This commit is contained in:
zhangkun9038@dingtalk.com 2025-05-01 12:36:06 +08:00
parent cdce4eba5b
commit 02b6d4aa35
12 changed files with 1 additions and 1892 deletions

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<<<<<<< HEAD
=======
freqtrade backtesting --strategy FreqaiExampleStrategy --strategy-path freqtrade/templates --config config_examples/config_freqai.example.json --timerange 20230101-20230401
>>>>>>> Snippet

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<<<<<<< HEAD
=======
dataframe['target'] = np.where(short_ma > long_ma, 2,
np.where(short_ma < long_ma, 0, 1))
>>>>>>> Snippet

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diff --git "a/4. **\346\270\205\347\220\206\347\274\223\345\255\230**\357\274\232" "b/4. **\346\270\205\347\220\206\347\274\223\345\255\230**\357\274\232"
new file mode 100644
index 0000000..3bb7671
--- /dev/null
+++ "b/4. **\346\270\205\347\220\206\347\274\223\345\255\230**\357\274\232"
@@ -0,0 +1,5 @@
+
+<<<<<<< HEAD
+=======
+ rm -rf /freqtrade/user_data/models/test62/
+>>>>>>> Snippet
diff --git "a/5. **\351\207\215\346\226\260\350\256\255\347\273\203**\357\274\232" "b/5. **\351\207\215\346\226\260\350\256\255\347\273\203**\357\274\232"
new file mode 100644
index 0000000..8a18d3d
--- /dev/null
+++ "b/5. **\351\207\215\346\226\260\350\256\255\347\273\203**\357\274\232"
@@ -0,0 +1,5 @@
+
+<<<<<<< HEAD
+=======
+ freqtrade trade --config config_examples/config_freqai.okx.json --strategy FreqaiExampleStrategy
+>>>>>>> Snippet
diff --git a/config_examples/config_freqai.okx.json b/config_examples/config_freqai.okx.json
index 1816983..4535010 100644
--- a/config_examples/config_freqai.okx.json
+++ b/config_examples/config_freqai.okx.json
@@ -67,45 +67,31 @@
"freqaimodel": "CatboostClassifier",
"purge_old_models": 2,
"train_period_days": 15,
- "identifier": "test62",
- "train_period_days": 30,
- "backtest_period_days": 10,
+ "train_period_days": 180,
+ "backtest_period_days": 60,
"live_retrain_hours": 0,
"feature_selection": {
"method": "recursive_elimination"
},
"feature_parameters": {
- "include_timeframes": [
- "3m",
- "15m",
- "1h"
- ],
- "include_corr_pairlist": [
- "BTC/USDT",
- "SOL/USDT"
- ],
- "label_period_candles": 20,
- "include_shifted_candles": 2,
- "DI_threshold": 0.9,
+ "include_timeframes": ["15m"],
+ "include_corr_pairlist": ["BTC/USDT"],
+ "label_period_candles": 10,
+ "include_shifted_candles": 1,
+ "DI_threshold": 0.7,
"weight_factor": 0.9,
"principal_component_analysis": false,
"use_SVM_to_remove_outliers": false,
- "indicator_periods_candles": [
- 10,
- 20,
- 50
- ],
- "plot_feature_importances": 0
+ "indicator_periods_candles": [14],
},
"data_split_parameters": {
"test_size": 0.2
},
- "model_training_parameters": {
- "n_estimators": 100,
- "learning_rate": 0.05,
- "max_depth": 5,
- "num_leaves": 31
- }
+ "model_training_parameters": {
+ "n_estimators": 100,
+ "learning_rate": 0.05,
+ "max_depth": 5
+ }
},
"api_server": {
"enabled": true,
diff --git a/docker-compose.yml b/docker-compose.yml
index defe81e..aeb31e6 100644
--- a/docker-compose.yml
+++ b/docker-compose.yml
@@ -64,7 +64,7 @@ services:
command: >
backtesting
--logfile /freqtrade/user_data/logs/freqtrade.log
- --freqaimodel LightGBMRegressor
+ --freqaimodel XGBoostRegressor
--config /freqtrade/config_examples/config_freqai.okx.json
--config /freqtrade/templates/FreqaiExampleStrategy.json
--strategy-path /freqtrade/templates
diff --git a/freqtrade/templates/FreqaiExampleStrategy.py b/freqtrade/templates/FreqaiExampleStrategy.py
index 688e644..e27e17b 100644
--- a/freqtrade/templates/FreqaiExampleStrategy.py
+++ b/freqtrade/templates/FreqaiExampleStrategy.py
@@ -30,12 +30,12 @@ class FreqaiExampleStrategy(IStrategy):
# FreqAI 配置
freqai_info = {
- "model": "XGBoostRegressor", # 改用XGBoost
+ "model": "CatboostClassifier", # 与config保持一致
"feature_parameters": {
- "include_timeframes": ["5m", "15m", "1h"],
- "include_corr_pairlist": [],
- "label_period_candles": 12,
- "include_shifted_candles": 3,
+ "include_timeframes": ["3m", "15m", "1h"], # 与config一致
+ "include_corr_pairlist": ["BTC/USDT", "SOL/USDT"], # 添加相关交易对
+ "label_period_candles": 20, # 与config一致
+ "include_shifted_candles": 2, # 与config一致
},
"data_split_parameters": {
"test_size": 0.2,
@@ -72,54 +72,26 @@ class FreqaiExampleStrategy(IStrategy):
}
def feature_engineering_expand_all(self, dataframe: DataFrame, period: int, metadata: dict, **kwargs) -> DataFrame:
- # 添加更多技术指标
+ # 保留关键的技术指标
dataframe["%-rsi"] = ta.RSI(dataframe, timeperiod=14)
- dataframe["%-mfi"] = ta.MFI(dataframe, timeperiod=14)
- dataframe["%-sma"] = ta.SMA(dataframe, timeperiod=20)
- dataframe["%-ema"] = ta.EMA(dataframe, timeperiod=20)
- dataframe["%-adx"] = ta.ADX(dataframe, timeperiod=14)
- dataframe["%-atr"] = ta.ATR(dataframe, timeperiod=14)
- dataframe["%-obv"] = ta.OBV(dataframe)
- dataframe["%-cci"] = ta.CCI(dataframe, timeperiod=20)
- dataframe["%-stoch"] = ta.STOCH(dataframe)['slowk']
- dataframe["%-macd"] = ta.MACD(dataframe)['macd']
- dataframe["%-macdsignal"] = ta.MACD(dataframe)['macdsignal']
- dataframe["%-macdhist"] = ta.MACD(dataframe)['macdhist']
- dataframe["%-willr"] = ta.WILLR(dataframe, timeperiod=14)
- dataframe["%-ultosc"] = ta.ULTOSC(dataframe)
- dataframe["%-trix"] = ta.TRIX(dataframe, timeperiod=14)
- dataframe["%-ad"] = ta.ADOSC(dataframe)
- dataframe["%-mom"] = ta.MOM(dataframe, timeperiod=10)
- dataframe["%-roc"] = ta.ROC(dataframe, timeperiod=10)
-
- # 添加布林带相关特征
+ macd = ta.MACD(dataframe, fastperiod=12, slowperiod=26, signalperiod=9)
+ dataframe["%-macd"] = macd["macd"]
+ dataframe["%-macdsignal"] = macd["macdsignal"]
+
+ # 保留布林带相关特征
bollinger = qtpylib.bollinger_bands(qtpylib.typical_price(dataframe), window=20, stds=2)
dataframe["bb_lowerband"] = bollinger["lower"]
dataframe["bb_middleband"] = bollinger["mid"]
dataframe["bb_upperband"] = bollinger["upper"]
dataframe["bb_width"] = (dataframe["bb_upperband"] - dataframe["bb_lowerband"]) / dataframe["bb_middleband"]
dataframe["bb_pct"] = (dataframe["close"] - dataframe["bb_lowerband"]) / (dataframe["bb_upperband"] - dataframe["bb_lowerband"])
-
- # 添加成交量相关特征
+
+ # 保留成交量相关特征
dataframe["volume_ma"] = dataframe["volume"].rolling(window=20).mean()
dataframe["volume_roc"] = dataframe["volume"].pct_change(periods=10)
- dataframe["volume_obv"] = ta.OBV(dataframe)
-
- # 添加价格相关特征
- dataframe["close_ma"] = dataframe["close"].rolling(window=20).mean()
+
+ # 保留价格变化率
dataframe["close_roc"] = dataframe["close"].pct_change(periods=10)
- dataframe["close_log_ret"] = np.log(dataframe["close"]).diff()
- dataframe["close_zscore"] = (dataframe["close"] - dataframe["close"].rolling(window=20).mean()) / dataframe["close"].rolling(window=20).std()
-
- # 添加时间相关特征
- dataframe["hour"] = dataframe["date"].dt.hour
- dataframe["day_of_week"] = dataframe["date"].dt.dayofweek
- dataframe["is_weekend"] = dataframe["day_of_week"].isin([5, 6]).astype(int)
-
- # 添加波动率相关特征
- dataframe["volatility"] = dataframe["close"].pct_change().rolling(window=20).std()
- dataframe["volatility_ma"] = dataframe["volatility"].rolling(window=20).mean()
- dataframe["volatility_roc"] = dataframe["volatility"].pct_change(periods=10)
# 改进数据清理
for col in dataframe.columns:
@@ -170,16 +142,23 @@ class FreqaiExampleStrategy(IStrategy):
try:
label_period = self.freqai_info["feature_parameters"]["label_period_candles"]
+
+ # 生成更复杂的目标变量 up_or_down
+ dataframe["up_or_down"] = np.where(
+ dataframe["close"].shift(-label_period) > dataframe["close"], 1, 0
+ )
+ # 确保目标变量是二维数组
+ if dataframe["up_or_down"].ndim == 1:
+ dataframe["up_or_down"] = dataframe["up_or_down"].values.reshape(-1, 1)
+
# 生成 %-volatility 特征
dataframe["%-volatility"] = dataframe["close"].pct_change().rolling(20).std()
- # 单一回归目标
- # 移除对未来的数据依赖
# 确保 &-buy_rsi 列的值计算正确
dataframe["&-buy_rsi"] = ta.RSI(dataframe, timeperiod=14)
# 数据清理
- for col in ["&-buy_rsi"]:
+ for col in ["&-buy_rsi", "up_or_down", "%-volatility"]:
# 使用直接操作避免链式赋值
dataframe[col] = dataframe[col].replace([np.inf, -np.inf], np.nan)
dataframe[col] = dataframe[col].ffill() # 替代 fillna(method='ffill')
@@ -187,19 +166,13 @@ class FreqaiExampleStrategy(IStrategy):
if dataframe[col].isna().any():
logger.warning(f"目标列 {col} 仍包含 NaN填充为默认值")
- # 数据清理
- for col in ["&-buy_rsi", "%-volatility"]:
- # 使用直接操作避免链式赋值
- dataframe[col] = dataframe[col].replace([np.inf, -np.inf], 0)
- dataframe[col] = dataframe[col].ffill() # 替代 fillna(method='ffill')
- dataframe[col] = dataframe[col].fillna(0)
- if dataframe[col].isna().any():
- logger.warning(f"目标列 {col} 仍包含 NaN检查数据生成逻辑")
except Exception as e:
logger.error(f"创建 FreqAI 目标失败:{str(e)}")
raise
- logger.info(f"目标列预览:\n{dataframe[['&-buy_rsi']].head().to_string()}")
+ # Log the shape of the target variable for debugging
+ logger.info(f"目标列形状:{dataframe['up_or_down'].shape}")
+ logger.info(f"目标列预览:\n{dataframe[['up_or_down', '&-buy_rsi']].head().to_string()}")
return dataframe
def populate_indicators(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
@@ -237,13 +210,13 @@ class FreqaiExampleStrategy(IStrategy):
dataframe[col] = dataframe[col].fillna(-0.1 if col == "&-stoploss" else 0)
# 简化动态参数生成逻辑
-# 简化 buy_rsi 和 sell_rsi 的生成逻辑
+ # 放松 buy_rsi 和 sell_rsi 的生成逻辑
# 计算 buy_rsi_pred 并清理 NaN 值
- dataframe["buy_rsi_pred"] = dataframe["&-buy_rsi"].rolling(window=10).mean().clip(20, 40)
+ dataframe["buy_rsi_pred"] = dataframe["&-buy_rsi"].rolling(window=10).mean().clip(30, 50)
dataframe["buy_rsi_pred"] = dataframe["buy_rsi_pred"].fillna(dataframe["buy_rsi_pred"].mean())
# 计算 sell_rsi_pred 并清理 NaN 值
- dataframe["sell_rsi_pred"] = dataframe["buy_rsi_pred"] + 20
+ dataframe["sell_rsi_pred"] = dataframe["buy_rsi_pred"] + 40
dataframe["sell_rsi_pred"] = dataframe["sell_rsi_pred"].fillna(dataframe["sell_rsi_pred"].mean())
# 计算 stoploss_pred 并清理 NaN 值
@@ -308,8 +281,9 @@ class FreqaiExampleStrategy(IStrategy):
# 改进买入信号条件
enter_long_conditions = [
(df["rsi"] < df["buy_rsi_pred"]), # RSI 低于买入阈值
- (df["volume"] > df["volume"].rolling(window=10).mean()), # 成交量高于近期均值
- (df["close"] > df["bb_middleband"]) # 价格高于布林带中轨
+ (df["volume"] > df["volume"].rolling(window=10).mean() * 1.2), # 成交量高于近期均值20%
+ (df["close"] > df["bb_middleband"]), # 价格高于布林带中轨
+ (df["do_predict"] == 1) # 确保模型预测为买入
]
if enter_long_conditions:
df.loc[

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rm -rf /freqtrade/user_data/models/test62/
>>>>>>> Snippet

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freqtrade trade --config config_examples/config_freqai.okx.json --strategy FreqaiExampleStrategy
>>>>>>> Snippet

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diff --git a/freqtrade/templates/FreqaiExampleStrategy.py b/freqtrade/templates/FreqaiExampleStrategy.py
index 00ff1d2..40a1adc 100644
--- a/freqtrade/templates/FreqaiExampleStrategy.py
+++ b/freqtrade/templates/FreqaiExampleStrategy.py
@@ -9,44 +9,47 @@ from freqtrade.strategy import IStrategy, IntParameter, DecimalParameter
logger = logging.getLogger(__name__)
class FreqaiExampleStrategy(IStrategy):
- # 移除硬编码的 minimal_roi 和 stoploss改为动态适配
- minimal_roi = {} # 将在 populate_indicators 中动态生成
- stoploss = 0.0 # 将在 populate_indicators 中动态设置
+ # 动态适配 minimal_roi 和 stoploss
+ minimal_roi = {} # populate_indicators 中动态设定
+ stoploss = -0.15 # 默认固定止损
trailing_stop = True
+ trailing_stop_positive = 0.05
+ trailing_stop_positive_offset = 0.1
process_only_new_candles = True
use_exit_signal = True
startup_candle_count: int = 40
can_short = False
- # 参数定义FreqAI 动态适配 buy_rsi 和 sell_rsi禁用 Hyperopt 优化
+ # 可训练参数(用于 Hyperopt
buy_rsi = IntParameter(low=10, high=50, default=27, space="buy", optimize=False, load=True)
sell_rsi = IntParameter(low=50, high=90, default=59, space="sell", optimize=False, load=True)
- # 为 Hyperopt 优化添加 ROI 和 stoploss 参数
roi_0 = DecimalParameter(low=0.01, high=0.2, default=0.038, space="roi", optimize=True, load=True)
roi_15 = DecimalParameter(low=0.005, high=0.1, default=0.027, space="roi", optimize=True, load=True)
roi_30 = DecimalParameter(low=0.001, high=0.05, default=0.009, space="roi", optimize=True, load=True)
- stoploss_param = DecimalParameter(low=-0.35, high=-0.1, default=-0.182, space="stoploss", optimize=True, load=True)
+ stoploss_param = DecimalParameter(
+ low=-0.35, high=-0.1, default=-0.182, space="stoploss", optimize=True, load=True
+ )
# FreqAI 配置
freqai_info = {
- "model": "CatboostClassifier", # 与config保持一致
+ "model": "CatboostClassifier",
"feature_parameters": {
- "include_timeframes": ["3m", "15m", "1h"], # 与config一致
- "include_corr_pairlist": ["BTC/USDT", "SOL/USDT"], # 添加相关交易对
- "label_period_candles": 20, # 与config一致
- "include_shifted_candles": 2, # 与config一致
+ "include_timeframes": ["3m", "15m", "1h"],
+ "include_corr_pairlist": ["BTC/USDT", "SOL/USDT"],
+ "label_period_candles": 20,
+ "include_shifted_candles": 2,
},
"data_split_parameters": {
"test_size": 0.2,
- "shuffle": True, # 启用shuffle
+ "shuffle": True,
},
"model_training_parameters": {
- "n_estimators": 100, # 减少树的数量
- "learning_rate": 0.1, # 提高学习率
- "max_depth": 6, # 限制树深度
- "subsample": 0.8, # 添加子采样
- "colsample_bytree": 0.8, # 添加特征采样
+ "n_estimators": 100,
+ "learning_rate": 0.1,
+ "max_depth": 6,
+ "subsample": 0.8,
+ "colsample_bytree": 0.8,
"objective": "reg:squarederror",
"eval_metric": "rmse",
"early_stopping_rounds": 20,
@@ -54,8 +57,8 @@ class FreqaiExampleStrategy(IStrategy):
},
"data_kitchen": {
"feature_parameters": {
- "DI_threshold": 1.5, # 降低异常值过滤阈值
- "use_DBSCAN_to_remove_outliers": False # 禁用DBSCAN
+ "DI_threshold": 1.5,
+ "use_DBSCAN_to_remove_outliers": False
}
}
}
@@ -72,265 +75,113 @@ class FreqaiExampleStrategy(IStrategy):
}
def feature_engineering_expand_all(self, dataframe: DataFrame, period: int, metadata: dict, **kwargs) -> DataFrame:
- # 保留关键的技术指标
+ # RSI 计算
dataframe["rsi"] = ta.RSI(dataframe, timeperiod=14)
- # 确保 MACD 列被正确计算并保留
+ # MACD 计算并容错
try:
macd = ta.MACD(dataframe, fastperiod=12, slowperiod=26, signalperiod=9)
dataframe["macd"] = macd["macd"]
dataframe["macdsignal"] = macd["macdsignal"]
except Exception as e:
- logger.error(f"计算 MACD 列时出错:{str(e)}")
+ logger.error(f"MACD 计算失败: {e}")
dataframe["macd"] = np.nan
dataframe["macdsignal"] = np.nan
- # 检查 MACD 列是否存在
- if "macd" not in dataframe.columns or "macdsignal" not in dataframe.columns:
- logger.error("MACD 或 MACD 信号列缺失,无法生成买入信号")
- raise ValueError("DataFrame 缺少必要的 MACD 列")
-
- # 确保 MACD 列存在
- if "macd" not in dataframe.columns or "macdsignal" not in dataframe.columns:
- logger.error("MACD 或 MACD 信号列缺失,无法生成买入信号")
- raise ValueError("DataFrame 缺少必要的 MACD 列")
-
- # 保留布林带相关特征
+ # 布林带
bollinger = qtpylib.bollinger_bands(qtpylib.typical_price(dataframe), window=20, stds=2)
dataframe["bb_lowerband"] = bollinger["lower"]
dataframe["bb_middleband"] = bollinger["mid"]
dataframe["bb_upperband"] = bollinger["upper"]
- # 保留成交量相关特征
+ # 成交量均线
dataframe["volume_ma"] = dataframe["volume"].rolling(window=20).mean()
- # 数据清理
+ # 清理无穷大值
for col in dataframe.columns:
if dataframe[col].dtype in ["float64", "int64"]:
dataframe[col] = dataframe[col].replace([np.inf, -np.inf], np.nan)
- dataframe[col] = dataframe[col].ffill().fillna(0)
-
- logger.info(f"特征工程完成,特征数量:{len(dataframe.columns)}")
+ dataframe[col] = dataframe[col].fillna(0)
+
return dataframe
def feature_engineering_expand_basic(self, dataframe: DataFrame, metadata: dict, **kwargs) -> DataFrame:
dataframe["%-pct-change"] = dataframe["close"].pct_change()
dataframe["%-raw_volume"] = dataframe["volume"]
dataframe["%-raw_price"] = dataframe["close"]
-# 数据清理逻辑
+
+ # 数据清理
for col in dataframe.columns:
if dataframe[col].dtype in ["float64", "int64"]:
dataframe[col] = dataframe[col].replace([np.inf, -np.inf], 0)
- dataframe[col] = dataframe[col].ffill()
- dataframe[col] = dataframe[col].fillna(0)
-
- # 检查是否仍有无效值
- if dataframe[col].isna().any() or np.isinf(dataframe[col]).any():
- logger.warning(f"列 {col} 仍包含无效值,已填充为默认值")
- dataframe[col] = dataframe[col].fillna(0)
- return dataframe
-
- def feature_engineering_standard(self, dataframe: DataFrame, metadata: dict, **kwargs) -> DataFrame:
- dataframe["%-day_of_week"] = dataframe["date"].dt.dayofweek
- dataframe["%-hour_of_day"] = dataframe["date"].dt.hour
- dataframe.replace([np.inf, -np.inf], 0, inplace=True)
- dataframe.ffill(inplace=True)
- dataframe.fillna(0, inplace=True)
- return dataframe
-
- def set_freqai_targets(self, dataframe: DataFrame, metadata: dict, **kwargs) -> DataFrame:
- logger.info(f"设置 FreqAI 目标,交易对:{metadata['pair']}")
- if "close" not in dataframe.columns:
- logger.error("数据框缺少必要的 'close' 列")
- raise ValueError("数据框缺少必要的 'close' 列")
-
- try:
- label_period = self.freqai_info["feature_parameters"]["label_period_candles"]
-
- # 定义目标变量为未来价格变化百分比(连续值)
- dataframe["up_or_down"] = (
- dataframe["close"].shift(-label_period) - dataframe["close"]
- ) / dataframe["close"]
-
- # 数据清理:处理 NaN 和 Inf 值
- dataframe["up_or_down"] = dataframe["up_or_down"].replace([np.inf, -np.inf], np.nan)
- dataframe["up_or_down"] = dataframe["up_or_down"].ffill().fillna(0)
-
- # 确保目标变量是二维数组
- if dataframe["up_or_down"].ndim == 1:
- dataframe["up_or_down"] = dataframe["up_or_down"].values.reshape(-1, 1)
-
- # 检查并处理 NaN 或无限值
- dataframe["up_or_down"] = dataframe["up_or_down"].replace([np.inf, -np.inf], np.nan)
- dataframe["up_or_down"] = dataframe["up_or_down"].ffill().fillna(0)
-
- # 生成 %-volatility 特征
- dataframe["%-volatility"] = dataframe["close"].pct_change().rolling(20).std()
-
- # 确保 &-buy_rsi 列的值计算正确
- dataframe["&-buy_rsi"] = ta.RSI(dataframe, timeperiod=14)
-
- # 数据清理
- for col in ["&-buy_rsi", "up_or_down", "%-volatility"]:
- # 使用直接操作避免链式赋值
- dataframe[col] = dataframe[col].replace([np.inf, -np.inf], np.nan)
- dataframe[col] = dataframe[col].ffill() # 替代 fillna(method='ffill')
- dataframe[col] = dataframe[col].fillna(dataframe[col].mean()) # 使用均值填充 NaN 值
- if dataframe[col].isna().any():
- logger.warning(f"目标列 {col} 仍包含 NaN填充为默认值")
-
- except Exception as e:
- logger.error(f"创建 FreqAI 目标失败:{str(e)}")
- raise
+ dataframe[col] = dataframe[col].ffill().fillna(0)
- # Log the shape of the target variable for debugging
- logger.info(f"目标列形状:{dataframe['up_or_down'].shape}")
- logger.info(f"目标列预览:\n{dataframe[['up_or_down', '&-buy_rsi']].head().to_string()}")
return dataframe
- def populate_indicators(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
- logger.info(f"处理交易对:{metadata['pair']}")
- dataframe = self.freqai.start(dataframe, metadata, self)
-
- # 计算传统指标
- dataframe["rsi"] = ta.RSI(dataframe, timeperiod=14)
- bollinger = qtpylib.bollinger_bands(qtpylib.typical_price(dataframe), window=20, stds=2)
- dataframe["bb_lowerband"] = bollinger["lower"]
- dataframe["bb_middleband"] = bollinger["mid"]
- dataframe["bb_upperband"] = bollinger["upper"]
- dataframe["tema"] = ta.TEMA(dataframe, timeperiod=9)
-
- # 生成 up_or_down 信号(非 FreqAI 目标)
- label_period = self.freqai_info["feature_parameters"]["label_period_candles"]
- # 使用未来价格变化方向生成 up_or_down 信号
- label_period = self.freqai_info["feature_parameters"]["label_period_candles"]
- dataframe["up_or_down"] = np.where(
- dataframe["close"].shift(-label_period) > dataframe["close"], 1, 0
- )
-
- # 动态设置参数
- if "&-buy_rsi" in dataframe.columns:
- # 派生其他目标
- dataframe["&-sell_rsi"] = dataframe["&-buy_rsi"] + 30
- dataframe["%-volatility"] = dataframe["close"].pct_change().rolling(20).std()
- # Ensure proper calculation and handle potential NaN values
- dataframe["&-stoploss"] = (-0.1 - (dataframe["%-volatility"] * 10).clip(0, 0.25)).fillna(-0.1)
- dataframe["&-roi_0"] = ((dataframe["close"] / dataframe["close"].shift(label_period) - 1).clip(0, 0.2)).fillna(0)
+ def set_freqai_targets(self, df: DataFrame, metadata: dict) -> DataFrame:
+ """定义标签"""
+ df["&-up_or_down"] = np.where(df["close"].shift(-20) > df["close"], 1, 0)
+ return df
- # Additional check to ensure no NaN values remain
- for col in ["&-stoploss", "&-roi_0"]:
- if dataframe[col].isna().any():
- logger.warning(f"列 {col} 仍包含 NaN填充为默认值")
- dataframe[col] = dataframe[col].fillna(-0.1 if col == "&-stoploss" else 0)
-
- # 简化动态参数生成逻辑
- # 放松 buy_rsi 和 sell_rsi 的生成逻辑
- # 计算 buy_rsi_pred 并清理 NaN 值
- dataframe["buy_rsi_pred"] = dataframe["rsi"].rolling(window=10).mean().clip(30, 50)
- dataframe["buy_rsi_pred"] = dataframe["buy_rsi_pred"].fillna(dataframe["buy_rsi_pred"].median())
+ def populate_indicators(self, df: DataFrame, metadata: dict) -> DataFrame:
+ # 特征工程调用
+ df = self.feature_engineering_expand_all(df, period=14, metadata=metadata)
+ df = self.feature_engineering_expand_basic(df, metadata=metadata)
+ df = self.set_freqai_targets(df, metadata)
+
+ # 动态参数预测
+ df["buy_rsi_pred"] = df["rsi"].rolling(window=10).median().clip(20, 45)
+ df["sell_rsi_pred"] = df["buy_rsi_pred"] + 20
+ df["stoploss_pred"] = -0.1 - (df["%-pct-change"].abs().rolling(20).std() * 10).clip(0.05, 0.25)
+ df["roi_0_pred"] = self.roi_0.value * 1.2
+ # 添加 do_predict 列示例每5个周期中使用3个进行预测
+ df['do_predict'] = 0
+ df.loc[df.index % 5 <= 2, 'do_predict'] = 1 # 每5根K线中前3根设为1
+
+ df.fillna(0, inplace=True)
+
+ # 更新策略参数
+ self.buy_rsi.value = float(df["buy_rsi_pred"].iloc[-1])
+ self.sell_rsi.value = float(df["sell_rsi_pred"].iloc[-1])
+ self.stoploss = float(df["stoploss_pred"].iloc[-1])
+
+ self.minimal_roi = {
+ 0: float(self.roi_0.value),
+ 15: float(self.roi_15.value),
+ 30: float(self.roi_30.value),
+ 60: 0
+ }
- # 计算 sell_rsi_pred 并清理 NaN 值
- dataframe["sell_rsi_pred"] = dataframe["buy_rsi_pred"] + 20
- dataframe["sell_rsi_pred"] = dataframe["sell_rsi_pred"].fillna(dataframe["sell_rsi_pred"].median())
+ return df
- # 计算 stoploss_pred 并清理 NaN 值
- dataframe["stoploss_pred"] = -0.1 - (dataframe["%-volatility"] * 10).clip(0, 0.25)
- dataframe["stoploss_pred"] = dataframe["stoploss_pred"].fillna(dataframe["stoploss_pred"].mean())
+ def populate_entry_trend(self, df: DataFrame, metadata: dict) -> DataFrame:
+ conditions = [
+ (df["rsi"] < df["buy_rsi_pred"]),
+ (df["volume"] > df["volume_ma"] * 1.2),
+ (df["close"] > df["bb_middleband"]),
+ (df["macd"] > df["macdsignal"]),
+ (df["do_predict"] == 1),
+ ]
- # 计算 roi_0_pred 并清理 NaN 值
- dataframe["roi_0_pred"] = dataframe["&-roi_0"].clip(0.01, 0.2)
- dataframe["roi_0_pred"] = dataframe["roi_0_pred"].fillna(dataframe["roi_0_pred"].mean())
-
- # 检查预测值
- for col in ["buy_rsi_pred", "sell_rsi_pred", "stoploss_pred", "roi_0_pred", "&-sell_rsi", "&-stoploss", "&-roi_0"]:
- if dataframe[col].isna().any():
- logger.warning(f"列 {col} 包含 NaN填充为默认值")
- dataframe[col] = dataframe[col].fillna(dataframe[col].mean())
-
- # 更保守的止损和止盈设置
- dataframe["trailing_stop_positive"] = (dataframe["roi_0_pred"] * 0.3).clip(0.01, 0.2)
- dataframe["trailing_stop_positive_offset"] = (dataframe["roi_0_pred"] * 0.5).clip(0.01, 0.3)
-
- # 设置策略级参数
- self.buy_rsi.value = float(dataframe["buy_rsi_pred"].iloc[-1])
- self.sell_rsi.value = float(dataframe["sell_rsi_pred"].iloc[-1])
-# 更保守的止损设置
- self.stoploss = -0.15 # 固定止损 15%
- self.minimal_roi = {
- 0: float(self.roi_0.value),
- 15: float(self.roi_15.value),
- 30: float(self.roi_30.value),
- 60: 0
- }
-# 更保守的追踪止损设置
- self.trailing_stop_positive = 0.05 # 追踪止损触发点
- self.trailing_stop_positive_offset = 0.1 # 追踪止损偏移量
-
- logger.info(f"动态参数buy_rsi={self.buy_rsi.value}, sell_rsi={self.sell_rsi.value}, "
- f"stoploss={self.stoploss}, trailing_stop_positive={self.trailing_stop_positive}")
-
- dataframe.replace([np.inf, -np.inf], 0, inplace=True)
- dataframe.ffill(inplace=True)
- dataframe.fillna(0, inplace=True)
-
- logger.info(f"up_or_down 值统计:\n{dataframe['up_or_down'].value_counts().to_string()}")
- logger.info(f"do_predict 值统计:\n{dataframe['do_predict'].value_counts().to_string()}")
-
- return dataframe
+ df.loc[reduce(lambda x, y: x & y, conditions), ['enter_long', 'enter_tag']] = (1, 'long_entry')
+ return df
def populate_exit_trend(self, df: DataFrame, metadata: dict) -> DataFrame:
-# 改进卖出信号条件
- exit_long_conditions = [
- (df["rsi"] > df["sell_rsi_pred"]), # RSI 高于卖出阈值
- (df["volume"] > df["volume"].rolling(window=10).mean()), # 成交量高于近期均值
- (df["close"] < df["bb_middleband"]) # 价格低于布林带中轨
+ conditions = [
+ (df["rsi"] > df["sell_rsi_pred"]),
+ (df["close"] < df["bb_middleband"]),
+ (df["do_predict"] == 0),
]
- if exit_long_conditions:
- df.loc[
- reduce(lambda x, y: x & y, exit_long_conditions),
- "exit_long"
- ] = 1
+ df.loc[reduce(lambda x, y: x & y, conditions), 'exit_long'] = 1
return df
- def populate_entry_trend(self, df: DataFrame, metadata: dict) -> DataFrame:
- # 改进买入信号条件
- # 检查 MACD 列是否存在
- if "macd" not in df.columns or "macdsignal" not in df.columns:
- logger.error("MACD 或 MACD 信号列缺失,无法生成买入信号。尝试重新计算 MACD 列。")
-
- try:
- macd = ta.MACD(df, fastperiod=12, slowperiod=26, signalperiod=9)
- df["macd"] = macd["macd"]
- df["macdsignal"] = macd["macdsignal"]
- logger.info("MACD 列已成功重新计算。")
- except Exception as e:
- logger.error(f"重新计算 MACD 列时出错:{str(e)}")
- raise ValueError("DataFrame 缺少必要的 MACD 列且无法重新计算。")
- enter_long_conditions = [
- (df["rsi"] < df["buy_rsi_pred"]), # RSI 低于买入阈值
- (df["volume"] > df["volume"].rolling(window=10).mean() * 1.2), # 成交量高于近期均值20%
- (df["close"] > df["bb_middleband"]) # 价格高于布林带中轨
- ]
-
- # 如果 MACD 列存在,则添加 MACD 金叉条件
- if "macd" in df.columns and "macdsignal" in df.columns:
- enter_long_conditions.append((df["macd"] > df["macdsignal"]))
-
- # 确保模型预测为买入
- enter_long_conditions.append((df["do_predict"] == 1))
- if enter_long_conditions:
- df.loc[
- reduce(lambda x, y: x & y, enter_long_conditions),
- ["enter_long", "enter_tag"]
- ] = (1, "long")
- return df
def confirm_trade_entry(
self, pair: str, order_type: str, amount: float, rate: float,
time_in_force: str, current_time, entry_tag, side: str, **kwargs
) -> bool:
df, _ = self.dp.get_analyzed_dataframe(pair, self.timeframe)
- last_candle = df.iloc[-1].squeeze()
+ last_candle = df.iloc[-1]
if side == "long":
- if rate > (last_candle["close"] * (1 + 0.0025)):
+ if rate > (last_candle["close"] * 1.0025): # 价格超过最新价 0.25% 则拒绝下单
return False
return True

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@ -1,336 +0,0 @@
import logging
import numpy as np
from functools import reduce
import talib.abstract as ta
from pandas import DataFrame
from technical import qtpylib
from freqtrade.strategy import IStrategy, IntParameter, DecimalParameter
logger = logging.getLogger(__name__)
class FreqaiExampleStrategy(IStrategy):
# 移除硬编码的 minimal_roi 和 stoploss改为动态适配
minimal_roi = {} # 将在 populate_indicators 中动态生成
stoploss = 0.0 # 将在 populate_indicators 中动态设置
trailing_stop = True
process_only_new_candles = True
use_exit_signal = True
startup_candle_count: int = 40
can_short = False
# 参数定义FreqAI 动态适配 buy_rsi 和 sell_rsi禁用 Hyperopt 优化
buy_rsi = IntParameter(low=10, high=50, default=27, space="buy", optimize=False, load=True)
sell_rsi = IntParameter(low=50, high=90, default=59, space="sell", optimize=False, load=True)
# 为 Hyperopt 优化添加 ROI 和 stoploss 参数
roi_0 = DecimalParameter(low=0.01, high=0.2, default=0.038, space="roi", optimize=True, load=True)
roi_15 = DecimalParameter(low=0.005, high=0.1, default=0.027, space="roi", optimize=True, load=True)
roi_30 = DecimalParameter(low=0.001, high=0.05, default=0.009, space="roi", optimize=True, load=True)
stoploss_param = DecimalParameter(low=-0.35, high=-0.1, default=-0.182, space="stoploss", optimize=True, load=True)
# FreqAI 配置
freqai_info = {
"model": "CatboostClassifier", # 与config保持一致
"feature_parameters": {
"include_timeframes": ["3m", "15m", "1h"], # 与config一致
"include_corr_pairlist": ["BTC/USDT", "SOL/USDT"], # 添加相关交易对
"label_period_candles": 20, # 与config一致
"include_shifted_candles": 2, # 与config一致
},
"data_split_parameters": {
"test_size": 0.2,
"shuffle": True, # 启用shuffle
},
"model_training_parameters": {
"n_estimators": 100, # 减少树的数量
"learning_rate": 0.1, # 提高学习率
"max_depth": 6, # 限制树深度
"subsample": 0.8, # 添加子采样
"colsample_bytree": 0.8, # 添加特征采样
"objective": "reg:squarederror",
"eval_metric": "rmse",
"early_stopping_rounds": 20,
"verbose": 0,
},
"data_kitchen": {
"feature_parameters": {
"DI_threshold": 1.5, # 降低异常值过滤阈值
"use_DBSCAN_to_remove_outliers": False # 禁用DBSCAN
}
}
}
plot_config = {
"main_plot": {},
"subplots": {
"&-buy_rsi": {"&-buy_rsi": {"color": "green"}},
"&-sell_rsi": {"&-sell_rsi": {"color": "red"}},
"&-stoploss": {"&-stoploss": {"color": "purple"}},
"&-roi_0": {"&-roi_0": {"color": "orange"}},
"do_predict": {"do_predict": {"color": "brown"}},
},
}
def feature_engineering_expand_all(self, dataframe: DataFrame, period: int, metadata: dict, **kwargs) -> DataFrame:
# 保留关键的技术指标
dataframe["rsi"] = ta.RSI(dataframe, timeperiod=14)
# 确保 MACD 列被正确计算并保留
try:
macd = ta.MACD(dataframe, fastperiod=12, slowperiod=26, signalperiod=9)
dataframe["macd"] = macd["macd"]
dataframe["macdsignal"] = macd["macdsignal"]
except Exception as e:
logger.error(f"计算 MACD 列时出错:{str(e)}")
dataframe["macd"] = np.nan
dataframe["macdsignal"] = np.nan
# 检查 MACD 列是否存在
if "macd" not in dataframe.columns or "macdsignal" not in dataframe.columns:
logger.error("MACD 或 MACD 信号列缺失,无法生成买入信号")
raise ValueError("DataFrame 缺少必要的 MACD 列")
# 确保 MACD 列存在
if "macd" not in dataframe.columns or "macdsignal" not in dataframe.columns:
logger.error("MACD 或 MACD 信号列缺失,无法生成买入信号")
raise ValueError("DataFrame 缺少必要的 MACD 列")
# 保留布林带相关特征
bollinger = qtpylib.bollinger_bands(qtpylib.typical_price(dataframe), window=20, stds=2)
dataframe["bb_lowerband"] = bollinger["lower"]
dataframe["bb_middleband"] = bollinger["mid"]
dataframe["bb_upperband"] = bollinger["upper"]
# 保留成交量相关特征
dataframe["volume_ma"] = dataframe["volume"].rolling(window=20).mean()
# 数据清理
for col in dataframe.columns:
if dataframe[col].dtype in ["float64", "int64"]:
dataframe[col] = dataframe[col].replace([np.inf, -np.inf], np.nan)
dataframe[col] = dataframe[col].ffill().fillna(0)
logger.info(f"特征工程完成,特征数量:{len(dataframe.columns)}")
return dataframe
def feature_engineering_expand_basic(self, dataframe: DataFrame, metadata: dict, **kwargs) -> DataFrame:
dataframe["%-pct-change"] = dataframe["close"].pct_change()
dataframe["%-raw_volume"] = dataframe["volume"]
dataframe["%-raw_price"] = dataframe["close"]
# 数据清理逻辑
for col in dataframe.columns:
if dataframe[col].dtype in ["float64", "int64"]:
dataframe[col] = dataframe[col].replace([np.inf, -np.inf], 0)
dataframe[col] = dataframe[col].ffill()
dataframe[col] = dataframe[col].fillna(0)
# 检查是否仍有无效值
if dataframe[col].isna().any() or np.isinf(dataframe[col]).any():
logger.warning(f"{col} 仍包含无效值,已填充为默认值")
dataframe[col] = dataframe[col].fillna(0)
return dataframe
def feature_engineering_standard(self, dataframe: DataFrame, metadata: dict, **kwargs) -> DataFrame:
dataframe["%-day_of_week"] = dataframe["date"].dt.dayofweek
dataframe["%-hour_of_day"] = dataframe["date"].dt.hour
dataframe.replace([np.inf, -np.inf], 0, inplace=True)
dataframe.ffill(inplace=True)
dataframe.fillna(0, inplace=True)
return dataframe
def set_freqai_targets(self, dataframe: DataFrame, metadata: dict, **kwargs) -> DataFrame:
logger.info(f"设置 FreqAI 目标,交易对:{metadata['pair']}")
if "close" not in dataframe.columns:
logger.error("数据框缺少必要的 'close'")
raise ValueError("数据框缺少必要的 'close'")
try:
label_period = self.freqai_info["feature_parameters"]["label_period_candles"]
# 定义目标变量为未来价格变化百分比(连续值)
dataframe["up_or_down"] = (
dataframe["close"].shift(-label_period) - dataframe["close"]
) / dataframe["close"]
# 数据清理:处理 NaN 和 Inf 值
dataframe["up_or_down"] = dataframe["up_or_down"].replace([np.inf, -np.inf], np.nan)
dataframe["up_or_down"] = dataframe["up_or_down"].ffill().fillna(0)
# 确保目标变量是二维数组
if dataframe["up_or_down"].ndim == 1:
dataframe["up_or_down"] = dataframe["up_or_down"].values.reshape(-1, 1)
# 检查并处理 NaN 或无限值
dataframe["up_or_down"] = dataframe["up_or_down"].replace([np.inf, -np.inf], np.nan)
dataframe["up_or_down"] = dataframe["up_or_down"].ffill().fillna(0)
# 生成 %-volatility 特征
dataframe["%-volatility"] = dataframe["close"].pct_change().rolling(20).std()
# 确保 &-buy_rsi 列的值计算正确
dataframe["&-buy_rsi"] = ta.RSI(dataframe, timeperiod=14)
# 数据清理
for col in ["&-buy_rsi", "up_or_down", "%-volatility"]:
# 使用直接操作避免链式赋值
dataframe[col] = dataframe[col].replace([np.inf, -np.inf], np.nan)
dataframe[col] = dataframe[col].ffill() # 替代 fillna(method='ffill')
dataframe[col] = dataframe[col].fillna(dataframe[col].mean()) # 使用均值填充 NaN 值
if dataframe[col].isna().any():
logger.warning(f"目标列 {col} 仍包含 NaN填充为默认值")
except Exception as e:
logger.error(f"创建 FreqAI 目标失败:{str(e)}")
raise
# Log the shape of the target variable for debugging
logger.info(f"目标列形状:{dataframe['up_or_down'].shape}")
logger.info(f"目标列预览:\n{dataframe[['up_or_down', '&-buy_rsi']].head().to_string()}")
return dataframe
def populate_indicators(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
logger.info(f"处理交易对:{metadata['pair']}")
dataframe = self.freqai.start(dataframe, metadata, self)
# 计算传统指标
dataframe["rsi"] = ta.RSI(dataframe, timeperiod=14)
bollinger = qtpylib.bollinger_bands(qtpylib.typical_price(dataframe), window=20, stds=2)
dataframe["bb_lowerband"] = bollinger["lower"]
dataframe["bb_middleband"] = bollinger["mid"]
dataframe["bb_upperband"] = bollinger["upper"]
dataframe["tema"] = ta.TEMA(dataframe, timeperiod=9)
# 生成 up_or_down 信号(非 FreqAI 目标)
label_period = self.freqai_info["feature_parameters"]["label_period_candles"]
# 使用未来价格变化方向生成 up_or_down 信号
label_period = self.freqai_info["feature_parameters"]["label_period_candles"]
dataframe["up_or_down"] = np.where(
dataframe["close"].shift(-label_period) > dataframe["close"], 1, 0
)
# 动态设置参数
if "&-buy_rsi" in dataframe.columns:
# 派生其他目标
dataframe["&-sell_rsi"] = dataframe["&-buy_rsi"] + 30
dataframe["%-volatility"] = dataframe["close"].pct_change().rolling(20).std()
# Ensure proper calculation and handle potential NaN values
dataframe["&-stoploss"] = (-0.1 - (dataframe["%-volatility"] * 10).clip(0, 0.25)).fillna(-0.1)
dataframe["&-roi_0"] = ((dataframe["close"] / dataframe["close"].shift(label_period) - 1).clip(0, 0.2)).fillna(0)
# Additional check to ensure no NaN values remain
for col in ["&-stoploss", "&-roi_0"]:
if dataframe[col].isna().any():
logger.warning(f"{col} 仍包含 NaN填充为默认值")
dataframe[col] = dataframe[col].fillna(-0.1 if col == "&-stoploss" else 0)
# 简化动态参数生成逻辑
# 放松 buy_rsi 和 sell_rsi 的生成逻辑
# 计算 buy_rsi_pred 并清理 NaN 值
dataframe["buy_rsi_pred"] = dataframe["rsi"].rolling(window=10).mean().clip(30, 50)
dataframe["buy_rsi_pred"] = dataframe["buy_rsi_pred"].fillna(dataframe["buy_rsi_pred"].median())
# 计算 sell_rsi_pred 并清理 NaN 值
dataframe["sell_rsi_pred"] = dataframe["buy_rsi_pred"] + 20
dataframe["sell_rsi_pred"] = dataframe["sell_rsi_pred"].fillna(dataframe["sell_rsi_pred"].median())
# 计算 stoploss_pred 并清理 NaN 值
dataframe["stoploss_pred"] = -0.1 - (dataframe["%-volatility"] * 10).clip(0, 0.25)
dataframe["stoploss_pred"] = dataframe["stoploss_pred"].fillna(dataframe["stoploss_pred"].mean())
# 计算 roi_0_pred 并清理 NaN 值
dataframe["roi_0_pred"] = dataframe["&-roi_0"].clip(0.01, 0.2)
dataframe["roi_0_pred"] = dataframe["roi_0_pred"].fillna(dataframe["roi_0_pred"].mean())
# 检查预测值
for col in ["buy_rsi_pred", "sell_rsi_pred", "stoploss_pred", "roi_0_pred", "&-sell_rsi", "&-stoploss", "&-roi_0"]:
if dataframe[col].isna().any():
logger.warning(f"{col} 包含 NaN填充为默认值")
dataframe[col] = dataframe[col].fillna(dataframe[col].mean())
# 更保守的止损和止盈设置
dataframe["trailing_stop_positive"] = (dataframe["roi_0_pred"] * 0.3).clip(0.01, 0.2)
dataframe["trailing_stop_positive_offset"] = (dataframe["roi_0_pred"] * 0.5).clip(0.01, 0.3)
# 设置策略级参数
self.buy_rsi.value = float(dataframe["buy_rsi_pred"].iloc[-1])
self.sell_rsi.value = float(dataframe["sell_rsi_pred"].iloc[-1])
# 更保守的止损设置
self.stoploss = -0.15 # 固定止损 15%
self.minimal_roi = {
0: float(self.roi_0.value),
15: float(self.roi_15.value),
30: float(self.roi_30.value),
60: 0
}
# 更保守的追踪止损设置
self.trailing_stop_positive = 0.05 # 追踪止损触发点
self.trailing_stop_positive_offset = 0.1 # 追踪止损偏移量
logger.info(f"动态参数buy_rsi={self.buy_rsi.value}, sell_rsi={self.sell_rsi.value}, "
f"stoploss={self.stoploss}, trailing_stop_positive={self.trailing_stop_positive}")
dataframe.replace([np.inf, -np.inf], 0, inplace=True)
dataframe.ffill(inplace=True)
dataframe.fillna(0, inplace=True)
logger.info(f"up_or_down 值统计:\n{dataframe['up_or_down'].value_counts().to_string()}")
logger.info(f"do_predict 值统计:\n{dataframe['do_predict'].value_counts().to_string()}")
return dataframe
def populate_exit_trend(self, df: DataFrame, metadata: dict) -> DataFrame:
# 改进卖出信号条件
exit_long_conditions = [
(df["rsi"] > df["sell_rsi_pred"]), # RSI 高于卖出阈值
(df["volume"] > df["volume"].rolling(window=10).mean()), # 成交量高于近期均值
(df["close"] < df["bb_middleband"]) # 价格低于布林带中轨
]
if exit_long_conditions:
df.loc[
reduce(lambda x, y: x & y, exit_long_conditions),
"exit_long"
] = 1
return df
def populate_entry_trend(self, df: DataFrame, metadata: dict) -> DataFrame:
# 改进买入信号条件
# 检查 MACD 列是否存在
if "macd" not in df.columns or "macdsignal" not in df.columns:
logger.error("MACD 或 MACD 信号列缺失,无法生成买入信号。尝试重新计算 MACD 列。")
try:
macd = ta.MACD(df, fastperiod=12, slowperiod=26, signalperiod=9)
df["macd"] = macd["macd"]
df["macdsignal"] = macd["macdsignal"]
logger.info("MACD 列已成功重新计算。")
except Exception as e:
logger.error(f"重新计算 MACD 列时出错:{str(e)}")
raise ValueError("DataFrame 缺少必要的 MACD 列且无法重新计算。")
enter_long_conditions = [
(df["rsi"] < df["buy_rsi_pred"]), # RSI 低于买入阈值
(df["volume"] > df["volume"].rolling(window=10).mean() * 1.2), # 成交量高于近期均值20%
(df["close"] > df["bb_middleband"]) # 价格高于布林带中轨
]
# 如果 MACD 列存在,则添加 MACD 金叉条件
if "macd" in df.columns and "macdsignal" in df.columns:
enter_long_conditions.append((df["macd"] > df["macdsignal"]))
# 确保模型预测为买入
enter_long_conditions.append((df["do_predict"] == 1))
if enter_long_conditions:
df.loc[
reduce(lambda x, y: x & y, enter_long_conditions),
["enter_long", "enter_tag"]
] = (1, "long")
return df
def confirm_trade_entry(
self, pair: str, order_type: str, amount: float, rate: float,
time_in_force: str, current_time, entry_tag, side: str, **kwargs
) -> bool:
df, _ = self.dp.get_analyzed_dataframe(pair, self.timeframe)
last_candle = df.iloc[-1].squeeze()
if side == "long":
if rate > (last_candle["close"] * (1 + 0.0025)):
return False
return True

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@ -1,295 +0,0 @@
import logging
import numpy as np
from functools import reduce
import talib.abstract as ta
from pandas import DataFrame
from technical import qtpylib
from freqtrade.strategy import IStrategy, IntParameter, DecimalParameter
logger = logging.getLogger(__name__)
class FreqaiExampleStrategy(IStrategy):
# 移除硬编码的 minimal_roi 和 stoploss改为动态适配
minimal_roi = {} # 将在 populate_indicators 中动态生成
stoploss = 0.0 # 将在 populate_indicators 中动态设置
trailing_stop = True
process_only_new_candles = True
use_exit_signal = True
startup_candle_count: int = 40
can_short = False
# 可训练参数(用于 Hyperopt
buy_rsi = IntParameter(low=10, high=50, default=27, space="buy", optimize=False, load=True)
sell_rsi = IntParameter(low=50, high=90, default=59, space="sell", optimize=False, load=True)
roi_0 = DecimalParameter(low=0.01, high=0.2, default=0.038, space="roi", optimize=True, load=True)
roi_15 = DecimalParameter(low=0.005, high=0.1, default=0.027, space="roi", optimize=True, load=True)
roi_30 = DecimalParameter(low=0.001, high=0.05, default=0.009, space="roi", optimize=True, load=True)
stoploss_param = DecimalParameter(low=-0.35, high=-0.1, default=-0.182, space="stoploss", optimize=True, load=True)
# FreqAI 配置
freqai_info = {
"model": "CatboostClassifier",
"feature_parameters": {
"include_timeframes": ["3m", "15m", "1h"], # 与config一致
"include_corr_pairlist": ["BTC/USDT", "SOL/USDT"], # 添加相关交易对
"label_period_candles": 20, # 与config一致
"include_shifted_candles": 2, # 与config一致
},
"data_split_parameters": {
"test_size": 0.2,
"shuffle": True,
},
"model_training_parameters": {
"n_estimators": 100, # 减少树的数量
"learning_rate": 0.1, # 提高学习率
"max_depth": 6, # 限制树深度
"subsample": 0.8, # 添加子采样
"colsample_bytree": 0.8, # 添加特征采样
"objective": "reg:squarederror",
"eval_metric": "rmse",
"early_stopping_rounds": 20,
"verbose": 0,
},
"data_kitchen": {
"feature_parameters": {
"DI_threshold": 1.5,
"use_DBSCAN_to_remove_outliers": False
}
}
}
plot_config = {
"main_plot": {},
"subplots": {
"&-buy_rsi": {"&-buy_rsi": {"color": "green"}},
"&-sell_rsi": {"&-sell_rsi": {"color": "red"}},
"&-stoploss": {"&-stoploss": {"color": "purple"}},
"&-roi_0": {"&-roi_0": {"color": "orange"}},
"do_predict": {"do_predict": {"color": "brown"}},
},
}
def feature_engineering_expand_all(self, dataframe: DataFrame, period: int, metadata: dict, **kwargs) -> DataFrame:
# RSI 计算
dataframe["rsi"] = ta.RSI(dataframe, timeperiod=14)
# MACD 计算并容错
try:
macd = ta.MACD(dataframe, fastperiod=12, slowperiod=26, signalperiod=9)
dataframe["macd"] = macd["macd"]
dataframe["macdsignal"] = macd["macdsignal"]
except Exception as e:
logger.error(f"MACD 计算失败: {e}")
dataframe["macd"] = np.nan
dataframe["macdsignal"] = np.nan
# 检查 MACD 列是否存在
if "macd" not in dataframe.columns or "macdsignal" not in dataframe.columns:
logger.error("MACD 或 MACD 信号列缺失,无法生成买入信号")
raise ValueError("DataFrame 缺少必要的 MACD 列")
# 确保 MACD 列存在
if "macd" not in dataframe.columns or "macdsignal" not in dataframe.columns:
logger.error("MACD 或 MACD 信号列缺失,无法生成买入信号")
raise ValueError("DataFrame 缺少必要的 MACD 列")
# 保留布林带相关特征
bollinger = qtpylib.bollinger_bands(qtpylib.typical_price(dataframe), window=20, stds=2)
dataframe["bb_lowerband"] = bollinger["lower"]
dataframe["bb_middleband"] = bollinger["mid"]
dataframe["bb_upperband"] = bollinger["upper"]
# 成交量均线
dataframe["volume_ma"] = dataframe["volume"].rolling(window=20).mean()
# 清理无穷大值
for col in dataframe.columns:
if dataframe[col].dtype in ["float64", "int64"]:
dataframe[col] = dataframe[col].replace([np.inf, -np.inf], np.nan)
dataframe[col] = dataframe[col].ffill().fillna(0)
return dataframe
def feature_engineering_expand_basic(self, dataframe: DataFrame, metadata: dict, **kwargs) -> DataFrame:
dataframe["%-pct-change"] = dataframe["close"].pct_change()
dataframe["%-raw_volume"] = dataframe["volume"]
dataframe["%-raw_price"] = dataframe["close"]
# 数据清理逻辑
for col in dataframe.columns:
if dataframe[col].dtype in ["float64", "int64"]:
dataframe[col] = dataframe[col].replace([np.inf, -np.inf], 0)
dataframe[col] = dataframe[col].ffill()
dataframe[col] = dataframe[col].fillna(0)
# 检查是否仍有无效值
if dataframe[col].isna().any() or np.isinf(dataframe[col]).any():
logger.warning(f"{col} 仍包含无效值,已填充为默认值")
dataframe[col] = dataframe[col].fillna(0)
return dataframe
def feature_engineering_standard(self, dataframe: DataFrame, metadata: dict, **kwargs) -> DataFrame:
dataframe["%-day_of_week"] = dataframe["date"].dt.dayofweek
dataframe["%-hour_of_day"] = dataframe["date"].dt.hour
dataframe.replace([np.inf, -np.inf], 0, inplace=True)
dataframe.ffill(inplace=True)
dataframe.fillna(0, inplace=True)
return dataframe
def set_freqai_targets(self, dataframe: DataFrame, metadata: dict, **kwargs) -> DataFrame:
logger.info(f"设置 FreqAI 目标,交易对:{metadata['pair']}")
if "close" not in dataframe.columns:
logger.error("数据框缺少必要的 'close'")
raise ValueError("数据框缺少必要的 'close'")
try:
label_period = self.freqai_info["feature_parameters"]["label_period_candles"]
# 定义目标变量为未来价格变化百分比(连续值)
dataframe["up_or_down"] = (
dataframe["close"].shift(-label_period) - dataframe["close"]
) / dataframe["close"]
# 数据清理:处理 NaN 和 Inf 值
dataframe["up_or_down"] = dataframe["up_or_down"].replace([np.inf, -np.inf], np.nan)
dataframe["up_or_down"] = dataframe["up_or_down"].ffill().fillna(0)
# 确保目标变量是二维数组
if dataframe["up_or_down"].ndim == 1:
dataframe["up_or_down"] = dataframe["up_or_down"].values.reshape(-1, 1)
# 检查并处理 NaN 或无限值
dataframe["up_or_down"] = dataframe["up_or_down"].replace([np.inf, -np.inf], np.nan)
dataframe["up_or_down"] = dataframe["up_or_down"].ffill().fillna(0)
# 生成 %-volatility 特征
dataframe["%-volatility"] = dataframe["close"].pct_change().rolling(20).std()
# 确保 &-buy_rsi 列的值计算正确
dataframe["&-buy_rsi"] = ta.RSI(dataframe, timeperiod=14)
# 数据清理
for col in ["&-buy_rsi", "up_or_down", "%-volatility"]:
# 使用直接操作避免链式赋值
dataframe[col] = dataframe[col].replace([np.inf, -np.inf], np.nan)
dataframe[col] = dataframe[col].ffill() # 替代 fillna(method='ffill')
dataframe[col] = dataframe[col].fillna(dataframe[col].mean()) # 使用均值填充 NaN 值
if dataframe[col].isna().any():
logger.warning(f"目标列 {col} 仍包含 NaN填充为默认值")
except Exception as e:
logger.error(f"创建 FreqAI 目标失败:{str(e)}")
raise
return dataframe
def populate_indicators(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
logger.info(f"处理交易对:{metadata['pair']}")
dataframe = self.freqai.start(dataframe, metadata, self)
# 计算传统指标
dataframe["rsi"] = ta.RSI(dataframe, timeperiod=14)
bollinger = qtpylib.bollinger_bands(qtpylib.typical_price(dataframe), window=20, stds=2)
dataframe["bb_lowerband"] = bollinger["lower"]
dataframe["bb_middleband"] = bollinger["mid"]
dataframe["bb_upperband"] = bollinger["upper"]
dataframe["tema"] = ta.TEMA(dataframe, timeperiod=9)
# 生成 up_or_down 信号(非 FreqAI 目标)
label_period = self.freqai_info["feature_parameters"]["label_period_candles"]
# 使用未来价格变化方向生成 up_or_down 信号
label_period = self.freqai_info["feature_parameters"]["label_period_candles"]
dataframe["up_or_down"] = np.where(
dataframe["close"].shift(-label_period) > dataframe["close"], 1, 0
)
# 动态设置参数
if "&-buy_rsi" in dataframe.columns:
# 派生其他目标
dataframe["&-sell_rsi"] = dataframe["&-buy_rsi"] + 30
dataframe["%-volatility"] = dataframe["close"].pct_change().rolling(20).std()
# Ensure proper calculation and handle potential NaN values
dataframe["&-stoploss"] = (-0.1 - (dataframe["%-volatility"] * 10).clip(0, 0.25)).fillna(-0.1)
dataframe["&-roi_0"] = ((dataframe["close"] / dataframe["close"].shift(label_period) - 1).clip(0, 0.2)).fillna(0)
# Additional check to ensure no NaN values remain
for col in ["&-stoploss", "&-roi_0"]:
if dataframe[col].isna().any():
logger.warning(f"{col} 仍包含 NaN填充为默认值")
dataframe[col] = dataframe[col].fillna(-0.1 if col == "&-stoploss" else 0)
# 简化动态参数生成逻辑
# 放松 buy_rsi 和 sell_rsi 的生成逻辑
# 计算 buy_rsi_pred 并清理 NaN 值
dataframe["buy_rsi_pred"] = dataframe["rsi"].rolling(window=10).mean().clip(30, 50)
dataframe["buy_rsi_pred"] = dataframe["buy_rsi_pred"].fillna(dataframe["buy_rsi_pred"].median())
# 计算 sell_rsi_pred 并清理 NaN 值
dataframe["sell_rsi_pred"] = dataframe["buy_rsi_pred"] + 20
dataframe["sell_rsi_pred"] = dataframe["sell_rsi_pred"].fillna(dataframe["sell_rsi_pred"].median())
# 计算 stoploss_pred 并清理 NaN 值
dataframe["stoploss_pred"] = -0.1 - (dataframe["%-volatility"] * 10).clip(0, 0.25)
dataframe["stoploss_pred"] = dataframe["stoploss_pred"].fillna(dataframe["stoploss_pred"].mean())
# 计算 roi_0_pred 并清理 NaN 值
dataframe["roi_0_pred"] = dataframe["&-roi_0"].clip(0.01, 0.2)
dataframe["roi_0_pred"] = dataframe["roi_0_pred"].fillna(dataframe["roi_0_pred"].mean())
# 检查预测值
for col in ["buy_rsi_pred", "sell_rsi_pred", "stoploss_pred", "roi_0_pred", "&-sell_rsi", "&-stoploss", "&-roi_0"]:
if dataframe[col].isna().any():
logger.warning(f"{col} 包含 NaN填充为默认值")
dataframe[col] = dataframe[col].fillna(dataframe[col].mean())
# 更保守的止损和止盈设置
dataframe["trailing_stop_positive"] = (dataframe["roi_0_pred"] * 0.3).clip(0.01, 0.2)
dataframe["trailing_stop_positive_offset"] = (dataframe["roi_0_pred"] * 0.5).clip(0.01, 0.3)
# 设置策略级参数
self.buy_rsi.value = float(dataframe["buy_rsi_pred"].iloc[-1])
self.sell_rsi.value = float(dataframe["sell_rsi_pred"].iloc[-1])
# 更保守的止损设置
self.stoploss = -0.15 # 固定止损 15%
self.minimal_roi = {
0: float(self.roi_0.value),
15: float(self.roi_15.value),
30: float(self.roi_30.value),
60: 0
}
# 更保守的追踪止损设置
self.trailing_stop_positive = 0.05 # 追踪止损触发点
self.trailing_stop_positive_offset = 0.1 # 追踪止损偏移量
logger.info(f"动态参数buy_rsi={self.buy_rsi.value}, sell_rsi={self.sell_rsi.value}, "
f"stoploss={self.stoploss}, trailing_stop_positive={self.trailing_stop_positive}")
dataframe.replace([np.inf, -np.inf], 0, inplace=True)
dataframe.ffill(inplace=True)
dataframe.fillna(0, inplace=True)
logger.info(f"up_or_down 值统计:\n{dataframe['up_or_down'].value_counts().to_string()}")
logger.info(f"do_predict 值统计:\n{dataframe['do_predict'].value_counts().to_string()}")
return dataframe
def populate_exit_trend(self, df: DataFrame, metadata: dict) -> DataFrame:
# 改进卖出信号条件
exit_long_conditions = [
(df["rsi"] > df["sell_rsi_pred"]), # RSI 高于卖出阈值
(df["volume"] > df["volume"].rolling(window=10).mean()), # 成交量高于近期均值
(df["close"] < df["bb_middleband"]) # 价格低于布林带中轨
df.loc[reduce(lambda x, y: x & y, conditions), 'exit_long'] = 1
return df
def confirm_trade_entry(
self, pair: str, order_type: str, amount: float, rate: float,
time_in_force: str, current_time, entry_tag, side: str, **kwargs
) -> bool:
df, _ = self.dp.get_analyzed_dataframe(pair, self.timeframe)
last_candle = df.iloc[-1]
if side == "long":
if rate > (last_candle["close"] * 1.0025): # 价格超过最新价 0.25% 则拒绝下单
return False
return True

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@ -1,336 +0,0 @@
import logging
import numpy as np
from functools import reduce
import talib.abstract as ta
from pandas import DataFrame
from technical import qtpylib
from freqtrade.strategy import IStrategy, IntParameter, DecimalParameter
logger = logging.getLogger(__name__)
class FreqaiExampleStrategy(IStrategy):
# 移除硬编码的 minimal_roi 和 stoploss改为动态适配
minimal_roi = {} # 将在 populate_indicators 中动态生成
stoploss = 0.0 # 将在 populate_indicators 中动态设置
trailing_stop = True
process_only_new_candles = True
use_exit_signal = True
startup_candle_count: int = 40
can_short = False
# 参数定义FreqAI 动态适配 buy_rsi 和 sell_rsi禁用 Hyperopt 优化
buy_rsi = IntParameter(low=10, high=50, default=27, space="buy", optimize=False, load=True)
sell_rsi = IntParameter(low=50, high=90, default=59, space="sell", optimize=False, load=True)
# 为 Hyperopt 优化添加 ROI 和 stoploss 参数
roi_0 = DecimalParameter(low=0.01, high=0.2, default=0.038, space="roi", optimize=True, load=True)
roi_15 = DecimalParameter(low=0.005, high=0.1, default=0.027, space="roi", optimize=True, load=True)
roi_30 = DecimalParameter(low=0.001, high=0.05, default=0.009, space="roi", optimize=True, load=True)
stoploss_param = DecimalParameter(low=-0.35, high=-0.1, default=-0.182, space="stoploss", optimize=True, load=True)
# FreqAI 配置
freqai_info = {
"model": "CatboostClassifier", # 与config保持一致
"feature_parameters": {
"include_timeframes": ["3m", "15m", "1h"], # 与config一致
"include_corr_pairlist": ["BTC/USDT", "SOL/USDT"], # 添加相关交易对
"label_period_candles": 20, # 与config一致
"include_shifted_candles": 2, # 与config一致
},
"data_split_parameters": {
"test_size": 0.2,
"shuffle": True, # 启用shuffle
},
"model_training_parameters": {
"n_estimators": 100, # 减少树的数量
"learning_rate": 0.1, # 提高学习率
"max_depth": 6, # 限制树深度
"subsample": 0.8, # 添加子采样
"colsample_bytree": 0.8, # 添加特征采样
"objective": "reg:squarederror",
"eval_metric": "rmse",
"early_stopping_rounds": 20,
"verbose": 0,
},
"data_kitchen": {
"feature_parameters": {
"DI_threshold": 1.5, # 降低异常值过滤阈值
"use_DBSCAN_to_remove_outliers": False # 禁用DBSCAN
}
}
}
plot_config = {
"main_plot": {},
"subplots": {
"&-buy_rsi": {"&-buy_rsi": {"color": "green"}},
"&-sell_rsi": {"&-sell_rsi": {"color": "red"}},
"&-stoploss": {"&-stoploss": {"color": "purple"}},
"&-roi_0": {"&-roi_0": {"color": "orange"}},
"do_predict": {"do_predict": {"color": "brown"}},
},
}
def feature_engineering_expand_all(self, dataframe: DataFrame, period: int, metadata: dict, **kwargs) -> DataFrame:
# 保留关键的技术指标
dataframe["rsi"] = ta.RSI(dataframe, timeperiod=14)
# 确保 MACD 列被正确计算并保留
try:
macd = ta.MACD(dataframe, fastperiod=12, slowperiod=26, signalperiod=9)
dataframe["macd"] = macd["macd"]
dataframe["macdsignal"] = macd["macdsignal"]
except Exception as e:
logger.error(f"计算 MACD 列时出错:{str(e)}")
dataframe["macd"] = np.nan
dataframe["macdsignal"] = np.nan
# 检查 MACD 列是否存在
if "macd" not in dataframe.columns or "macdsignal" not in dataframe.columns:
logger.error("MACD 或 MACD 信号列缺失,无法生成买入信号")
raise ValueError("DataFrame 缺少必要的 MACD 列")
# 确保 MACD 列存在
if "macd" not in dataframe.columns or "macdsignal" not in dataframe.columns:
logger.error("MACD 或 MACD 信号列缺失,无法生成买入信号")
raise ValueError("DataFrame 缺少必要的 MACD 列")
# 保留布林带相关特征
bollinger = qtpylib.bollinger_bands(qtpylib.typical_price(dataframe), window=20, stds=2)
dataframe["bb_lowerband"] = bollinger["lower"]
dataframe["bb_middleband"] = bollinger["mid"]
dataframe["bb_upperband"] = bollinger["upper"]
# 保留成交量相关特征
dataframe["volume_ma"] = dataframe["volume"].rolling(window=20).mean()
# 数据清理
for col in dataframe.columns:
if dataframe[col].dtype in ["float64", "int64"]:
dataframe[col] = dataframe[col].replace([np.inf, -np.inf], np.nan)
dataframe[col] = dataframe[col].ffill().fillna(0)
logger.info(f"特征工程完成,特征数量:{len(dataframe.columns)}")
return dataframe
def feature_engineering_expand_basic(self, dataframe: DataFrame, metadata: dict, **kwargs) -> DataFrame:
dataframe["%-pct-change"] = dataframe["close"].pct_change()
dataframe["%-raw_volume"] = dataframe["volume"]
dataframe["%-raw_price"] = dataframe["close"]
# 数据清理逻辑
for col in dataframe.columns:
if dataframe[col].dtype in ["float64", "int64"]:
dataframe[col] = dataframe[col].replace([np.inf, -np.inf], 0)
dataframe[col] = dataframe[col].ffill()
dataframe[col] = dataframe[col].fillna(0)
# 检查是否仍有无效值
if dataframe[col].isna().any() or np.isinf(dataframe[col]).any():
logger.warning(f"{col} 仍包含无效值,已填充为默认值")
dataframe[col] = dataframe[col].fillna(0)
return dataframe
def feature_engineering_standard(self, dataframe: DataFrame, metadata: dict, **kwargs) -> DataFrame:
dataframe["%-day_of_week"] = dataframe["date"].dt.dayofweek
dataframe["%-hour_of_day"] = dataframe["date"].dt.hour
dataframe.replace([np.inf, -np.inf], 0, inplace=True)
dataframe.ffill(inplace=True)
dataframe.fillna(0, inplace=True)
return dataframe
def set_freqai_targets(self, dataframe: DataFrame, metadata: dict, **kwargs) -> DataFrame:
logger.info(f"设置 FreqAI 目标,交易对:{metadata['pair']}")
if "close" not in dataframe.columns:
logger.error("数据框缺少必要的 'close'")
raise ValueError("数据框缺少必要的 'close'")
try:
label_period = self.freqai_info["feature_parameters"]["label_period_candles"]
# 定义目标变量为未来价格变化百分比(连续值)
dataframe["up_or_down"] = (
dataframe["close"].shift(-label_period) - dataframe["close"]
) / dataframe["close"]
# 数据清理:处理 NaN 和 Inf 值
dataframe["up_or_down"] = dataframe["up_or_down"].replace([np.inf, -np.inf], np.nan)
dataframe["up_or_down"] = dataframe["up_or_down"].ffill().fillna(0)
# 确保目标变量是二维数组
if dataframe["up_or_down"].ndim == 1:
dataframe["up_or_down"] = dataframe["up_or_down"].values.reshape(-1, 1)
# 检查并处理 NaN 或无限值
dataframe["up_or_down"] = dataframe["up_or_down"].replace([np.inf, -np.inf], np.nan)
dataframe["up_or_down"] = dataframe["up_or_down"].ffill().fillna(0)
# 生成 %-volatility 特征
dataframe["%-volatility"] = dataframe["close"].pct_change().rolling(20).std()
# 确保 &-buy_rsi 列的值计算正确
dataframe["&-buy_rsi"] = ta.RSI(dataframe, timeperiod=14)
# 数据清理
for col in ["&-buy_rsi", "up_or_down", "%-volatility"]:
# 使用直接操作避免链式赋值
dataframe[col] = dataframe[col].replace([np.inf, -np.inf], np.nan)
dataframe[col] = dataframe[col].ffill() # 替代 fillna(method='ffill')
dataframe[col] = dataframe[col].fillna(dataframe[col].mean()) # 使用均值填充 NaN 值
if dataframe[col].isna().any():
logger.warning(f"目标列 {col} 仍包含 NaN填充为默认值")
except Exception as e:
logger.error(f"创建 FreqAI 目标失败:{str(e)}")
raise
# Log the shape of the target variable for debugging
logger.info(f"目标列形状:{dataframe['up_or_down'].shape}")
logger.info(f"目标列预览:\n{dataframe[['up_or_down', '&-buy_rsi']].head().to_string()}")
return dataframe
def populate_indicators(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
logger.info(f"处理交易对:{metadata['pair']}")
dataframe = self.freqai.start(dataframe, metadata, self)
# 计算传统指标
dataframe["rsi"] = ta.RSI(dataframe, timeperiod=14)
bollinger = qtpylib.bollinger_bands(qtpylib.typical_price(dataframe), window=20, stds=2)
dataframe["bb_lowerband"] = bollinger["lower"]
dataframe["bb_middleband"] = bollinger["mid"]
dataframe["bb_upperband"] = bollinger["upper"]
dataframe["tema"] = ta.TEMA(dataframe, timeperiod=9)
# 生成 up_or_down 信号(非 FreqAI 目标)
label_period = self.freqai_info["feature_parameters"]["label_period_candles"]
# 使用未来价格变化方向生成 up_or_down 信号
label_period = self.freqai_info["feature_parameters"]["label_period_candles"]
dataframe["up_or_down"] = np.where(
dataframe["close"].shift(-label_period) > dataframe["close"], 1, 0
)
# 动态设置参数
if "&-buy_rsi" in dataframe.columns:
# 派生其他目标
dataframe["&-sell_rsi"] = dataframe["&-buy_rsi"] + 30
dataframe["%-volatility"] = dataframe["close"].pct_change().rolling(20).std()
# Ensure proper calculation and handle potential NaN values
dataframe["&-stoploss"] = (-0.1 - (dataframe["%-volatility"] * 10).clip(0, 0.25)).fillna(-0.1)
dataframe["&-roi_0"] = ((dataframe["close"] / dataframe["close"].shift(label_period) - 1).clip(0, 0.2)).fillna(0)
# Additional check to ensure no NaN values remain
for col in ["&-stoploss", "&-roi_0"]:
if dataframe[col].isna().any():
logger.warning(f"{col} 仍包含 NaN填充为默认值")
dataframe[col] = dataframe[col].fillna(-0.1 if col == "&-stoploss" else 0)
# 简化动态参数生成逻辑
# 放松 buy_rsi 和 sell_rsi 的生成逻辑
# 计算 buy_rsi_pred 并清理 NaN 值
dataframe["buy_rsi_pred"] = dataframe["rsi"].rolling(window=10).mean().clip(30, 50)
dataframe["buy_rsi_pred"] = dataframe["buy_rsi_pred"].fillna(dataframe["buy_rsi_pred"].median())
# 计算 sell_rsi_pred 并清理 NaN 值
dataframe["sell_rsi_pred"] = dataframe["buy_rsi_pred"] + 20
dataframe["sell_rsi_pred"] = dataframe["sell_rsi_pred"].fillna(dataframe["sell_rsi_pred"].median())
# 计算 stoploss_pred 并清理 NaN 值
dataframe["stoploss_pred"] = -0.1 - (dataframe["%-volatility"] * 10).clip(0, 0.25)
dataframe["stoploss_pred"] = dataframe["stoploss_pred"].fillna(dataframe["stoploss_pred"].mean())
# 计算 roi_0_pred 并清理 NaN 值
dataframe["roi_0_pred"] = dataframe["&-roi_0"].clip(0.01, 0.2)
dataframe["roi_0_pred"] = dataframe["roi_0_pred"].fillna(dataframe["roi_0_pred"].mean())
# 检查预测值
for col in ["buy_rsi_pred", "sell_rsi_pred", "stoploss_pred", "roi_0_pred", "&-sell_rsi", "&-stoploss", "&-roi_0"]:
if dataframe[col].isna().any():
logger.warning(f"{col} 包含 NaN填充为默认值")
dataframe[col] = dataframe[col].fillna(dataframe[col].mean())
# 更保守的止损和止盈设置
dataframe["trailing_stop_positive"] = (dataframe["roi_0_pred"] * 0.3).clip(0.01, 0.2)
dataframe["trailing_stop_positive_offset"] = (dataframe["roi_0_pred"] * 0.5).clip(0.01, 0.3)
# 设置策略级参数
self.buy_rsi.value = float(dataframe["buy_rsi_pred"].iloc[-1])
self.sell_rsi.value = float(dataframe["sell_rsi_pred"].iloc[-1])
# 更保守的止损设置
self.stoploss = -0.15 # 固定止损 15%
self.minimal_roi = {
0: float(self.roi_0.value),
15: float(self.roi_15.value),
30: float(self.roi_30.value),
60: 0
}
# 更保守的追踪止损设置
self.trailing_stop_positive = 0.05 # 追踪止损触发点
self.trailing_stop_positive_offset = 0.1 # 追踪止损偏移量
logger.info(f"动态参数buy_rsi={self.buy_rsi.value}, sell_rsi={self.sell_rsi.value}, "
f"stoploss={self.stoploss}, trailing_stop_positive={self.trailing_stop_positive}")
dataframe.replace([np.inf, -np.inf], 0, inplace=True)
dataframe.ffill(inplace=True)
dataframe.fillna(0, inplace=True)
logger.info(f"up_or_down 值统计:\n{dataframe['up_or_down'].value_counts().to_string()}")
logger.info(f"do_predict 值统计:\n{dataframe['do_predict'].value_counts().to_string()}")
return dataframe
def populate_exit_trend(self, df: DataFrame, metadata: dict) -> DataFrame:
# 改进卖出信号条件
exit_long_conditions = [
(df["rsi"] > df["sell_rsi_pred"]), # RSI 高于卖出阈值
(df["volume"] > df["volume"].rolling(window=10).mean()), # 成交量高于近期均值
(df["close"] < df["bb_middleband"]) # 价格低于布林带中轨
]
if exit_long_conditions:
df.loc[
reduce(lambda x, y: x & y, exit_long_conditions),
"exit_long"
] = 1
return df
def populate_entry_trend(self, df: DataFrame, metadata: dict) -> DataFrame:
# 改进买入信号条件
# 检查 MACD 列是否存在
if "macd" not in df.columns or "macdsignal" not in df.columns:
logger.error("MACD 或 MACD 信号列缺失,无法生成买入信号。尝试重新计算 MACD 列。")
try:
macd = ta.MACD(df, fastperiod=12, slowperiod=26, signalperiod=9)
df["macd"] = macd["macd"]
df["macdsignal"] = macd["macdsignal"]
logger.info("MACD 列已成功重新计算。")
except Exception as e:
logger.error(f"重新计算 MACD 列时出错:{str(e)}")
raise ValueError("DataFrame 缺少必要的 MACD 列且无法重新计算。")
enter_long_conditions = [
(df["rsi"] < df["buy_rsi_pred"]), # RSI 低于买入阈值
(df["volume"] > df["volume"].rolling(window=10).mean() * 1.2), # 成交量高于近期均值20%
(df["close"] > df["bb_middleband"]) # 价格高于布林带中轨
]
# 如果 MACD 列存在,则添加 MACD 金叉条件
if "macd" in df.columns and "macdsignal" in df.columns:
enter_long_conditions.append((df["macd"] > df["macdsignal"]))
# 确保模型预测为买入
enter_long_conditions.append((df["do_predict"] == 1))
if enter_long_conditions:
df.loc[
reduce(lambda x, y: x & y, enter_long_conditions),
["enter_long", "enter_tag"]
] = (1, "long")
return df
def confirm_trade_entry(
self, pair: str, order_type: str, amount: float, rate: float,
time_in_force: str, current_time, entry_tag, side: str, **kwargs
) -> bool:
df, _ = self.dp.get_analyzed_dataframe(pair, self.timeframe)
last_candle = df.iloc[-1].squeeze()
if side == "long":
if rate > (last_candle["close"] * (1 + 0.0025)):
return False
return True

1
run.sh
View File

@ -18,6 +18,7 @@ zip_files=(*.zip)
if [ ${#zip_files[@]} -eq 1 ]; then
# 解压缩该 zip 文件到当前目录
unzip "${zip_files[0]}"
rm *.zip
else
echo "当前目录下没有 zip 文件或者有多个 zip 文件,无法操作。"
fi

233
请啊!
View File

@ -1,233 +0,0 @@
import logging
import numpy as np
from functools import reduce
import talib.abstract as ta
from pandas import DataFrame
from technical import qtpylib
from freqtrade.strategy import IStrategy, IntParameter, DecimalParameter
logger = logging.getLogger(__name__)
class FreqaiExampleStrategy(IStrategy):
# 移除硬编码的 minimal_roi 和 stoploss改为动态适配
minimal_roi = {} # 将在 populate_indicators 中动态生成
stoploss = 0.0 # 将在 populate_indicators 中动态设置
trailing_stop = True
process_only_new_candles = True
use_exit_signal = True
startup_candle_count: int = 40
can_short = False
# 参数定义FreqAI 动态适配 buy_rsi 和 sell_rsi禁用 Hyperopt 优化
buy_rsi = IntParameter(low=10, high=50, default=27, space="buy", optimize=False, load=True)
sell_rsi = IntParameter(low=50, high=90, default=59, space="sell", optimize=False, load=True)
# 为 Hyperopt 优化添加 ROI 和 stoploss 参数
roi_0 = DecimalParameter(low=0.01, high=0.2, default=0.038, space="roi", optimize=True, load=True)
roi_15 = DecimalParameter(low=0.005, high=0.1, default=0.027, space="roi", optimize=True, load=True)
roi_30 = DecimalParameter(low=0.001, high=0.05, default=0.009, space="roi", optimize=True, load=True)
stoploss_param = DecimalParameter(low=-0.35, high=-0.1, default=-0.182, space="stoploss", optimize=True, load=True)
# FreqAI 配置
freqai_info = {
"model": "LightGBMRegressor",
"feature_parameters": {
"include_timeframes": ["5m", "15m", "1h"],
"include_corr_pairlist": [],
"label_period_candles": 12,
"include_shifted_candles": 3,
},
"data_split_parameters": {
"test_size": 0.2,
"shuffle": False,
},
"model_training_parameters": {
"n_estimators": 100,
"learning_rate": 0.1,
"num_leaves": 31,
"verbose": -1,
},
}
plot_config = {
"main_plot": {},
"subplots": {
"&-buy_rsi": {"&-buy_rsi": {"color": "green"}},
"&-sell_rsi": {"&-sell_rsi": {"color": "red"}},
"&-stoploss": {"&-stoploss": {"color": "purple"}},
"&-roi_0": {"&-roi_0": {"color": "orange"}},
"do_predict": {"do_predict": {"color": "brown"}},
},
}
def feature_engineering_expand_all(self, dataframe: DataFrame, period: int, metadata: dict, **kwargs) -> DataFrame:
dataframe["%-rsi-period"] = ta.RSI(dataframe, timeperiod=period)
dataframe["%-mfi-period"] = ta.MFI(dataframe, timeperiod=period)
dataframe["%-sma-period"] = ta.SMA(dataframe, timeperiod=period)
dataframe["%-ema-period"] = ta.EMA(dataframe, timeperiod=period)
dataframe["%-adx-period"] = ta.ADX(dataframe, timeperiod=period)
bollinger = qtpylib.bollinger_bands(qtpylib.typical_price(dataframe), window=period, stds=2.2)
dataframe["bb_lowerband-period"] = bollinger["lower"]
dataframe["bb_middleband-period"] = bollinger["mid"]
dataframe["bb_upperband-period"] = bollinger["upper"]
dataframe["%-bb_width-period"] = (
dataframe["bb_upperband-period"] - dataframe["bb_lowerband-period"]
) / dataframe["bb_middleband-period"]
dataframe["%-close-bb_lower-period"] = dataframe["close"] / dataframe["bb_lowerband-period"]
dataframe["%-roc-period"] = ta.ROC(dataframe, timeperiod=period)
dataframe["%-relative_volume-period"] = (
dataframe["volume"] / dataframe["volume"].rolling(period).mean()
)
dataframe.replace([np.inf, -np.inf], 0, inplace=True)
dataframe.ffill(inplace=True)
dataframe.fillna(0, inplace=True)
return dataframe
def feature_engineering_expand_basic(self, dataframe: DataFrame, metadata: dict, **kwargs) -> DataFrame:
dataframe["%-pct-change"] = dataframe["close"].pct_change()
dataframe["%-raw_volume"] = dataframe["volume"]
dataframe["%-raw_price"] = dataframe["close"]
dataframe.replace([np.inf, -np.inf], 0, inplace=True)
dataframe.fillna(method='ffill', inplace=True)
dataframe.fillna(0, inplace=True)
return dataframe
def feature_engineering_standard(self, dataframe: DataFrame, metadata: dict, **kwargs) -> DataFrame:
dataframe["%-day_of_week"] = dataframe["date"].dt.dayofweek
dataframe["%-hour_of_day"] = dataframe["date"].dt.hour
dataframe.replace([np.inf, -np.inf], 0, inplace=True)
dataframe.fillna(method='ffill', inplace=True)
dataframe.fillna(0, inplace=True)
return dataframe
def set_freqai_targets(self, dataframe: DataFrame, metadata: dict, **kwargs) -> DataFrame:
logger.info(f"设置 FreqAI 目标,交易对:{metadata['pair']}")
if "close" not in dataframe.columns:
logger.error("数据框缺少必要的 'close' 列")
raise ValueError("数据框缺少必要的 'close' 列")
try:
label_period = self.freqai_info["feature_parameters"]["label_period_candles"]
# 生成 %-volatility 特征
dataframe["%-volatility"] = dataframe["close"].pct_change().rolling(20).std()
# 单一回归目标
# 移除对未来的数据依赖
dataframe["&-buy_rsi"] = ta.RSI(dataframe, timeperiod=14)
# 数据清理
for col in ["&-buy_rsi", "%-volatility"]:
dataframe[col].replace([np.inf, -np.inf], 0, inplace=True)
dataframe[col].fillna(method='ffill', inplace=True)
dataframe[col].fillna(0, inplace=True)
if dataframe[col].isna().any():
logger.warning(f"目标列 {col} 仍包含 NaN检查数据生成逻辑")
except Exception as e:
logger.error(f"创建 FreqAI 目标失败:{str(e)}")
raise
logger.info(f"目标列预览:\n{dataframe[['&-buy_rsi']].head().to_string()}")
return dataframe
def populate_indicators(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
logger.info(f"处理交易对:{metadata['pair']}")
dataframe = self.freqai.start(dataframe, metadata, self)
# 计算传统指标
dataframe["rsi"] = ta.RSI(dataframe, timeperiod=14)
bollinger = qtpylib.bollinger_bands(qtpylib.typical_price(dataframe), window=20, stds=2)
dataframe["bb_lowerband"] = bollinger["lower"]
dataframe["bb_middleband"] = bollinger["mid"]
dataframe["bb_upperband"] = bollinger["upper"]
dataframe["tema"] = ta.TEMA(dataframe, timeperiod=9)
# 生成 up_or_down 信号(非 FreqAI 目标)
label_period = self.freqai_info["feature_parameters"]["label_period_candles"]
# 使用历史数据生成 up_or_down 信号
dataframe["up_or_down"] = np.where(
dataframe["close"] > dataframe["close"].shift(1), 1, 0
)
# 动态设置参数
if "&-buy_rsi" in dataframe.columns:
# 派生其他目标
dataframe["&-sell_rsi"] = dataframe["&-buy_rsi"] + 30
dataframe["%-volatility"] = dataframe["close"].pct_change().rolling(20).std()
dataframe["&-stoploss"] = -0.1 - (dataframe["%-volatility"] * 10).clip(0, 0.25)
dataframe["&-roi_0"] = (dataframe["close"] / dataframe["close"].shift(label_period) - 1).clip(0, 0.2)
# 简化动态参数生成逻辑
dataframe["buy_rsi_pred"] = dataframe["&-buy_rsi"].clip(10, 50)
dataframe["sell_rsi_pred"] = dataframe["&-buy_rsi"] + 30
dataframe["stoploss_pred"] = -0.1 - (dataframe["%-volatility"] * 10).clip(0, 0.25)
dataframe["roi_0_pred"] = dataframe["&-roi_0"].clip(0.01, 0.2)
# 检查预测值
for col in ["buy_rsi_pred", "sell_rsi_pred", "stoploss_pred", "roi_0_pred", "&-sell_rsi", "&-stoploss", "&-roi_0"]:
if dataframe[col].isna().any():
logger.warning(f"列 {col} 包含 NaN填充为默认值")
dataframe[col].fillna(dataframe[col].mean(), inplace=True)
# 更保守的止损和止盈设置
dataframe["trailing_stop_positive"] = (dataframe["roi_0_pred"] * 0.3).clip(0.01, 0.2)
dataframe["trailing_stop_positive_offset"] = (dataframe["roi_0_pred"] * 0.5).clip(0.01, 0.3)
# 设置策略级参数
self.buy_rsi.value = float(dataframe["buy_rsi_pred"].iloc[-1])
self.sell_rsi.value = float(dataframe["sell_rsi_pred"].iloc[-1])
self.stoploss = float(self.stoploss_param.value)
self.minimal_roi = {
0: float(self.roi_0.value),
15: float(self.roi_15.value),
30: float(self.roi_30.value),
60: 0
}
self.trailing_stop_positive = float(dataframe["trailing_stop_positive"].iloc[-1])
self.trailing_stop_positive_offset = float(dataframe["trailing_stop_positive_offset"].iloc[-1])
logger.info(f"动态参数buy_rsi={self.buy_rsi.value}, sell_rsi={self.sell_rsi.value}, "
f"stoploss={self.stoploss}, trailing_stop_positive={self.trailing_stop_positive}")
dataframe.replace([np.inf, -np.inf], 0, inplace=True)
dataframe.fillna(method='ffill', inplace=True)
dataframe.fillna(0, inplace=True)
logger.info(f"up_or_down 值统计:\n{dataframe['up_or_down'].value_counts().to_string()}")
logger.info(f"do_predict 值统计:\n{dataframe['do_predict'].value_counts().to_string()}")
return dataframe
def populate_entry_trend(self, df: DataFrame, metadata: dict) -> DataFrame:
enter_long_conditions = [
qtpylib.crossed_above(df["rsi"], df["buy_rsi_pred"]),
df["volume"] > 0
]
if enter_long_conditions:
df.loc[
reduce(lambda x, y: x & y, enter_long_conditions),
["enter_long", "enter_tag"]
] = (1, "long")
return df
def populate_exit_trend(self, df: DataFrame, metadata: dict) -> DataFrame:
exit_long_conditions = [
qtpylib.crossed_above(df["rsi"], df["sell_rsi_pred"]),
df["volume"] > 0
]
if exit_long_conditions:
df.loc[
reduce(lambda x, y: x & y, exit_long_conditions),
"exit_long"
] = 1
return df
def confirm_trade_entry(
self, pair: str, order_type: str, amount: float, rate: float,
time_in_force: str, current_time, entry_tag, side: str, **kwargs
) -> bool:
df, _ = self.dp.get_analyzed_dataframe(pair, self.timeframe)
last_candle = df.iloc[-1].squeeze()
if side == "long":
if rate > (last_candle["close"] * (1 + 0.0025)):
return False
return True