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- """缺陷分析页面的可测试业务逻辑。"""
- import base64
- import html
- import io
- import os
- import matplotlib
- matplotlib.use("Agg")
- import matplotlib.pyplot as plt
- from matplotlib import font_manager as fm
- import numpy as np
- import pandas as pd
- def _setup_chinese_font():
- """配置 matplotlib 中文字体,与 app.py 保持一致。"""
- font_paths = [
- r"C:\Windows\Fonts\msyh.ttc",
- r"C:\Windows\Fonts\simhei.ttf",
- r"C:\Windows\Fonts\simsun.ttc",
- r"C:\Windows\Fonts\malgun.ttf",
- ]
- for fp in font_paths:
- if os.path.exists(fp):
- font_prop = fm.FontProperties(fname=fp)
- plt.rcParams["font.family"] = font_prop.get_name()
- plt.rcParams["axes.unicode_minus"] = False
- return font_prop
- plt.rcParams["font.sans-serif"] = ["SimHei", "Microsoft YaHei", "Arial Unicode MS"]
- plt.rcParams["axes.unicode_minus"] = False
- return None
- _CHINESE_FONT_PROP = _setup_chinese_font()
- from defect_analysis.ml.model_bundle import create_model_bundle
- from defect_analysis.ml.predict import predict_key_factors
- from defect_analysis.root_cause import EXTENDED_ROOT_CAUSE_DIMENSIONS, build_extended_root_causes
- from defect_analysis.schemas import (
- CORE_REQUIRED_COLUMNS,
- INDUSTRY_OPTIONAL_COLUMNS,
- TEMPLATE_COLUMNS,
- get_missing_required_columns,
- normalize_defect_schema,
- )
- DEFECT_SOP_RECOMMENDATIONS = {
- "划痕": ["检查搬运轨道、吸嘴和治具接触面", "复核清洗滚刷与擦拭工位是否有硬质颗粒"],
- "气泡": ["检查贴合压力、真空度、OCA 状态和贴合速度", "复核贴合前清洁与材料开封时长"],
- "漏光": ["检查边缘贴合、背光组装、框胶和压合均匀性", "复核四角/边缘区应力与夹持状态"],
- "色差": ["检查背光、偏光片批次、贴合应力和老化条件", "对比同批材料与相邻工艺参数"],
- "异物": ["检查洁净度、清洗段、静电控制和材料暴露时间", "追溯同批材料与工位环境记录"],
- "亮点": ["复核点灯/AOI 判定、TFT 像素缺陷和异物压伤", "抽查高发区域是否存在压接或污染"],
- "暗点": ["复核点灯/AOI 判定、TFT 像素缺陷和异物压伤", "检查绑定/驱动相关区域异常"],
- "裂纹": ["立即检查切割、搬运、夹持和跌落冲击风险", "对同批面板执行 Hold 与复检"],
- }
- def normalize_date_bounds(start_date, end_date):
- """把日期范围转换成左闭右开的时间边界,确保结束日期整天被包含。"""
- start_ts = pd.Timestamp(start_date).normalize()
- end_exclusive = pd.Timestamp(end_date).normalize() + pd.Timedelta(days=1)
- return start_ts, end_exclusive
- def apply_defect_filters(
- df,
- *,
- start_date,
- end_date,
- selected_types,
- selected_batches,
- selected_equipment,
- selected_seats,
- selected_shift="全部",
- selected_severity="全部",
- ):
- """应用页面筛选条件。"""
- start_ts, end_exclusive = normalize_date_bounds(start_date, end_date)
- mask = (
- (df["timestamp"] >= start_ts)
- & (df["timestamp"] < end_exclusive)
- & (df["defect_type"].isin(selected_types))
- & (df["batch_id"].isin(selected_batches))
- & (df["equipment_id"].isin(selected_equipment))
- )
- if selected_shift != "全部":
- mask &= df["shift"] == selected_shift
- if selected_severity != "全部":
- mask &= df["severity"] == selected_severity
- if selected_seats:
- mask &= df["seat_id"].isin(selected_seats)
- return df[mask].copy()
- def classify_panel_zone(df):
- """按 3C 面板行业常用语义把坐标映射到关键区域。"""
- width = df.get("panel_width_mm", pd.Series(155.0, index=df.index)).replace(0, np.nan)
- height = df.get("panel_height_mm", pd.Series(340.0, index=df.index)).replace(0, np.nan)
- x = df.get("x_mm", width * 0.5)
- y = df.get("y_mm", height * 0.5)
- x_norm = x / width
- y_norm = y / height
- zones = []
- for x, y in zip(x_norm.fillna(0.5), y_norm.fillna(0.5)):
- labels = []
- if x <= 0.1:
- labels.append("左边缘区")
- if x >= 0.9:
- labels.append("右边缘区")
- if y <= 0.1:
- labels.append("下边缘区")
- if y >= 0.9:
- labels.append("上边缘区")
- if (x <= 0.12 or x >= 0.88) and (y <= 0.12 or y >= 0.88):
- labels.append("角落区")
- if 0.68 <= y <= 0.88 and 0.25 <= x <= 0.75:
- labels.append("FPC/绑定区")
- if not labels:
- labels.append("显示中心区")
- zones.append(" / ".join(labels))
- return pd.Series(zones, index=df.index, name="panel_zone")
- def calculate_kpis(source_df, filtered_df):
- """基于当前筛选结果计算页面 KPI。"""
- total_panels_inspected = filtered_df["panel_id"].nunique()
- defective_panels = filtered_df["panel_id"].nunique()
- total_defects = len(filtered_df)
- critical_defects = int((filtered_df["severity"] == "严重").sum()) if total_defects else 0
- top_defect_type = filtered_df["defect_type"].mode().iloc[0] if total_defects else "-"
- yield_rate = (1 - defective_panels / max(total_panels_inspected, 1)) * 100
- return {
- "total_panels_inspected": int(total_panels_inspected),
- "defective_panels": int(defective_panels),
- "yield_rate": float(yield_rate),
- "total_defects": int(total_defects),
- "critical_defects": int(critical_defects),
- "top_defect_type": top_defect_type,
- }
- def calculate_spc_metrics(df):
- """计算 SPC 所需数据,防止模拟分母造成非法概率。"""
- daily = df.groupby("day").agg(
- total_defects=("defect_id", "count"),
- panels_with_defects=("panel_id", "nunique"),
- ).reset_index()
- daily["day"] = pd.to_datetime(daily["day"])
- daily = daily.sort_values("day").reset_index(drop=True)
- if len(daily) < 2:
- return {
- "daily": daily,
- "p_bar": 0.0,
- "ucl": 0.0,
- "lcl": 0.0,
- "uwl": 0.0,
- "lwl": 0.0,
- "sigma_p": 0.0,
- }
- total_days = (df["timestamp"].max() - df["timestamp"].min()).days + 1
- total_unique_panels = df["panel_id"].nunique()
- estimated = max(total_unique_panels // max(total_days // 7, 1), 1)
- daily["estimated_inspected"] = np.maximum(estimated, daily["panels_with_defects"])
- daily["defect_rate"] = (
- daily["panels_with_defects"] / daily["estimated_inspected"]
- ).clip(lower=0, upper=1)
- p_bar = float(np.clip(daily["defect_rate"].mean(), 0, 1))
- n_avg = float(daily["estimated_inspected"].mean())
- sigma_p = float(np.sqrt(max(p_bar * (1 - p_bar), 0) / n_avg)) if n_avg > 0 else 0.0
- return {
- "daily": daily,
- "p_bar": p_bar,
- "ucl": min(1.0, p_bar + 3 * sigma_p),
- "lcl": max(0.0, p_bar - 3 * sigma_p),
- "uwl": min(1.0, p_bar + 2 * sigma_p),
- "lwl": max(0.0, p_bar - 2 * sigma_p),
- "sigma_p": sigma_p,
- }
- def build_diagnostic_dashboard(df):
- """生成诊断驾驶舱需要的摘要、根因候选和趋势数据。"""
- total_defects = len(df)
- if total_defects == 0:
- return {
- "severity_level": "正常",
- "top_defect_type": "-",
- "top_defect_share": 0.0,
- "serious_share": 0.0,
- "root_causes": pd.DataFrame(),
- "extended_root_causes": pd.DataFrame(),
- "daily_trend": pd.DataFrame(),
- "pareto": pd.DataFrame(),
- "primary_recommendation": "当前筛选条件下没有缺陷记录。",
- }
- type_counts = df["defect_type"].value_counts()
- zones = classify_panel_zone(df)
- zone_counts = zones.value_counts()
- top_defect_type = type_counts.index[0]
- top_defect_share = float(type_counts.iloc[0] / total_defects)
- top_zone = zone_counts.index[0]
- top_zone_share = float(zone_counts.iloc[0] / total_defects)
- serious_share = float((df["severity"] == "严重").sum() / total_defects)
- root_causes = (
- df.groupby(["equipment_id", "seat_id"])
- .agg(
- 缺陷数=("defect_id", "count"),
- 涉及面板=("panel_id", "nunique"),
- 主要缺陷=("defect_type", lambda s: s.mode().iloc[0]),
- 严重数=("severity", lambda s: int((s == "严重").sum())),
- )
- .reset_index()
- )
- root_causes["根因候选"] = root_causes["equipment_id"] + " / " + root_causes["seat_id"]
- root_causes["占比"] = root_causes["缺陷数"] / total_defects
- root_causes["严重占比"] = root_causes["严重数"] / root_causes["缺陷数"].clip(lower=1)
- equipment_totals = df.groupby("equipment_id")["defect_id"].count()
- equipment_seat_counts = df.groupby("equipment_id")["seat_id"].nunique().clip(lower=1)
- root_causes["期望缺陷数"] = root_causes["equipment_id"].map(
- equipment_totals / equipment_seat_counts
- ).clip(lower=0.001)
- root_causes["异常倍数"] = (root_causes["缺陷数"] / root_causes["期望缺陷数"]).round(2)
- count_score = root_causes["缺陷数"] / root_causes["缺陷数"].max()
- panel_score = root_causes["涉及面板"] / df["panel_id"].nunique()
- lift_score = (root_causes["异常倍数"] / 3).clip(upper=1)
- root_causes["风险分"] = (
- count_score * 55 + lift_score * 25 + root_causes["严重占比"] * 15 + panel_score * 5
- ).round(1)
- root_causes = root_causes.sort_values(["风险分", "缺陷数"], ascending=False).head(8)
- root_causes = root_causes[
- ["根因候选", "缺陷数", "占比", "异常倍数", "涉及面板", "主要缺陷", "严重占比", "风险分"]
- ].reset_index(drop=True)
- pareto = type_counts.rename_axis("缺陷类型").reset_index(name="缺陷数")
- pareto["占比"] = pareto["缺陷数"] / total_defects
- pareto["累计占比"] = pareto["占比"].cumsum()
- daily_trend = df.groupby("day").size().rename("缺陷数").reset_index()
- daily_trend["day"] = pd.to_datetime(daily_trend["day"])
- daily_trend = daily_trend.sort_values("day")
- extended_root_causes = build_extended_root_causes(df)
- if serious_share >= 0.2 or (len(root_causes) > 0 and root_causes.iloc[0]["占比"] >= 0.15):
- severity_level = "严重"
- elif serious_share >= 0.1 or top_defect_share >= 0.35:
- severity_level = "关注"
- else:
- severity_level = "正常"
- if len(root_causes) > 0:
- top_root = root_causes.iloc[0]
- primary_recommendation = (
- f"优先排查 {top_root['根因候选']},该组合贡献 {top_root['占比']:.1%} "
- f"缺陷,异常倍数 {top_root['异常倍数']:.2f}x,主要类型为 {top_root['主要缺陷']}。"
- )
- else:
- primary_recommendation = f"优先排查 {top_defect_type} 相关工艺参数。"
- return {
- "severity_level": severity_level,
- "top_defect_type": top_defect_type,
- "top_defect_share": top_defect_share,
- "top_zone": top_zone,
- "top_zone_share": top_zone_share,
- "zone_distribution": zone_counts.rename_axis("区域").reset_index(name="缺陷数"),
- "serious_share": serious_share,
- "root_causes": root_causes,
- "extended_root_causes": extended_root_causes,
- "daily_trend": daily_trend,
- "pareto": pareto,
- "primary_recommendation": primary_recommendation,
- }
- def detect_industry_patterns(df):
- """识别面板行业常见缺陷模式。"""
- if df.empty:
- return []
- patterns = []
- zones = classify_panel_zone(df)
- zone_share = zones.value_counts(normalize=True)
- if any(idx != "显示中心区" and share >= 0.35 for idx, share in zone_share.items()):
- patterns.append(f"区域集中: {zone_share.index[0]} 占比 {zone_share.iloc[0]:.1%}")
- coord_df = df.copy()
- coord_df["x_bin"] = (coord_df["x_mm"] // 5).astype(int)
- coord_df["y_bin"] = (coord_df["y_mm"] // 5).astype(int)
- repeat = coord_df.groupby(["x_bin", "y_bin"])["panel_id"].nunique().max()
- if repeat >= min(3, max(2, df["panel_id"].nunique())):
- patterns.append("跨面板重复坐标: 疑似治具、吸嘴、压头或固定接触点异常")
- if df["x_mm"].nunique() >= 3 and df["y_mm"].nunique() >= 3 and len(df) >= 6:
- corr = abs(pd.Series(df["x_mm"]).corr(pd.Series(df["y_mm"])))
- if pd.notna(corr) and corr >= 0.85:
- patterns.append("线状分布: 疑似搬运划伤、滚轮轨迹或线性压伤")
- batch_share = df["batch_id"].value_counts(normalize=True).iloc[0]
- if batch_share >= 0.5 and df["batch_id"].nunique() > 1:
- patterns.append(f"批次集中: {df['batch_id'].value_counts().index[0]} 占比 {batch_share:.1%}")
- return patterns or ["随机点状分布: 更偏向材料、环境尘埃或偶发检出"]
- def generate_industry_diagnosis(df, dashboard):
- """生成 3C 面板行业化诊断结论和排查建议。"""
- if df.empty:
- return {
- "headline": "当前筛选条件下没有可诊断缺陷。",
- "patterns": [],
- "recommendations": ["放宽筛选条件或上传更多检测记录后再诊断。"],
- }
- top_type = dashboard["top_defect_type"]
- top_zone = dashboard.get("top_zone", classify_panel_zone(df).value_counts().index[0])
- top_root = dashboard["root_causes"].iloc[0]["根因候选"] if len(dashboard["root_causes"]) else "当前筛选范围"
- patterns = detect_industry_patterns(df)
- recommendations = []
- if top_type in DEFECT_SOP_RECOMMENDATIONS:
- recommendations.extend(DEFECT_SOP_RECOMMENDATIONS[top_type])
- if "边缘" in top_zone or "角落" in top_zone:
- recommendations.append("优先复核边缘贴合、切割/搬运夹持、吸附接触面和四角应力状态")
- if "FPC" in top_zone or "绑定" in top_zone:
- recommendations.append("重点检查绑定压力、FPC/COF 区域异物、压接参数和 AOI 复判样本")
- if any("跨面板重复" in p for p in patterns):
- recommendations.append("对高发座号对应治具、吸嘴、压头做点检,并抽查同坐标复现样本")
- if dashboard["serious_share"] >= 0.2:
- recommendations.append("严重缺陷占比较高,建议对相关批次执行 Hold、复检或加严抽样")
- deduped = []
- for item in recommendations:
- if item not in deduped:
- deduped.append(item)
- headline = (
- f"{top_zone} 的 {top_type} 最突出,首要候选为 {top_root}。"
- f"建议按工序链路优先排查材料、贴合/搬运接触面和对应治具状态。"
- )
- return {
- "headline": headline,
- "patterns": patterns,
- "recommendations": deduped[:5],
- }
- def build_ml_factor_insights(
- df,
- *,
- target_defect_type=None,
- target_severity=None,
- model_name="random_forest",
- top_n=10,
- ):
- """构建页面可展示的 ML 关键因子、验证指标和特征解释。"""
- normalized = normalize_defect_schema(df)
- resolved_target_type = target_defect_type
- if resolved_target_type is None and not normalized.empty:
- resolved_target_type = normalized["defect_type"].mode().iloc[0]
- base = {
- "target_defect_type": resolved_target_type,
- "target_severity": target_severity,
- "model_name": model_name,
- "key_factors": pd.DataFrame(),
- "metrics": {},
- "validation_metrics": {},
- "feature_importance": [],
- "error": None,
- }
- if normalized.empty:
- base["error"] = "当前筛选条件下没有可训练数据。"
- return base
- try:
- base["key_factors"] = predict_key_factors(
- normalized,
- target_defect_type=resolved_target_type,
- target_severity=target_severity,
- model_name=model_name,
- top_n=top_n,
- )
- bundle = create_model_bundle(
- normalized,
- model_name=model_name,
- target_defect_type=resolved_target_type,
- target_severity=target_severity,
- )
- except (RuntimeError, ValueError) as exc:
- base["error"] = str(exc)
- return base
- base["metrics"] = bundle["metrics"]
- base["validation_metrics"] = bundle["validation_metrics"]
- base["feature_importance"] = bundle["feature_importance"]
- return base
- def _fig_to_base64(fig, *, dpi=120):
- """把 matplotlib Figure 转成 base64 PNG data URI。"""
- buf = io.BytesIO()
- fig.savefig(buf, format="png", dpi=dpi, bbox_inches="tight", facecolor="white")
- buf.seek(0)
- encoded = base64.b64encode(buf.read()).decode("utf-8")
- buf.close()
- plt.close(fig)
- return f"data:image/png;base64,{encoded}"
- def generate_report_charts(filtered_df, *, daily_trend_df=None):
- """生成报告内嵌的四张核心图表,返回 dict of base64 data URIs。"""
- charts = {}
- # --- 1. 缺陷类型分布条形图 ---
- type_counts = filtered_df["defect_type"].value_counts().head(10)
- if not type_counts.empty:
- fig, ax = plt.subplots(figsize=(7, 3.5))
- colors = ["#0f766e", "#14b8a6", "#22d3ee", "#38bdf8", "#60a5fa",
- "#a78bfa", "#c084fc", "#e879f9", "#f472b6", "#fb7185"]
- bars = ax.barh(
- range(len(type_counts)),
- type_counts.values,
- color=colors[: len(type_counts)],
- )
- ax.set_yticks(range(len(type_counts)))
- ax.set_yticklabels(type_counts.index, fontsize=11)
- ax.invert_yaxis()
- for i, (bar, val) in enumerate(zip(bars, type_counts.values)):
- ax.text(bar.get_width() + max(type_counts.values) * 0.01,
- bar.get_y() + bar.get_height() / 2,
- str(val), va="center", fontsize=10, fontweight="bold")
- ax.set_title("缺陷类型 TOP 10", fontsize=13, fontweight="bold", pad=12)
- ax.spines["top"].set_visible(False)
- ax.spines["right"].set_visible(False)
- ax.set_xlabel("缺陷数")
- charts["type_distribution"] = _fig_to_base64(fig)
- # --- 2. 每日趋势折线图 ---
- if daily_trend_df is not None and not daily_trend_df.empty:
- daily = daily_trend_df.copy()
- daily["day"] = pd.to_datetime(daily["day"])
- daily = daily.sort_values("day")
- fig, ax = plt.subplots(figsize=(7, 3))
- ax.plot(daily["day"], daily["缺陷数"], marker="o", linewidth=2,
- markersize=5, color="#0f766e")
- ax.fill_between(daily["day"], daily["缺陷数"], alpha=0.15, color="#0f766e")
- ax.set_title("每日缺陷数趋势", fontsize=13, fontweight="bold", pad=10)
- ax.spines["top"].set_visible(False)
- ax.spines["right"].set_visible(False)
- ax.tick_params(axis="x", rotation=30)
- charts["daily_trend"] = _fig_to_base64(fig)
- # --- 3. 设备缺陷分布 ---
- eq_counts = filtered_df.get("equipment_id")
- if eq_counts is not None:
- eq_counts = eq_counts.value_counts().head(8)
- if not eq_counts.empty:
- fig, ax = plt.subplots(figsize=(7, 3))
- ax.bar(
- range(len(eq_counts)),
- eq_counts.values,
- color=["#1e3a5f", "#2563eb", "#3b82f6", "#60a5fa",
- "#93c5fd", "#0d9488", "#14b8a6", "#2dd4bf"][: len(eq_counts)],
- )
- ax.set_xticks(range(len(eq_counts)))
- ax.set_xticklabels(eq_counts.index, rotation=25, ha="right", fontsize=10)
- ax.set_title("设备缺陷分布 TOP 8", fontsize=13, fontweight="bold", pad=10)
- ax.spines["top"].set_visible(False)
- ax.spines["right"].set_visible(False)
- ax.set_ylabel("缺陷数")
- for i, val in enumerate(eq_counts.values):
- ax.text(i, val + max(eq_counts.values) * 0.02, str(val),
- ha="center", fontsize=9, fontweight="bold")
- charts["equipment_distribution"] = _fig_to_base64(fig)
- # --- 4. 严重程度饼图 ---
- if "severity" in filtered_df.columns and not filtered_df.empty:
- sev_counts = filtered_df["severity"].value_counts()
- if not sev_counts.empty:
- fig, ax = plt.subplots(figsize=(4.5, 3.5))
- sev_colors = {"轻微": "#22c55e", "中等": "#f59e0b", "严重": "#ef4444"}
- colors = [sev_colors.get(name, "#94a3b8") for name in sev_counts.index]
- wedges, texts, autotexts = ax.pie(
- sev_counts.values, labels=sev_counts.index,
- autopct="%1.1f%%", colors=colors, startangle=90,
- textprops={"fontsize": 11},
- )
- for at in autotexts:
- at.set_fontweight("bold")
- ax.set_title("严重程度占比", fontsize=13, fontweight="bold", pad=10)
- charts["severity_pie"] = _fig_to_base64(fig)
- return charts
- def _escape(value):
- return html.escape(str(value), quote=True)
- def _series_rows(series):
- if series is None:
- return []
- return list(series.items())
- def build_report_chart_summaries(type_counts, equipment_counts=None, severity_counts=None, trend_summary="-"):
- """生成图表旁的结构化摘要,便于报告快速阅读和追溯。"""
- summaries = []
- type_rows = _series_rows(type_counts)
- if type_rows:
- total = max(sum(int(count) for _, count in type_rows), 1)
- name, count = type_rows[0]
- summaries.append(f"TOP1 缺陷类型:{name},{int(count)} 个,占比 {count / total:.1%}")
- equipment_rows = _series_rows(equipment_counts)
- if equipment_rows:
- name, count = equipment_rows[0]
- summaries.append(f"最高缺陷设备:{name},{int(count)} 个缺陷")
- severity_rows = _series_rows(severity_counts)
- if severity_rows:
- total = max(sum(int(count) for _, count in severity_rows), 1)
- serious_count = int(dict(severity_rows).get("严重", 0))
- summaries.append(f"严重缺陷占比:{serious_count / total:.1%}")
- if trend_summary and trend_summary != "-":
- summaries.append(str(trend_summary))
- return summaries
- def build_html_report(
- *,
- generated_at,
- date_range_text,
- view_mode,
- defect_count,
- panel_count,
- kpis,
- type_counts,
- equipment_counts=None,
- seat_top=None,
- trend_summary="-",
- anomaly_rows=None,
- recommendations=None,
- charts=None,
- chart_summaries=None,
- ):
- """生成可直接在浏览器打开的自包含综合 HTML 报告。"""
- anomaly_rows = anomaly_rows or []
- recommendations = recommendations or []
- charts = charts or {}
- chart_summaries = chart_summaries or []
- type_rows = _series_rows(type_counts)
- equipment_rows = _series_rows(equipment_counts)
- seat_rows = _series_rows(seat_top)
- type_total = max(sum(int(count) for _, count in type_rows), 1)
- type_items = "\n".join(
- f"""
- <tr>
- <td>{_escape(name)}</td>
- <td>{int(count)}</td>
- <td>{count / type_total:.1%}</td>
- </tr>
- """
- for name, count in type_rows
- ) or '<tr><td colspan="3">暂无数据</td></tr>'
- equipment_items = "\n".join(
- f"<tr><td>{_escape(name)}</td><td>{int(count)}</td></tr>"
- for name, count in equipment_rows
- ) or '<tr><td colspan="2">暂无数据</td></tr>'
- seat_items = "\n".join(
- f"<tr><td>{_escape(name)}</td><td>{int(count)}</td></tr>"
- for name, count in seat_rows
- ) or '<tr><td colspan="2">暂无数据</td></tr>'
- anomaly_items = "\n".join(
- f"<tr><td>{_escape(row['equipment'])}</td><td>{_escape(row['seat'])}</td><td>{int(row['count'])}</td></tr>"
- for row in anomaly_rows
- ) or '<tr><td colspan="3">无 2σ 异常座号</td></tr>'
- recommendation_items = "\n".join(
- f"<li>{_escape(item)}</li>" for item in recommendations
- ) or "<li>暂无建议</li>"
- chart_summary_items = "\n".join(
- f"<li>{_escape(item)}</li>" for item in chart_summaries
- ) or "<li>暂无图表摘要</li>"
- return f"""<!doctype html>
- <html lang="zh-CN">
- <head>
- <meta charset="utf-8">
- <meta name="viewport" content="width=device-width, initial-scale=1">
- <title>缺陷集中性分析综合报告</title>
- <style>
- :root {{
- --ink: #10202f;
- --muted: #617386;
- --line: #dbe5ee;
- --card: #ffffff;
- --bg: #eef4f7;
- --brand: #0f766e;
- --warn: #b45309;
- }}
- * {{ box-sizing: border-box; }}
- body {{
- margin: 0;
- color: var(--ink);
- font-family: "Microsoft YaHei", "PingFang SC", "Noto Sans CJK SC", Arial, sans-serif;
- background:
- radial-gradient(circle at 12% 8%, rgba(15, 118, 110, .18), transparent 28%),
- linear-gradient(135deg, #f8fbfc 0%, var(--bg) 100%);
- }}
- .page {{ max-width: 1180px; margin: 0 auto; padding: 36px 28px 48px; }}
- .hero {{
- padding: 30px;
- border-radius: 28px;
- color: white;
- background: linear-gradient(135deg, #0f172a 0%, #115e59 58%, #365314 100%);
- box-shadow: 0 22px 55px rgba(15, 23, 42, .18);
- }}
- .hero h1 {{ margin: 0 0 10px; font-size: 34px; letter-spacing: .03em; }}
- .hero p {{ margin: 0; color: #d8eef0; }}
- .grid {{ display: grid; grid-template-columns: repeat(4, 1fr); gap: 14px; margin: 22px 0; }}
- .card {{
- padding: 18px;
- border-radius: 20px;
- border: 1px solid var(--line);
- background: rgba(255, 255, 255, .92);
- box-shadow: 0 12px 28px rgba(15, 23, 42, .07);
- }}
- .label {{ color: var(--muted); font-size: 13px; margin-bottom: 8px; }}
- .value {{ font-size: 28px; font-weight: 800; }}
- section {{ margin-top: 22px; }}
- h2 {{ font-size: 21px; margin: 0 0 12px; }}
- table {{ width: 100%; border-collapse: collapse; overflow: hidden; border-radius: 16px; background: white; }}
- th, td {{ padding: 12px 14px; border-bottom: 1px solid var(--line); text-align: left; }}
- th {{ background: #e8f3f2; color: #134e4a; font-size: 13px; }}
- .two {{ display: grid; grid-template-columns: 1fr 1fr; gap: 18px; }}
- .note {{ color: var(--muted); font-size: 13px; margin-top: 8px; }}
- .recommend {{ border-left: 5px solid var(--brand); }}
- li {{ margin: 8px 0; }}
- .chart {{ max-width: 100%; border-radius: 12px; margin-top: 8px; }}
- @media print {{
- body {{ background: white; }}
- .page {{ max-width: none; padding: 20px; }}
- .card {{ box-shadow: none; }}
- }}
- @media (max-width: 860px) {{
- .grid, .two {{ grid-template-columns: 1fr; }}
- }}
- </style>
- </head>
- <body>
- <main class="page">
- <header class="hero">
- <h1>缺陷集中性分析综合报告</h1>
- <p>生成时间:{_escape(generated_at)} | 数据范围:{_escape(date_range_text)} | 视图模式:{_escape(view_mode)}</p>
- </header>
- <div class="grid">
- <div class="card"><div class="label">筛选后缺陷数</div><div class="value">{int(defect_count)}</div></div>
- <div class="card"><div class="label">涉及面板</div><div class="value">{int(panel_count)}</div></div>
- <div class="card"><div class="label">综合良率</div><div class="value">{float(kpis.get('yield_rate', 0)):.1f}%</div></div>
- <div class="card"><div class="label">严重缺陷</div><div class="value">{int(kpis.get('critical_defects', 0))}</div></div>
- </div>
- <section class="two">
- <div class="card">
- <h2>1. KPI 摘要</h2>
- <table>
- <tr><th>指标</th><th>数值</th></tr>
- <tr><td>检测面板数</td><td>{int(kpis.get('total_panels_inspected', 0))} 块</td></tr>
- <tr><td>不良面板数</td><td>{int(kpis.get('defective_panels', 0))} 块</td></tr>
- <tr><td>严重缺陷</td><td>{int(kpis.get('critical_defects', 0))} 个</td></tr>
- </table>
- </div>
- <div class="card">
- <h2>图表摘要</h2>
- <ul>{chart_summary_items}</ul>
- <p class="note">摘要由导出时的筛选数据自动生成,适合会议或邮件快速阅读。</p>
- </div>
- <div class="card">
- <h2>2. 趋势分析</h2>
- <p>{_escape(trend_summary)}</p>
- {('<img class="chart" src="' + charts["daily_trend"] + '" alt="每日缺陷数趋势"/>') if "daily_trend" in charts else ""}
- <p class="note">建议结合 SPC 控制图确认是否越过预警线或控制线。</p>
- </div>
- </section>
- <section class="card">
- <h2>3. 缺陷类型分布</h2>
- {('<img class="chart" src="' + charts["type_distribution"] + '" alt="缺陷类型分布"/>') if "type_distribution" in charts else ""}
- <table><tr><th>缺陷类型</th><th>缺陷数</th><th>占比</th></tr>{type_items}</table>
- </section>
- <section class="two">
- <div class="card">
- <h2>4. 设备分布</h2>
- {('<img class="chart" src="' + charts["equipment_distribution"] + '" alt="设备缺陷分布"/>') if "equipment_distribution" in charts else ""}
- <table><tr><th>设备</th><th>缺陷数</th></tr>{equipment_items}</table>
- </div>
- <div class="card">
- <h2>5. 座号 TOP</h2>
- <table><tr><th>座号</th><th>缺陷数</th></tr>{seat_items}</table>
- </div>
- </section>
- {('<section class="card"><h2>6. 严重程度占比</h2><div style="display:flex;justify-content:center;"><img class="chart" src="' + charts["severity_pie"] + '" alt="严重程度占比" style="max-width:320px;"/></div></section>') if "severity_pie" in charts else ""}
- <section class="card">
- <h2>{"6. 异常检测" if "severity_pie" not in charts else "7. 异常检测"}</h2>
- <table><tr><th>设备</th><th>座号</th><th>缺陷数</th></tr>{anomaly_items}</table>
- </section>
- <section class="card recommend">
- <h2>{"7. 排查建议" if "severity_pie" not in charts else "8. 排查建议"}</h2>
- <ul>{recommendation_items}</ul>
- </section>
- <p class="note">本报告由缺陷集中性分析系统自动生成,可直接归档、邮件发送或浏览器打印为 PDF。</p>
- </main>
- </body>
- </html>
- """
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