Multi-objective CFD-driven development of coupled turbulence closure models F Waschkowski, Y Zhao, R Sandberg, J Klewicki Journal of Computational Physics 452, 110922, 2022 | 33 | 2022 |
Transition modeling for low pressure turbines using computational fluid dynamics driven machine learning HD Akolekar, F Waschkowski, Y Zhao, R Pacciani, RD Sandberg Energies 14 (15), 4680, 2021 | 26 | 2021 |
Towards robust and accurate Reynolds-averaged closures for natural convection via multi-objective CFD-driven machine learning X Xu, F Waschkowski, ASH Ooi, RD Sandberg International Journal of Heat and Mass Transfer 187, 122557, 2022 | 18 | 2022 |
Toward more general turbulence models via multicase computational-fluid-dynamics-driven training Y Fang, Y Zhao, F Waschkowski, ASH Ooi, RD Sandberg AIAA Journal 61 (5), 2100-2115, 2023 | 16 | 2023 |
A coupled framework for symbolic turbulence models from deep-learning C Lav, AJ Banko, F Waschkowski, Y Zhao, CJ Elkins, JK Eaton, ... International Journal of Heat and Fluid Flow 101, 109140, 2023 | 4 | 2023 |
Turbulence Model Development based on a Novel Method Combining Gene Expression Programming with an Artificial Neural Network H Li, F Waschkowski, Y Zhao, RD Sandberg arXiv preprint arXiv:2301.07293, 2023 | 2 | 2023 |
Multi-Objective Development of Machine-Learnt Closures for Fully Integrated Transition and Wake Mixing Predictions in Low Pressure Turbines HD Akolekar, F Waschkowski, R Pacciani, Y Zhao, RD Sandberg Turbo Expo: Power for Land, Sea, and Air 86113, V10CT32A013, 2022 | 2 | 2022 |
Gradient Information and Regularization for Gene Expression Programming to Develop Data-Driven Physics Closure Models F Waschkowski, H Li, A Deshmukh, T Grenga, Y Zhao, H Pitsch, ... arXiv preprint arXiv:2211.12341, 2022 | 1 | 2022 |
Evolutionary neural networks for learning turbulence closure models with explicit expressions H Li, Y Zhao, F Waschkowski, RD Sandberg Physics of Fluids 36 (5), 2024 | | 2024 |