N. Amruthnath and T. Gupta, Fault class prediction in unsupervised learning using model-based clustering approach

N. Amruthnath and T. Gupta, A research study on unsupervised machine learning algorithms for early fault detection in predictive maintenance, 5th International Conference on Industrial Engineering and Applications, 2018.

A. A. Author, B. B. Author, and C. Author, Title of article, Title of Journal, vol.10, issue.2, pp.49-53, 2005.

Z. Fact0r-consortium, Zero defect manufacturing strategies toward on-line production management for european factories, 2016.

?. M. Darius, B. C. Florin, B. Marius, T. K. Edit, and P. R. Mihai, Maintenance planning of the sewing needles of simple sewing machines

M. Dios and J. M. Framinan, A review and classification of computer-based manufacturing scheduling tools, Comput. Ind. Eng, vol.99, pp.229-249, 2016.

A. Grall, L. Dieulle, C. Berenguer, and M. Roussignol, Continuous-time predictivemaintenance scheduling for a deteriorating system, IEEE Transactions on Reliability, vol.51, issue.2, pp.141-150, 2002.

K. Mobley and R. , An introduction to predictive maintenance / r. keith mobley, 2018.

J. Levitt, complete guide to prevent and predictive maintenance, 2003.

Q. Liu, M. Dong, and F. Chen, Single-machine-based joint optimization of predictive maintenance planning and production scheduling, Robotics and ComputerIntegrated Manufacturing, vol.51, pp.238-247, 2018.

R. K. Mobley, An introduction to predictive maintenance, 2002.

H. Raabe, O. Myklebust, and R. Eleftheriadis, Vision based quality control and maintenance in high volume production by use of zero defect strategies, Lecture Notes in Electrical Engineering, vol.451, pp.405-412, 2018.

R. Sipos, D. Fradkin, F. Moerchen, and Z. Wang, Log-based predictive maintenance, Proceedings of the 20th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, pp.1867-1876, 2014.

P. M. Verderame, J. A. Elia, J. Li, and C. A. Floudas, Planning and scheduling under uncertainty: A review across multiple sectors, Industrial & Engineering Chemistry Research, vol.49, issue.9, pp.3993-4017, 2010.

K. S. Wang, Towards zero-defect manufacturing (zdm)-a data mining approach, Advances in Manufacturing, vol.1, issue.1, pp.62-74, 2013.

P. Zhao, M. Kurihara, J. Tanaka, T. Noda, S. Chikuma et al., Advanced correlation-based anomaly detection method for predictive maintenance, 2017 IEEE International Conference on Prognostics and Health Management (ICPHM), pp.78-83, 2017.