E
E.V. Mikhalchenko
Researcher at Russian Academy of Sciences
Publications - 14
Citations - 350
E.V. Mikhalchenko is an academic researcher from Russian Academy of Sciences. The author has contributed to research in topics: Detonation & Combustion chamber. The author has an hindex of 6, co-authored 12 publications receiving 130 citations.
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Three-dimensional modeling of rotating detonation in a ramjet engine
TL;DR: In this article, a 3D numerical model of a combustion chamber with continuous rotating detonation wave was performed and the effect of additional oxygen injection on the onset of rotating detonations was studied.
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Rotating detonation in a ramjet engine three-dimensional modeling
TL;DR: In this paper, a rotating detonation engine (RDE) combustion chamber fed by hydrogen-air mixtures of different composition was modeled numerically using 3D geometry, and the timeconsuming parts of the numerical code were parallelized using the OpenMP technique.
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Three-dimensional numerical modeling of a rocket engine with solid fuel
TL;DR: In this article, a three-dimensional numerical modeling of the combustion chamber of a hybrid engine is presented, where the distributions of temperature, pressure, longitudinal and transverse velocities are analyzed.
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3D numerical modeling of a cylindrical RDE with an inner body extending out of the nozzle
TL;DR: In this article, the authors present the results of 3D numerical modeling of an engine with a rotating detonation wave (RDE) fed with hydrogen-oxygen mixture, which is a new approach to increase of thrust characteristics of power facilities.
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Neural network approach to solve gas dynamics problems with chemical transformations
V.B. Betelin,Boris Kryzhanovsky,Nickolay Smirnov,V. F. Nikitin,I. M. Karandashev,M. Yu. Malsagov,E.V. Mikhalchenko +6 more
TL;DR: The present work studies an opportunity to solve chemical kinetics problems using artificial neural networks using classical numerical methods and chooses among different architectures of multi-layer neural networks capable to solve this problem.