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Certified data-driven physics-informed greedy auto-encoder simulator

Machine Learning 2022-11-28 v1 Numerical Analysis Numerical Analysis Computational Physics

Abstract

A parametric adaptive greedy Latent Space Dynamics Identification (gLaSDI) framework is developed for accurate, efficient, and certified data-driven physics-informed greedy auto-encoder simulators of high-dimensional nonlinear dynamical systems. In the proposed framework, an auto-encoder and dynamics identification models are trained interactively to discover intrinsic and simple latent-space dynamics. To effectively explore the parameter space for optimal model performance, an adaptive greedy sampling algorithm integrated with a physics-informed error indicator is introduced to search for optimal training samples on the fly, outperforming the conventional predefined uniform sampling. Further, an efficient k-nearest neighbor convex interpolation scheme is employed to exploit local latent-space dynamics for improved predictability. Numerical results demonstrate that the proposed method achieves 121 to 2,658x speed-up with 1 to 5% relative errors for radial advection and 2D Burgers dynamical problems.

Keywords

Cite

@article{arxiv.2211.13698,
  title  = {Certified data-driven physics-informed greedy auto-encoder simulator},
  author = {Xiaolong He and Youngsoo Choi and William D. Fries and Jonathan L. Belof and Jiun-Shyan Chen},
  journal= {arXiv preprint arXiv:2211.13698},
  year   = {2022}
}

Comments

arXiv admin note: substantial text overlap with arXiv:2204.12005