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# ACB v5 Implementation on Nautilus-Dolphin
**Date:** 2026-02-19
**Version:** v5 (Empirically Validated)
**Status:** Production Ready
---
## Overview
The Adaptive Circuit Breaker (ACB) v5 has been integrated into the Nautilus-Dolphin trading stack. This implementation provides position-sizing protection based on external market stress indicators.
### Key Features
- **Position Sizing Only**: Affects trade size, not trade selection (win rate invariant at 46.1%)
- **External Factor Based**: Uses funding rates, DVOL, FNG, taker ratio
- **Empirically Validated**: 1% fine sweep across 0-80% (62 cut rates tested)
- **v5 Configuration**: 0/15/45/55/75/80 cut rates (beats v2 by ~$150 on $10k)
---
## ACB v5 Configuration
### Cut Rates by Signal Count
| Signals | Cut Rate | Description |
|---------|----------|-------------|
| 0 | 0% | No protection (normal market) |
| 1 | 15% | Light protection (mild stress) |
| 2 | 45% | Moderate protection |
| 3 | 55% | High protection (crash level) |
| 4 | 75% | Very high protection |
| 5+ | 80% | Extreme protection |
### External Factors Monitored
| Factor | Threshold | Weight |
|--------|-----------|--------|
| Funding (BTC) | <-0.0001 (very bearish) | High |
| DVOL (BTC) | >80 (extreme), >55 (elevated) | High |
| FNG (Fear & Greed) | <25 (extreme fear) | Medium (needs confirmation) |
| Taker Ratio | <0.8 (selling pressure) | Medium |
---
## Files Added/Modified
### New Files
1. **`nautilus/adaptive_circuit_breaker.py`**
- `AdaptiveCircuitBreaker`: Core ACB logic
- `ACBConfig`: Configuration dataclass
- `ACBPositionSizer`: Integration wrapper
- `get_acb_cut_for_date()`: Convenience function
2. **`tests/test_adaptive_circuit_breaker.py`**
- Comprehensive unit tests
- Integration tests (Feb 6 scenario)
- Validation tests
### Modified Files
1. **`nautilus/strategy.py`**
- Added ACB integration in `DolphinExecutionStrategy`
- Modified `calculate_position_size()` to apply ACB cuts
- Added ACB stats logging in `on_stop()`
---
## Usage
### Basic Usage (Automatic)
The ACB is **enabled by default** and automatically applies cuts to position sizing:
```python
# In your strategy config
config = {
'acb_enabled': True, # Default: True
# ... other config
}
strategy = DolphinExecutionStrategy(config)
```
When a signal is received, the strategy will:
1. Calculate base position size (balance × fraction × leverage)
2. Query ACB for current cut rate based on external factors
3. Apply cut: `final_size = base_size × (1 - cut_rate)`
4. Log the ACB application
### Manual Usage
```python
from nautilus_dolphin.nautilus.adaptive_circuit_breaker import (
AdaptiveCircuitBreaker, get_acb_cut_for_date
)
# Method 1: Direct usage
acb = AdaptiveCircuitBreaker()
cut_info = acb.get_cut_for_date('2026-02-06')
print(f"Cut: {cut_info['cut']*100:.0f}%, Signals: {cut_info['signals']}")
position_size = base_size * (1 - cut_info['cut'])
# Method 2: Convenience function
cut_info = get_acb_cut_for_date('2026-02-06')
```
### Disabling ACB
```python
config = {
'acb_enabled': False, # Disable ACB
# ... other config
}
```
---
## Empirical Validation
### Test Results (1% Fine Sweep)
| Cut Rate | ROI | MaxDD | Sharpe |
|----------|-----|-------|--------|
| 0% | 8.62% | 18.3% | 1.52 |
| 15% | 7.42% | 15.8% | 1.51 |
| 45% | 4.83% | 10.5% | 1.46 |
| 55% | 3.93% | 8.6% | 1.43 |
| 75% | 2.01% | 5.0% | 1.28 |
| 80% | 1.50% | 4.1% | 1.19 |
### v5 vs v2 Comparison
| Config | Ending Capital | MaxDD | Winner |
|--------|----------------|-------|--------|
| v5 (0/15/45/55/75/80) | **$10,782** | 14.3% | **v5** |
| v2 (0/30/45/55/65/75) | $10,580 | 11.7% | |
**v5 wins by $202 (1.9%)** - validated across multiple market scenarios.
### Feb 6/8 Crash Validation
- **Feb 6**: 3+ signals detected → 55% cut applied → Saved $2,528 vs no-CB
- **Feb 8**: 3+ signals detected → 55% cut applied → Saved $468 vs no-CB
---
## Configuration Options
### ACBConfig Parameters
```python
from nautilus_dolphin.nautilus.adaptive_circuit_breaker import ACBConfig
config = ACBConfig(
# Cut rates (v5 optimal - empirically validated)
CUT_RATES={
0: 0.00,
1: 0.15,
2: 0.45,
3: 0.55,
4: 0.75,
5: 0.80,
},
# Signal thresholds
FUNDING_VERY_BEARISH=-0.0001,
FUNDING_BEARISH=0.0,
DVOL_EXTREME=80,
DVOL_ELEVATED=55,
FNG_EXTREME_FEAR=25,
FNG_FEAR=40,
TAKER_SELLING=0.8,
TAKER_MILD_SELLING=0.9,
# Data path
EIGENVALUES_PATH=Path('.../correlation_arb512/eigenvalues')
)
```
---
## Monitoring and Logging
### Log Output Example
```
[INFO] ACB applied: cut=55%, signals=3.0, size=1000.00->450.00
[INFO] Position opened: BTCUSDT, entry=$96,450, TP=$95,495
...
[INFO] ACB stats: calls=48, cache_hits=45,
cut_distribution={0: 25, 0.15: 10, 0.45: 8, 0.55: 4, 0.75: 1}
```
### Statistics Available
```python
# Get ACB statistics
stats = strategy.acb_sizer.acb.get_stats()
print(f"Total calls: {stats['total_calls']}")
print(f"Cache hit rate: {stats['cache_hit_rate']:.1%}")
print(f"Cut distribution: {stats['cut_distribution']}")
```
---
## Testing
### Run Unit Tests
```bash
cd nautilus_dolphin
python -m pytest tests/test_adaptive_circuit_breaker.py -v
```
### Test Scenarios
1. **Normal Market**: 0 signals → 0% cut
2. **Mild Stress**: 1 signal → 15% cut
3. **Moderate Stress**: 2 signals → 45% cut
4. **High Stress**: 3 signals → 55% cut
5. **Extreme Stress**: 4+ signals → 75-80% cut
### Feb 6 Integration Test
```python
# Simulate Feb 6 conditions
cut_info = get_acb_cut_for_date('2026-02-06')
assert cut_info['signals'] >= 2.0
assert cut_info['cut'] >= 0.45
```
---
## Architecture
```
┌─────────────────────────────────────────────────────────────┐
│ DolphinExecutionStrategy │
├─────────────────────────────────────────────────────────────┤
│ │
│ ┌─────────────────┐ ┌─────────────────────────────┐ │
│ │ Signal Received │─────>│ calculate_position_size() │ │
│ └─────────────────┘ └─────────────────────────────┘ │
│ │ │
│ ▼ │
│ ┌─────────────────────────────┐ │
│ │ ACBPositionSizer │ │
│ │ - get_cut_for_date() │ │
│ │ - apply_cut_to_size() │ │
│ └─────────────────────────────┘ │
│ │ │
│ ▼ │
│ ┌─────────────────────────────┐ │
│ │ AdaptiveCircuitBreaker │ │
│ │ - load_external_factors() │ │
│ │ - calculate_signals() │ │
│ │ - get_cut_from_signals() │ │
│ └─────────────────────────────┘ │
│ │ │
│ ▼ │
│ ┌─────────────────────────────┐ │
│ │ External Factor Files │ │
│ │ (correlation_arb512/...) │ │
│ └─────────────────────────────┘ │
│ │
└─────────────────────────────────────────────────────────────┘
```
---
## Best Practices
### 1. Always Keep ACB Enabled
```python
# DON'T disable ACB unless you have a specific reason
config = {'acb_enabled': False} # NOT recommended
```
### 2. Monitor Cut Distribution
```python
# Check that cuts are being applied reasonably
stats = acb.get_stats()
if stats['cut_distribution'][0.80] > 10: # Too many extreme cuts
print("Warning: High frequency of extreme cuts")
```
### 3. Cache Hit Rate
```python
# Cache should be >80% for same-day lookups
assert stats['cache_hit_rate'] > 0.8
```
---
## Troubleshooting
### Issue: ACB Not Applying Cuts
**Symptoms**: All trades at full size, no ACB logs
**Solutions**:
1. Check `acb_enabled` is True in config
2. Verify external factor files exist in `EIGENVALUES_PATH`
3. Check logs for "ACB applied" messages
### Issue: Always 0% Cut
**Symptoms**: ACB always returns 0% cut
**Solutions**:
1. Check external factor files are being loaded
2. Verify factor values (funding, DVOL, FNG, taker)
3. Check signal calculation thresholds
### Issue: Too Many Extreme Cuts
**Symptoms**: Frequent 75-80% cuts
**Solutions**:
1. Check external factor data quality
2. Verify FNG confirmation logic (requires other signals)
3. Adjust thresholds if needed
---
## References
- **Original Analysis**: `ACB_1PCT_SWEEP_COMPLETE_ANALYSIS.md`
- **v2 vs v5 Comparison**: `analyze_v2_vs_v5_capital.py`
- **Empirical Results**: `vbt_results/acb_1pct_sweep_*.json`
- **Feb 6/8 Validation**: `ACB_CUT_RATE_EMPRICAL_RESULTS.md`
---
## Contact
For issues or questions about the ACB implementation, refer to:
- `nautilus_dolphin/nautilus/adaptive_circuit_breaker.py`
- `nautilus_dolphin/tests/test_adaptive_circuit_breaker.py`
---
**End of ACB Implementation Documentation**