Clifford Neural Layers for PDE Modeling
Johannes Brandstetter, Rianne van den Berg, Max Welling, Jayesh K., Gupta

TL;DR
This paper introduces Clifford neural layers that leverage multivector fields and Clifford algebra to improve neural PDE surrogates, enhancing their ability to model correlated physical fields in simulations.
Contribution
It is the first to incorporate multivector representations with Clifford convolutions and Fourier transforms in deep learning for PDE modeling.
Findings
Clifford neural layers improve generalization in neural PDE surrogates.
They outperform traditional methods on Navier-Stokes, weather, and Maxwell equations.
The approach is universally applicable across physical modeling tasks.
Abstract
Partial differential equations (PDEs) see widespread use in sciences and engineering to describe simulation of physical processes as scalar and vector fields interacting and coevolving over time. Due to the computationally expensive nature of their standard solution methods, neural PDE surrogates have become an active research topic to accelerate these simulations. However, current methods do not explicitly take into account the relationship between different fields and their internal components, which are often correlated. Viewing the time evolution of such correlated fields through the lens of multivector fields allows us to overcome these limitations. Multivector fields consist of scalar, vector, as well as higher-order components, such as bivectors and trivectors. Their algebraic properties, such as multiplication, addition and other arithmetic operations can be described by…
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Code & Models
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Taxonomy
TopicsModel Reduction and Neural Networks · Advanced Numerical Methods in Computational Mathematics · Numerical methods for differential equations
MethodsConvolution
