Valentin Khaydarov
![Mann mit kurzen blonden Haaren und hellem Hemd](https://tu-dresden.de/ing/maschinenwesen/ifvu/svt/ressourcen/bilder/mitarbeiter/valentin-khaydarov/@@images/d8bd3512-23b4-4315-919e-c314ef2f905c.jpeg)
Postdoc
NameMr Dr. rer. nat. Valentin Khaydarov
Send encrypted mail via the SecureMail portal (for TUD external users only).
Process Systems Engineering Group
Process Systems Engineering Group
Visiting address:
BAR, BAR/E30 Helmholtzstr. 18
01069 Dresden
Office hours:
by arrangement
RESEARCH INTERESTS
- AI-enhanced Process Equipment Assemblies
- Machine Learning und Computer Vision in Process Industry
- Engineering of Modular Plants
SHORT BIOGRAPHY
From 2018 | Postdoc in the Process-To-Order Lab, Chair of Process Control Systems and Group Process System Engineering, Prof. Urbas, TU Dresden |
2018 | Defense of the doctoral thesis on the topic of 'Reaction engineering and CFD study of micromixing in microreactors of different structure and its influence on chemical reactions' |
2018-2014 | Doctoral study to Technical Chemistry, Chair Technical Chemistry, TU Dresden, Prof. Reschetilowski |
2013 | Defense of the doctoral thesis on the topic of 'Mathematical modelling of flow behaviour in Microreactors' |
2014-2010 | Doctoral study to Mathematical Modelling, Numerical Methods and Software Tools, Chair System Analysis, SIT(TU) St. Petersburg, Prof. Holodnow |
2010-2005 | Higher education, Automation of Industrial Processes, SIT(TU) St. Petersburg, Prof. Kharasow |
2017 | Graduate assistant (WHK), Department Computational Fluid Dynamics, Helmholtz Zentrum Dresden Rosendorf |
2017-2015 | Graduate assistant (WHK), Chair of Vehicle Mechatronics, TU Dresden |
2015 | Graduate assistant (WHK), Chair of Technical Information Systems, TU Dresden |
SCIENTIFIC PUBLICATIONS
M. Gärtler, V. Khaydarov, B. Klöpper, L. Urbas, 2021, The Machine Learning Life Cycle in Chemical Operations – Status and Open Challenges, Chemie Ing. Tech. 2063–2080, https://doi.org/10.1002/cite.202100134
Khaydarov, V., Heinze, S., Graube, M., Knüpfer, A., Knespel, M., Merkelbach, S., & Urbas, L. (2020). From stirring to mixing: Artificial intelligence in the process industry. IEEE International Conference on Emerging Technologies and Factory Automation, ETFA, 2020-Septe. https://doi.org/10.1109/ETFA46521.2020.9212018
Rahm, L., Lorenz, J., Khaydarov, V., Maywald, T., Glas, T., & Urbas, L. (2020). Predictive maintenance with NOA: Application and insights for rotating equipment. IEEE International Conference on Emerging Technologies and Factory Automation, ETFA, 2020-Septe. https://doi.org/10.1109/ETFA46521.2020.9212014
P. Altmann, M. Graube, V. Khaydarov. (2019). Continuous Integration im Lebenszyklus modularer Anlagen. Automation 2019, 315–330. Baden Baden: VDI Verlag GmbH.
Borovinskaya, E., Khaydarov, V., Strehle, N., Musaev, A., & Reschetilowski, W. (2019). Experimental Studies of Ethyl Acetate Saponification Using Different Reactor Systems: The Effect of Volume Flow Rate on Reactor Performance and Pressure Drop. Applied Sciences, 9(3), 532. https://doi.org/10.3390/app9030532
Khaydarov, V., Borovinskaya, E., & Reschetilowski, W. (2018). Numerical and Experimental Investigations of a Micromixer with Chicane Mixing Geometry. Applied Sciences, 8(12), 2458. https://doi.org/10.3390/app8122458
A. Dementjev, V. Khaydarov, A. Schirru, A. K. (2016). An Engineering Tool to Support the “System Identification”-Based Equipment Health Estimation. 16th European Advanced Process Control and Manufacturing Conference (Apc|m). Reutlingen, Germany.
CONFERENCE PRESENTATIONS
Inkubator-Labore für Anwendungen künstlicher Intelligenz in der Prozessindustrie A. Klose; V. Khaydarov; L. Urbas; M. Bortz; N. Kockmann ; L. Neuendorf ; J. Oeing. Jahrestreffen der ProcessNet-Fachgemeinschaft "Prozess-, Apparate- und Anlagentechnik", 2021-11-22 and 23, Online
Khaydarov, V., Heinze, S., Graube, M., Knüpfer, A., Knespel, M., Merkelbach, S., & Urbas, L. (2020). From stirring to mixing: Artificial intelligence in the process industry. IEEE International Conference on Emerging Technologies and Factory Automation, ETFA, 2020-09-10, Wien/Online
Rahm, L., Lorenz, J., Khaydarov, V., Maywald, T., Glas, T., & Urbas, L. (2020). Predictive maintenance with NOA: Application and insights for rotating equipment. IEEE International Conference on Emerging Technologies and Factory Automation, ETFA, 2020-09-10, Wien/Online