ICLR2026
Buckingham -Invariant Test‑Time Projection for Robust PDE Surrogate Modeling
Seokki Lee, Min-Chul Park, Giyong Hong, Changwook Jeong
Abstract
PDE surrogate models such as FNO and PINN struggle to predict solutions across inputs with diverse physical units and scales, limiting their out-of-distribution (OOD) generalization. We propose a -invariant test-time projection that aligns test inputs with the training distribution by solving a log-space least squares problem that preserves Buckingham -invariants. For PDEs with multidimensional spatial fields, we use geometric representative -values to compute distances and project inputs, overcoming degeneracy and singular points that limit prior -methods. To accelerate projection, we cluster the training set into K clusters, reducing the complexity from O(MN) to O(KN) for the M training and N test samples. Across wide input scale ranges, tests on 2D thermal conduction and linear elasticity achieve an average MAE reduction up to with minimal overhead. This training-free, model-agnostic method is expected to apply to more diverse PDE-based simulations.