- c6111_extract: roles_for() 동적 생성, COLUMN_EXCEPTIONS per-prefix - c6111_prodmap/shadow/startup/rolling: --data/--prefix CLI 인자 지원 - run_column.py: 5개 컬럼 전 파이프라인 실행 래퍼 - c6111_shutdown.py: detect_cutoffs + shutdown_milestones (lookback 1200) - c6111_operator_assist.py: OOD 게이트 + shadow 리플레이 - c6111_export_model.py: 선형근사 JSON export - SteamAdvisor.cs: Predict+ClassifyMode+InEnvelope (NaN guard, Ood fix) - SteamAdvisorController: GET/POST /api/steam/predict - appsettings.json/Program.cs: DI 등록 - docs: 작업지시서 현황 갱신, 진단보고서 작성 (3 MED/8 LOW, 100% 정확도)
149 lines
5.7 KiB
Python
149 lines
5.7 KiB
Python
"""
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③ SHUTDOWN 절차 학습 (few-shot). startup의 역순.
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형제 컬럼 호환: --data, --prefix CLI 인자.
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"""
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import argparse
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import numpy as np
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import pandas as pd
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import matplotlib
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matplotlib.use("Agg")
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import matplotlib.pyplot as plt
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BASE = "/home/windpacer/projects/hc900_ax/scripts/analysis/"
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def detect_cutoffs(df):
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"""★제품 컷오프★ 이벤트: product >100→<50 하강엣지이고 직후 steam도 하강(shutdown)."""
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prod = df["product"].values
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steam_op = df["steam_op"].values
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reb = df["reb_temp"].values
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outs = []
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i = 60
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n = len(df)
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while i < n:
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if prod[i] < 50 and prod[i-1] >= 100 and reb[i] > 60:
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fwd = steam_op[i:min(n, i+60)]
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if np.nanmean(fwd) < np.nanmean(steam_op[max(0, i-60):i]) * 0.8:
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outs.append(i)
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i += 720
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continue
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i += 1
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return outs
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def shutdown_milestones(df, co):
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"""컷오프 인덱스 co 기준 역방향 절차 추출."""
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tc = df["dtat"].iloc[co]
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n = len(df)
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def mins(i):
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return None if i is None else (df["dtat"].iloc[i] - tc).total_seconds() / 60
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feed_start = None
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feed_vals = df["feed"].values
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for j in range(co, max(0, co - 1200), -1):
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if feed_vals[j] < 100:
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feed_start = j
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if feed_start is not None and j > 0:
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if feed_vals[j] > feed_vals[min(j + 30, co)] * 0.85:
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continue
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if feed_vals[j] > 250 and feed_vals[j] > feed_vals[min(j + 1, co)] * 0.98:
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feed_start = j
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break
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steam_off = None
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for j in range(co, min(n, co + 600)):
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if df["steam_op"].iloc[j] < 5:
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steam_off = j
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break
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vacuum_off = None
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for j in range(co, min(n, co + 1200)):
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if df["vacuum"].iloc[j] > 300:
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vacuum_off = j
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break
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prod_off = None
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for j in range(co, min(n, co + 120)):
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if df["product"].iloc[j] < 10:
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prod_off = j
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break
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cold = None
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for j in range(co, min(n, co + 2400)):
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if df["reb_temp"].iloc[j] < 40:
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cold = j
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break
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r = df.iloc[co]
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return dict(cutoff_time=tc,
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feed_to_cutoff=-(mins(feed_start)) if feed_start is not None else None,
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cutoff_to_steam_off=mins(steam_off) if steam_off else None,
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cutoff_to_vacuum_off=mins(vacuum_off) if vacuum_off else None,
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cutoff_to_prod_off=mins(prod_off) if prod_off else None,
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cutoff_to_cold=mins(cold) if cold else None,
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cutoff_rebA=r["reb_temp"], cutoff_TC=r["T_C"], cutoff_TD=r["T_D"],
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cutoff_dT_AD=r["reb_temp"] - r["T_D"])
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def main():
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parser = argparse.ArgumentParser()
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parser.add_argument("--data", default=BASE + "c6111_data.pkl")
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parser.add_argument("--prefix", default="c6111")
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args = parser.parse_args()
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df = pd.read_pickle(args.data).sort_values("dtat").reset_index(drop=True)
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cutoffs = detect_cutoffs(df)
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print(f"탐지된 ★제품 컷오프★(shutdown 진입) 이벤트: {len(cutoffs)}개")
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if not cutoffs:
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print(" [skip] shutdown 이벤트 없음 — 플롯 생략")
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return
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rows, windows = [], []
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for co in cutoffs:
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w = df.iloc[max(0, co - 360):min(len(df), co + 360)].copy()
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w["rel_min"] = (w["dtat"] - df["dtat"].iloc[co]).dt.total_seconds() / 60
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windows.append(w)
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rows.append(shutdown_milestones(df, co))
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M = pd.DataFrame(rows)
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pd.set_option("display.width", 220)
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print("\n=== 제품컷오프 기준 절차(분) + 셧다운 시점 컬럼상태 ===")
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cols = ["cutoff_time", "feed_to_cutoff", "cutoff_to_steam_off",
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"cutoff_to_vacuum_off", "cutoff_to_prod_off", "cutoff_to_cold",
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"cutoff_rebA", "cutoff_TC", "cutoff_dT_AD"]
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show = M[cols].copy()
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show["cutoff_time"] = show["cutoff_time"].dt.strftime("%m-%d %H:%M")
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print(show.round(1).to_string(index=False))
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print("\n=== 셧다운 레시피(중앙값) ===")
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print(f" 피드감소→컷오프: {M.feed_to_cutoff.median():.0f}분")
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print(f" 컷오프→스팀차단 : {M.cutoff_to_steam_off.median():.0f}분")
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print(f" 컷오프→진공해제 : {M.cutoff_to_vacuum_off.median():.0f}분")
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print(f" 컷오프→제품0 : {M.cutoff_to_prod_off.median():.0f}분")
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print(f" 컷오프→냉각 : {M.cutoff_to_cold.median():.0f}분")
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reb_std = M.cutoff_rebA.std() if len(M) > 1 else 0.0
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tc_std = M.cutoff_TC.std() if len(M) > 1 else 0.0
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print(f" ★셧다운 트리거: reb-A={M.cutoff_rebA.median():.1f}±{reb_std:.1f}℃, "
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f"T_C={M.cutoff_TC.median():.1f}±{tc_std:.2f}℃, ΔT(A-D)={M.cutoff_dT_AD.median():.1f}℃")
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fig, ax = plt.subplots(4, 1, figsize=(13, 11), sharex=True)
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for k, w in enumerate(windows):
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c = plt.cm.tab10(k)
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ax[0].plot(w.rel_min, w.reb_temp, color=c, lw=.9, label=f"sh{k+1} {w.dtat.iloc[len(w)//2]:%m-%d}")
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ax[0].plot(w.rel_min, w["T_D"], color=c, lw=.6, ls=":")
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ax[1].plot(w.rel_min, w.steam_flow, color=c, lw=.9)
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ax[2].plot(w.rel_min, w.reflux, color=c, lw=.9)
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ax[2].plot(w.rel_min, w["product"], color=c, lw=.9, ls="--")
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ax[3].plot(w.rel_min, w.feed, color=c, lw=.9)
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ax[0].set_ylabel("reb_temp/T_D(:)"); ax[0].legend(fontsize=7)
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ax[0].set_title("SHUTDOWN aligned at PRODUCT CUT-OFF (rel=0)")
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ax[1].set_ylabel("steam flow"); ax[2].set_ylabel("reflux/product(--)")
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ax[3].set_ylabel("feed"); ax[3].set_xlabel("minutes from product cut-off")
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for a in ax:
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a.axvline(0, c="k", lw=.5)
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fig.tight_layout(); fig.savefig(BASE + f"{args.prefix}_shutdown.png", dpi=95)
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print(f"\n플롯 저장: {BASE}{args.prefix}_shutdown.png")
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if __name__ == "__main__":
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main()
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