Enhancing Wall-Bounded Turbulence Simulation through Differentiable Neural Wall Modeling
ORAL
Abstract
Efficiently simulating complex turbulence at high Reynolds numbers is crucial for numerous engineering applications. Accurate reconstruction of near-wall flow features is of paramount importance to effectively simulate wall-bounded turbulence. Wall-Modeled Large Eddy Simulation (WMLES) offers an efficient alternative to Wall-Resolved Large Eddy Simulation (WRLES) and Direct Numerical Simulation (DNS), especially for high Reynolds numbers. However, the traditional equilibrium wall-stress model, based on the algebraic log law, lacks accuracy for non-equilibrium flows. Recent advances in Deep Neural Networks (DNNs) provide an opportunity for a more generalized wall model. In this study, we propose the development of a differentiable neural solver inspired by WMLES. By seamlessly integrating sequential neural networks with a differentiable Computational Fluid Dynamics (CFD) solver, we aim to effectively learn turbulent wall-bounded flows across various conditions. The proposed models will be trained using a posterior metric to ensure accurate a posteriori predictions. Through comparisons with purely data-driven models and conventional WMLES, our proposed method demonstrates advantages in terms of efficiency and generalizability.
*The authors would like to acknowledge the funds from Office of Naval Research under award numbers N00014-23-1-2071 and National Science Foundation under award numbers OAC-2047127, and fellowship provided by the Environmental Change Initiative and Center for Sustainable Energy at University of Notre Dame.
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Presenters
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Xiantao Fan
- University of Notre Dame