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Neural Operator: Graph Kernel Network for Partial Differential Equations

About

The classical development of neural networks has been primarily for mappings between a finite-dimensional Euclidean space and a set of classes, or between two finite-dimensional Euclidean spaces. The purpose of this work is to generalize neural networks so that they can learn mappings between infinite-dimensional spaces (operators). The key innovation in our work is that a single set of network parameters, within a carefully designed network architecture, may be used to describe mappings between infinite-dimensional spaces and between different finite-dimensional approximations of those spaces. We formulate approximation of the infinite-dimensional mapping by composing nonlinear activation functions and a class of integral operators. The kernel integration is computed by message passing on graph networks. This approach has substantial practical consequences which we will illustrate in the context of mappings between input data to partial differential equations (PDEs) and their solutions. In this context, such learned networks can generalize among different approximation methods for the PDE (such as finite difference or finite element methods) and among approximations corresponding to different underlying levels of resolution and discretization. Experiments confirm that the proposed graph kernel network does have the desired properties and show competitive performance compared to the state of the art solvers.

Zongyi Li, Nikola Kovachki, Kamyar Azizzadenesheli, Burigede Liu, Kaushik Bhattacharya, Andrew Stuart, Anima Anandkumar• 2020

Related benchmarks

TaskDatasetResultRank
PDE ModelingBurgers' Equation various resolutions (val)
Relative L2 Error0.0555
36
Constitutive modelinghyperelasticity (test)
Relative L2 Error13.007
33
PDE solvingKorteweg-de Vries (KdV) 1-D (test)
Relative L2 Error0.0695
32
CFD field reconstructionShapeNet Car (test)
Volume Error3.83
15
Shape classificationSHREC-11 30-class
Accuracy55.8
14
Aerodynamic SimulationShape-Net Car (test)
Volume Relative L2 Error0.0383
14
SegmentationRNA Surface 640 meshes
Accuracy51.2
14
SegmentationHuman Body 12k-vertex meshes
Accuracy38.3
14
Fluid Dynamics PredictionShape-Net Car
Pressure L2 Error0.1043
13
PDE solvingPoisson
L2 Error0.2486
13
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