COLGMLDec 14, 2025

Flow matching Operators for Residual-Augmented Probabilistic Learning of Partial Differential Equations

arXiv:2512.12749v21 citations
Originality Highly original
AI Analysis

This addresses the problem of data-efficient probabilistic PDE surrogate modeling for computational science applications, representing a novel method for a known bottleneck.

The paper tackles the challenge of learning probabilistic surrogates for partial differential equations in data-scarce regimes by formulating flow matching in an infinite-dimensional function space to map low-fidelity approximations to high-fidelity solutions via learned residual corrections. The method achieves accurate learning of solution operators across different resolutions and fidelities with appropriate uncertainty estimates, even with limited high-fidelity data.

Learning probabilistic surrogates for partial differential equations remains challenging in data-scarce regimes: neural operators require large amounts of high-fidelity data, while generative approaches typically sacrifice resolution invariance. We formulate flow matching in an infinite-dimensional function space to learn a probabilistic transport that maps low-fidelity approximations to the manifold of high-fidelity PDE solutions via learned residual corrections. We develop a conditional neural operator architecture based on feature-wise linear modulation for flow matching vector fields directly in function space, enabling inference at arbitrary spatial resolutions without retraining. To improve stability and representational control of the induced neural ODE, we parameterize the flow vector field as a sum of a linear operator and a nonlinear operator, combining lightweight linear components with a conditioned Fourier neural operator for expressive, input-dependent dynamics. We then formulate a residual-augmented learning strategy where the flow model learns probabilistic corrections from inexpensive low-fidelity surrogates to high-fidelity solutions, rather than learning the full solution mapping from scratch. Finally, we derive tractable training objectives that extend conditional flow matching to the operator setting with input-function-dependent couplings. To demonstrate the effectiveness of our approach, we present numerical experiments on a range of PDEs, including the 1D advection and Burgers' equation, and a 2D Darcy flow problem for flow through a porous medium. We show that the proposed method can accurately learn solution operators across different resolutions and fidelities and produces uncertainty estimates that appropriately reflect model confidence, even when trained on limited high-fidelity data.

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