Physics-enhanced Neural Operator for Simulating Turbulent Transport
Shengyu Chen, Peyman Givi, Can Zheng, Xiaowei Jia

TL;DR
This paper introduces a physics-enhanced neural operator that leverages PDE knowledge and a self-augmentation mechanism to efficiently simulate complex turbulent flows with high accuracy and generalizability.
Contribution
The paper proposes a novel neural operator model that integrates physical laws and a self-augmentation process for improved turbulence simulation.
Findings
Accurately reconstructs high-resolution DNS data.
Maintains physical properties of flow transport.
Demonstrates transferability across different PDEs.
Abstract
The precise simulation of turbulent flows is of immense importance in a variety of scientific and engineering fields, including climate science, freshwater science, and the development of energy-efficient manufacturing processes. Within the realm of turbulent flow simulation, direct numerical simulation (DNS) is widely considered to be the most reliable approach, but it is prohibitively expensive for long-term simulation at fine spatial scales. Given the pressing need for efficient simulation, there is an increasing interest in building machine learning models for turbulence, either by reconstructing DNS from alternative low-fidelity simulations or by predicting DNS based on the patterns learned from historical data. However, standard machine learning techniques remain limited in capturing complex spatio-temporal characteristics of turbulent flows, resulting in limited performance and…
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Taxonomy
TopicsModel Reduction and Neural Networks · Fluid Dynamics and Turbulent Flows
