R. Rosen, G. Wichert, G. Lo, and K. D. Bettenhausen, «About the importance of autonomy and digital twins for the future of manufacturing», IFAC-Pap, vol.48, issue.3, pp.567-572, 2015.

A. Padovano, F. Longo, L. Nicoletti, and E. G. Mirabelli, «A Digital Twin based Service Oriented Application for a 4.0 Knowledge Navigation in the Smart Factory», IFAC-Pap, vol.51, issue.11, pp.631-636, 2018.

L. M. Camarinha-matos-e and H. Afsarmanesh, «Collaborative networks: Value creation in a knowledge society, 2006.

Q. Qi and F. Tao, «Digital Twin and Big Data Towards Smart Manufacturing and Industry 4.0: 360 Degree Comparison», vol.6, pp.3585-3593, 2018.

J. Wang, L. Ye, R. X. Gao, C. Li, and E. L. Zhang, «Digital Twin for rotating machinery fault diagnosis in smart manufacturing», Int. J. Prod. Res, vol.0, 2018.

S. Min, «Supply chain collaboration: what's happening?», Int. J. Logist. Manag, vol.16, issue.2, pp.237-256, 2005.

M. Ghobakhloo, «The future of manufacturing industry: A strategic roadmap toward Industry 4.0», J. Manuf. Technol. Manag, vol.29, issue.6, pp.910-936, 2018.

J. Lee, B. Bagheri, and H. Kao, «A cyber-physical systems architecture for industry 4.0-based manufacturing systems», Manuf. Lett, vol.3, pp.18-23, 2015.

M. Dassisti, The viewpoint of the small and medium enterprises», 7th International Conference on Information Society and Technology, vol.1, pp.50-54, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01526397

K. Tidriri, N. Chatti, and S. Verron, Tiplica, «Bridging data-driven and model-based approaches for process fault diagnosis and health monitoring: A review of researches and future challenges», Annu. Rev. Control, vol.42, pp.63-81, 2016.

H. Khorasgani, A. Farahat, K. Ristovski, C. Gupta, and E. G. Biswas, «A Framework for Unifying Modelbased and Data-driven Fault Diagnosis», PHM Society Conference, vol.10, 2018.

Z. Liu and N. Meyendorf, Mrad, «The role of data fusion in predictive maintenance using digital twin», AIP Conference Proceedings, 1949.

F. Tao, M. Zhang, Y. Liu, and A. Y. Nee, «Digital twin driven prognostics and health management for complex equipment», CIRP Ann, 2018.

C. Zhuang, J. Liu, and H. Xiong, «Digital twin-based smart production management and control framework for the complex product assembly shop-floor», Int. J. Adv. Manuf. Technol, vol.96, 2018.

M. Ayani, M. Ganebäck, A. H. Ng, and . Twin, Applying emulation for machine reconditioning», Procedia CIRP, vol.72, pp.243-248, 2018.

L. Damiani, M. Demartini, P. Giribone, M. Maggiani, R. Revetria et al., «Simulation and Digital Twin Based Design of a Production Line: A Case Study, Proceedings of the International MultiConference of Engineers and Computer Scientists, vol.2, 2018.

J. Post, M. Groen, G. Klaseboer, «. Model, . Digital et al., Opt. Lett, vol.34, 1982.

J. Bao, D. Guo, J. Li, and E. J. Zhang, «The modelling and operations for the digital twin in the context of manufacturing», Enterp. Inf. Syst, vol.0, 2018.

W. Luo, T. Hu, W. Zhu, and E. F. Tao, «Digital twin modeling method for CNC machine tool», 2018 IEEE 15th International Conference on Networking, Sensing and Control (ICNSC), pp.1-4, 2018.

B. A. Talkhestani, N. Jazdi, W. Schlögl, and E. M. Weyrich, «A concept in synchronization of virtual production system with real factory based on anchor-point method», presentato al Procedia CIRP, vol.67, pp.13-17, 2018.

Y. Zhang, S. Ren, Y. Liu, T. Sakao, and E. D. Huisingh, «A framework for Big Data driven product lifecycle management», J. Clean. Prod, vol.159, pp.229-240, 2017.

S. Jain, G. Shao, and E. Shin, «Manufacturing data analytics using a virtual factory representation», Int. J. Prod. Res, vol.55, pp.5450-5464, 2017.

R. M. Asimov, S. V. Chernoshey, I. Kruse, and V. S. Osipovich, , 2018.

K. Ding, F. T. Chan, X. Zhang, G. Zhou, and E. F. Zhang, «Defining a Digital Twin-based CyberPhysical Production System for autonomous manufacturing in smart shop floors», Int. J. Prod. Res, vol.0, 2019.

T. Sutharssan, S. Stoyanov, C. Bailey, and C. , Yin, «Prognostic and health management for engineering systems: a review of the data-driven approach and algorithms», J. Eng, vol.2015, issue.7, pp.215-222, 2015.

J. Lee, H. Kao, and E. S. Yang, «Service innovation and smart analytics for industry 4.0 and big data environment», Procedia Cirp, vol.16, pp.3-8, 2014.

L. Zhou, S. Pan, J. Wang, and A. V. Vasilakos, «Machine learning on big data: Opportunities and challenges», vol.237, pp.350-361, 2017.

M. Van-otterlo-e-m, Wiering, «Reinforcement learning and markov decision processes», Reinforcement Learning, pp.3-42, 2012.

A. Kusiak, Int. J. Prod. Res, vol.56, issue.1-2, pp.508-517, 2018.

D. A. Tobon-mejia, K. Medjaher, N. Zerhouni, and E. G. Tripot, «A data-driven failure prognostics method based on mixture of Gaussians hidden Markov models», IEEE Trans. Reliab, vol.61, issue.2, pp.491-503, 2012.

X. Zhang and K. A. Hoo, «Effective fault detection and isolation using bond graph-based domain decomposition», Comput. Chem. Eng, vol.35, issue.1, pp.132-148, 2011.

K. Ghosh, Y. S. Ng, and E. R. Srinivasan, «Evaluation of decision fusion strategies for effective collaboration among heterogeneous fault diagnostic methods», Comput. Chem. Eng, vol.35, issue.2, pp.342-355, 2011.

M. Mabkhot, A. Al-ahmari, B. Salah, and H. Alkhalefah, «Requirements of the Smart Factory System: A Survey and Perspective», Machines, vol.6, 2018.

B. Schleich, N. Anwer, L. Mathieu, and E. S. Wartzack, «Shaping the digital twin for design and production engineering», CIRP Ann. -Manuf. Technol, vol.66, issue.1, 2017.

J. Guo, N. Zhao, L. Sun, and E. S. Zhang, «Modular based flexible digital twin for factory design», J. Ambient Intell. Humaniz. Comput, pp.1-12, 2018.

B. Ganter, G. Stumme, and E. R. Wille, Formal concept analysis: foundations and applications, vol.3626, 2005.

S. Friedenthal, A. Moore, and E. R. Steiner, A practical guide to SysML: the systems modeling language, 2014.