Parametric Learning of Time-Advancement Operators for Unstable Flame Evolution
About
This study investigates the application of machine learning, specifically Fourier Neural Operator (FNO) and Convolutional Neural Network (CNN), to learn time-advancement operators for parametric partial differential equations (PDEs). Our focus is on extending existing operator learning methods to handle additional inputs representing PDE parameters. The goal is to create a unified learning approach that accurately predicts short-term solutions and provides robust long-term statistics under diverse parameter conditions, facilitating computational cost savings and accelerating development in engineering simulations. We develop and compare parametric learning methods based on FNO and CNN, evaluating their effectiveness in learning parametric-dependent solution time-advancement operators for one-dimensional PDEs and realistic flame front evolution data obtained from direct numerical simulations of the Navier-Stokes equations.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Short-term PDE solution prediction | 1d-KDV (train) | Relative L2 Error1.00e-4 | 9 | |
| Short-term PDE solution prediction | 1d-KDV (val) | Relative L2 Error0.0011 | 9 | |
| Short-term PDE solution prediction | 1d-MS beta=40 (val) | Relative L2 Error0.0063 | 7 | |
| Short-term PDE solution prediction | 1d-MS beta=40 (train) | Relative L2 Error0.0045 | 7 | |
| Short-term PDE solution prediction | 1d-KS beta=40 (train) | Relative L2 Error7.40e-4 | 7 | |
| Short-term PDE solution prediction | 1d-KS beta=40 (val) | Relative L2 Error (%)0.075 | 7 | |
| Short-term PDE solution prediction | 1d-KS beta=10 (train) | Rel L2 Error7.80e-4 | 7 | |
| Short-term PDE solution prediction | 1d-KS beta=10 (val) | Relative L2 Error8.20e-4 | 7 | |
| Short-term PDE solution prediction | 1d-MS beta=10 (train) | Relative L2 Error0.001 | 7 | |
| Short-term PDE solution prediction | 1d-MS (beta=10) (val) | Rel L2 Error0.0011 | 7 |