Agent Tuning & Optimization 相关度: 6/10

Uni-Flow: a unified autoregressive-diffusion model for complex multiscale flows

Xiao Xue, Tianyue Yang, Mingyang Gao, Leyu Pan, Maida Wang, Kewei Zhu, Shuo Wang, Jiuling Li, Marco F. P. ten Eikelder, Peter V. Coveney
arXiv: 2602.15592v1 发布: 2026-02-17 更新: 2026-02-17

AI 摘要

Uni-Flow模型结合自回归和扩散模型,高效模拟复杂多尺度流体动力学。

主要贡献

  • 提出Uni-Flow模型,统一自回归和扩散模型
  • 实现了复杂流体动力学的长期稳定预测和精细结构重建
  • 在多个流体动力学benchmark上验证了Uni-Flow的有效性

方法论

采用自回归模型学习低分辨率潜在动态,保持长期演化,使用扩散模型重建高分辨率物理场,恢复精细特征。

原文摘要

Spatiotemporal flows govern diverse phenomena across physics, biology, and engineering, yet modelling their multiscale dynamics remains a central challenge. Despite major advances in physics-informed machine learning, existing approaches struggle to simultaneously maintain long-term temporal evolution and resolve fine-scale structure across chaotic, turbulent, and physiological regimes. Here, we introduce Uni-Flow, a unified autoregressive-diffusion framework that explicitly separates temporal evolution from spatial refinement for modelling complex dynamical systems. The autoregressive component learns low-resolution latent dynamics that preserve large-scale structure and ensure stable long-horizon rollouts, while the diffusion component reconstructs high-resolution physical fields, recovering fine-scale features in a small number of denoising steps. We validate Uni-Flow across canonical benchmarks, including two-dimensional Kolmogorov flow, three-dimensional turbulent channel inflow generation with a quantum-informed autoregressive prior, and patient-specific simulations of aortic coarctation derived from high-fidelity lattice Boltzmann hemodynamic solvers. In the cardiovascular setting, Uni-Flow enables task-level faster than real-time inference of pulsatile hemodynamics, reconstructing high-resolution pressure fields over physiologically relevant time horizons in seconds rather than hours. By transforming high-fidelity hemodynamic simulation from an offline, HPC-bound process into a deployable surrogate, Uni-Flow establishes a pathway to faster-than-real-time modelling of complex multiscale flows, with broad implications for scientific machine learning in flow physics.

标签

流体动力学 机器学习 自回归模型 扩散模型 科学计算

arXiv 分类

physics.flu-dyn cs.LG physics.comp-ph