Metaheuristics for a job scheduling problem with smoothing costs relevant for the car industry

Metaheuristics for a job scheduling problem with smoothing costs relevant for the car industry

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Article ID: iaor20161394
Volume: 67
Issue: 3
Start Page Number: 246
End Page Number: 261
Publication Date: May 2016
Journal: Networks
Authors: , ,
Keywords: manufacturing industries, scheduling, combinatorial optimization, programming: multiple criteria, vehicle routing & scheduling, heuristics: tabu search
Abstract:

We study a new multiobjective job scheduling problem on nonidentical machines with applications in the car industry, inspired by the problem proposed by the car manufacturer Renault in the ROADEF 2005 Challenge. Makespan, smoothing costs and setup costs are minimized following a lexicographic order, where smoothing costs are used to balance resource utilization. We first describe a mixed integer linear programming (MILP) formulation and a network interpretation as a variant of the well‐known vehicle routing problem. We then propose and compare several solution methods, ranging from greedy procedures to a tabu search and an adaptive memory algorithm. For small instances (with up to 40 jobs) whose MILP formulation can be solved to optimality, tabu search provides remarkably good solutions. The adaptive memory algorithm, using tabu search as an intensification procedure, turns out to yield the best results for large instances.

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