A Composable Machine-Learning Approach for Steady-State Simulations on High-Resolution Grids

Abstract

In this paper we show that our Machine Learning (ML) approach, CoMLSim (Composable Machine Learning Simulator), can simulate PDEs on highly-resolved grids with higher accuracy and generalization to out-of-distribution source terms and geometries than traditional ML baselines. Our unique approach combines key principles of traditional PDE solvers with local-learning and low-dimensional manifold techniques to iteratively simulate PDEs on large computational domains. The proposed approach is validated on more than 5 steady-state PDEs across different PDE conditions on highly-resolved grids and comparisons are made with the commercial solver, Ansys Fluent as well as 4 other state-of-the-art ML methods. The numerical experiments show that our approach outperforms ML baselines in terms of 1) accuracy across quantitative metrics and 2) generalization to out-of-distribution conditions as well as domain sizes. Additionally, we provide results for a large number of ablations experiments conducted to highlight components of our approach that strongly influence the results. We conclude that our local-learning and iterative-inferencing approach reduces the challenge of generalization that most ML models face.

Cite

Text

Ranade et al. "A Composable Machine-Learning Approach for Steady-State Simulations on High-Resolution Grids." Neural Information Processing Systems, 2022.

Markdown

[Ranade et al. "A Composable Machine-Learning Approach for Steady-State Simulations on High-Resolution Grids." Neural Information Processing Systems, 2022.](https://mlanthology.org/neurips/2022/ranade2022neurips-composable/)

BibTeX

@inproceedings{ranade2022neurips-composable,
  title     = {{A Composable Machine-Learning Approach for Steady-State Simulations on High-Resolution Grids}},
  author    = {Ranade, Rishikesh and Hill, Chris and Ghule, Lalit and Pathak, Jay},
  booktitle = {Neural Information Processing Systems},
  year      = {2022},
  url       = {https://mlanthology.org/neurips/2022/ranade2022neurips-composable/}
}