LGNANAApr 20

Neural Shape Operator Surrogates -- Expression Rate Bounds

arXiv:2604.1801253.1h-index: 2
AI Analysis

Provides theoretical foundations for neural operator surrogates in parametric shape-to-solution maps, addressing a known bottleneck in PDE surrogate modeling.

The paper proves error bounds for neural and spectral operator surrogates approximating solution operators of PDEs on shape families diffeomorphic to a reference domain, showing convergence rates uniform over admissible shapes. It provides constructive existence proofs with rate guarantees, supporting neural operators' generalization across shape families.

We prove error bounds for operator surrogates of solution operators for partial differential and boundary integral equations on families of domains which are diffeomorphic to one common reference (or latent) domain $D_{ref}$. The pullback of the PDE to $D_{ref}$ via affine-parametric shape encoding produces a collection of holomorphic parametric PDEs on $D_{ref}$. Sufficient conditions for (uniformly with respect to the parameter) well-posedness are given, implying existence, uniqueness and stability of parametric solution families on $D_{ref}$. We illustrate the abstract hypotheses by reviewing recent holomorphy results for a suite of elliptic and parabolic PDEs. Quantified parametric holomorphy implies existence of finite-parametric, discrete approximations of the parametric solution families with convergence rates in terms of the number $N$ of parameters. We obtain constructive proofs of existence of Neural and Spectral Operator surrogates for the shape-to-solution maps with error bounds and convergence rate guarantees uniform on the collection of admissible shapes. We admit principal-component shape encoders and frame decoders. Our results support in particular the (empirically reported) ability of neural operators to realize data-to-solution maps for elliptic and parabolic PDEs and BIEs that generalize across parametric families of shapes.

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