Physics Informed Deep Learning (Part II): Data-driven Discovery of Nonlinear Partial Differential Equations
From MaRDI portal
Publication:6294534
arXiv1711.10566MaRDI QIDQ6294534
Author name not available (Why is that?)
Publication date: 28 November 2017
Abstract: We introduce physics informed neural networks -- neural networks that are trained to solve supervised learning tasks while respecting any given law of physics described by general nonlinear partial differential equations. In this second part of our two-part treatise, we focus on the problem of data-driven discovery of partial differential equations. Depending on whether the available data is scattered in space-time or arranged in fixed temporal snapshots, we introduce two main classes of algorithms, namely continuous time and discrete time models. The effectiveness of our approach is demonstrated using a wide range of benchmark problems in mathematical physics, including conservation laws, incompressible fluid flow, and the propagation of nonlinear shallow-water waves.
Has companion code repository: https://github.com/visten92/PINN
This page was built for publication: Physics Informed Deep Learning (Part II): Data-driven Discovery of Nonlinear Partial Differential Equations
Report a bug (only for logged in users!)Click here to report a bug for this page (MaRDI item Q6294534)