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language:
  - en
arxiv:
  - 2506.08604
license:
  - mit

Flow Matching Meets PDEs: A Unified Framework for Physics-Constrained Generation

arXiv View on GitHub

The datasets contain the data for the dynamic stall and Kolmogorov flow cases.

Dynamic Stall dataset

The design space is defined as a four-dimensional hypercube. The design variables are:

Design variable Symbol Description Range
Free-stream Mach number $ M_{\infty} $ Ratio of free-stream velocity to speed of sound 0.3 – 0.5
Mean angle of attack $ \alpha_0 $ Average angle between chord line and flow direction 5° – 10°
Pitching amplitude $ \alpha_s $ Maximum angular deviation during pitching motion 5° – 10°
Reduced frequency $ k = \dfrac{\omega c}{2V_{\infty}} $ Non-dimensional frequency of oscillation 0.05 – 0.1

The hypercube is sampled with 128 points for training and 16 points for testing. Each sampled point represents a nominal operating condition.

Each nominal condition is perturbed as follows:

xperturbed=(1+N(0,0.02))xnominal x_{\text{perturbed}} = (1 + \mathcal{N}(0, 0.02)) \cdot x_{\text{nominal}}

where $\mathcal{N}(0, 0.02)$ denotes a Gaussian noise term with zero mean and standard deviation 0.02.

This results in 32 perturbed variations per nominal condition, yielding a total of:

  • $128 \times 32 = 4096$ simulations for training
  • $16 \times 32 = 512$ simulations for testing

Each simulation that corresponds to a dataset sample has 6 fields of size $128 \times 128$. The fields correspond to:

  • Absolute pressure
  • x-wall tangential velocity gradient
  • y-wall tangential velocity gradient
  • Temperature
  • Density
  • Wall shear stress

Each hdf5 file contains three arrays:

  • fields with shape (conditions, samples per condition, fields, x, y)
  • nominal_condition with shape (nominal conditions, samples per condition, design variables)
  • real_condition with shape (real conditions, samples per condition, design variables)

Kolmogorov flow dataset

The Kolmogorov flow problem spans Reynolds numbers in the range $[100, 500]$, using a spatial resolution of $128 \times 128$. The simulations are performed using TorchFSM. The training dataset includes 32 different flow conditions, while the validation dataset contains 16 conditions. Each condition has $1, 024$ snapshots.

Each simulation that corresponds to a dataset sample has 2 fields of size $128 \times 128$. The fields correspond to:

  • x-velocity
  • y-velocity

Each hdf5 file contains two arrays:

  • fields with shape (conditions, samples per condition, fields, x, y)
  • reynolds with shape (reynolds numbers, )