fix: persist WF shadow state to DB and tighten ATR max stop

- core/price_db.py: add wf_state table CRUD (ensure/upsert/load/delete)
  to persist shadow_cons_wins across restarts
- core/trader.py: save WF blocked state on shadow enter/close,
  restore shadow_cons_wins on startup from DB
- core/monitor.py: lower ATR_MAX_STOP 4.0% → 2.0% based on sweep results
- atr_sweep.py: new ATR_MAX_STOP sweep tool using real ATR calc from DB

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
This commit is contained in:
joungmin
2026-03-02 13:49:32 +09:00
parent 324d69dde0
commit 4b6cb8ca0e
4 changed files with 310 additions and 2 deletions

214
atr_sweep.py Normal file
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@@ -0,0 +1,214 @@
"""ATR_MAX_STOP 파라미터 스윕 시뮬레이션.
실제 봇과 동일하게 ATR을 계산하되, ATR_MAX_STOP 상한만 바꿔가며 성과를 비교한다.
- ATR_MIN_STOP = 1.0% (고정)
- ATR_MULT = 1.5 (고정)
- ATR_CANDLES = 5 (고정)
- ATR_MAX_STOP : [1.5%, 2.0%, 2.5%, 3.0%, 3.5%, 4.0%] 스윕
데이터: Oracle ADB ohlcv_hourly (top30_tickers.pkl 상위 20종목)
"""
import pickle
import sys
from pathlib import Path
from dotenv import load_dotenv
load_dotenv(dotenv_path=Path(__file__).parent / ".env")
sys.path.insert(0, str(Path(__file__).parent))
from ohlcv_db import load_from_db
import pandas as pd
# ── 고정 파라미터 ─────────────────────────────────────────
TIME_STOP_HOURS = 8
TIME_STOP_MIN_PCT = 3.0
FEE = 0.0005
LOCAL_VOL_HOURS = 5
VOL_MULT = 2.0
PRICE_QUIET_PCT = 2.0
SIGNAL_TIMEOUT_H = 8
THRESH = 4.8
FROM_DATE = "2025-03-02"
# ATR 고정값
ATR_CANDLES = 5
ATR_MULT = 1.5
ATR_MIN = 0.010 # 1.0%
# 스윕 대상: ATR_MAX_STOP
ATR_MAX_CANDIDATES = [0.015, 0.020, 0.025, 0.030, 0.035, 0.040]
TOP30_FILE = Path("top30_tickers.pkl")
# ── 매수 시점 ATR 계산 ────────────────────────────────────
def calc_atr_stop(df: pd.DataFrame, buy_idx: int, atr_max: float) -> float:
"""매수 직전 ATR_CANDLES개 봉으로 스탑 비율 계산.
실제 봇(monitor.py)의 _get_adaptive_stop() 로직과 동일.
계산 실패 시 ATR_MIN 반환.
"""
start = max(0, buy_idx - ATR_CANDLES - 1)
sub = df.iloc[start:buy_idx]
if len(sub) < ATR_CANDLES:
return ATR_MIN
try:
ranges = (sub["high"] - sub["low"]) / sub["low"]
avg_range = ranges.iloc[-ATR_CANDLES:].mean()
return float(max(ATR_MIN, min(atr_max, avg_range * ATR_MULT)))
except Exception:
return ATR_MIN
# ── 포지션 시뮬 ───────────────────────────────────────────
def simulate_pos(df: pd.DataFrame, buy_idx: int, buy_price: float, stop_pct: float):
"""매수 후 청산 시뮬레이션 (고정 stop_pct 사용)."""
buy_dt = df.index[buy_idx]
peak = buy_price
for i in range(buy_idx + 1, len(df)):
row = df.iloc[i]
ts = df.index[i]
if row["high"] > peak:
peak = row["high"]
stop_price = peak * (1 - stop_pct)
elapsed_h = (ts - buy_dt).total_seconds() / 3600
# 트레일링 스탑
if row["low"] <= stop_price:
sell_price = stop_price
pnl = (sell_price * (1 - FEE) - buy_price * (1 + FEE)) / (buy_price * (1 + FEE)) * 100
return pnl > 0, sell_price, ts, f"트레일링({pnl:+.1f}%)", pnl
# 타임 스탑
pnl_now = (row["close"] - buy_price) / buy_price * 100
if elapsed_h >= TIME_STOP_HOURS and pnl_now < TIME_STOP_MIN_PCT:
pnl = (row["close"] * (1 - FEE) - buy_price * (1 + FEE)) / (buy_price * (1 + FEE)) * 100
return pnl > 0, row["close"], ts, "타임스탑", pnl
last = df.iloc[-1]["close"]
pnl = (last * (1 - FEE) - buy_price * (1 + FEE)) / (buy_price * (1 + FEE)) * 100
return pnl > 0, last, df.index[-1], "데이터종료", pnl
# ── vol-lead 전략 실행 (ATR_MAX 동적 주입) ────────────────
def run_vol_lead(df: pd.DataFrame, thresh: float, atr_max: float) -> list:
"""vol-lead 신호 → 진입 → ATR 기반 청산 시뮬.
진입 시점의 ATR을 계산해 stop_pct를 결정하고 청산 시뮬에 전달.
"""
trades = []
signal_i = None
signal_price = None
in_pos = False
buy_idx = buy_price = stop_pct = None
i = max(12, LOCAL_VOL_HOURS + 2)
while i < len(df):
if in_pos:
is_win, sp, sdt, reason, pnl = simulate_pos(df, buy_idx, buy_price, stop_pct)
next_i = next((j for j in range(i, len(df)) if df.index[j] > sdt), len(df))
trades.append((is_win, pnl, df.index[buy_idx], sdt, reason, stop_pct))
in_pos = False
signal_i = None
signal_price = None
i = next_i
continue
close = df.iloc[i]["close"]
close_2h = df.iloc[i - 2]["close"]
quiet = abs(close - close_2h) / close_2h * 100 < PRICE_QUIET_PCT
vol_recent = df.iloc[i - 1]["volume"]
vol_avg = df.iloc[i - LOCAL_VOL_HOURS - 1:i - 1]["volume"].mean()
vol_spike = vol_avg > 0 and vol_recent >= vol_avg * VOL_MULT
if quiet and vol_spike:
if signal_i is None:
signal_i = i
signal_price = close
else:
if signal_i is not None and close < signal_price:
signal_i = signal_price = None
if signal_i is not None and (i - signal_i) > SIGNAL_TIMEOUT_H:
signal_i = signal_price = None
if signal_i is not None:
move = (close - signal_price) / signal_price * 100
if move >= thresh:
in_pos = True
buy_idx = i
buy_price = close
stop_pct = calc_atr_stop(df, i, atr_max) # ← 진입 시점 ATR 계산
signal_i = signal_price = None
i += 1
return trades
# ── 최대 낙폭 계산 ────────────────────────────────────────
def calc_max_drawdown(trades: list) -> float:
if not trades:
return 0.0
cum = peak = max_dd = 0.0
for t in sorted(trades, key=lambda x: x[2]):
cum += t[1]
if cum > peak:
peak = cum
dd = peak - cum
if dd > max_dd:
max_dd = dd
return max_dd
# ── 메인 ─────────────────────────────────────────────────
def main() -> None:
top30: list = pickle.load(open(TOP30_FILE, "rb"))
print(f"DB 로드 중... ({len(top30)}종목)")
data = load_from_db(top30, from_date=FROM_DATE)
valid = [t for t in top30 if t in data and len(data[t]) >= 500]
use20 = valid[:20]
print(f"유효 종목: {len(use20)}\n")
print(f"{'='*72}")
print(f"ATR_MAX_STOP 스윕 | ATR×{ATR_MULT} (최소={ATR_MIN:.1%}) | vol-lead +{THRESH}% | {len(use20)}종목")
print(f"{'='*72}")
print(f"{'ATR_MAX':>8} | {'거래수':>6} | {'승률':>6} | {'누적PnL%':>10} | {'최대낙폭%':>10} | {'평균스탑%':>9}")
print(f"{''*72}")
for atr_max in ATR_MAX_CANDIDATES:
all_trades = []
for ticker in use20:
if ticker not in data:
continue
trades = run_vol_lead(data[ticker], THRESH, atr_max)
all_trades.extend(trades)
total = len(all_trades)
if total == 0:
print(f"{atr_max*100:>7.1f}% | {'0':>6} | {'N/A':>6} | {'N/A':>10} | {'N/A':>10} | {'N/A':>9}")
continue
wins = sum(1 for t in all_trades if t[0])
win_rate = wins / total * 100
cum_pnl = sum(t[1] for t in all_trades)
max_dd = calc_max_drawdown(all_trades)
avg_stop = sum(t[5] for t in all_trades) / total * 100 # 실제 평균 스탑%
print(f"{atr_max*100:>7.1f}% | {total:>6}건 | {win_rate:>5.1f}% | "
f"{cum_pnl:>+9.2f}% | {-max_dd:>+9.2f}% | {avg_stop:>8.2f}%")
print(f"{'='*72}")
print("\n※ 평균스탑% = 실제 거래에서 적용된 ATR 스탑의 평균 (ATR_MAX에 걸렸는지 확인)")
if __name__ == "__main__":
main()

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@@ -22,7 +22,7 @@ TIME_STOP_MIN_GAIN_PCT = float(os.getenv("TIME_STOP_MIN_GAIN_PCT", "3"))
ATR_CANDLES = 5 # 최근 N개 1h봉으로 자연 진폭 계산 ATR_CANDLES = 5 # 최근 N개 1h봉으로 자연 진폭 계산
ATR_MULT = 1.5 # 평균 진폭 × 배수 = 스탑 임계값 ATR_MULT = 1.5 # 평균 진폭 × 배수 = 스탑 임계값
ATR_MIN_STOP = 0.010 # 최소 스탑 1.0% (너무 좁아지는 거 방지) ATR_MIN_STOP = 0.010 # 최소 스탑 1.0% (너무 좁아지는 거 방지)
ATR_MAX_STOP = 0.040 # 최대 스탑 4.0% (너무 넓어지는 거 방지) ATR_MAX_STOP = 0.020 # 최대 스탑 2.0% (너무 넓어지는 거 방지)
# ATR 캐시: 종목별 (스탑비율, 계산시각) — 10분마다 갱신 # ATR 캐시: 종목별 (스탑비율, 계산시각) — 10분마다 갱신
_atr_cache: dict[str, tuple[float, float]] = {} _atr_cache: dict[str, tuple[float, float]] = {}

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@@ -282,6 +282,71 @@ def delete_sell_price(ticker: str) -> None:
) )
# ── WF 상태 영구 저장 (재시작 후 shadow 재활 상태 유지) ──────────────────────
def ensure_wf_state_table() -> None:
"""wf_state 테이블이 없으면 생성."""
ddl = """
CREATE TABLE wf_state (
ticker VARCHAR2(20) NOT NULL PRIMARY KEY,
is_blocked NUMBER(1) DEFAULT 0 NOT NULL,
shadow_cons_wins NUMBER DEFAULT 0 NOT NULL,
updated_at TIMESTAMP DEFAULT SYSTIMESTAMP NOT NULL
)
"""
with _conn() as conn:
try:
conn.cursor().execute(ddl)
except oracledb.DatabaseError as e:
if e.args[0].code != 955: # ORA-00955: 이미 존재
raise
def upsert_wf_state(ticker: str, is_blocked: bool, shadow_cons_wins: int) -> None:
"""WF 차단 상태 저장 또는 갱신."""
sql = """
MERGE INTO wf_state w
USING (SELECT :ticker AS ticker FROM dual) d
ON (w.ticker = d.ticker)
WHEN MATCHED THEN
UPDATE SET is_blocked = :is_blocked,
shadow_cons_wins = :shadow_cons_wins,
updated_at = SYSTIMESTAMP
WHEN NOT MATCHED THEN
INSERT (ticker, is_blocked, shadow_cons_wins)
VALUES (:ticker, :is_blocked, :shadow_cons_wins)
"""
with _conn() as conn:
conn.cursor().execute(sql, {
"ticker": ticker,
"is_blocked": 1 if is_blocked else 0,
"shadow_cons_wins": shadow_cons_wins,
})
def load_wf_states() -> dict[str, dict]:
"""저장된 WF 상태 전체 로드.
Returns:
{ticker: {"is_blocked": bool, "shadow_cons_wins": int}}
"""
with _conn() as conn:
cur = conn.cursor()
cur.execute("SELECT ticker, is_blocked, shadow_cons_wins FROM wf_state")
return {
r[0]: {"is_blocked": bool(r[1]), "shadow_cons_wins": int(r[2])}
for r in cur.fetchall()
}
def delete_wf_state(ticker: str) -> None:
"""WF 상태 삭제 (WF 해제 시)."""
with _conn() as conn:
conn.cursor().execute(
"DELETE FROM wf_state WHERE ticker = :ticker", {"ticker": ticker}
)
def load_positions() -> list[dict]: def load_positions() -> list[dict]:
"""저장된 전체 포지션 로드.""" """저장된 전체 포지션 로드."""
sql = """ sql = """

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@@ -18,6 +18,7 @@ from .price_db import (
ensure_trade_results_table, record_trade, load_recent_wins, ensure_trade_results_table, record_trade, load_recent_wins,
ensure_sell_prices_table, upsert_sell_price, load_sell_prices, ensure_sell_prices_table, upsert_sell_price, load_sell_prices,
get_cumulative_krw_profit, get_cumulative_krw_profit,
ensure_wf_state_table, upsert_wf_state, load_wf_states, delete_wf_state,
) )
load_dotenv() load_dotenv()
@@ -148,6 +149,10 @@ def _shadow_enter(ticker: str) -> None:
} }
cons = _shadow_cons_wins.get(ticker, 0) cons = _shadow_cons_wins.get(ticker, 0)
try:
upsert_wf_state(ticker, is_blocked=True, shadow_cons_wins=cons)
except Exception as e:
logger.error(f"WF 상태 DB 저장 실패 {ticker}: {e}")
logger.info( logger.info(
f"[Shadow진입] {ticker} @ {price:,.0f}" f"[Shadow진입] {ticker} @ {price:,.0f}"
f"(가상 — WF 재활 {cons}/{WF_SHADOW_WINS}연승 필요)" f"(가상 — WF 재활 {cons}/{WF_SHADOW_WINS}연승 필요)"
@@ -185,6 +190,15 @@ def close_shadow(ticker: str, sell_price: float, pnl_pct: float, reason: str) ->
if do_wf_reset: if do_wf_reset:
_shadow_cons_wins.pop(ticker, None) _shadow_cons_wins.pop(ticker, None)
# shadow 상태 DB 갱신 (_shadow_lock 해제 후)
try:
if do_wf_reset:
delete_wf_state(ticker)
else:
upsert_wf_state(ticker, is_blocked=True, shadow_cons_wins=cons)
except Exception as e:
logger.error(f"WF 상태 DB 갱신 실패 {ticker}: {e}")
mark = "" if is_win else "" mark = "" if is_win else ""
logger.info( logger.info(
f"[Shadow청산] {ticker} {spos['buy_price']:,.0f}{sell_price:,.0f}" f"[Shadow청산] {ticker} {spos['buy_price']:,.0f}{sell_price:,.0f}"
@@ -239,7 +253,7 @@ def restore_positions() -> None:
DB에 저장된 실제 매수가를 복원하고, Upbit 잔고에 없으면 DB에서도 삭제한다. DB에 저장된 실제 매수가를 복원하고, Upbit 잔고에 없으면 DB에서도 삭제한다.
""" """
# trade_results / sell_prices 테이블 초기화 # trade_results / sell_prices / wf_state 테이블 초기화
try: try:
ensure_trade_results_table() ensure_trade_results_table()
except Exception as e: except Exception as e:
@@ -248,6 +262,21 @@ def restore_positions() -> None:
# 시작 시 복리 예산 복원 (이전 세션 수익 반영) # 시작 시 복리 예산 복원 (이전 세션 수익 반영)
_recalc_compound_budget() _recalc_compound_budget()
# WF 상태 복원 (shadow 연속승 횟수 유지)
try:
ensure_wf_state_table()
wf_states = load_wf_states()
for ticker, state in wf_states.items():
if state["is_blocked"]:
_shadow_cons_wins[ticker] = state["shadow_cons_wins"]
if wf_states:
logger.info(
f"[복원] WF 차단 상태 {len(wf_states)}건 복원: "
+ ", ".join(f"{t}(shadow={s['shadow_cons_wins']})" for t, s in wf_states.items())
)
except Exception as e:
logger.warning(f"WF 상태 복원 실패 (무시): {e}")
try: try:
ensure_sell_prices_table() ensure_sell_prices_table()
except Exception as e: except Exception as e: