Conditional Denoising Model as a Physical Surrogate Model

By: José Afonso, Pedro Viegas, Rodrigo Ventura, Vasco Guerra

Published: 2026-01-21

View on arXiv →
#cs.AI

Abstract

This paper explores the use of conditional denoising models as physical surrogate models for complex physical systems. It addresses the common trade-off between data-fitting accuracy and physical consistency in surrogate modeling. This approach has potential for accurately simulating physical phenomena, particularly in fields like plasma physics.

FEEDBACK

Projects

No projects yet