machines, sequence-dependent setup times, partial overlapping between operations with precedence constraints, and fixed operations, among others. A local search strategy and metaheuristic approaches for the problem are proposed and evaluated. Based on a common representation scheme, trajectory and populational metaheuristics are considered. Extensive numerical experiments with large-sized instances show that the proposed methods are suitable for solving practical instances of the problem; and that they outperform a half-heuristic-half-exact off-the-shelf solver by a large extent. Numerical experiments with classical instances of the flexible job shop scheduling problem show that the introduced methods are also competitive when applied to this particular case.
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