M. Paolucci, D. Anghinolfi, and F. Tonelli, Facing energy-aware scheduling: a multiobjective extension of a scheduling support system for improving energy efficiency in a moulding industry, Soft Computing, vol.21, issue.13, pp.3687-3698, 2017.

C. Pach, T. Berger, Y. Sallez, T. Bonte, E. Adam et al., Reactive and energy-aware scheduling of flexible manufacturing systems using potential fields, Computers in Industry, vol.65, issue.3, pp.434-448, 2014.

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.

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

F. Xu, W. Weng, and S. Fujimura, Energy-Efficient Scheduling for Flexible Flow Shops by Using, Annual Conference. Proceedings. Institute of Industrial and Systems Engineers (IISE), p.1040, 2014.

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.

Q. Yi, C. Li, Y. Tang, and Q. Wang, A new operational framework to job shop scheduling for reducing carbon emissions, Automation Science and Engineering, pp.58-63, 2012.

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

L. Zhang, X. Li, and L. Gao, 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.

J. Luo, S. Fujimura, D. El-baz, and B. Plazolles, GPU based parallel genetic algorithm for solving an energy efficient dynamic flexible flow shop scheduling problem, Journal of Parallel and Distributed Computing, 2018.
URL : https://hal.archives-ouvertes.fr/hal-02076604

A. Dabah, A. Bendjoudi, A. Aitzai, D. El-baz, and N. N. Taboudjemat, Hybrid multicore CPU and GPU-based B&B approaches for the blocking job shop scheduling problem, Journal of Parallel and Distributed Computing, vol.117, pp.73-86, 2018.
URL : https://hal.archives-ouvertes.fr/hal-02076871

A. C. Spanos, S. T. Ponis, I. P. Tatsiopoulos, I. T. Christou, and E. Rokou, A new hybrid parallel genetic algorithm for the job-shop scheduling problem, International Transactions in Operational Research, vol.21, issue.3, pp.479-499, 2014.

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

A. Somani and D. P. Singh, Parallel Genetic Algorithm for solving Job-Shop Scheduling Problem Using Topological sort, Advances in Engineering and Technology Research (ICAETR), 2014 International Conference on, pp.1-8, 2014.

L. Meng, C. Zhang, X. Shao, and Y. Ren, MILP models for energy-aware flexible job shop scheduling problem, Journal of Cleaner Production, vol.210, pp.710-723, 2019.

Y. He, F. Liu, H. J. Cao, and C. B. Li, A bi-objective model for job-shop scheduling problem to minimize both energy consumption and makespan, Journal of Central South University of Technology, vol.12, issue.2, pp.167-171, 2005.

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

C. V. Le and C. K. Pang, Fast reactive scheduling to minimize tardiness penalty and energy cost under power consumption uncertainties, Computers & Industrial Engineering, vol.66, issue.2, pp.406-417, 2013.

L. Zeng, F. Zou, X. Xu, and Z. Gao, Dynamic scheduling of multi-task for hybrid flow-shop based on energy consumption, Information and Automation, 2009. ICIA'09. International Conference on, pp.478-482, 2009.

K. A. Hawick, A. Leist, and D. P. Playne, Mixing multi-core CPUs and GPUs for scientific simulation software, 2010.

M. A. Hossam, H. M. Ebied, and M. H. Aziz, Hybrid cluster of multicore CPUs and GPUs for accelerating hyperspectral image hierarchical segmentation, 8th International Conference on Computer Engineering & Systems (ICCES), pp.262-267, 2013.

J. K. Lenstra, A. R. Kan, and P. Brucker, Complexity of machine scheduling problems, Annals of discrete mathematics, vol.1, pp.343-362, 1977.

K. Fang, N. A. Uhan, F. Zhao, and J. W. Sutherland, Flow shop scheduling with peak power consumption constraints, Annals of Operations Research, vol.206, issue.1, pp.115-145, 2013.

S. D. Wu, R. H. Storer, and C. Pei-chann, One-machine rescheduling heuristics with efficiency and stability as criteria, Computers & Operations Research, vol.20, issue.1, pp.1-14, 1993.

F. Luna and E. Alba, Parallel Multiobjective Evolutionary Algorithms, Springer Handbook of Computational Intelligence, 2015.

E. G. Talbi, A unified view of parallel multi-objective evolutionary algorithms, Journal of Parallel and Distributed Computing, vol.133, pp.349-358, 2019.
URL : https://hal.archives-ouvertes.fr/hal-02304734

X. Shen, M. Zhang, and J. Fu, Multi-objective dynamic job shop scheduling: a survey and prospects, Int J Innov Comput Inf Control, vol.10, issue.6, pp.2113-2126, 2014.

R. Zhang and R. Chiong, Solving the energy-efficient job shop scheduling problem: a multi-objective genetic algorithm with enhanced local search for minimizing the total weighted tardiness and total energy consumption, Journal of Cleaner Production, vol.112, pp.3361-3375, 2016.

J. Luo and D. Baz, A Dual Heterogeneous Island Genetic Algorithm for Solving Large Size Flexible Flow Shop Scheduling Problems on Hybrid multi-core CPU and GPU Platforms, 2019.
URL : https://hal.archives-ouvertes.fr/hal-02076483

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

J. H. Holland, Genetic algorithms, vol.267, pp.66-73, 1992.

B. Plazolles, D. El-baz, M. Spel, V. Rivola, and P. Gegout, SIMD Monte-Carlo Numerical Simulations Accelerated on GPU and Xeon Phi, International Journal of Parallel Programming, pp.1-23, 2017.
URL : https://hal.archives-ouvertes.fr/hal-02091696

G. Danoy, F. Gaspar-pinto, B. Dorronsoro, and P. Bouvry, Hybrid Cellular Genetic Algorithm for Global Trajectory Optimization Problem, International Conference on Metaheuristics and Nature Inspired Computing, pp.1-2, 2010.

J. Sanders and E. Kandrot, CUDA by example: an introduction to general-purpose GPU programming, 2010.

M. Pharr and R. Fernando, Gpu gems 2: programming techniques for highperformance graphics and general-purpose computation, 2005.

G. May, B. Stahl, M. Taisch, and V. Prabhu, Multi-objective genetic algorithm for energy-efficient job shop scheduling, International Journal of Production Research, vol.53, issue.23, pp.7071-7089, 2015.

B. J. Park, H. R. Choi, and H. S. Kim, A hybrid genetic algorithm for the job shop scheduling problems, Computers & industrial engineering, vol.45, issue.4, pp.597-613, 2003.

M. Liu and C. Wu, Intelligent optimization scheduling algorithms for manufacturing process and their applications, p.334, 2008.

R. H. Storer, S. D. Wu, and R. Vaccari, New search spaces for sequencing problems with application to job shop scheduling, Management science, vol.38, issue.10, pp.1495-1509, 1992.

G. Taguchi, Introduction to Quality Engineering, 1990.

B. Dorronsoro and P. Bouvry, Cellular genetic algorithms without additional parameters, The Journal of Supercomputing, vol.63, issue.3, pp.816-835, 2013.

J. Derrac, S. García, D. Molina, and F. Herrera, A practical tutorial on the use of nonparametric statistical tests as a methodology for comparing evolutionary and swarm intelligence algorithms, Swarm and Evolutionary Computation, vol.1, issue.1, pp.3-18, 2011.

J. Muth, Probabilistic learning combinations of local job-shop scheduling rules, 1963.

J. Adams, E. Balas, and D. Zawack, The shifting bottleneck procedure for job shop scheduling, Management science, vol.34, issue.3, pp.391-401, 1988.

S. Lawrence, Resouce constrained project scheduling: An experimental investigation of heuristic scheduling techniques (Supplement). Graduate School of Industrial Administration, 1984.

K. Deb, A. Pratap, S. Agarwal, and T. A. Meyarivan, A fast and elitist multiobjective genetic algorithm: NSGA-II, IEEE transactions on evolutionary computation, vol.6, issue.2, pp.182-197, 2002.