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DeepVekua: Geometric-Spectral Representation Learning for Physics-Informed Fields

About

We present DeepVekua, a hybrid architecture that unifies geometric deep learning with spectral analysis to solve partial differential equations (PDEs) in sparse data regimes. By learning a diffeomorphic coordinate transformation that maps complex geometries to a latent harmonic space, our method outperforms state-of-the-art implicit representations on advection-diffusion systems. Unlike standard coordinate-based networks which struggle with spectral bias, DeepVekua separates the learning of geometry from the learning of physics, solving for optimal spectral weights in closed form. We demonstrate a 100x improvement over spectral baselines. The code is available at https://github.com/VladimerKhasia/vekuanet.

Vladimer Khasia• 2025

Related benchmarks

TaskDatasetResultRank
Implicit Representation ReconstructionNavier-Stokes 3D
MSE7.31e-4
4
Implicit Representation ReconstructionGeometric SDF
MSE9.90e-5
4
Implicit Representation ReconstructionSparse Phantom
MSE0.0232
4
1D Signal ReconstructionInverse Param 1D
MSE1.97e-4
4
Implicit Representation ReconstructionSparse Seismic
MSE0.118
4
Implicit Representation ReconstructionCurved Shock
MSE0.0255
4
1D Signal ReconstructionNoisy Chirp 1D
MSE0.0998
4
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