, EIA (2009) International energy outlook, 2009.

, Annual energy review, EIA, 2009.

K. Fang, N. Uhan, F. Zhao, and J. W. Sutherland, A new shop scheduling approach in support of sustainable manufacturing, Glocalized solutions for sustainability in manufacturing, pp.305-310, 2011.

G. Mouzon and M. B. Yildirim, A framework to minimise total energy consumption and total tardiness on a single machine, International Journal of Sustainable Engineering, vol.1, issue.2, pp.105-116, 2008.

Y. Liu, H. Dong, N. Lohse, S. Petrovic, and N. Gindy, An investigation into minimising total energy consumption and total weighted tardiness in job shops, Journal of Cleaner Production, vol.65, pp.87-96, 2014.

J. M. Nilakantan, G. Q. Huang, and S. G. Ponnambalam, An investigation on minimizing cycle time and total energy consumption in robotic assembly line systems, Journal of Cleaner Production, vol.90, pp.311-325, 2015.

F. Xu, W. Weng, and S. Fujimura, Energy-Efficient Scheduling for Flexible Flow Shops by Using MIP, IIE Annual Conference. Proceedings, 2014.

, Institute of Industrial and Systems Engineers (IISE)

L. Zhang, X. Li, L. Gao, and G. Zhang, Dynamic rescheduling in FMS that is simultaneously considering energy consumption and schedule efficiency, The International Journal of Advanced Manufacturing Technology, vol.87, issue.5-8, pp.1387-1399, 2016.

D. Tang, M. Dai, M. A. Salido, and A. Giret, Energy-efficient dynamic scheduling for a flexible flow shop using an improved particle swarm optimization, Computers in Industry, vol.81, pp.82-95, 2016.

V. Boyer and D. Baz, Recent advances on GPU computing in operations research, Parallel and Distributed Processing Symposium Workshops & PhD Forum (IPDPSW), pp.1778-1787, 2013.
URL : https://hal.archives-ouvertes.fr/hal-01151607

A. Dabah, A. Bendjoudi, D. El-baz, and A. Aitzai, GPU-based two level parallel B&B for the blocking job shop scheduling problem, Parallel and Distributed Processing Symposium Workshops, 2016.
URL : https://hal.archives-ouvertes.fr/hal-02115751

N. Melab, I. Chakroun, M. Mezmaz, and D. Tuyttens, , 2012.

, GPU-accelerated branch-and-bound algorithm for the flow-shop scheduling problem

, Cluster Computing (CLUSTER), 2012 IEEE International Conference on

F. Pinel, B. Dorronsoro, and P. Bouvry, Solving very large instances of the scheduling of independent tasks problem on the GPU, Journal of Parallel and Distributed Computing, vol.73, issue.1, pp.101-110, 2013.

L. Bukata, A gpu algorithm design for resource constrained project scheduling problem, Parallel, Distributed and Network-Based Processing (PDP), 2013 21st Euromicro International Conference on, pp.367-374, 2013.

. Nvidia, , 2017.

P. Pospichal, J. Jaros, and J. Schwarz, Parallel genetic algorithm on the CUDA architecture, European conference on the applications of evolutionary computation, pp.442-451, 2010.

J. M. Li, X. J. Wang, R. S. He, and Z. X. Chi, An efficient fine-grained parallel genetic algorithm based on gpu-accelerated, Network and parallel computing workshops, 2007. NPC workshops. IFIP international conference on, pp.855-862, 2007.

S. Tsutsui and N. Fujimoto, Solving quadratic assignment problems by genetic algorithms with GPU computation: a case study, Proceedings of the 11th Annual Conference Companion on Genetic and Evolutionary Computation Conference: Late Breaking Papers, pp.2523-2530, 2009.

A. A. Bruzzone, D. Anghinolfi, M. Paolucci, and F. Tonelli, , 2012.

, Energy-aware scheduling for improving manufacturing process sustainability: A mathematical model for flexible flow shops, CIRP Annals-Manufacturing Technology, vol.61, issue.1, pp.459-462

Q. Yi, C. Li, Y. Tang, and Q. Wang, A new operational framework to job shop scheduling for reducing carbon emissions, 2012 IEEE International Conference on, pp.58-63, 2012.

. Ieee,

M. Dai, D. Tang, A. Giret, M. A. Salido, and W. D. Li, Energy-efficient scheduling for a flexible flow shop using an improved genetic-simulated annealing algorithm, Robotics and Computer-Integrated Manufacturing, vol.29, issue.5, pp.418-429, 2013.

D. Ouelhadj and S. Petrovic, A survey of dynamic scheduling in manufacturing systems, Journal of scheduling, vol.12, issue.4, p.417, 2009.

C. Pach, T. Berger, Y. Sallez, T. Bonte, E. Adam et al., , 2014.

, Reactive and energy-aware scheduling of flexible manufacturing systems using potential fields, Computers in Industry, vol.65, issue.3, pp.434-448

M. Czapi?ski and S. Barnes, Tabu Search with two approaches to parallel flowshop evaluation on CUDA platform, Journal of Parallel and Distributed Computing, vol.71, issue.6, pp.802-811, 2011.

T. Zaj?cek and P. ?ucha, Accelerating a Flow Shop Scheduling Algorithm on the GPU. eraerts, p.143, 2011.

C. S. Huang, Y. C. Huang, and P. J. Lai, Modified genetic algorithms for solving fuzzy flow shop scheduling problems and their implementation with CUDA, Expert Systems with Applications, vol.39, issue.5, pp.4999-5005, 2012.

J. N. Gupta, Two-stage, hybrid flowshop scheduling problem, Journal of the Operational Research Society, vol.39, issue.4, pp.359-364, 1988.

I. C. Parmee, Adaptive Computing in Design and Manufacture, 2009.

J. H. Holland, Genetic algorithms, Scientific american, vol.267, issue.1, pp.66-73, 1992.

B. Plazolles, D. El-baz, M. Spel, V. Rivola, and P. Gegout, , 2017.

M. , Numerical Simulations Accelerated on GPU and Xeon Phi, International Journal of Parallel Programming, pp.1-23

E. Cantú-paz, A survey of parallel genetic algorithms. Calculateurs paralleles, reseaux et systems repartis, vol.10, pp.141-171, 1998.

U. Kohlmorgen, H. Schmeck, and K. Haase, Experiences with fine grainedparallel genetic algorithms, Annals of Operations Research, vol.90, pp.203-219, 1999.

F. Werner, Genetic algorithms for shop scheduling problems: a survey, p.31, 2011.

S. Jason and K. Edward, CUDA by example: an introduction to general-purpose GPU programming, 2010.

E. Alba and B. Dorronsoro, Cellular genetic algorithms. Operations research/computer science interfaces, 2008.

J. D. Schaffer, A study of control parameters affecting online performance of genetic algorithms for function optimization, 1989.

J. A. Cabrera, A. Simon, and M. Prado, Optimal synthesis of mechanisms with genetic algorithms. Mechanism and Machine theory, vol.37, pp.1165-1177, 2002.

J. Zhong, X. Hu, J. Zhang, and M. Gu, Comparison of performance between different selection strategies on simple genetic algorithms, Computational Intelligence for Modelling, Control and Automation, 2005 and International Conference on Intelligent Agents, Web Technologies and Internet Commerce, International Conference on, vol.2, pp.1115-1121, 2005.

G. Luque, E. Alba, and B. Dorronsoro, An asynchronous parallel implementation of a cellular genetic algorithm for combinatorial optimization, 2009.

, Proceedings of the 11th Annual conference on Genetic and evolutionary computation, pp.1395-1402

M. Guzek, J. E. Pecero, B. Dorronsoro, P. Bouvry, and S. U. Khan, A cellular genetic algorithm for scheduling applications and energy-aware communication optimization, High Performance Computing and Simulation (HPCS), 2010 International Conference on, pp.241-248, 2010.

S. J. Louis and G. J. Rawlins, Predicting convergence time for genetic algorithms, Foundations of Genetic Algorithms, vol.2, pp.141-161, 1993.