Live Backtest Results
This backtest analyzes the performance of the 9/21 SMA crossover strategy on BTC/USDT over the Daily timeframe using historical market data. The results provide insight into how the strategy would have performed under real market conditions, including profitability, risk exposure, and consistency
.png)
ROI
-17.6%
Win Rate
20.0%
Max DD
33.3%
Sharpe
N/A
Profit Factor
N/A
Total Trades
10
Backtest insights
The Moving Average crossover strategy generated a total return of -17.6%, indicating negative performance over the test period. Despite a maximum drawdown of 33.3%, the strategy was unable to recover losses, highlighting periods of significant downside volatility. With a win rate of 20.0% across 10 trades, only a small portion of trades were profitable, suggesting difficulty in capturing sustained trends under the tested conditions. Since the Sharpe ratio and profit factor are unavailable, risk-adjusted performance and profitability efficiency cannot be fully assessed. However, the combination of negative returns, a relatively low win rate, and sizable drawdowns suggests the strategy underperformed during this period and may require further refinement or testing across different market environments.
Performance may vary depending on market conditions. During trending periods, the strategy may behave differently compared to ranging markets, impacting both returns and drawdowns.
How the Moving Average Strategy Works
What It Is
The Moving Average crossover strategy uses two simple moving averages, a fast 9-period SMA and a slow 21-period SMA, to identify trend direction and generate trade signals on BTC/USDT. When the fast SMA crosses above the slow SMA, it signals rising momentum and triggers a buy entry. When the fast SMA crosses back below the slow SMA, it signals weakening momentum and triggers an exit. Applied to the Daily timeframe, each crossover reflects a meaningful shift in directional momentum at that time scale.
How Signals Are Generated
In this strategy, signals are generated when the 9-period SMA crosses the 21-period SMA on BTC/USDT. A buy signal fires when the 9-period SMA crosses above the 21-period SMA, indicating that short-term momentum is accelerating relative to the medium-term trend. An exit signal fires when the 9-period SMA crosses back below the 21-period SMA, signalling that the momentum advantage has reversed. On the Daily timeframe, crossovers occur with moderate frequency, enough to capture recurring trend opportunities without overtrading. With 10 trades over 1 year, each signal reflects a meaningful medium-term momentum shift that balances signal quality with capital deployment frequency.
When It Works Best
This strategy works best in trending market environments on the Daily timeframe, where BTC/USDT makes clear directional moves lasting multiple sessions. Swing-trading conditions with identifiable momentum shifts, particularly after strong news catalysts or technical breakouts, give the crossover signals the directional clarity needed to generate positive expectancy.
When It Performs Poorly
The strategy struggles during sideways consolidation and volatile, news-driven sessions on the Daily timeframe. When BTC/USDT lacks clear momentum, the 9 and 21-period SMAs hover close together and cross frequently, each false cross adds a losing trade. Sudden macro shocks that reverse established trends can also produce large individual losses that offset gains from multiple profitable signals.
Strengths
Balances signal frequency with trend-following quality at the swing-trading level
SMAs at this timeframe align with levels monitored by institutional swing traders
Systematic crossover rules provide objective, emotion-free entry and exit signals
Limitations
As lagging indicators, crossovers often fire late, after a meaningful portion of the move has occurred
Choppy medium-term markets generate frequent false signals that steadily drain capital
Profit Factor: N/A
Why Use CoinQuant Instead of Manual Trading or Other Platforms
Choosing the right way to test and execute trading strategies is critical. Below is a comparison between CoinQuant, manual trading, and other platforms to highlight key differences in speed, accuracy, and usability.
CoinQuant is designed specifically for traders who want to validate strategies quickly and reliably without coding. Unlike manual trading or traditional platforms, it allows you to test multiple scenarios, analyze performance instantly, and iterate faster using real data.
Frequently asked questions
How does the Moving Average strategy perform on BTC/USDT in the Daily timeframe?
Max Drawdown: 33.3%
Is the Moving Average crossover strategy reliable for BTC/USDT on the Daily timeframe?
Win Rate: 20.0%
Why is backtesting important for trading strategies
Backtesting allows traders to evaluate how a strategy would have performed using historical data. It helps identify strengths, weaknesses, and risk levels before applying the strategy in real markets, reducing the likelihood of unexpected losses.
How can I test the Moving Average strategy on CoinQuant?
You can use CoinQuant to build and backtest the Moving Average crossover strategy without any coding. Simply type the prompt shown below into the CoinQuant chat box and the platform will parse your instruction, generate the strategy logic, and run the full backtest automatically.
What are the best settings for the Moving Average strategy on the Daily timeframe?
Win Rate: 20.0%