cleanup: remove 23 duplicate meta.jsons, restructure strategies/ by version
This commit is contained in:
456
strategies/v2.1/structure_flow_strategy_v2_1.py
Normal file
456
strategies/v2.1/structure_flow_strategy_v2_1.py
Normal file
@ -0,0 +1,456 @@
|
||||
"""
|
||||
Structure Flow Strategy v2.1
|
||||
=======================
|
||||
变更记录:
|
||||
v1.6 (2026-06-07): 最优基线 — +3659.63%, 190笔, 69.3% trailing胜率
|
||||
v2.0 (2026-06-08): B1 入场延迟确认 — 方向正确但降频严重
|
||||
v2.1 (2026-06-08): ===== D1: 趋势强度过滤 =====
|
||||
在4H级别评估趋势强度:最近2个Swing Point的间距变化。
|
||||
如果趋势在扩张(HH/HL间距增大),允许入场;
|
||||
如果趋势在收缩(HH/HL间距缩小或震荡),过滤信号。
|
||||
目的:只在趋势明确时交易,避免震荡市反复止损。
|
||||
"""
|
||||
|
||||
from datetime import datetime
|
||||
import numpy as np
|
||||
import pandas as pd
|
||||
from pandas import DataFrame
|
||||
from freqtrade.strategy import IStrategy, IntParameter, informative
|
||||
from freqtrade.persistence import Trade
|
||||
|
||||
|
||||
class StructureFlowStrategyV21(IStrategy):
|
||||
"""
|
||||
Structure Flow Strategy v2.1 — D1: 趋势强度过滤
|
||||
|
||||
v2.1改动(相对于v1.6):
|
||||
在4H级别计算趋势强度:最近2个Swing High间距 + Swing Low间距的变化。
|
||||
只有趋势在扩张(或至少不收缩)时才允许入场。
|
||||
"""
|
||||
|
||||
can_short = True
|
||||
stoploss = -0.15
|
||||
use_custom_stoploss = True
|
||||
minimal_roi = {"0": 100}
|
||||
max_open_trades = 1
|
||||
timeframe = "1h"
|
||||
|
||||
# =====================
|
||||
# 可优化参数
|
||||
# =====================
|
||||
|
||||
swing_lookback_d1 = IntParameter(8, 14, default=10, space="buy")
|
||||
swing_lookback_h4 = IntParameter(5, 10, default=8, space="buy")
|
||||
pin_bar_wick_ratio = IntParameter(50, 70, default=60, space="buy")
|
||||
max_stop_dist = IntParameter(20, 50, default=50, space="buy")
|
||||
cooldown_bars = IntParameter(3, 12, default=6, space="buy")
|
||||
# v2.1 新增:趋势强度最小扩张比例(x/100 = 0%~50%)
|
||||
# 0 = 只要不收缩就行;越大要求趋势扩张越强
|
||||
trend_strength_min = IntParameter(-50, 20, default=-20, space="buy") # -20=允许SP轻微收缩, 最佳值
|
||||
|
||||
# =====================
|
||||
# 工具:Swing Point 检测
|
||||
# =====================
|
||||
|
||||
@staticmethod
|
||||
def _detect_swing_points(
|
||||
high: pd.Series,
|
||||
low: pd.Series,
|
||||
window: int = 5,
|
||||
) -> tuple[pd.Series, pd.Series]:
|
||||
n = len(high)
|
||||
sh = pd.Series(np.nan, index=high.index, dtype=float)
|
||||
sl = pd.Series(np.nan, index=low.index, dtype=float)
|
||||
|
||||
for i in range(window, n - window):
|
||||
if high.iloc[i] > high.iloc[i - window : i].max() and high.iloc[i] > high.iloc[i + 1 : i + window + 1].max():
|
||||
sh.iloc[i] = high.iloc[i]
|
||||
if low.iloc[i] < low.iloc[i - window : i].min() and low.iloc[i] < low.iloc[i + 1 : i + window + 1].min():
|
||||
sl.iloc[i] = low.iloc[i]
|
||||
|
||||
return sh, sl
|
||||
|
||||
# =====================
|
||||
# 工具:结构分析
|
||||
# =====================
|
||||
|
||||
def _build_structure(
|
||||
self,
|
||||
high: pd.Series,
|
||||
low: pd.Series,
|
||||
close: pd.Series,
|
||||
swing_high: pd.Series,
|
||||
swing_low: pd.Series,
|
||||
) -> DataFrame:
|
||||
n = len(high)
|
||||
|
||||
trend_up_arr = np.full(n, False)
|
||||
trend_down_arr = np.full(n, False)
|
||||
nearest_support = np.full(n, np.nan)
|
||||
nearest_resistance = np.full(n, np.nan)
|
||||
in_demand_zone = np.full(n, False)
|
||||
in_supply_zone = np.full(n, False)
|
||||
|
||||
sh_prices = []
|
||||
sl_prices = []
|
||||
|
||||
for i in range(n):
|
||||
if pd.notna(swing_high.iloc[i]):
|
||||
sh_prices.append(swing_high.iloc[i])
|
||||
if len(sh_prices) > 4:
|
||||
sh_prices.pop(0)
|
||||
|
||||
if pd.notna(swing_low.iloc[i]):
|
||||
sl_prices.append(swing_low.iloc[i])
|
||||
if len(sl_prices) > 4:
|
||||
sl_prices.pop(0)
|
||||
|
||||
if len(sh_prices) >= 2 and len(sl_prices) >= 2:
|
||||
if sh_prices[-1] > sh_prices[-2] and sl_prices[-1] > sl_prices[-2]:
|
||||
trend_up_arr[i] = True
|
||||
elif sh_prices[-1] < sh_prices[-2] and sl_prices[-1] < sl_prices[-2]:
|
||||
trend_down_arr[i] = True
|
||||
elif i > 0:
|
||||
trend_up_arr[i] = trend_up_arr[i - 1]
|
||||
trend_down_arr[i] = trend_down_arr[i - 1]
|
||||
elif i > 0:
|
||||
trend_up_arr[i] = trend_up_arr[i - 1]
|
||||
trend_down_arr[i] = trend_down_arr[i - 1]
|
||||
|
||||
if sl_prices:
|
||||
nearest_support[i] = sl_prices[-1]
|
||||
if sh_prices:
|
||||
nearest_resistance[i] = sh_prices[-1]
|
||||
|
||||
c = close.iloc[i]
|
||||
if not np.isnan(nearest_support[i]) and not np.isnan(nearest_resistance[i]):
|
||||
zone_range = nearest_resistance[i] - nearest_support[i]
|
||||
if zone_range > 0:
|
||||
pos_pct = (c - nearest_support[i]) / zone_range
|
||||
in_demand_zone[i] = pos_pct < 0.35
|
||||
in_supply_zone[i] = pos_pct > 0.65
|
||||
|
||||
return DataFrame({
|
||||
"trend_up": trend_up_arr,
|
||||
"trend_down": trend_down_arr,
|
||||
"support": nearest_support,
|
||||
"resistance": nearest_resistance,
|
||||
"in_demand": in_demand_zone,
|
||||
"in_supply": in_supply_zone,
|
||||
}, index=high.index)
|
||||
|
||||
# =====================
|
||||
# 工具:K线形态检测
|
||||
# =====================
|
||||
|
||||
@staticmethod
|
||||
def _detect_candle_patterns(
|
||||
open_: pd.Series,
|
||||
high: pd.Series,
|
||||
low: pd.Series,
|
||||
close: pd.Series,
|
||||
pin_bar_wick_ratio: float = 0.6,
|
||||
) -> tuple[pd.Series, pd.Series, pd.Series, pd.Series]:
|
||||
body = (close - open_).abs()
|
||||
total_range = (high - low).replace(0, 0.0001)
|
||||
|
||||
upper_wick = high - close.where(close > open_, open_)
|
||||
lower_wick = open_.where(close > open_, close) - low
|
||||
is_pin = (upper_wick + lower_wick) / total_range > pin_bar_wick_ratio
|
||||
|
||||
bullish_pin = is_pin & (close > open_) & (lower_wick > upper_wick)
|
||||
bearish_pin = is_pin & (close < open_) & (upper_wick > lower_wick)
|
||||
|
||||
prev_open = open_.shift(1)
|
||||
prev_close = close.shift(1)
|
||||
bullish_engulf = (close > prev_open) & (open_ < prev_close) & (close > open_)
|
||||
bearish_engulf = (close < prev_open) & (open_ > prev_close) & (close < open_)
|
||||
|
||||
return bullish_pin, bearish_pin, bullish_engulf, bearish_engulf
|
||||
|
||||
# ================================================================
|
||||
# 信息时间框架 — D1 宏观结构
|
||||
# ================================================================
|
||||
|
||||
@informative("1d")
|
||||
def populate_indicators_1d(
|
||||
self, dataframe: DataFrame, metadata: dict
|
||||
) -> DataFrame:
|
||||
sh, sl = self._detect_swing_points(
|
||||
dataframe["high"], dataframe["low"],
|
||||
self.swing_lookback_d1.value,
|
||||
)
|
||||
structure = self._build_structure(
|
||||
dataframe["high"], dataframe["low"], dataframe["close"],
|
||||
sh, sl,
|
||||
)
|
||||
dataframe["trend_up"] = structure["trend_up"]
|
||||
dataframe["trend_down"] = structure["trend_down"]
|
||||
return dataframe
|
||||
|
||||
# ================================================================
|
||||
# 信息时间框架 — 4H 中期结构
|
||||
# ================================================================
|
||||
|
||||
@informative("4h")
|
||||
def populate_indicators_4h(
|
||||
self, dataframe: DataFrame, metadata: dict
|
||||
) -> DataFrame:
|
||||
sh, sl = self._detect_swing_points(
|
||||
dataframe["high"], dataframe["low"],
|
||||
self.swing_lookback_h4.value,
|
||||
)
|
||||
structure = self._build_structure(
|
||||
dataframe["high"], dataframe["low"], dataframe["close"],
|
||||
sh, sl,
|
||||
)
|
||||
dataframe["trend_up"] = structure["trend_up"]
|
||||
dataframe["trend_down"] = structure["trend_down"]
|
||||
dataframe["support"] = structure["support"]
|
||||
dataframe["resistance"] = structure["resistance"]
|
||||
dataframe["in_demand"] = structure["in_demand"]
|
||||
dataframe["in_supply"] = structure["in_supply"]
|
||||
|
||||
# ================================
|
||||
# v1.6 活支撑/阻力检查(保留)
|
||||
# ================================
|
||||
touched_support = (
|
||||
(dataframe["low"] <= dataframe["support"] * 1.005) &
|
||||
(dataframe["low"] >= dataframe["support"] * 0.995)
|
||||
)
|
||||
held_support = dataframe["close"] > dataframe["support"]
|
||||
support_tested_and_held = touched_support & held_support
|
||||
dataframe["support_alive"] = support_tested_and_held.rolling(3, min_periods=1).max() > 0
|
||||
|
||||
touched_resistance = (
|
||||
(dataframe["high"] >= dataframe["resistance"] * 0.995) &
|
||||
(dataframe["high"] <= dataframe["resistance"] * 1.005)
|
||||
)
|
||||
held_resistance = dataframe["close"] < dataframe["resistance"]
|
||||
resistance_tested_and_held = touched_resistance & held_resistance
|
||||
dataframe["resistance_alive"] = resistance_tested_and_held.rolling(3, min_periods=1).max() > 0
|
||||
|
||||
# ================================
|
||||
# v2.1 新增:趋势强度评估
|
||||
# ================================
|
||||
# 计算最近2个Swing Point之间的间距变化
|
||||
# 上升趋势:HH间距 + HL间距都在扩大 → 趋势强
|
||||
# 下降趋势:LH间距 + LL间距都在扩大 → 趋势强
|
||||
# 间距缩小 → 趋势减弱/震荡
|
||||
|
||||
sh_prices = []
|
||||
sl_prices = []
|
||||
trend_strength_up = np.full(len(dataframe), np.nan)
|
||||
trend_strength_down = np.full(len(dataframe), np.nan)
|
||||
|
||||
for i in range(len(dataframe)):
|
||||
if pd.notna(sh.iloc[i]):
|
||||
sh_prices.append(sh.iloc[i])
|
||||
if len(sh_prices) > 4:
|
||||
sh_prices.pop(0)
|
||||
if pd.notna(sl.iloc[i]):
|
||||
sl_prices.append(sl.iloc[i])
|
||||
if len(sl_prices) > 4:
|
||||
sl_prices.pop(0)
|
||||
|
||||
# 上升趋势强度:HH[-1] vs HH[-2], HL[-1] vs HL[-2]
|
||||
if len(sh_prices) >= 2 and len(sl_prices) >= 2:
|
||||
# HH间距:最近两个Swing High的差值百分比
|
||||
hh_dist = (sh_prices[-1] - sh_prices[-2]) / sh_prices[-2] if sh_prices[-2] > 0 else 0
|
||||
# HL间距:最近两个Swing Low的差值百分比
|
||||
hl_dist = (sl_prices[-1] - sl_prices[-2]) / sl_prices[-2] if sl_prices[-2] > 0 else 0
|
||||
# 上升趋势强度 = HH间距 + HL间距(都正=扩张,一正一负=不确定,都负=收缩)
|
||||
trend_strength_up[i] = hh_dist + hl_dist
|
||||
|
||||
# 下降趋势强度(取反:间距缩小是负值)
|
||||
trend_strength_down[i] = -(hh_dist + hl_dist)
|
||||
|
||||
dataframe["trend_strength_up"] = pd.Series(trend_strength_up, index=dataframe.index)
|
||||
dataframe["trend_strength_down"] = pd.Series(trend_strength_down, index=dataframe.index)
|
||||
|
||||
# 趋势强度是否足够(扩张中)
|
||||
min_strength = self.trend_strength_min.value / 100.0 # 0~0.30
|
||||
dataframe["strong_uptrend"] = dataframe["trend_strength_up"] > min_strength
|
||||
dataframe["strong_downtrend"] = dataframe["trend_strength_down"] > min_strength
|
||||
|
||||
return dataframe
|
||||
|
||||
# ================================================================
|
||||
# 主时间框架 — 1H 指标
|
||||
# ================================================================
|
||||
|
||||
def populate_indicators(
|
||||
self, dataframe: DataFrame, metadata: dict
|
||||
) -> DataFrame:
|
||||
"""1H 级别:K线形态(零指标)。"""
|
||||
bullish_pin, bearish_pin, bullish_engulf, bearish_engulf = (
|
||||
self._detect_candle_patterns(
|
||||
dataframe["open"],
|
||||
dataframe["high"],
|
||||
dataframe["low"],
|
||||
dataframe["close"],
|
||||
self.pin_bar_wick_ratio.value / 100.0,
|
||||
)
|
||||
)
|
||||
dataframe["bullish_pinbar"] = bullish_pin
|
||||
dataframe["bearish_pinbar"] = bearish_pin
|
||||
dataframe["bullish_engulfing"] = bullish_engulf
|
||||
dataframe["bearish_engulfing"] = bearish_engulf
|
||||
dataframe["bullish_signal"] = bullish_pin | bullish_engulf
|
||||
dataframe["bearish_signal"] = bearish_pin | bearish_engulf
|
||||
|
||||
# NaN 安全处理
|
||||
bool_cols = [
|
||||
"trend_up_1d", "trend_down_1d",
|
||||
"trend_up_4h", "trend_down_4h",
|
||||
"in_demand_4h", "in_supply_4h",
|
||||
"support_alive_4h", "resistance_alive_4h",
|
||||
"strong_uptrend_4h", "strong_downtrend_4h",
|
||||
"bullish_signal", "bearish_signal",
|
||||
]
|
||||
for col in bool_cols:
|
||||
if col in dataframe.columns:
|
||||
dataframe[col] = dataframe[col].fillna(False)
|
||||
|
||||
return dataframe
|
||||
|
||||
# =====================
|
||||
# 入场信号
|
||||
# =====================
|
||||
|
||||
def populate_entry_trend(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
|
||||
"""
|
||||
入场逻辑(1H 时间框架)。
|
||||
|
||||
v2.1 核心改动:D1 — 趋势强度过滤
|
||||
做多额外条件:4H上升趋势在扩张(strong_uptrend_4h)
|
||||
做空额外条件:4H下降趋势在扩张(strong_downtrend_4h)
|
||||
"""
|
||||
max_dist = self.max_stop_dist.value / 100.0
|
||||
cooldown = self.cooldown_bars.value
|
||||
|
||||
# NaN 安全处理
|
||||
bool_cols = [
|
||||
"trend_up_1d", "trend_down_1d",
|
||||
"trend_up_4h", "trend_down_4h",
|
||||
"in_demand_4h", "in_supply_4h",
|
||||
"support_alive_4h", "resistance_alive_4h",
|
||||
"strong_uptrend_4h", "strong_downtrend_4h",
|
||||
"bullish_signal", "bearish_signal",
|
||||
]
|
||||
for col in bool_cols:
|
||||
if col in dataframe.columns:
|
||||
dataframe[col] = dataframe[col].fillna(False)
|
||||
|
||||
# ── 做多 ──
|
||||
long_stop_dist = (dataframe["open"] - dataframe["support_4h"]) / dataframe["open"]
|
||||
|
||||
long_base = (
|
||||
dataframe["trend_up_1d"]
|
||||
& dataframe["in_demand_4h"]
|
||||
& dataframe["bullish_signal"]
|
||||
& (long_stop_dist <= max_dist)
|
||||
& (long_stop_dist > 0.003)
|
||||
& dataframe["support_alive_4h"]
|
||||
# v2.1: 趋势强度 — 4H上升趋势必须在扩张
|
||||
& dataframe["strong_uptrend_4h"]
|
||||
)
|
||||
|
||||
long_recent = long_base.rolling(cooldown, min_periods=1).max().shift(1) == 0
|
||||
dataframe.loc[long_base & long_recent, "enter_long"] = 1
|
||||
|
||||
# ── 做空 ──
|
||||
short_stop_dist = (dataframe["resistance_4h"] - dataframe["open"]) / dataframe["open"]
|
||||
|
||||
short_base = (
|
||||
dataframe["trend_down_1d"]
|
||||
& dataframe["in_supply_4h"]
|
||||
& dataframe["bearish_signal"]
|
||||
& (short_stop_dist <= max_dist)
|
||||
& (short_stop_dist > 0.003)
|
||||
& dataframe["resistance_alive_4h"]
|
||||
# v2.1: 趋势强度 — 4H下降趋势必须在扩张
|
||||
& dataframe["strong_downtrend_4h"]
|
||||
)
|
||||
|
||||
short_recent = short_base.rolling(cooldown, min_periods=1).max().shift(1) == 0
|
||||
dataframe.loc[short_base & short_recent, "enter_short"] = 1
|
||||
|
||||
return dataframe
|
||||
|
||||
# =====================
|
||||
# 出场信号
|
||||
# =====================
|
||||
|
||||
def populate_exit_trend(self, dataframe: DataFrame, metadata: dict) -> DataFrame:
|
||||
"""出场逻辑 — 由结构反转触发。"""
|
||||
exit_long = ~dataframe["trend_up_1d"].fillna(True)
|
||||
dataframe.loc[exit_long, "exit_long"] = 1
|
||||
|
||||
exit_short = dataframe["trend_up_1d"].fillna(False)
|
||||
dataframe.loc[exit_short, "exit_short"] = 1
|
||||
|
||||
return dataframe
|
||||
|
||||
# =====================
|
||||
# 动态止损 — 纯价格结构(基于Swing Point)
|
||||
# =====================
|
||||
|
||||
def custom_stoploss(
|
||||
self,
|
||||
pair: str,
|
||||
trade: Trade,
|
||||
current_time: datetime,
|
||||
current_rate: float,
|
||||
current_profit: float,
|
||||
after_fill: bool,
|
||||
**kwargs,
|
||||
) -> float:
|
||||
"""
|
||||
止损逻辑:完全基于价格结构,零指标(与v1.6相同)。
|
||||
"""
|
||||
dataframe, _ = self.dp.get_analyzed_dataframe(pair, self.timeframe)
|
||||
if dataframe is None or len(dataframe) == 0:
|
||||
return -0.02 if not trade.is_short else 0.02
|
||||
|
||||
last = dataframe.iloc[-1]
|
||||
|
||||
if not trade.is_short:
|
||||
support = last.get("support_4h", np.nan)
|
||||
if pd.isna(support) or support <= 0:
|
||||
return -0.02
|
||||
sl_price = support * 0.999
|
||||
sl_ratio = (sl_price / current_rate) - 1.0
|
||||
return max(sl_ratio, -0.15)
|
||||
else:
|
||||
resistance = last.get("resistance_4h", np.nan)
|
||||
if pd.isna(resistance) or resistance <= 0:
|
||||
return 0.02
|
||||
sl_price = resistance * 1.001
|
||||
sl_ratio = 1.0 - (sl_price / current_rate)
|
||||
return min(sl_ratio, 0.15)
|
||||
|
||||
# =====================
|
||||
# Plot config
|
||||
# =====================
|
||||
|
||||
@staticmethod
|
||||
def plot_config() -> dict:
|
||||
return {
|
||||
"main_plot": {
|
||||
"support_4h": {"color": "green", "type": "line"},
|
||||
"resistance_4h": {"color": "red", "type": "line"},
|
||||
},
|
||||
"subplots": {
|
||||
"signals": {
|
||||
"bullish_pinbar": {"color": "green", "type": "scatter"},
|
||||
"bearish_pinbar": {"color": "red", "type": "scatter"},
|
||||
},
|
||||
"filters": {
|
||||
"support_alive_4h": {"color": "green", "type": "line"},
|
||||
"resistance_alive_4h": {"color": "red", "type": "line"},
|
||||
"strong_uptrend_4h": {"color": "blue", "type": "line"},
|
||||
"strong_downtrend_4h": {"color": "orange", "type": "line"},
|
||||
},
|
||||
},
|
||||
}
|
||||
Reference in New Issue
Block a user