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NewQuant/futures_trading_strategies/TA/Spectral/SpectralTrendStrategy2.py

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2025-11-29 21:07:15 +08:00
import numpy as np
import talib
from scipy.signal import stft
from datetime import datetime, timedelta
from typing import Optional, Any, List, Dict
from src.core_data import Bar, Order
from src.indicators.base_indicators import Indicator
from src.indicators.indicators import Empty
from src.strategies.base_strategy import Strategy
class SpectralTrendStrategy(Strategy):
"""
频域能量相变策略 - 极简回归版
核心哲学:
1. 频域 (STFT): 负责"判势" 现在的市场是震荡(噪音主导)还是趋势(低频主导)
2. 时域 (Regression): 负责"定向" 这个低频趋势是向上的还是向下的
这种组合避免了频域相位计算的复杂性和不稳定性回归了量化的本质
"""
def __init__(
self,
context: Any,
main_symbol: str,
enable_log: bool,
trade_volume: int,
# --- 市场参数 ---
bars_per_day: int = 23,
# --- 策略参数 ---
spectral_window_days: float = 2.0,
low_freq_days: float = 2.0,
high_freq_days: float = 1.0,
trend_strength_threshold: float = 0.2, # 强度阈值
exit_threshold: float = 0.1, # 退出阈值
slope_threshold: float = 0.0, # 斜率阈值 (0.05表示每根K线移动0.05个标准差)
max_hold_days: int = 10,
# --- 其他 ---
order_direction: Optional[List[str]] = None,
indicators: Indicator = None,
model_indicator: Indicator = None,
reverse: bool = False,
):
super().__init__(context, main_symbol, enable_log)
if order_direction is None:
order_direction = ['BUY', 'SELL']
self.trade_volume = trade_volume
self.bars_per_day = bars_per_day
self.spectral_window_days = spectral_window_days
self.low_freq_days = low_freq_days
self.high_freq_days = high_freq_days
self.trend_strength_threshold = trend_strength_threshold
self.exit_threshold = exit_threshold
self.slope_threshold = slope_threshold
self.max_hold_days = max_hold_days
self.order_direction = order_direction
self.model_indicator = model_indicator or Empty()
self.indicators = indicators or Empty()
self.reverse = reverse
# 计算窗口大小
self.spectral_window = int(self.spectral_window_days * self.bars_per_day)
# 确保偶数 (STFT偏好)
if self.spectral_window % 2 != 0:
self.spectral_window += 1
# 频率边界
self.low_freq_bound = 1.0 / self.low_freq_days if self.low_freq_days > 0 else float('inf')
self.high_freq_bound = 1.0 / self.high_freq_days if self.high_freq_days > 0 else 0.0
self.order_id_counter = 0
self.entry_time = None
self.position_direction = None
self.log(f"SpectralTrendStrategy (Regression) Init. Window: {self.spectral_window} bars")
def on_open_bar(self, open_price: float, symbol: str):
self.symbol = symbol
bar_history = self.get_bar_history()
current_time = self.get_current_time()
self.cancel_all_pending_orders(self.main_symbol)
if len(bar_history) < self.spectral_window + 5:
return
# 强制平仓检查
if self.entry_time and (current_time - self.entry_time) >= timedelta(days=self.max_hold_days):
self.close_all_positions()
self.entry_time = None
self.position_direction = None
return
# 获取数据并归一化
closes = np.array([b.close for b in bar_history[-self.spectral_window:]], dtype=float)
# 计算核心指标
trend_strength, trend_slope = self.calculate_market_state(closes)
position_volume = self.get_current_positions().get(self.symbol, 0)
if self.trading:
if position_volume == 0:
self.evaluate_entry_signal(open_price, trend_strength, trend_slope)
else:
self.manage_open_position(position_volume, trend_strength, trend_slope)
def calculate_market_state(self, prices: np.array) -> (float, float):
"""
显式傅里叶计算低频能量占比 (完全参数化)
步骤:
1. 价格归一化 (窗口内)
2. 短时傅里叶变换 (STFT) - 采样率=bars_per_day
3. 动态计算频段边界 (基于bars_per_day)
4. 趋势强度 = 低频能量 / (低频+高频能量)
"""
# 1. 验证数据长度
if len(prices) < self.spectral_window:
return 0.0, 0.0
# 2. 价格归一化 (仅使用窗口内数据)
window_data = prices[-self.spectral_window:]
normalized = (window_data - np.mean(window_data)) / (np.std(window_data) + 1e-8)
normalized = normalized[-self.spectral_window:]
# 3. STFT (采样率=bars_per_day)
try:
# fs: 每天的样本数 (bars_per_day)
f, t, Zxx = stft(
normalized,
fs=self.bars_per_day, # 关键: 适配市场结构
nperseg=self.spectral_window,
noverlap=max(0, self.spectral_window // 2),
boundary=None,
padded=False
)
except Exception as e:
self.log(f"STFT calculation error: {str(e)}")
return 0.0, 0.0
# 4. 过滤无效频率 (STFT返回频率范围: 0 到 fs/2)
valid_mask = (f >= 0) & (f <= self.bars_per_day / 2)
f = f[valid_mask]
Zxx = Zxx[valid_mask, :]
if Zxx.size == 0 or Zxx.shape[1] == 0:
return 0.0, 0.0
# 5. 计算最新时间点的能量
current_energy = np.abs(Zxx[:, -1]) ** 2
# 6. 动态频段定义 (cycles/day)
# 低频: 周期 > low_freq_days → 频率 < 1/low_freq_days
low_freq_mask = f < self.low_freq_bound
# 高频: 周期 < high_freq_days → 频率 > 1/high_freq_days
high_freq_mask = f > self.high_freq_bound
# 7. 能量计算
low_energy = np.sum(current_energy[low_freq_mask]) if np.any(low_freq_mask) else 0.0
high_energy = np.sum(current_energy[high_freq_mask]) if np.any(high_freq_mask) else 0.0
total_energy = low_energy + high_energy + 1e-8 # 防除零
# 8. 趋势强度 = 低频能量占比
trend_strength = low_energy / total_energy
# --- 3. 时域分析 (Regression) - 只负责"方向" ---
# 使用最小二乘法拟合一条直线 y = kx + b
# x 是时间序列 [0, 1, 2...], y 是归一化价格
# slope 代表每经过一根K线价格变化多少个标准差
x = np.arange(len(normalized))
slope, intercept = np.polyfit(x, normalized, 1)
return trend_strength, slope
def evaluate_entry_signal(self, open_price: float, trend_strength: float, trend_slope: float):
"""
入场逻辑
当频域告诉我们"有趋势"(Strength高)且时域告诉我们"方向明确"(Slope陡峭)时入场
"""
# 1. 滤除噪音震荡 (STFT关卡)
if trend_strength > self.trend_strength_threshold:
direction = None
# 2. 确认方向 (回归关卡)
# slope > 0.05 意味着趋势向上且有一定力度
if "BUY" in self.order_direction and trend_slope > self.slope_threshold:
direction = "BUY"
# slope < -0.05 意味着趋势向下且有一定力度
elif "SELL" in self.order_direction and trend_slope < -self.slope_threshold:
direction = "SELL"
if direction:
# 辅助指标过滤
if not self.indicators.is_condition_met(*self.get_indicator_tuple()):
return
# 反向逻辑
direction = direction
if not self.model_indicator.is_condition_met(*self.get_indicator_tuple()):
direction = "SELL" if direction == "BUY" else "BUY"
if self.reverse:
direction = "SELL" if direction == "BUY" else "BUY"
self.log(f"Signal: {direction} | Strength={trend_strength:.2f} | Slope={trend_slope:.4f}")
self.send_limit_order(direction, open_price, self.trade_volume, "OPEN")
self.entry_time = self.get_current_time()
self.position_direction = "LONG" if direction == "BUY" else "SHORT"
def manage_open_position(self, volume: int, trend_strength: float, trend_slope: float):
"""
离场逻辑
仅依赖频域能量只要低频能量依然主导说明趋势无论方向未被破坏
一旦能量降到 exit_threshold 以下说明市场进入混乱/震荡离场观望
"""
if trend_strength < self.exit_threshold:
direction = "CLOSE_LONG" if volume > 0 else "CLOSE_SHORT"
self.log(f"Exit: {direction} | Strength={trend_strength:.2f} < {self.exit_threshold}")
self.close_position(direction, abs(volume))
self.entry_time = None
self.position_direction = None
# --- 交易辅助 ---
def close_all_positions(self):
positions = self.get_current_positions()
if self.symbol in positions and positions[self.symbol] != 0:
dir = "CLOSE_LONG" if positions[self.symbol] > 0 else "CLOSE_SHORT"
self.close_position(dir, abs(positions[self.symbol]))
def close_position(self, direction: str, volume: int):
self.send_market_order(direction, volume, offset="CLOSE")
def send_market_order(self, direction: str, volume: int, offset: str):
order_id = f"{self.symbol}_{direction}_MKT_{self.order_id_counter}"
self.order_id_counter += 1
order = Order(
id=order_id, symbol=self.symbol, direction=direction, volume=volume,
price_type="MARKET", submitted_time=self.get_current_time(), offset=offset
)
self.send_order(order)
def send_limit_order(self, direction: str, limit_price: float, volume: int, offset: str):
order_id = f"{self.symbol}_{direction}_LMT_{self.order_id_counter}"
self.order_id_counter += 1
order = Order(
id=order_id, symbol=self.symbol, direction=direction, volume=volume,
price_type="LIMIT", submitted_time=self.get_current_time(), offset=offset,
limit_price=limit_price
)
self.send_order(order)