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, and "Development of Design based State-of-Health and Remaining Useful Life Estimation Techniques for Battery Management Systems and Its Application to Rechargeable Batteries (2014-2016)" projects, granted by The Scientific and Technological Research Council (TUBITAK) of Turkey. Currently, he is working as a Postdoc research fellow on PHM of high-speed train bogies at Tarbes National School of Engineering (ENIT), His research interests include failure diagnostics and prognostics of Industrial systems using Machine Learning and Statistical Methods, 2008.