. Afnor, NF EN 13306 -Maintenance -Terminologie de la maintenance, 2018.

M. Belaunde, C. Casanave, D. Dsouza, K. Duddy, W. El-kaim et al., , 2003.

J. Bezivin and J. Briot, Sur les principes de base de l'ingénierie des modèles, L'OBJET, vol.10, issue.4, pp.145-157, 2004.

J. Bezivin, F. Büttner, M. Gogolla, F. Jouault, I. Kurtev et al., Model Transformations? Transformation Models! In Nierstrasz, pp.440-453, 2006.

J. Bezivin and O. Gerbe, Towards a precise definition of the OMG/MDA framework, Proceedings 16th Annual International Conference on Automated Software Engineering (ASE 2001), pp.273-280, 2001.
URL : https://hal.archives-ouvertes.fr/hal-00448056

B. S. Blanchard, D. C. Verma, and E. L. Peterson, Maintainability : a key to effective serviceability and maintenance management, 1995.

J. Boubeta-puig, G. Ortiz, and I. Medina-bulo, A model-driven approach for facilitating user-friendly design of complex event patterns, Expert Systems with Applications, vol.41, issue.2, pp.445-456, 2014.

H. R. Depold and F. D. Gass, The Application of Expert Systems and Neural Networks to Gas Turbine Prognostics and Diagnostics, Journal of Engineering for Gas Turbines and Power, vol.121, issue.4, pp.607-612, 1999.

J. Gertler, Fault Detection and Diagnosis in Engineering Systems, 1998.

A. J. Guillen, A. Crespo, J. F. Gómez, and M. D. Sanz, A framework for effective management of condition based maintenance programs in the context of industrial development of E-Maintenance strategies, Computers in Industry, vol.82, pp.170-185, 2016.

. Iso, ISO 13372, Surveillance et diagnostic des machines -Vocabulaire, 2012.

P. Jackson, NF EN ISO 14224 -Petroleum, petrochemical and natural gas industries -Collection and exchange of reliability and maintenance data for equipment, 1998.

. Addison-wesley,

A. K. Jardine, D. Lin, and D. Banjevic, A review on machinery diagnostics and prognostics implementing condition-based maintenance, Mechanical Systems and Signal Processing, vol.20, pp.1483-1510, 2006.

X. Jin, B. W. Wah, X. Cheng, W. , and Y. , Significance and Challenges of Big Data Research, Big Data Research, vol.2, issue.2, pp.59-64, 2015.

S. A. Kalogirou, Artificial intelligence for the modeling and control of combustion processes: a review, Progress in Energy and Combustion Science, vol.29, issue.6, pp.515-566, 2003.

M. Lebold, K. Reichard, and D. Boylan, Utilizing dcom in an open system architecture framework for machinery monitoring and diagnostics, IEEE Aerospace Conference Proceedings, vol.3, pp.1227-1230, 2003.

J. Lee, C. Jin, Z. Liu, and H. D. Ardakani, Introduction to data-driven methodologies for prognostics and health management. In Probabilistic prognostics and health management of energy systems, pp.9-32, 2017.

J. Lee, F. Wu, W. Zhao, M. Ghaffari, L. Liao et al., Prognostics and health management design for rotary machinery systems-Reviews, methodology and applications, Mechanical Systems and Signal Processing, vol.42, pp.314-334, 2014.

P. Levine and J. Pomerol, Systèmes interactifs d'aideà la décision et systèmes experts, 1990.

J. Liebowitz, Expert systems: A short introduction, Engineering Fracture Mechanics, vol.50, issue.5, pp.601-607, 1995.

S. Truptil, F. Bénaben, N. Salatge, C. Hanachi, V. Chapurlat et al., Mediation Information System Engineering for Interoperability Support in Crisis Management, Popplewell, pp.187-197, 2010.
URL : https://hal.archives-ouvertes.fr/hal-01596375

G. Vachtsevanos, F. Lewis, M. Roemer, A. Hess, and B. Wu, Systems Approach to CBM/PHM. In Intel, 2006.