Neural Acceleration (MLP Surrogate): - Add run_nn_optimization.py with hybrid FEA/NN workflow - MLP architecture: 4-layer (64->128->128->64) with BatchNorm/Dropout - Three workflow modes: - --all: Sequential export->train->optimize->validate - --hybrid-loop: Iterative Train->NN->Validate->Retrain cycle - --turbo: Aggressive single-best validation (RECOMMENDED) - Turbo mode: 5000 NN trials + 50 FEA validations in ~12 minutes - Separate nn_study.db to avoid overloading dashboard Performance Results (bracket_pareto_3obj study): - NN prediction errors: mass 1-5%, stress 1-4%, stiffness 5-15% - Found minimum mass designs at boundary (angle~30deg, thick~30mm) - 100x speedup vs pure FEA exploration Protocol Operating System: - Add .claude/skills/ with Bootstrap, Cheatsheet, Context Loader - Add docs/protocols/ with operations (OP_01-06) and system (SYS_10-14) - Update SYS_14_NEURAL_ACCELERATION.md with MLP Turbo Mode docs NX Automation: - Add optimization_engine/hooks/ for NX CAD/CAE automation - Add study_wizard.py for guided study creation - Fix FEM mesh update: load idealized part before UpdateFemodel() New Study: - bracket_pareto_3obj: 3-objective Pareto (mass, stress, stiffness) - 167 FEA trials + 5000 NN trials completed - Demonstrates full hybrid workflow 🤖 Generated with [Claude Code](https://claude.com/claude-code) Co-Authored-By: Claude Opus 4.5 <noreply@anthropic.com>
8.4 KiB
Neural Acceleration Module
Last Updated: December 5, 2025 Version: 1.0 Type: Optional Module
This module provides guidance for AtomizerField neural network surrogate acceleration, enabling 1000x faster optimization by replacing expensive FEA evaluations with instant neural predictions.
When to Load
- User needs >50 optimization trials
- User mentions "neural", "surrogate", "NN", "machine learning"
- User wants faster optimization
- Exporting training data for neural networks
Overview
Key Innovation: Train once on FEA data, then explore 50,000+ designs in the time it takes to run 50 FEA trials.
| Metric | Traditional FEA | Neural Network | Improvement |
|---|---|---|---|
| Time per evaluation | 10-30 minutes | 4.5 milliseconds | 2,000-500,000x |
| Trials per hour | 2-6 | 800,000+ | 1000x |
| Design exploration | ~50 designs | ~50,000 designs | 1000x |
Training Data Export (PR.9)
Enable training data export in your optimization config:
{
"training_data_export": {
"enabled": true,
"export_dir": "atomizer_field_training_data/my_study"
}
}
Using TrainingDataExporter
from optimization_engine.training_data_exporter import TrainingDataExporter
training_exporter = TrainingDataExporter(
export_dir=export_dir,
study_name=study_name,
design_variable_names=['param1', 'param2'],
objective_names=['stiffness', 'mass'],
constraint_names=['mass_limit'],
metadata={'atomizer_version': '2.0', 'optimization_algorithm': 'NSGA-II'}
)
# In objective function:
training_exporter.export_trial(
trial_number=trial.number,
design_variables=design_vars,
results={'objectives': {...}, 'constraints': {...}},
simulation_files={'dat_file': dat_path, 'op2_file': op2_path}
)
# After optimization:
training_exporter.finalize()
Training Data Structure
atomizer_field_training_data/{study_name}/
├── trial_0001/
│ ├── input/model.bdf # Nastran input (mesh + params)
│ ├── output/model.op2 # Binary results
│ └── metadata.json # Design params + objectives
├── trial_0002/
│ └── ...
└── study_summary.json # Study-level metadata
Recommended: 100-500 FEA samples for good generalization.
Neural Configuration
Full Configuration Example
{
"study_name": "bracket_neural_optimization",
"surrogate_settings": {
"enabled": true,
"model_type": "parametric_gnn",
"model_path": "models/bracket_surrogate.pt",
"confidence_threshold": 0.85,
"validation_frequency": 10,
"fallback_to_fea": true
},
"training_data_export": {
"enabled": true,
"export_dir": "atomizer_field_training_data/bracket_study",
"export_bdf": true,
"export_op2": true,
"export_fields": ["displacement", "stress"]
},
"neural_optimization": {
"initial_fea_trials": 50,
"neural_trials": 5000,
"retraining_interval": 500,
"uncertainty_threshold": 0.15
}
}
Configuration Parameters
| Parameter | Type | Default | Description |
|---|---|---|---|
enabled |
bool | false | Enable neural surrogate |
model_type |
string | "parametric_gnn" | Model architecture |
model_path |
string | - | Path to trained model |
confidence_threshold |
float | 0.85 | Min confidence for predictions |
validation_frequency |
int | 10 | FEA validation every N trials |
fallback_to_fea |
bool | true | Use FEA when uncertain |
Model Types
Parametric Predictor GNN (Recommended)
Direct optimization objective prediction - fastest option.
Design Parameters (ND) → Design Encoder (MLP) → GNN Backbone → Scalar Heads
Output (objectives):
├── mass (grams)
├── frequency (Hz)
├── max_displacement (mm)
└── max_stress (MPa)
Use When: You only need scalar objectives, not full field predictions.
Field Predictor GNN
Full displacement/stress field prediction.
Input Features (12D per node):
├── Node coordinates (x, y, z)
├── Material properties (E, nu, rho)
├── Boundary conditions (fixed/free per DOF)
└── Load information (force magnitude, direction)
Output (per node):
├── Displacement (6 DOF: Tx, Ty, Tz, Rx, Ry, Rz)
└── Von Mises stress (1 value)
Use When: You need field visualization or complex derived quantities.
Ensemble Models
Multiple models for uncertainty quantification.
# Run N models
predictions = [model_i(x) for model_i in ensemble]
# Statistics
mean_prediction = np.mean(predictions)
uncertainty = np.std(predictions)
# Decision
if uncertainty > threshold:
result = run_fea(x) # Fall back to FEA
else:
result = mean_prediction
Hybrid FEA/Neural Workflow
Phase 1: FEA Exploration (50-100 trials)
- Run standard FEA optimization
- Export training data automatically
- Build landscape understanding
Phase 2: Neural Training
- Parse collected data
- Train parametric predictor
- Validate accuracy
Phase 3: Neural Acceleration (1000s of trials)
- Use neural network for rapid exploration
- Periodic FEA validation
- Retrain if distribution shifts
Phase 4: FEA Refinement (10-20 trials)
- Validate top candidates with FEA
- Ensure results are physically accurate
- Generate final Pareto front
Training Pipeline
Step 1: Collect Training Data
Run optimization with export enabled:
python run_optimization.py --train --trials 100
Step 2: Parse to Neural Format
cd atomizer-field
python batch_parser.py ../atomizer_field_training_data/my_study
Step 3: Train Model
Parametric Predictor (recommended):
python train_parametric.py \
--train_dir ../training_data/parsed \
--val_dir ../validation_data/parsed \
--epochs 200 \
--hidden_channels 128 \
--num_layers 4
Field Predictor:
python train.py \
--train_dir ../training_data/parsed \
--epochs 200 \
--model FieldPredictorGNN \
--hidden_channels 128 \
--num_layers 6 \
--physics_loss_weight 0.3
Step 4: Validate
python validate.py --checkpoint runs/my_model/checkpoint_best.pt
Expected output:
Validation Results:
├── Mean Absolute Error: 2.3% (mass), 1.8% (frequency)
├── R² Score: 0.987
├── Inference Time: 4.5ms ± 0.8ms
└── Physics Violations: 0.2%
Step 5: Deploy
Update config to use trained model:
{
"neural_surrogate": {
"enabled": true,
"model_checkpoint": "atomizer-field/runs/my_model/checkpoint_best.pt",
"confidence_threshold": 0.85
}
}
Uncertainty Thresholds
| Uncertainty | Action |
|---|---|
| < 5% | Use neural prediction |
| 5-15% | Use neural, flag for validation |
| > 15% | Fall back to FEA |
Accuracy Expectations
| Problem Type | Expected R² | Samples Needed |
|---|---|---|
| Well-behaved | > 0.95 | 50-100 |
| Moderate nonlinear | > 0.90 | 100-200 |
| Highly nonlinear | > 0.85 | 200-500 |
AtomizerField Components
atomizer-field/
├── neural_field_parser.py # BDF/OP2 parsing
├── field_predictor.py # Field GNN
├── parametric_predictor.py # Parametric GNN
├── train.py # Field training
├── train_parametric.py # Parametric training
├── validate.py # Model validation
├── physics_losses.py # Physics-informed loss
└── batch_parser.py # Batch data conversion
optimization_engine/
├── neural_surrogate.py # Atomizer integration
└── runner_with_neural.py # Neural runner
Troubleshooting
| Symptom | Cause | Solution |
|---|---|---|
| High prediction error | Insufficient training data | Collect more FEA samples |
| Out-of-distribution warnings | Design outside training range | Retrain with expanded range |
| Slow inference | Large mesh | Use parametric predictor instead |
| Physics violations | Low physics loss weight | Increase physics_loss_weight |
Cross-References
- System Protocol: SYS_14_NEURAL_ACCELERATION
- Operations: OP_05_EXPORT_TRAINING_DATA
- Core Skill: study-creation-core