Predicting future discontinuous phenomena that are unobservable from training data sets has long been a challenging problem in scientific machine learning. We introduce a novel paradigm to predict the emergence and evolution of various discontinuities of hyperbolic partial differential equations (PDEs) based on given training data over a short window with limited discontinuity information. Our method is inspired by the classical Roe solver [P. L. Roe, J Comput Phys., vol. 43, 1981], a basic tool for simulating various hyperbolic PDEs in computational physics. By carefully designing the computing primitives, the data flow, and the novel pseudoinverse processing module, we enable our data-driven predictor to satisfy all the essential mathematical criteria of a Roe solver and hence deliver accurate predictions of hyperbolic PDEs. We demonstrate through various examples that our data-driven Roe predictor outperforms original human-designed Roe solver and deep neural networks with weak priors in terms of accuracy and robustness.
机构:
Univ New S Wales, Sch Math & Stat, Sydney, NSW 2052, AustraliaUniv New S Wales, Sch Math & Stat, Sydney, NSW 2052, Australia
Gonzalez-Tokman, Cecilia
Hunt, Brian R.
论文数: 0引用数: 0
h-index: 0
机构:
Univ Maryland, Dept Math, College Pk, MD 20742 USA
Univ Maryland, Inst Phys Sci & Technol, College Pk, MD 20742 USAUniv New S Wales, Sch Math & Stat, Sydney, NSW 2052, Australia