Kunihiko Taira, Ph.D.
Affiliations: | 2008 | Mechanical Engineering | California Institute of Technology, Pasadena, CA |
Area:
Fluid and Plasma Physics, Aerospace Engineering, Mechanical EngineeringGoogle:
"Kunihiko Taira"Parents
Sign in to add mentorTimothy E. Colonius | grad student | 2008 | Caltech | |
(The immersed boundary projection method and its application to simulation and control of flows around low-aspect-ratio wings.) | ||||
Clarence W. Rowley | post-doc | 2008-2010 | Princeton |
BETA: Related publications
See more...
Publications
You can help our author matching system! If you notice any publications incorrectly attributed to this author, please sign in and mark matches as correct or incorrect. |
Fukami K, Taira K. (2023) Grasping extreme aerodynamics on a low-dimensional manifold. Nature Communications. 14: 6480 |
Taira K, Hemati MS, Ukeiley LS. (2020) Modal Analysis of Fluid Flow: Introduction to the Virtual Collection Aiaa Journal. 58: 991-993 |
Sun Y, Liu Q, Cattafesta III LN, et al. (2020) Resolvent Analysis of Compressible Laminar and Turbulent Cavity Flows Aiaa Journal. 58: 1046-1055 |
Taira K, Hemati MS, Brunton SL, et al. (2020) Modal Analysis of Fluid Flows: Applications and Outlook Aiaa Journal. 58: 998-1022 |
Liu Q, An B, Nohmi M, et al. (2020) Active Flow Control of a Pump-Induced Wall-Normal Vortex With Steady Blowing Journal of Fluids Engineering-Transactions of the Asme. 142 |
Ribeiro JHM, Yeh C, Taira K. (2020) Randomized resolvent analysis Arxiv: Fluid Dynamics. 5: 33902 |
Zhang K, Hayostek S, Amitay M, et al. (2020) On the formation of three-dimensional separated flows over wings under tip effects Journal of Fluid Mechanics. 895 |
Kojima Y, Yeh C, Taira K, et al. (2020) Resolvent analysis on the origin of two-dimensional transonic buffet Journal of Fluid Mechanics. 885 |
Brunton SL, Hemati MS, Taira K. (2020) Special issue on machine learning and data-driven methods in fluid dynamics Theoretical and Computational Fluid Dynamics. 34: 1-5 |
Fukami K, Fukagata K, Taira K. (2020) Assessment of supervised machine learning methods for fluid flows Theoretical and Computational Fluid Dynamics. 34: 1-23 |