The Adaptive Vekua Cascade: A Differentiable Spectral-Analytic Solver for Physics-Informed Representation
Vladimer Khasia

TL;DR
The Adaptive Vekua Cascade (AVC) is a novel hybrid neural architecture that combines deep learning with classical approximation theory to efficiently and accurately solve complex physical problems, overcoming spectral bias and dimensionality issues.
Contribution
AVC introduces a diffeomorphic warping and a differentiable linear solver to improve spectral accuracy and parameter efficiency in physics-informed neural representations.
Findings
Achieves state-of-the-art accuracy on physics benchmarks
Reduces parameter count by orders of magnitude
Converges 2-3x faster than existing neural methods
Abstract
Coordinate-based neural networks have emerged as a powerful tool for representing continuous physical fields, yet they face two fundamental pathologies: spectral bias, which hinders the learning of high-frequency dynamics, and the curse of dimensionality, which causes parameter explosion in discrete feature grids. We propose the Adaptive Vekua Cascade (AVC), a hybrid architecture that bridges deep learning and classical approximation theory. AVC decouples manifold learning from function approximation by using a deep network to learn a diffeomorphic warping of the physical domain, projecting complex spatiotemporal dynamics onto a latent manifold where the solution is represented by a basis of generalized analytic functions. Crucially, we replace the standard gradient-descent output layer with a differentiable linear solver, allowing the network to optimally resolve spectral coefficients…
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Taxonomy
TopicsModel Reduction and Neural Networks · Neural Networks and Reservoir Computing · Fluid Dynamics and Turbulent Flows
