Super-resolution reconstruction of turbulent flows with machine learning K Fukami, K Fukagata, K Taira Journal of Fluid Mechanics 870, 106-120, 2019 | 600 | 2019 |
Nonlinear mode decomposition with convolutional neural networks for fluid dynamics T Murata, K Fukami, K Fukagata Journal of Fluid Mechanics 882, A13, 2020 | 302 | 2020 |
Machine-learning-based spatio-temporal super resolution reconstruction of turbulent flows K Fukami, K Fukagata, K Taira Journal of Fluid Mechanics 909, A9, 2021 | 229 | 2021 |
Assessment of supervised machine learning methods for fluid flows K Fukami, K Fukagata, K Taira Theoretical and Computational Fluid Dynamics 34 (4), 497-519, 2020 | 197 | 2020 |
Machine-learning-based reduced-order modeling for unsteady flows around bluff bodies of various shapes K Hasegawa, K Fukami, T Murata, K Fukagata Theoretical and Computational Fluid Dynamics 34, 367-383, 2020 | 171 | 2020 |
Convolutional neural network based hierarchical autoencoder for nonlinear mode decomposition of fluid field data K Fukami, T Nakamura, K Fukagata Physics of Fluids 32 (9), 2020 | 169 | 2020 |
Synthetic turbulent inflow generator using machine learning K Fukami, Y Nabae, K Kawai, K Fukagata Physical Review Fluids 4 (6), 064603, 2019 | 156 | 2019 |
Convolutional neural network and long short-term memory based reduced order surrogate for minimal turbulent channel flow T Nakamura, K Fukami, K Hasegawa, Y Nabae, K Fukagata Physics of Fluids 33 (2), 025116, 2021 | 147 | 2021 |
Global field reconstruction from sparse sensors with Voronoi tessellation-assisted deep learning K Fukami, R Maulik, N Ramachandra, K Fukagata, K Taira Nature Machine Intelligence 3, 945-951, 2021 | 114 | 2021 |
CNN-LSTM based reduced order modeling of two-dimensional unsteady flows around a circular cylinder at different Reynolds numbers K Hasegawa, K Fukami, T Murata, K Fukagata Fluid Dynamics Research 52 (6), 065501, 2020 | 109 | 2020 |
Probabilistic neural networks for fluid flow surrogate modeling and data recovery R Maulik, K Fukami, N Ramachandra, K Fukagata, K Taira Physical Review Fluids 5 (10), 104401, 2020 | 106 | 2020 |
Experimental velocity data estimation for imperfect particle images using machine learning M Morimoto, K Fukami, K Fukagata Physics of Fluids 33 (8), 2021 | 84 | 2021 |
Convolutional neural networks for fluid flow analysis: toward effective metamodeling and low-dimensionalization M Morimoto, K Fukami, K Zhang, AG Nair, K Fukagata Theoretical and Computational Fluid Dynamics 35 (5), 633-658, 2021 | 83 | 2021 |
Sparse identification of nonlinear dynamics with low-dimensionalized flow representations K Fukami, T Murata, K Zhang, K Fukagata Journal of Fluid Mechanics 926, A10, 2021 | 72 | 2021 |
Model order reduction with neural networks: Application to laminar and turbulent flows K Fukami, K Hasegawa, T Nakamura, M Morimoto, K Fukagata SN Computer Science 2, 467, 2021 | 64 | 2021 |
Generalization techniques of neural networks for fluid flow estimation M Morimoto, K Fukami, K Zhang, K Fukagata Neural Computing and Applications 34 (5), 3647-3669, 2022 | 60 | 2022 |
Super-resolution analysis via machine learning: a survey for fluid flows K Fukami, K Fukagata, K Taira Theoretical and Computational Fluid Dynamics 37 (4), 421-444, 2023 | 47 | 2023 |
Reconstructing Three-Dimensional Bluff Body Wake from Sectional Flow Fields with Convolutional Neural Networks M Matsuo, K Fukami, T Nakamura, M Morimoto, K Fukagata SN Computer Science 5 (3), 306, 2024 | 31* | 2024 |
Identifying key differences between linear stochastic estimation and neural networks for fluid flow regressions T Nakamura, K Fukami, K Fukagata Scientific reports 12 (1), 3726, 2022 | 25* | 2022 |
Assessments of epistemic uncertainty using Gaussian stochastic weight averaging for fluid-flow regression M Morimoto, K Fukami, R Maulik, R Vinuesa, K Fukagata Physica D: Nonlinear Phenomena 440, 133454, 2022 | 23 | 2022 |