A hybrid Genetic Algorithm approach to minimize the total joint cost of a single-vendor multi-customer integrated scheduling problem

Affiliation auteurs!!!! Error affiliation !!!!
TitreA hybrid Genetic Algorithm approach to minimize the total joint cost of a single-vendor multi-customer integrated scheduling problem
Type de publicationJournal Article
Year of Publication2019
AuteursGrunder O, Hammoudan Z, Beroule B, Barakat O
JournalTRANSPORTATION PLANNING AND TECHNOLOGY
Volume42
Pagination625-642
Date PublishedAUG 18
Type of ArticleArticle
ISSN0308-1060
Mots-clésCase study, Coordinated Scheduling, genetic algorithm, Mixed Integer Programming, multiple customers, transportation and inventory
Résumé

This paper addresses the scheduling of supply chains with interrelated factories consisting of a single vendor and multiple customers. In this research, one transporter is available to deliver jobs from vendor to customers, and the jobs can be processed by batch. The problem studied in this paper focuses on a real-case scheduling problem of a multi-location hospital supplied with a central pharmacy. The objective of this work is to minimize the total cost, while satisfying the customer's due dates constraints. A mathematical formulation of the problem is given as a Mixed Integer Programming model. Then, a Branch-and-Bound algorithm is proposed as an exact method for solving this problem, a greedy local search is developed as a heuristic approach, and a hybrid Genetic Algorithm is presented as a meta-heuristic. Computation experiments are conducted to highlight the performance of the proposed methods.

DOI10.1080/03081060.2019.1622254