LUNC Parabolic SAR Strategy (1h) - Backtest Results
Price Action & Trades
Recent Trade History (Live Proof)
| Entry Date | Exit Date | Type | Entry Price | Exit Price | Profit/Loss Ratio |
|---|---|---|---|---|---|
| Jan 27, 16:00 | Jan 27, 18:00 | Long | $0.00003777 | $0.00003745 | -0.85% |
| Jan 26, 00:00 | Jan 26, 21:00 | Long | $0.00003635 | $0.00003791 | +4.29% |
| Jan 24, 14:00 | Jan 25, 00:00 | Long | $0.00003864 | $0.00003817 | -1.22% |
| Jan 23, 16:00 | Jan 24, 00:00 | Long | $0.00003819 | $0.00003789 | -0.79% |
| Jan 21, 20:00 | Jan 22, 15:00 | Long | $0.00003856 | $0.00003777 | -2.05% |
| Jan 20, 22:00 | Jan 21, 09:00 | Long | $0.00003763 | $0.00003807 | +1.17% |
| Jan 19, 15:00 | Jan 20, 05:00 | Long | $0.00003928 | $0.00003895 | -0.84% |
| Jan 18, 18:00 | Jan 18, 23:00 | Long | $0.00004131 | $0.00004059 | -1.74% |
| Jan 16, 19:00 | Jan 17, 22:00 | Long | $0.00004223 | $0.00004257 | +0.81% |
| Jan 16, 08:00 | Jan 16, 11:00 | Long | $0.00004175 | $0.00004137 | -0.91% |
Equity Curve
AI Deep AnalysisPowered by algorithmic insights
The 29.21% accuracy warns of extended losing streaks. Psychological preparation is essential for this LUNC setup.
At 0.98x, consider wider stop-losses to improve average win size on LUNC.
The 89 trade count provides excellent statistical significance for performance evaluation.
Low volatility periods may reduce signal frequency but improve individual trade quality for LUNC.
Funding rates and open interest can validate Parabolic SAR signals for LUNC derivatives traders.
Consider adaptive parameters that adjust to LUNC's current volatility regime.
Performance Metrics
See Live Signal
Real-time technical analysis
View the current Parabolic SAR signal for LUNC with live market data, AI analysis, and trading recommendations.
About The Parabolic SAR Strategy
Backtest Methodology
Key Takeaways
- Asian session: lower volatility for LUNC.
- US/EU overlap: best liquidity on 1h.
- Weekend signals on LUNC may have higher slippage.
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