PDE-Net 2.0: Learning PDEs from Data with A Numeric-Symbolic Hybrid Deep
Network
Z. Long, Y. Lu, and B. Dong. (2018)cite arxiv:1812.04426Comment: 16 pages, 15 figures. arXiv admin note: substantial text overlap with arXiv:1710.09668.
DOI: 10.1016/j.jcp.2019.108925
Abstract
Partial differential equations (PDEs) are commonly derived based on empirical
observations. However, recent advances of technology enable us to collect and
store massive amount of data, which offers new opportunities for data-driven
discovery of PDEs. In this paper, we propose a new deep neural network, called
PDE-Net 2.0, to discover (time-dependent) PDEs from observed dynamic data with
minor prior knowledge on the underlying mechanism that drives the dynamics. The
design of PDE-Net 2.0 is based on our earlier work Long2018PDE where the
original version of PDE-Net was proposed. PDE-Net 2.0 is a combination of
numerical approximation of differential operators by convolutions and a
symbolic multi-layer neural network for model recovery. Comparing with existing
approaches, PDE-Net 2.0 has the most flexibility and expressive power by
learning both differential operators and the nonlinear response function of the
underlying PDE model. Numerical experiments show that the PDE-Net 2.0 has the
potential to uncover the hidden PDE of the observed dynamics, and predict the
dynamical behavior for a relatively long time, even in a noisy environment.
%0 Generic
%1 long2018pdenet
%A Long, Zichao
%A Lu, Yiping
%A Dong, Bin
%D 2018
%K PDE deeplearning todo:read
%R 10.1016/j.jcp.2019.108925
%T PDE-Net 2.0: Learning PDEs from Data with A Numeric-Symbolic Hybrid Deep
Network
%U http://arxiv.org/abs/1812.04426
%X Partial differential equations (PDEs) are commonly derived based on empirical
observations. However, recent advances of technology enable us to collect and
store massive amount of data, which offers new opportunities for data-driven
discovery of PDEs. In this paper, we propose a new deep neural network, called
PDE-Net 2.0, to discover (time-dependent) PDEs from observed dynamic data with
minor prior knowledge on the underlying mechanism that drives the dynamics. The
design of PDE-Net 2.0 is based on our earlier work Long2018PDE where the
original version of PDE-Net was proposed. PDE-Net 2.0 is a combination of
numerical approximation of differential operators by convolutions and a
symbolic multi-layer neural network for model recovery. Comparing with existing
approaches, PDE-Net 2.0 has the most flexibility and expressive power by
learning both differential operators and the nonlinear response function of the
underlying PDE model. Numerical experiments show that the PDE-Net 2.0 has the
potential to uncover the hidden PDE of the observed dynamics, and predict the
dynamical behavior for a relatively long time, even in a noisy environment.
@misc{long2018pdenet,
abstract = {Partial differential equations (PDEs) are commonly derived based on empirical
observations. However, recent advances of technology enable us to collect and
store massive amount of data, which offers new opportunities for data-driven
discovery of PDEs. In this paper, we propose a new deep neural network, called
PDE-Net 2.0, to discover (time-dependent) PDEs from observed dynamic data with
minor prior knowledge on the underlying mechanism that drives the dynamics. The
design of PDE-Net 2.0 is based on our earlier work \cite{Long2018PDE} where the
original version of PDE-Net was proposed. PDE-Net 2.0 is a combination of
numerical approximation of differential operators by convolutions and a
symbolic multi-layer neural network for model recovery. Comparing with existing
approaches, PDE-Net 2.0 has the most flexibility and expressive power by
learning both differential operators and the nonlinear response function of the
underlying PDE model. Numerical experiments show that the PDE-Net 2.0 has the
potential to uncover the hidden PDE of the observed dynamics, and predict the
dynamical behavior for a relatively long time, even in a noisy environment.},
added-at = {2021-09-21T09:06:58.000+0200},
author = {Long, Zichao and Lu, Yiping and Dong, Bin},
biburl = {https://www.bibsonomy.org/bibtex/2dc79d64e8f46e919ceacc74761f57fb1/annakrause},
description = {1812.04426.pdf},
doi = {10.1016/j.jcp.2019.108925},
interhash = {a418180d803917b13f6b6f55138301e3},
intrahash = {dc79d64e8f46e919ceacc74761f57fb1},
keywords = {PDE deeplearning todo:read},
note = {cite arxiv:1812.04426Comment: 16 pages, 15 figures. arXiv admin note: substantial text overlap with arXiv:1710.09668},
timestamp = {2021-09-21T09:06:58.000+0200},
title = {PDE-Net 2.0: Learning PDEs from Data with A Numeric-Symbolic Hybrid Deep
Network},
url = {http://arxiv.org/abs/1812.04426},
year = 2018
}