DOGS Ichimoku Cloud 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 28, 03:00 | Jan 28, 04:00 | Long | $0.00003840 | $0.00003790 | -1.3% |
| Jan 24, 13:00 | Jan 24, 16:00 | Long | $0.00004060 | $0.00003990 | -1.72% |
| Jan 21, 09:00 | Jan 21, 11:00 | Long | $0.00004090 | $0.00004030 | -1.47% |
| Jan 10, 17:00 | Jan 10, 21:00 | Long | $0.00004580 | $0.00004550 | -0.66% |
| Jan 6, 08:00 | Jan 7, 01:00 | Long | $0.00004840 | $0.00004990 | +3.1% |
| Jan 4, 01:00 | Jan 5, 06:00 | Long | $0.00004330 | $0.00004700 | +8.55% |
| Jan 1, 04:00 | Jan 3, 13:00 | Long | $0.00003900 | $0.00004260 | +9.23% |
| Dec 27, 20:00 | Dec 28, 07:00 | Long | $0.00004220 | $0.00004210 | -0.24% |
| Dec 27, 16:00 | Dec 27, 17:00 | Long | $0.00004190 | $0.00004190 | 0% |
| Dec 27, 02:00 | Dec 27, 04:00 | Long | $0.00004210 | $0.00004230 | +0.48% |
Equity Curve
AI Deep AnalysisPowered by algorithmic insights
Low precision (24%) on 1h indicates signal noise. Higher timeframes may improve accuracy.
Low profit factor (0.82) indicates potential parameter optimization is needed for DOGS.
With 25 signals generated, this is a high-activity setup. Expect multiple opportunities per week.
This Ichimoku Cloud configuration excels in trending DOGS markets. Avoid during extended consolidation.
Consider adaptive parameters that adjust to DOGS's current volatility regime.
Volatility-adjusted sizing: reduce position size when DOGS ATR exceeds 150% of average.
Performance Metrics
See Live Signal
Real-time technical analysis
View the current Ichimoku Cloud signal for DOGS with live market data, AI analysis, and trading recommendations.
About The Ichimoku Cloud Strategy
Backtest Methodology
Key Takeaways
- Ichimoku Cloud rules are fully automatable.
- No discretionary decisions in entry/exit logic.
- Bot execution eliminates emotional trading on DOGS.
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