Conditionally Parameterized, Discretization-Aware Neural Networks for
Mesh-Based Modeling of Physical Systems
- URL: http://arxiv.org/abs/2109.09510v1
- Date: Wed, 15 Sep 2021 20:21:13 GMT
- Title: Conditionally Parameterized, Discretization-Aware Neural Networks for
Mesh-Based Modeling of Physical Systems
- Authors: Jiayang Xu, Aniruddhe Pradhan, Karthik Duraisamy
- Abstract summary: We generalize the idea of conditional parametrization -- using trainable functions of input parameters.
We show that conditionally parameterized networks provide superior performance compared to their traditional counterparts.
A network architecture named CP-GNet is also proposed as the first deep learning model capable of reacting standalone prediction of flows on meshes.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The numerical simulations of physical systems are heavily dependent on
mesh-based models. While neural networks have been extensively explored to
assist such tasks, they often ignore the interactions or hierarchical relations
between input features, and process them as concatenated mixtures. In this
work, we generalize the idea of conditional parametrization -- using trainable
functions of input parameters to generate the weights of a neural network, and
extend them in a flexible way to encode information critical to the numerical
simulations. Inspired by discretized numerical methods, choices of the
parameters include physical quantities and mesh topology features. The
functional relation between the modeled features and the parameters are built
into the network architecture. The method is implemented on different networks,
which are applied to several frontier scientific machine learning tasks,
including the discovery of unmodeled physics, super-resolution of coarse
fields, and the simulation of unsteady flows with chemical reactions. The
results show that the conditionally parameterized networks provide superior
performance compared to their traditional counterparts. A network architecture
named CP-GNet is also proposed as the first deep learning model capable of
standalone prediction of reacting flows on irregular meshes.
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