[Paper] Drifting Models for Surrogate Flow Modeling
Source: arXiv - 2606.07481v1
Overview
While Computational Fluid Dynamics (CFD) provides high-fidelity flow fields for optimizing indoor environments, its computational cost limits rapid exploration. To solve this problem generative surrogates offer better distribution modeling than deterministic networks, but iterative sampling is slow. To enable high-quality, single-pass generation, we adapt the novel generative drifting framework to fluid mechanics. We introduce a conditional architecture that performs drifting in a learned VAE latent space and uses label-aware masking to align generated samples with their boundary conditions. Our label-conditioned model matches iterative diffusion in accuracy and flow consistency while running two orders of magnitude faster. Additionally, we propose a spatial-conditioning variant that establishes a promising path towards generalization to unseen geometries. Ultimately, conditional drifting serves as a highly efficient alternative to diffusion based approaches, unlocking real-time CFD surrogates where inference speed is critical.
Key Contributions
This paper presents research in the following areas:
- cs.LG
Methodology
Please refer to the full paper for detailed methodology.
Practical Implications
This research contributes to the advancement of cs.LG.
Authors
- Chris R. Jung
- Markus Dörr
- Natalie Jüngling
- Jennifer Niessner
- Adam T. Müller
- Nicolaj C. Stache
Paper Information
- arXiv ID: 2606.07481v1
- Categories: cs.LG
- Published: June 5, 2026
- PDF: Download PDF