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lm_code/test1.py

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2025-12-23 11:12:32 +08:00
import os
import time
import uuid
import datetime
from dataclasses import dataclass
from tqdm import tqdm
from loguru import logger
from bitmart.api_contract import APIContract
from bitmart.lib.cloud_exceptions import APIException
from 交易.tools import send_dingtalk_message
@dataclass
class StrategyConfig:
# =============================
# 1m | ETH 永续 | 控止损≤5/日
# =============================
# ===== 合约 =====
contract_symbol: str = "ETHUSDT"
open_type: str = "cross"
leverage: str = "30" # 50 -> 30显著降低1m噪声导致的连环止损与回撤波动
# ===== K线与指标 =====
step_min: int = 1
lookback_min: int = 240
ema_len: int = 36 # 30 -> 36均值更稳信号更挑剔
atr_len: int = 14
# ===== 动态阈值基础(自适应行情)=====
entry_dev_floor: float = 0.0012 # 0.10% -> 0.12%:过滤小噪声进场
tp_floor: float = 0.0006 # 0.05% -> 0.06%:更接近“净盈利”
sl_floor: float = 0.0018 # 0.15% -> 0.18%ETH 1m插针多底线略放宽
# 更挑剔、更少止损(进场更苛刻;止损不过度随波动放大)
entry_k: float = 1.45 # 1.20 -> 1.45:减少进场频率
tp_k: float = 0.65 # 0.60 -> 0.65:略抬止盈
sl_k: float = 1.05 # 1.20 -> 1.05配合sl_floor避免高波动下止损无限变大
# ===== 时间/冷却 =====
max_hold_sec: int = 75 # 90/120 -> 751m回归不恋战
cooldown_sec_after_exit: int = 20 # 10 -> 20减少“刚出又进”连环单
# ===== 下单/仓位 =====
risk_percent: float = 0.004 # 0.005 -> 0.004再压一点波动更贴合止损≤5/日
min_size: int = 1
max_size: int = 5000
# ===== 日内风控 =====
daily_loss_limit: float = 0.02 # -2% 停机
daily_profit_cap: float = 0.01 # +1% 封顶停机
# ===== 危险模式过滤1m ETH 更敏感)=====
atr_ratio_kill: float = 0.0038 # 0.0045 -> 0.0038:更早暂停开仓
big_body_kill: float = 0.010 # 0.012 -> 0.010:更敏感
# ===== 轮询节奏 =====
klines_refresh_sec: int = 10
tick_refresh_sec: int = 1
status_notify_sec: int = 60
# =========================================================
# ✅ 止损后同向入场加门槛(但不禁止同向重入)
# =========================================================
reentry_penalty_mult: float = 1.55 # 同向入场门槛×1.55:大幅降低连环止损概率
reentry_penalty_max_sec: int = 180 # 罚时最长持续
reset_band_k: float = 0.45 # dev回到更靠近均值才解除罚则
reset_band_floor: float = 0.0006 # 最小复位带宽0.06%
# =========================================================
# ✅ 自动阈值ATR/Price 分位数基准(更稳,不被短时噪声带跑)
# =========================================================
vol_baseline_window: int = 120
vol_baseline_quantile: float = 0.65
vol_scale_min: float = 0.80
vol_scale_max: float = 1.60
# =========================================================
# ✅ 升级:止损后同方向 SL 放宽幅度与“止损时 vol_scale”联动
# =========================================================
post_sl_sl_max_sec: int = 90 # 只照顾“扫损后很快反弹”的窗口
post_sl_mult_min: float = 1.02
post_sl_mult_max: float = 1.16
post_sl_vol_alpha: float = 0.20 # mult = 1 + alpha*(vol_scale_at_sl - 1)
class BitmartFuturesMeanReversionBot:
def __init__(self, cfg: StrategyConfig):
self.cfg = cfg
# ✅ 只从环境变量读(请务必更换曾经硬编码泄露过的 key
self.api_key = os.getenv("BITMART_API_KEY", "").strip()
self.secret_key = os.getenv("BITMART_SECRET_KEY", "").strip()
self.memo = os.getenv("BITMART_MEMO", "合约交易").strip()
if not self.api_key or not self.secret_key:
raise RuntimeError("请先设置环境变量 BITMART_API_KEY / BITMART_SECRET_KEY / BITMART_MEMO(可选)")
self.contractAPI = APIContract(self.api_key, self.secret_key, self.memo, timeout=(5, 15))
# 持仓状态: -1 空, 0 无, 1 多
self.pos = 0
self.entry_price = None
self.entry_ts = None
self.last_exit_ts = 0
# 日内权益基准
self.day_start_equity = None
self.trading_enabled = True
self.day_tag = datetime.date.today()
# 缓存
self._klines_cache = None
self._klines_cache_ts = 0
self._last_status_notify_ts = 0
# ✅ 止损后“同向入场加门槛”状态
self.last_sl_dir = 0 # 1=多止损,-1=空止损0=无
self.last_sl_ts = 0.0
# ✅ 止损后“同方向 SL 联动放宽”状态
self.post_sl_dir = 0
self.post_sl_ts = 0.0
self.post_sl_vol_scale = 1.0 # 记录止损时的 vol_scale
self.pbar = tqdm(total=60, desc="运行中(秒)", ncols=90)
# ----------------- 通用工具 -----------------
def ding(self, msg, error=False):
prefix = "❌bitmart" if error else "🔔bitmart"
if error:
for _ in range(3):
send_dingtalk_message(f"{prefix}{msg}")
else:
send_dingtalk_message(f"{prefix}{msg}")
def set_leverage(self) -> bool:
try:
resp = self.contractAPI.post_submit_leverage(
contract_symbol=self.cfg.contract_symbol,
leverage=self.cfg.leverage,
open_type=self.cfg.open_type
)[0]
if resp.get("code") == 1000:
logger.success(f"设置杠杆成功:{self.cfg.open_type} + {self.cfg.leverage}x")
return True
logger.error(f"设置杠杆失败: {resp}")
self.ding(f"设置杠杆失败: {resp}", error=True)
return False
except Exception as e:
logger.error(f"设置杠杆异常: {e}")
self.ding(f"设置杠杆异常: {e}", error=True)
return False
# ----------------- 行情/指标 -----------------
def get_klines_cached(self):
now = time.time()
if self._klines_cache is not None and (now - self._klines_cache_ts) < self.cfg.klines_refresh_sec:
return self._klines_cache
kl = self.get_klines()
if kl:
self._klines_cache = kl
self._klines_cache_ts = now
return self._klines_cache
def get_klines(self):
try:
end_time = int(time.time())
start_time = end_time - 60 * self.cfg.lookback_min
resp = self.contractAPI.get_kline(
contract_symbol=self.cfg.contract_symbol,
step=self.cfg.step_min,
start_time=start_time,
end_time=end_time
)[0]
if resp.get("code") != 1000:
logger.error(f"获取K线失败: {resp}")
return None
data = resp.get("data", [])
formatted = []
for k in data:
formatted.append({
"id": int(k["timestamp"]),
"open": float(k["open_price"]),
"high": float(k["high_price"]),
"low": float(k["low_price"]),
"close": float(k["close_price"]),
})
formatted.sort(key=lambda x: x["id"])
return formatted
except Exception as e:
logger.error(f"获取K线异常: {e}")
self.ding(f"获取K线异常: {e}", error=True)
return None
def get_last_price(self, fallback_close: float) -> float:
"""
优先取更实时的最新价若SDK不支持/字段不同回退到K线close
"""
try:
if hasattr(self.contractAPI, "get_contract_details"):
r = self.contractAPI.get_contract_details(contract_symbol=self.cfg.contract_symbol)[0]
d = r.get("data") if isinstance(r, dict) else None
if isinstance(d, dict):
for key in ("last_price", "mark_price", "index_price"):
if key in d and d[key] is not None:
return float(d[key])
if hasattr(self.contractAPI, "get_ticker"):
r = self.contractAPI.get_ticker(contract_symbol=self.cfg.contract_symbol)[0]
d = r.get("data") if isinstance(r, dict) else None
if isinstance(d, dict):
for key in ("last_price", "price", "last", "close"):
if key in d and d[key] is not None:
return float(d[key])
except Exception:
pass
return float(fallback_close)
@staticmethod
def ema(values, n: int) -> float:
k = 2 / (n + 1)
e = values[0]
for v in values[1:]:
e = v * k + e * (1 - k)
return e
@staticmethod
def atr(klines, n: int) -> float:
if len(klines) < n + 1:
return 0.0
trs = []
for i in range(-n, 0):
cur = klines[i]
prev = klines[i - 1]
tr = max(
cur["high"] - cur["low"],
abs(cur["high"] - prev["close"]),
abs(cur["low"] - prev["close"]),
)
trs.append(tr)
return sum(trs) / len(trs)
def is_danger_market(self, klines, price: float) -> bool:
last = klines[-1]
body = abs(last["close"] - last["open"]) / last["open"] if last["open"] else 0.0
if body >= self.cfg.big_body_kill:
return True
a = self.atr(klines, self.cfg.atr_len)
atr_ratio = (a / price) if price > 0 else 0.0
if atr_ratio >= self.cfg.atr_ratio_kill:
return True
return False
def atr_ratio_baseline(self, klines) -> float:
"""
自动阈值基准最近 window 根的 atr_ratio 分布的 quantile 作为典型波动
"""
window = self.cfg.vol_baseline_window
if len(klines) < (window + self.cfg.atr_len + 5):
return 0.0
ratios = []
for i in range(-window, 0):
sub = klines[:i] if i != 0 else klines
a = self.atr(sub, self.cfg.atr_len)
p = sub[-1]["close"]
if p > 0 and a > 0:
ratios.append(a / p)
if not ratios:
return 0.0
ratios.sort()
q = max(0.0, min(1.0, self.cfg.vol_baseline_quantile))
idx = int(q * (len(ratios) - 1))
return ratios[idx]
def dynamic_thresholds(self, atr_ratio: float, base_ratio: float):
"""
动态阈值atr_ratio * vol_scale并带 floor
"""
if base_ratio <= 0:
vol_scale = 1.0
else:
raw = atr_ratio / base_ratio
vol_scale = max(self.cfg.vol_scale_min, min(self.cfg.vol_scale_max, raw))
entry_dev = max(self.cfg.entry_dev_floor, self.cfg.entry_k * vol_scale * atr_ratio)
tp = max(self.cfg.tp_floor, self.cfg.tp_k * vol_scale * atr_ratio)
sl = max(self.cfg.sl_floor, self.cfg.sl_k * vol_scale * atr_ratio)
return entry_dev, tp, sl, vol_scale
# ----------------- 账户/仓位 -----------------
def get_assets_available(self) -> float:
try:
resp = self.contractAPI.get_assets_detail()[0]
if resp.get("code") != 1000:
return 0.0
data = resp.get("data")
if isinstance(data, dict):
return float(data.get("available_balance", 0))
if isinstance(data, list):
for asset in data:
if asset.get("currency") == "USDT":
return float(asset.get("available_balance", 0))
return 0.0
except Exception as e:
logger.error(f"余额查询异常: {e}")
return 0.0
def get_position_status(self) -> bool:
try:
resp = self.contractAPI.get_position(contract_symbol=self.cfg.contract_symbol)[0]
if resp.get("code") != 1000:
return False
positions = resp.get("data", [])
if not positions:
self.pos = 0
return True
p = positions[0]
self.pos = 1 if p["position_type"] == 1 else -1
return True
except Exception as e:
logger.error(f"持仓查询异常: {e}")
self.ding(f"持仓查询异常: {e}", error=True)
return False
def get_equity_proxy(self) -> float:
return self.get_assets_available()
def refresh_daily_baseline(self):
today = datetime.date.today()
if today != self.day_tag:
self.day_tag = today
self.day_start_equity = None
self.trading_enabled = True
self.ding(f"新的一天({today}):重置日内风控基准")
def risk_kill_switch(self):
self.refresh_daily_baseline()
equity = self.get_equity_proxy()
if equity <= 0:
return
if self.day_start_equity is None:
self.day_start_equity = equity
logger.info(f"日内权益基准设定:{equity:.2f} USDT")
return
pnl = (equity - self.day_start_equity) / self.day_start_equity
if pnl <= -self.cfg.daily_loss_limit:
self.trading_enabled = False
self.ding(f"触发日止损:{pnl * 100:.2f}% -> 停机", error=True)
if pnl >= self.cfg.daily_profit_cap:
self.trading_enabled = False
self.ding(f"达到日盈利封顶:{pnl * 100:.2f}% -> 停机")
# ----------------- 下单 -----------------
def calculate_size(self, price: float) -> int:
"""
保守仓位估算 10.001ETH沿用你原假设
"""
bal = self.get_assets_available()
if bal < 10:
return 0
margin = bal * self.cfg.risk_percent
lev = int(self.cfg.leverage)
size = int((margin * lev) / (price * 0.001))
size = max(self.cfg.min_size, size)
size = min(self.cfg.max_size, size)
return size
def place_market_order(self, side: int, size: int) -> bool:
"""
side:
1 开多
2 平空
3 平多
4 开空
"""
if size <= 0:
return False
client_order_id = f"mr_{int(time.time())}_{uuid.uuid4().hex[:8]}"
try:
resp = self.contractAPI.post_submit_order(
contract_symbol=self.cfg.contract_symbol,
client_order_id=client_order_id,
side=side,
mode=1,
type="market",
leverage=self.cfg.leverage,
open_type=self.cfg.open_type,
size=size
)[0]
logger.info(f"order_resp: {resp}")
if resp.get("code") == 1000:
return True
self.ding(f"下单失败: {resp}", error=True)
return False
except APIException as e:
logger.error(f"API下单异常: {e}")
self.ding(f"API下单异常: {e}", error=True)
return False
except Exception as e:
logger.error(f"下单未知异常: {e}")
self.ding(f"下单未知异常: {e}", error=True)
return False
def close_position_all(self):
if self.pos == 1:
ok = self.place_market_order(3, 999999)
if ok:
self.pos = 0
elif self.pos == -1:
ok = self.place_market_order(2, 999999)
if ok:
self.pos = 0
# ----------------- 止损后机制(核心优化) -----------------
def _reentry_penalty_active(self, dev: float, entry_dev: float) -> bool:
"""
止损后同向入场加门槛
- 只要 dev 还没有回到中性区就对上次止损方向的同向入场门槛提高
- dev 回到 abs(dev) <= reset_band 后自动解除
- 超过 max_sec 自动解除避免一直卡住
"""
if self.last_sl_dir == 0:
return False
if (time.time() - self.last_sl_ts) > self.cfg.reentry_penalty_max_sec:
self.last_sl_dir = 0
return False
reset_band = max(self.cfg.reset_band_floor, self.cfg.reset_band_k * entry_dev)
if abs(dev) <= reset_band:
self.last_sl_dir = 0
return False
return True
def _post_sl_dynamic_mult(self) -> float:
"""
止损后同方向 SL 放宽倍数与止损时 vol_scale联动
mult = 1 + alpha*(vol_scale_at_sl - 1)
并做上下限裁剪 + 有效期控制
"""
if self.post_sl_dir == 0:
return 1.0
if (time.time() - self.post_sl_ts) > self.cfg.post_sl_sl_max_sec:
self.post_sl_dir = 0
self.post_sl_vol_scale = 1.0
return 1.0
raw = 1.0 + self.cfg.post_sl_vol_alpha * (self.post_sl_vol_scale - 1.0)
raw = max(1.0, raw) # 不缩小止损,只放宽
return max(self.cfg.post_sl_mult_min, min(self.cfg.post_sl_mult_max, raw))
# ----------------- 交易逻辑 -----------------
def in_cooldown(self) -> bool:
return (time.time() - self.last_exit_ts) < self.cfg.cooldown_sec_after_exit
def maybe_enter(self, price: float, ema_value: float, entry_dev: float):
if self.pos != 0:
return
if self.in_cooldown():
return
dev = (price - ema_value) / ema_value if ema_value else 0.0
size = self.calculate_size(price)
if size <= 0:
return
penalty_active = self._reentry_penalty_active(dev, entry_dev)
# 基础阈值
long_th = -entry_dev
short_th = entry_dev
# 若罚则生效:对“上次止损方向”的同向阈值提高
if penalty_active:
if self.last_sl_dir == 1:
long_th = -entry_dev * self.cfg.reentry_penalty_mult
elif self.last_sl_dir == -1:
short_th = entry_dev * self.cfg.reentry_penalty_mult
logger.info(
f"enter_check: price={price:.2f}, ema={ema_value:.2f}, dev={dev * 100:.3f}% "
f"(entry_dev={entry_dev * 100:.3f}%, long_th={long_th * 100:.3f}%, short_th={short_th * 100:.3f}%) "
f"size={size}, penalty={penalty_active}, last_sl_dir={self.last_sl_dir}"
)
if dev <= long_th:
if self.place_market_order(1, size): # 开多
self.pos = 1
self.entry_price = price
self.entry_ts = time.time()
self.ding(f"✅开多dev={dev * 100:.3f}% size={size} entry={price:.2f}")
elif dev >= short_th:
if self.place_market_order(4, size): # 开空
self.pos = -1
self.entry_price = price
self.entry_ts = time.time()
self.ding(f"✅开空dev={dev * 100:.3f}% size={size} entry={price:.2f}")
def maybe_exit(self, price: float, tp: float, sl: float, vol_scale: float):
if self.pos == 0 or self.entry_price is None or self.entry_ts is None:
return
hold = time.time() - self.entry_ts
if self.pos == 1:
pnl = (price - self.entry_price) / self.entry_price
else:
pnl = (self.entry_price - price) / self.entry_price
# ✅ 同方向止损后:在有效期内放宽 SL与止损时 vol_scale 联动)
sl_mult = 1.0
if self.post_sl_dir == self.pos and self.post_sl_dir != 0:
sl_mult = self._post_sl_dynamic_mult()
effective_sl = sl * sl_mult
if pnl >= tp:
self.close_position_all()
self.ding(f"🎯止盈pnl={pnl * 100:.3f}% price={price:.2f} tp={tp * 100:.3f}%")
self.entry_price, self.entry_ts = None, None
self.last_exit_ts = time.time()
elif pnl <= -effective_sl:
# 记录止损方向
sl_dir = self.pos # 1=多止损,-1=空止损
self.close_position_all()
self.ding(
f"🛑止损pnl={pnl * 100:.3f}% price={price:.2f} "
f"sl={sl * 100:.3f}% effective_sl={effective_sl * 100:.3f}%(×{sl_mult:.2f})",
error=True
)
# ✅ 开启:同向入场加门槛
self.last_sl_dir = sl_dir
self.last_sl_ts = time.time()
# ✅ 开启:同向 SL 联动放宽(记录止损时 vol_scale
self.post_sl_dir = sl_dir
self.post_sl_ts = time.time()
self.post_sl_vol_scale = float(vol_scale)
self.entry_price, self.entry_ts = None, None
self.last_exit_ts = time.time()
elif hold >= self.cfg.max_hold_sec:
self.close_position_all()
self.ding(f"⏱超时hold={int(hold)}s pnl={pnl * 100:.3f}% price={price:.2f}")
self.entry_price, self.entry_ts = None, None
self.last_exit_ts = time.time()
def notify_status_throttled(self, price: float, ema_value: float, dev: float, bal: float,
atr_ratio: float, base_ratio: float, vol_scale: float,
entry_dev: float, tp: float, sl: float):
now = time.time()
if (now - self._last_status_notify_ts) < self.cfg.status_notify_sec:
return
self._last_status_notify_ts = now
direction_str = "" if self.pos == 1 else ("" if self.pos == -1 else "")
penalty_active = self._reentry_penalty_active(dev, entry_dev)
sl_mult = 1.0
if self.pos != 0 and self.post_sl_dir == self.pos:
sl_mult = self._post_sl_dynamic_mult()
msg = (
f"【BitMart {self.cfg.contract_symbol}1m均值回归(自动阈值+止损智能)】\n"
f"方向:{direction_str}\n"
f"现价:{price:.2f}\n"
f"EMA{self.cfg.ema_len}{ema_value:.2f}\n"
f"dev{dev * 100:.3f}%entry_dev={entry_dev * 100:.3f}%\n"
f"ATR比{atr_ratio * 100:.3f}% 基准:{base_ratio * 100:.3f}% vol_scale={vol_scale:.2f}\n"
f"tp/sl{tp * 100:.3f}% / {sl * 100:.3f}%postSL×{sl_mult:.2f}, sl@scale={self.post_sl_vol_scale:.2f}\n"
f"止损同向加门槛:{'ON' if penalty_active else 'OFF'}last_sl_dir={self.last_sl_dir}\n"
f"可用余额:{bal:.2f} USDT 杠杆:{self.cfg.leverage}x\n"
f"超时:{self.cfg.max_hold_sec}s 冷却:{self.cfg.cooldown_sec_after_exit}s"
)
self.ding(msg)
def action(self):
if not self.set_leverage():
self.ding("杠杆设置失败,停止运行", error=True)
return
while True:
now_dt = datetime.datetime.now()
self.pbar.n = now_dt.second
self.pbar.refresh()
klines = self.get_klines_cached()
if not klines or len(klines) < (self.cfg.ema_len + 5):
time.sleep(1)
continue
last_k = klines[-1]
closes = [k["close"] for k in klines[-(self.cfg.ema_len + 1):]]
ema_value = self.ema(closes, self.cfg.ema_len)
price = self.get_last_price(fallback_close=float(last_k["close"]))
dev = (price - ema_value) / ema_value if ema_value else 0.0
# 自动阈值
a = self.atr(klines, self.cfg.atr_len)
atr_ratio = (a / price) if price > 0 else 0.0
base_ratio = self.atr_ratio_baseline(klines)
entry_dev, tp, sl, vol_scale = self.dynamic_thresholds(atr_ratio, base_ratio)
# 日内风控
self.risk_kill_switch()
# 刷新仓位
if not self.get_position_status():
time.sleep(1)
continue
# 停机:平仓+不再开仓
if not self.trading_enabled:
if self.pos != 0:
self.close_position_all()
time.sleep(5)
continue
# 危险市场:不新开仓(允许已有仓按 tp/sl/超时 退出)
if self.is_danger_market(klines, price):
logger.warning("危险模式:高波动/大实体K暂停开仓")
self.maybe_exit(price, tp, sl, vol_scale)
time.sleep(self.cfg.tick_refresh_sec)
continue
# 先出场再入场
self.maybe_exit(price, tp, sl, vol_scale)
self.maybe_enter(price, ema_value, entry_dev)
# 状态通知(限频)
bal = self.get_assets_available()
self.notify_status_throttled(
price, ema_value, dev, bal,
atr_ratio, base_ratio, vol_scale,
entry_dev, tp, sl
)
time.sleep(self.cfg.tick_refresh_sec)
if __name__ == "__main__":
"""
Windows PowerShell:
setx BITMART_API_KEY "你的key"
setx BITMART_SECRET_KEY "你的secret"
setx BITMART_MEMO "合约交易"
重新打开终端再运行
Linux/macOS:
export BITMART_API_KEY="你的key"
export BITMART_SECRET_KEY="你的secret"
export BITMART_MEMO="合约交易"
"""
cfg = StrategyConfig()
bot = BitmartFuturesMeanReversionBot(cfg)
bot.action()
# 9208.96