A Genetic Algorithm for Energy-Efficiency in Job-Shop Scheduling
Fecha
Directores
Unidades organizativas
Handle
https://riunet.upv.es/handle/10251/69061
Cita bibliográfica
Salido, MA.; Escamilla Fuster, J.; Giret Boggino, AS.; Barber, F. (2016). A Genetic Algorithm for Energy-Efficiency in Job-Shop Scheduling. International Journal of Advanced Manufacturing Technology. 85(5-8):1303-1314. https://doi.org/10.1007/s00170-015-7987-0
Titulación
Resumen
Many real-world scheduling problems are solved
to obtain optimal solutions in term of processing time, cost,
and quality as optimization objectives. Currently, energyefficiency
is also taken into consideration in these problems.
However, this problem is NP-hard, so many search techniques
are not able to obtain a solution in a reasonable
time. In this paper, a genetic algorithm is developed to
solve an extended version of the Job-shop Scheduling Problem
in which machines can consume different amounts of
energy to process tasks at different rates (speed scaling).
This problem represents an extension of the classical jobshop
scheduling problem, where each operation has to be
executed by one machine and this machine can work at different
speeds. The evaluation section shows that a powerful
commercial tool for solving scheduling problems was not
able to solve large instances in a reasonable time, meanwhile
our genetic algorithm was able to solve all instances with a
good solution quality.
Palabras clave
Job-shop scheduling problems, Metaheuristic, Energy-efficiency, Robustness, Makespan, Artificial intelligence
ISSN
0268-3768
ISBN
Fuente
International Journal of Advanced Manufacturing Technology
DOI
10.1007/s00170-015-7987-0
Enlaces relacionados
Código de Proyecto
info:eu-repo/grantAgreement/MINECO//TIN2013-46511-C2-1-P/ES/TECNICAS INTELIGENTES PARA LA OBTENCION DE SOLUCIONES ROBUSTAS Y EFICIENTES ENERGETICAMENTE EN SCHEDULING: APLICACION AL TRANSPORTE::UPV/
info:eu-repo/grantAgreement/EC/FP7/294931/EU/Customised Advisory Services for Energy-efficient Manufacturing Systems/
info:eu-repo/grantAgreement/EC/FP7/294931/EU/Customised Advisory Services for Energy-efficient Manufacturing Systems/
Agradecimientos
This research has been supported by the Spanish Government under research project MINECO TIN2013-46511-C2-1 and the CASES project supported by a Marie Curie International Research Staff Exchange Scheme Fellowship within the 7th European Community Framework Programme under the grant agreement No 294931. We would like to thanks Philippe Laborie (IBM ILOG CPLEX) for validating the CP Optimizer model for this problem. We also appreciate the significant efforts made by all the reviewers to improve this paper.