バイオグラフィー
Ievgen Zaitsev born in Kiev, Ukraine, 1983. Received the B.Tech. and M.Tech degrees in measurement engineering from National Technical University of Ukraine "Kyiv Polytechnic Institute", Kyiv, Ukraine, in 2005 and 2007, respectively. The Ph. D. degree in devices and methods of measurement electric and magnetic quantities from Institute of Electrodynamics, National Academy of Sciences of Ukraine, Kyiv, Ukraine, in 2012.
The Doctor of science degree in computer systems and components from Institute of Electrodynamics, NAS of Ukraine, Kyiv, Ukraine, in 2020. He is currently head of the department of theoretical electrical engineering and diagnostics of electrical equipment, Institute of Electrodynamics, National Academy of Sciences of Ukraine, Kyiv, Ukraine. He holds several patents, is the author of over 200 journals, conference papers, books and book chapters.
研究の興味
Sensor design and integration for power equipment fault diagnosing, renewable energy sources, distributed generation, smart grid, optoelectronics, device modelling and fabrication

Editor
仕事内容
Department Head
Institute of Electrodynamics of the National Academy of Sciences of Ukraine
Theoretical electrical engineering and diagnostics of electrical equipment
Ukraine
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研究論文
- Investigation of Lateral Vibrations in Turbine-generator Unit 5 of the Inga 2 Hydroelectric Power Plant
- Modeling of Cr3+ doped Cassiterite (SnO2) Single Crystals
- On how Doping with Atoms of Gadolinium and Scandium affects the Surface Structure of Silicon
- Analysis of the State of Moisture Control to Ensure and Regulate the Quality of Grain and Grain Products
- Enhancing Material Property Predictions through Optimized KNN Imputation and Deep Neural Network Modeling
- Enhancing Missing Values Imputation through Transformer-Based Predictive Modeling
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