J. Bao, D. Guo, J. Li, and J. Zhang, The modelling and operations for the digital twin in the context of manufacturing, Enterprise Information Systems, vol.13, issue.4, pp.534-556, 2019.

T. Bauernhansl, . Krüger, and G. Schuh, , 2016.

M. Brettel, N. Friederichsen, M. Keller, and M. Rosenberg, How virtualization, decentralization and network building change the manufacturing landscape: An, 2014.

, Perspective. International journal of mechanical, industrial science and engineering, vol.8, issue.1, pp.37-44

Y. Cai, B. Starly, P. Cohen, and Y. S. Lee, Sensor data and information fusion to construct digital-twins virtual machine tools for cyber-physical manufacturing, Procedia Manufacturing, vol.10, pp.1031-1042, 2017.

S. Choi, G. Kang, C. Jun, J. Y. Lee, and S. Han, Cyber-physical systems: a case study of development for manufacturing industry, International Journal of Computer Applications in Technology, vol.55, issue.4, pp.289-297, 2017.

U. Dahmen and J. Rossmann, Experimentable digital twins for a modeling and simulation-based engineering approach, IEEE International Systems Engineering Symposium, pp.1-8, 2018.

C. De-castelbajac, M. Ritou, S. Laporte, and B. Furet, Monitoring of distributed defects on HSM spindle bearings, Applied Acoustics, vol.77, pp.159-168, 2014.
URL : https://hal.archives-ouvertes.fr/hal-00852246

C. Fankam, OntoDB2 : un système flexible et efficient de Base de Données à Base Ontologique pour le Web Sémantique et les données techniques, 2009.

E. Glaessgen and D. Stargel, The digital twin paradigm for future NASA and US Air Force vehicles, 53rd AIAA/ASME/ASCE/AHS/ASC Structures, Structural Dynamics and Materials Conference, 1818.

V. Godreau, M. Ritou, E. Chové, B. Furet, and D. Dumur, Continuous improvement of HSM process by data mining, Journal of Intelligent Manufacturing, vol.30, issue.7, pp.2781-2788, 2019.
URL : https://hal.archives-ouvertes.fr/hal-01819020

. Iso/dis, Automation systems and integration -Digital Twin framework for manufacturing -Part 1: Overview and general principles, pp.23247-23248, 2019.

S. Huang, G. Wang, Y. Yan, and X. Fang, Blockchain-based data management for digital twin of product, Journal of Manufacturing Systems, vol.54, pp.361-371, 2020.

S. Jain, G. Shao, and S. J. Shin, Manufacturing data analytics using a virtual factory representation, International Journal of Production Research, vol.55, issue.18, pp.5450-5464, 2017.

M. Jarke, G. Schuh, C. Brecher, M. Brockmann, and J. P. Prote, Digital Shadows in the Internet of Production. ERCIM News, vol.115, pp.26-28, 2018.

S. Krima, R. Barbau, X. Fiorentini, S. Foufou, S. Sriram et al., OntoSTEP : OWL-DL ontology for STEP. International Conference of Product Lifecycle Management, 2009.

W. Kritzinger, M. Karner, G. Traar, J. Henjes, and W. Sihn, Digital Twin in manufacturing: A categorical literature review and classification, vol.51, pp.1016-1022, 2018.

M. Landherr, U. Schneider, and T. Bauernhansl, The Application Center Industrie 4.0-Industry-driven manufacturing, research and development, Procedia CIRP, vol.57, pp.26-31, 2016.

E. Legnani, S. Ierace, and S. Cavalieri, Towards a reference model for After-Sales service processes, Advances in Production Management Systems, pp.289-296, 2007.

J. Lenz, T. Wuest, and E. Westkämper, Holistic approach to machine tool data analytics, Journal of manufacturing systems, vol.48, pp.180-191, 2018.

H. Linger, J. Fisher, W. G. Wojtkowski, W. Wojtkowski, J. Zupancic et al., Constructing the infrastructure for the knowledge economy: Methods and tools, theory and practice, 2013.

C. Liu, H. Vengayil, R. Y. Zhong, and X. Xu, A systematic development method for cyber-physical machine tools, Journal of manufacturing systems, vol.48, pp.13-24, 2018.

J. Liu, H. Zhou, G. Tian, X. Liu, and X. Jing, Digital twin-based process reuse and evaluation approach for smart process planning, The International Journal of Advanced Manufacturing Technology, vol.100, issue.5-8, pp.1619-1634, 2019.

M. Liu, S. Fang, H. Dong, and C. Xu, Review of digital twin about concepts, technologies, and industrial applications, 2020.

Y. Lu, C. Liu, I. Kevin, K. Wang, H. Huang et al., Digital Twin-driven smart manufacturing: Connotation, reference model, applications and research issues, Robotics and Computer-Integrated Manufacturing, p.101837, 2020.

E. Maleki, F. Belkadi, M. Ritou, and A. Bernard, A tailored ontology supporting sensor implementation for the maintenance of industrial machines, Sensors, vol.17, issue.9, p.2063, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01676945

C. Maugis, G. Celeux, and M. L. Martin-magniette, Variable selection for clustering with Gaussian mixture models, Biometrics, vol.65, issue.3, pp.701-709, 2009.
URL : https://hal.archives-ouvertes.fr/inria-00153057

L. Monostori, B. Kádár, T. Bauernhansl, S. Kondoh, S. Kumara et al., Cyber-physical systems in manufacturing, CIRP Annals, vol.65, issue.2, pp.621-641, 2016.

D. Mourtzis and E. Vlachou, A cloud-based cyber-physical system for adaptive shopfloor scheduling and condition-based maintenance, Journal of manufacturing systems, vol.47, pp.179-198, 2018.

E. Negri, S. Berardi, L. Fumagalli, and M. Macchi, MES-integrated digital twin frameworks, Journal of Manufacturing Systems, vol.56, pp.58-71, 2020.

N. Noy and D. Mcguiness, Ontology development 101 : A guide to creating your first ontology, 2001.

A. Padovano, F. Longo, L. Nicoletti, and G. Mirabelli, A digital twin based service oriented application for a 4.0 knowledge navigation in the smart factory, IFAC-PapersOnLine, vol.51, issue.11, pp.631-636, 2018.

Q. Qi, F. Tao, T. Hu, N. Anwer, A. Liu et al., Enabling technologies and tools for digital twin, Journal of Manufacturing Systems, 2019.
URL : https://hal.archives-ouvertes.fr/hal-02386450

Q. Qiao, J. Wang, L. Ye, and R. X. Gao, Digital Twin for Machining Tool Condition Prediction, Procedia CIRP, vol.81, pp.1388-1393, 2019.

M. Riesener, G. Schuh, C. Dölle, and C. Tönnes, The Digital Shadow as Enabler for Data Analytics in Product Life Cycle Management, Procedia CIRP, vol.80, pp.729-734, 2019.

M. Ritou, F. Belkadi, Z. Yahouni, C. Da-cunha, F. Laroche et al., , 2019.

, Knowledge-based multi-level aggregation for decision aid in the machining industry, CIRP Annals, vol.68, issue.1, pp.475-478

B. Schleich, N. Anwer, L. Mathieu, and S. Wartzack, Shaping the digital twin for design and production engineering, CIRP Annals, vol.66, issue.1, pp.141-144, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01513846

M. Schluse, M. Priggemeyer, L. Atorf, and J. Rossmann, Experimentable digital twins-Streamlining simulation-based systems engineering for industry 4.0, IEEE Transactions on Industrial Informatics, vol.14, issue.4, pp.1722-1731, 2018.

G. Schuh, P. Jussen, and T. Harland, The Digital Shadow of Services: A Reference Model for Comprehensive Data Collection in MRO Services of Machine Manufacturers, Procedia CIRP, vol.73, pp.271-277, 2018.

G. Schuh, C. Kelzenberg, J. Wiese, and T. Ochel, Data Structure of the Digital Shadow for Systematic Knowledge Management Systems in Single and Small Batch Production, Procedia CIRP, vol.84, pp.1094-1100, 2019.

K. Schützer, J. De-andrade-bertazzi, C. Sallati, R. Anderl, and E. Zancul, , 2019.

, Contribution to the development of a Digital Twin based on product lifecycle to support the manufacturing process, Procedia CIRP, vol.84, pp.82-87

J. Stecken, M. Ebel, M. Bartelt, J. Poeppelbuss, and B. Kuhlenkötter, Digital Shadow Platform as an Innovative Business Model. Procedia CIRP, vol.83, pp.204-209, 2019.

F. Tao, Q. Qi, A. Liu, and A. Kusiak, Data-driven smart manufacturing, Journal of Manufacturing Systems, vol.48, pp.157-169, 2018.

X. Tong, Q. Liu, S. Pi, and Y. Xiao, Real-time machining data application and service based on IMT digital twin, Journal of Intelligent Manufacturing, pp.1-20, 2019.

T. H. Uhlemann, C. Lehmann, and R. Steinhilper, The digital twin: Realizing the cyber-physical production system for industry 4.0. Procedia CIRP, vol.61, pp.335-340, 2017.

J. Wang, L. Ye, R. X. Gao, C. Li, and L. Zhang, Digital Twin for rotating machinery fault diagnosis in smart manufacturing, International Journal of Production Research, vol.57, issue.12, pp.3920-3934, 2019.

Z. Wang, M. Ritou, C. Da-cunha, and B. Furet, Contextual classification for smart machining based on unsupervised machine learning by Gaussian mixture model, International Journal of Computer Integrated Manufacturing, 2020.
URL : https://hal.archives-ouvertes.fr/hal-02888452

J. Whittaker, Graphical models in applied multivariate statistics, 2009.

R. Wirth and J. Hipp, CRISP-DM: Towards a standard process model for data mining, 4th international conference on the practical applications of knowledge discovery and data mining, pp.29-39, 2000.

M. Wollschlaeger, T. Sauter, and J. Jasperneite, The future of industrial communication: Automation networks in the era of the internet of things and industry 4.0. IEEE industrial electronics magazine, vol.11, pp.17-27, 2017.

H. Zhang, Q. Liu, X. Chen, D. Zhang, and J. Leng, A digital twin-based approach for designing and multi-objective optimization of hollow glass production line, IEEE Access, vol.5, pp.26901-26911, 2017.

C. Zhuang, J. Gong, and J. Liu, Digital twin-based assembly data management and process traceability for complex products, Journal of Manufacturing Systems, 2020.