Machine-Learned Closure of URANS for Stably Stratified Turbulence: Connecting Physical Timescales & Data Hyperparameters of Deep Time-Series Models
Muralikrishnan Gopalakrishnan Meena, Demetri Liousas, Andrew D. Simin,, Aditya Kashi, Wesley H. Brewer, James J. Riley, Stephen M. de Bruyn Kops

TL;DR
This paper develops machine learning models, LSTM and NODE, for closure modeling of stably stratified turbulence in URANS equations, linking physical timescales with data hyperparameters to improve stability and accuracy.
Contribution
It introduces a data-driven approach using time-series ML models to directly model force balances in SST, connecting physical timescales with model data requirements.
Findings
ML models accurately capture SST dynamics.
Model performance linked to physical timescales and Reynolds number.
Framework enables exploration of complex SST flows.
Abstract
We develop time-series machine learning (ML) methods for closure modeling of the Unsteady Reynolds Averaged Navier Stokes (URANS) equations applied to stably stratified turbulence (SST). SST is strongly affected by fine balances between forces and becomes more anisotropic in time for decaying cases. Moreover, there is a limited understanding of the physical phenomena described by some of the terms in the URANS equations. Rather than attempting to model each term separately, it is attractive to explore the capability of machine learning to model groups of terms, i.e., to directly model the force balances. We consider decaying SST which are homogeneous and stably stratified by a uniform density gradient, enabling dimensionality reduction. We consider two time-series ML models: Long Short-Term Memory (LSTM) and Neural Ordinary Differential Equation (NODE). Both models perform accurately…
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Taxonomy
TopicsTime Series Analysis and Forecasting · Meteorological Phenomena and Simulations · Complex Systems and Time Series Analysis
