B. Chen, P. J. Tavner, Y. Feng, W. W. Song, and Y. N. Qiu, Bayesian network for wind turbine fault diagnosis. EWEA, 2012.

J. Cheng, R. Greiner, J. Kelly, D. Bell, and W. Liu, Learning Bayesian networks from data: An information-theory based approach, Artificial Intelligence, vol.137, pp.43-90, 2002.

S. Dey and J. A. Stori, A Bayesian network approach to root cause diagnosis of process variations, International Journal of Machine Tools and Manufacture, vol.45, pp.75-91, 2005.

T. M. Diallo, S. Henry, and Y. Ouzrout, Advances in Production Management Systems. Innovative and KnowledgeBased Production Management in a Global-Local World, 2014.

K. B. Korb and A. E. Nicholson, Bayesian Artificial Intelligence, 2003.

D. Margaritis, Learning Bayesian Network Model Structure from Data. Doctor of Philosophy, 2003.

K. W. Przytula and D. Thompson, Construction of Bayesian networks for diagnostics, Aerospace Conference Proceedings, vol.5, pp.193-200, 2000.

V. J. Ramirez and A. S. Piqueras, Learning Bayesian Networks for Systems Diagnosis, Electronics, Robotics and Automotive Mechanics Conference, 2006.

L. A. Riascos, M. G. Simoes, and P. E. Miyagi, A Bayesian network fault diagnostic system for proton exchange membrane fuel cells, Journal of Power Sources, vol.165, pp.267-278, 2007.

P. Spirtes, C. N. Glymour, and R. Scheines, Causation, Prediction, and Search, 2000.

I. Tsamardinos, C. Aliferis, and E. Statnikov, Algorithms for Large Scale Markov Blanket Discovery, The 16th International FLAIRS Conference, pp.376-380, 2003.

I. Tsamardinos, L. Brown, and C. Aliferis, The maxmin hill-climbing Bayesian network structure learning algorithm, Machine Learning, vol.65, pp.31-78, 2006.

L. Wasserman, All of Statistics: A Concise Course in Statistical Inference, 2004.

G. Weidl, A. L. Madsen, and S. Israelson, Applications of object-oriented Bayesian networks for condition monitoring, root cause analysis and decision support on operation of complex continuous processes, Computers & Chemical Engineering, vol.29, 1996.