bedrock-checkpoints

Physics-informed neural-network (PINN) surrogate trained on STAR-CCM+ RANS CFD results (coolant flow). The model maps geometry/coordinate features to the steady flow fields. Metadata below is auto-extracted from the checkpoint header.

Checkpoint: starccm_pinn_model_step_00390000.pt

Training step 390000
Feature schema canonical_local_chart_dim55_geometry_conditioned_v1
Input features (semantic) 55
Encoded input dim (Fourier) 935 = 55 raw + 55Γ—2Γ—8 freqs
Output variables 7
Hidden width 384
Linear layers 7
Main network params 1,101,319
Pressure-head params 1,485
Total params 1,102,804

Outputs (7)

Order: u, v, w, p, k, epsilon, temperature Supervised labels: n/a (remaining fields are latent / physics-constrained).

Architecture (main field MLP)

Inputs are Fourier-encoded (8 frequencies, sin+cos) before the MLP.

layer shape (in β†’ out)
mlp.net.0.weight 935 β†’ 384
mlp.net.2.weight 384 β†’ 384
mlp.net.4.weight 384 β†’ 384
mlp.net.6.weight 384 β†’ 384
mlp.net.8.weight 384 β†’ 384
mlp.net.10.weight 384 β†’ 384
mlp.net.12.weight 384 β†’ 7

A separate pressure head regresses a scalar pressure-drop (Ξ”P) per geometry from 11 geometry descriptors (geometry_mlp: 11 β†’ 32 β†’ 32 β†’ 1).

STAR-CCM+ physics

setting value
turbulence_model RkeTwoLayerTurbModel
wall_treatment KeTwoLayerAllYplusWallTreatment
inlet_temperature_k 298.15
inlet_mass_flow_lpm 25.0
starccm_version 2402.0001 / 19.02.013

Input feature names (55)

 0. x
 1. y
 2. z
 3. distance_to_inlet
 4. distance_to_outlet
 5. distance_to_wall
 6. axial_inlet_to_outlet
 7. radial_to_inlet_outlet_axis
 8. signed_distance_proxy
 9. wall_proximity
10. source_x_norm
11. source_y_norm
12. source_z_norm
13. source_axis_axial
14. source_axis_lateral_1
15. source_axis_lateral_2
16. source_axis_radial
17. chart_center_x_norm
18. chart_center_y_norm
19. chart_center_z_norm
20. chart_center_axis_axial
21. chart_center_axis_lateral_1
22. chart_center_axis_lateral_2
23. chart_local_x
24. chart_local_y
25. chart_local_z
26. chart_local_axis_axial
27. chart_local_axis_lateral_1
28. chart_local_axis_lateral_2
29. chart_radius
30. chart_log_count
31. chart_wall_distance_mean
32. chart_wall_distance_std
33. chart_cov_eig_1
34. chart_cov_eig_2
35. chart_cov_eig_3
36. chart_anisotropy
37. chart_planarity
38. wall_distance_x_minus
39. wall_distance_x_plus
40. wall_distance_y_minus
41. wall_distance_y_plus
42. wall_distance_z_minus
43. wall_distance_z_plus
44. surface_area
45. fluid_volume
46. surface_area_to_volume_ratio
47. equivalent_hydraulic_diameter
48. surface_genus
49. cross_section_area_min
50. cross_section_area_mean
51. cross_section_area_std
52. cross_section_area_min_ratio
53. number_of_strong_constrictions
54. high_curvature_surface_fraction

Loading

import torch
ckpt = torch.load("starccm_pinn_model_step_00390000.pt", map_location="cpu", weights_only=False)
model_state = ckpt["model"]          # field-network weights
feature_names = ckpt["feature_names"]  # 55 inputs
output_order = ckpt["output_order"]    # 7 outputs
# input standardization: ckpt["feature_mean"], ckpt["feature_scale"]
# label  standardization: ckpt["label_mean"],   ckpt["label_scale"]

Card generated from hosseinbv/bedrock-checkpoints checkpoint metadata.

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