English

An Extensible Benchmark Suite for Learning to Simulate Physical Systems

Machine Learning 2021-08-19 v1 Computational Physics

Abstract

Simulating physical systems is a core component of scientific computing, encompassing a wide range of physical domains and applications. Recently, there has been a surge in data-driven methods to complement traditional numerical simulations methods, motivated by the opportunity to reduce computational costs and/or learn new physical models leveraging access to large collections of data. However, the diversity of problem settings and applications has led to a plethora of approaches, each one evaluated on a different setup and with different evaluation metrics. We introduce a set of benchmark problems to take a step towards unified benchmarks and evaluation protocols. We propose four representative physical systems, as well as a collection of both widely used classical time integrators and representative data-driven methods (kernel-based, MLP, CNN, nearest neighbors). Our framework allows evaluating objectively and systematically the stability, accuracy, and computational efficiency of data-driven methods. Additionally, it is configurable to permit adjustments for accommodating other learning tasks and for establishing a foundation for future developments in machine learning for scientific computing.

Keywords

Cite

@article{arxiv.2108.07799,
  title  = {An Extensible Benchmark Suite for Learning to Simulate Physical Systems},
  author = {Karl Otness and Arvi Gjoka and Joan Bruna and Daniele Panozzo and Benjamin Peherstorfer and Teseo Schneider and Denis Zorin},
  journal= {arXiv preprint arXiv:2108.07799},
  year   = {2021}
}

Comments

Accepted to NeurIPS 2021 track on datasets and benchmarks

R2 v1 2026-06-24T05:12:03.140Z