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Physically Consistent and Uncertainty-Aware Learning of Spatiotemporal Dynamics

MCML Authors

Link to Profile Nils Thuerey PI Matchmaking

Nils Thuerey

Prof. Dr.

Principal Investigator

Link to Profile Xiaoxiang Zhu PI Matchmaking

Xiaoxiang Zhu

Prof. Dr.

Principal Investigator

Abstract

Accurate long-term forecasting of spatiotemporal dynamics remains a fundamental challenge across scientific and engineering domains. Existing machine learning methods often neglect governing physical laws and fail to quantify inherent uncertainties in spatiotemporal predictions. To address these challenges, we introduce a physics-consistent neural operator (PCNO) that enforces physical constraints by projecting surrogate model outputs onto function spaces satisfying predefined laws. A physics-consistent projection layer within PCNO efficiently computes mass and momentum conservation in Fourier space. Building upon deterministic predictions, we further propose a diffusion model-enhanced PCNO (DiffPCNO), which leverages a consistency model to quantify and mitigate uncertainties, thereby improving the accuracy and reliability of forecasts. PCNO and DiffPCNO achieve high-fidelity spatiotemporal predictions while preserving physical consistency and uncertainty across diverse systems and spatial resolutions, ranging from turbulent flow modeling to real-world flood/atmospheric forecasting. Our two-stage framework provides a robust and versatile approach for accurate, physically grounded, and uncertainty-aware spatiotemporal forecasting.

misc XBT+25


Preprint

Oct. 2025

Authors

Q. Xu • J. L. Bamber • N. Thuerey • N. Boers • P. Bates • G. Camps-Valls • Y. Shi • X. Zhu

Links

arXiv

Research Areas

 B1 | Computer Vision

 C3 | Physics and Geo Sciences

BibTeXKey: XBT+25

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