From 6628f663b636675bcaea316f2deaddf337de480e Mon Sep 17 00:00:00 2001
From: baoshiwei <baoshiwei@shlanbao.cn>
Date: 星期五, 13 三月 2026 10:23:31 +0800
Subject: [PATCH] feat(米重分析): 新增稳态识别和预测功能页面并优化现有模型

---
 app/pages/metered_weight_advanced copy.py |  832 +++++++++++++++++++++++++++++++++++++++++++++++++++++++++++
 1 files changed, 832 insertions(+), 0 deletions(-)

diff --git a/app/pages/metered_weight_advanced copy.py b/app/pages/metered_weight_advanced copy.py
new file mode 100644
index 0000000..f5fe242
--- /dev/null
+++ b/app/pages/metered_weight_advanced copy.py
@@ -0,0 +1,832 @@
+import streamlit as st
+import plotly.express as px
+import plotly.graph_objects as go
+import pandas as pd
+import numpy as np
+from datetime import datetime, timedelta
+from app.services.extruder_service import ExtruderService
+from app.services.main_process_service import MainProcessService
+from sklearn.preprocessing import StandardScaler, MinMaxScaler
+from sklearn.model_selection import train_test_split
+from sklearn.metrics import r2_score, mean_squared_error, mean_absolute_error
+from sklearn.ensemble import RandomForestRegressor, GradientBoostingRegressor
+from sklearn.svm import SVR
+from sklearn.neural_network import MLPRegressor
+
+# 灏濊瘯瀵煎叆娣卞害瀛︿範搴�
+use_deep_learning = False
+try:
+    
+    from tensorflow.keras.models import Sequential
+    from tensorflow.keras.layers import LSTM, GRU, Dense, Dropout, Bidirectional
+    from tensorflow.keras.optimizers import Adam
+    use_deep_learning = True
+except ImportError:
+    st.warning("鏈娴嬪埌TensorFlow/Keras锛屾繁搴﹀涔犳ā鍨嬪皢涓嶅彲鐢ㄣ�傝瀹夎tensorflow浠ヤ娇鐢↙STM/GRU妯″瀷銆�")
+
+
+def show_metered_weight_advanced():
+    # 鍒濆鍖栨湇鍔�
+    extruder_service = ExtruderService()
+    main_process_service = MainProcessService()
+
+    # 椤甸潰鏍囬
+    st.title("绫抽噸楂樼骇棰勬祴鍒嗘瀽")
+
+    # 鍒濆鍖栦細璇濈姸鎬�
+    if 'ma_start_date' not in st.session_state:
+        st.session_state['ma_start_date'] = datetime.now().date() - timedelta(days=7)
+    if 'ma_end_date' not in st.session_state:
+        st.session_state['ma_end_date'] = datetime.now().date()
+    if 'ma_quick_select' not in st.session_state:
+        st.session_state['ma_quick_select'] = "鏈�杩�7澶�"
+    if 'ma_model_type' not in st.session_state:
+        st.session_state['ma_model_type'] = 'RandomForest'
+    if 'ma_sequence_length' not in st.session_state:
+        st.session_state['ma_sequence_length'] = 10
+    
+    # 榛樿鐗瑰緛鍒楄〃锛堜笉鍐嶅厑璁哥敤鎴烽�夋嫨锛�
+    default_features = ['铻烘潌杞��', '鏈哄ご鍘嬪姏', '娴佺▼涓婚��', '铻烘潌娓╁害', 
+                       '鍚庢満绛掓俯搴�', '鍓嶆満绛掓俯搴�', '鏈哄ご娓╁害']
+
+    # 瀹氫箟鍥炶皟鍑芥暟
+    def update_dates(qs):
+        st.session_state['ma_quick_select'] = qs
+        today = datetime.now().date()
+        if qs == "浠婂ぉ":
+            st.session_state['ma_start_date'] = today
+            st.session_state['ma_end_date'] = today
+        elif qs == "鏈�杩�3澶�":
+            st.session_state['ma_start_date'] = today - timedelta(days=3)
+            st.session_state['ma_end_date'] = today
+        elif qs == "鏈�杩�7澶�":
+            st.session_state['ma_start_date'] = today - timedelta(days=7)
+            st.session_state['ma_end_date'] = today
+        elif qs == "鏈�杩�30澶�":
+            st.session_state['ma_start_date'] = today - timedelta(days=30)
+            st.session_state['ma_end_date'] = today
+        # 娓呴櫎涔嬪墠鐨勭紦瀛樻暟鎹拰鍒嗘瀽鏍囧織
+        for key in ['cached_extruder_full', 'cached_main_speed', 'cached_temp', 'last_query_start', 'last_query_end', 'analysis_completed']:
+            if key in st.session_state:
+                del st.session_state[key]
+
+    def on_date_change():
+        st.session_state['ma_quick_select'] = "鑷畾涔�"
+        # 娓呴櫎涔嬪墠鐨勭紦瀛樻暟鎹拰鍒嗘瀽鏍囧織
+        for key in ['cached_extruder_full', 'cached_main_speed', 'cached_temp', 'last_query_start', 'last_query_end', 'analysis_completed']:
+            if key in st.session_state:
+                del st.session_state[key]
+
+    # 鏌ヨ鏉′欢鍖哄煙
+    with st.expander("馃攳 鏌ヨ閰嶇疆", expanded=True):
+        # 娣诲姞鑷畾涔� CSS 瀹炵幇鍝嶅簲寮忔崲琛�
+        st.markdown("""
+            <style>
+            /* 寮哄埗鍒楀鍣ㄦ崲琛� */
+            [data-testid="stExpander"] [data-testid="column"] {
+                flex: 1 1 120px !important;
+                min-width: 120px !important;
+            }
+            /* 閽堝鏃ユ湡杈撳叆妗嗗垪绋嶅井鍔犲涓�鐐� */
+            @media (min-width: 768px) {
+                [data-testid="stExpander"] [data-testid="column"]:nth-child(6),
+                [data-testid="stExpander"] [data-testid="column"]:nth-child(7) {
+                    flex: 2 1 180px !important;
+                    min-width: 180px !important;
+                }
+            }
+            </style>
+            """, unsafe_allow_html=True)
+
+        # 鍒涘缓甯冨眬
+        cols = st.columns([1, 1, 1, 1, 1, 1.5, 1.5, 1])
+
+        options = ["浠婂ぉ", "鏈�杩�3澶�", "鏈�杩�7澶�", "鏈�杩�30澶�", "鑷畾涔�"]
+        for i, option in enumerate(options):
+            with cols[i]:
+                # 鏍规嵁褰撳墠閫夋嫨鐘舵�佸喅瀹氭寜閽被鍨�
+                button_type = "primary" if st.session_state['ma_quick_select'] == option else "secondary"
+                if st.button(option, key=f"btn_ma_{option}", width='stretch', type=button_type):
+                    update_dates(option)
+                    st.rerun()
+
+        with cols[5]:
+            start_date = st.date_input(
+                "寮�濮嬫棩鏈�",
+                label_visibility="collapsed",
+                key="ma_start_date",
+                on_change=on_date_change
+            )
+
+        with cols[6]:
+            end_date = st.date_input(
+                "缁撴潫鏃ユ湡",
+                label_visibility="collapsed",
+                key="ma_end_date",
+                on_change=on_date_change
+            )
+
+        with cols[7]:
+            query_button = st.button("馃殌 寮�濮嬪垎鏋�", key="ma_query", width='stretch')
+
+        # 妯″瀷閰嶇疆
+        st.markdown("---")
+        st.write("馃 **妯″瀷閰嶇疆**")
+        model_cols = st.columns(2)
+        
+        with model_cols[0]:
+            # 妯″瀷绫诲瀷閫夋嫨
+            model_options = ['RandomForest', 'GradientBoosting', 'SVR', 'MLP']
+            if use_deep_learning:
+                model_options.extend(['LSTM', 'GRU', 'BiLSTM'])
+            
+            model_type = st.selectbox(
+                "妯″瀷绫诲瀷",
+                options=model_options,
+                key="ma_model_type",
+                help="閫夋嫨鐢ㄤ簬棰勬祴鐨勬ā鍨嬬被鍨�"
+            )
+        
+        with model_cols[1]:
+            # 搴忓垪闀垮害锛堜粎閫傜敤浜庢繁搴﹀涔犳ā鍨嬶級
+            if model_type in ['LSTM', 'GRU', 'BiLSTM']:
+                sequence_length = st.slider(
+                    "搴忓垪闀垮害",
+                    min_value=5,
+                    max_value=30,
+                    value=st.session_state['ma_sequence_length'],
+                    step=1,
+                    help="鐢ㄤ簬娣卞害瀛︿範妯″瀷鐨勬椂闂村簭鍒楅暱搴�",
+                    key="ma_sequence_length"
+                )
+            else:
+                st.session_state['ma_sequence_length'] = 10
+                st.write("搴忓垪闀垮害: 10 (榛樿锛屼粎閫傜敤浜庢繁搴﹀涔犳ā鍨�)")
+
+    # 杞崲涓篸atetime瀵硅薄
+    start_dt = datetime.combine(start_date, datetime.min.time())
+    end_dt = datetime.combine(end_date, datetime.max.time())
+
+    # 鏌ヨ澶勭悊
+    if query_button:
+        with st.spinner("姝e湪鑾峰彇鏁版嵁..."):
+            # 1. 鑾峰彇瀹屾暣鐨勬尋鍑烘満鏁版嵁
+            df_extruder_full = extruder_service.get_extruder_data(start_dt, end_dt)
+
+            # 2. 鑾峰彇涓绘祦绋嬫帶鍒舵暟鎹�
+            df_main_speed = main_process_service.get_cutting_setting_data(start_dt, end_dt)
+
+            df_temp = main_process_service.get_temperature_control_data(start_dt, end_dt)
+
+            # 妫�鏌ユ槸鍚︽湁鏁版嵁
+            has_data = any([
+                df_extruder_full is not None and not df_extruder_full.empty,
+                df_main_speed is not None and not df_main_speed.empty,
+                df_temp is not None and not df_temp.empty
+            ])
+
+            if not has_data:
+                st.warning("鎵�閫夋椂闂存鍐呮湭鎵惧埌浠讳綍鏁版嵁锛岃灏濊瘯璋冩暣鏌ヨ鏉′欢銆�")
+                # 娓呴櫎缂撳瓨鏁版嵁
+                for key in ['cached_extruder_full', 'cached_main_speed', 'cached_temp', 'last_query_start', 'last_query_end']:
+                    if key in st.session_state:
+                        del st.session_state[key]
+                return
+
+            # 缂撳瓨鏁版嵁鍒颁細璇濈姸鎬�
+            st.session_state['cached_extruder_full'] = df_extruder_full
+            st.session_state['cached_main_speed'] = df_main_speed
+            st.session_state['cached_temp'] = df_temp
+            st.session_state['last_query_start'] = start_dt
+            st.session_state['last_query_end'] = end_dt
+            # 璁剧疆鍒嗘瀽瀹屾垚鏍囧織
+            st.session_state['analysis_completed'] = True
+
+    # 鏁版嵁澶勭悊鍜屽垎鏋�
+    if all(key in st.session_state for key in ['cached_extruder_full', 'cached_main_speed', 'cached_temp']) and st.session_state.get('analysis_completed', False):
+        with st.spinner("姝e湪鍒嗘瀽鏁版嵁..."):
+            # 鑾峰彇缂撳瓨鏁版嵁
+            df_extruder_full = st.session_state['cached_extruder_full']
+            df_main_speed = st.session_state['cached_main_speed']
+            df_temp = st.session_state['cached_temp']
+
+           
+
+            # 妫�鏌ユ槸鍚︽湁鏁版嵁
+            has_data = any([
+                df_extruder_full is not None and not df_extruder_full.empty,
+                df_main_speed is not None and not df_main_speed.empty,
+                df_temp is not None and not df_temp.empty
+            ])
+
+            if not has_data:
+                st.warning("鎵�閫夋椂闂存鍐呮湭鎵惧埌浠讳綍鏁版嵁锛岃灏濊瘯璋冩暣鏌ヨ鏉′欢銆�")
+                return
+
+            # 鏁版嵁鏁村悎涓庨澶勭悊
+            def integrate_data(df_extruder_full, df_main_speed, df_temp):
+                # 纭繚鎸ゅ嚭鏈烘暟鎹瓨鍦�
+                if df_extruder_full is None or df_extruder_full.empty:
+                    return None
+
+                # 鍒涘缓鍙寘鍚背閲嶅拰鏃堕棿鐨勪富鏁版嵁闆�
+                df_merged = df_extruder_full[['time', 'metered_weight', 'screw_speed_actual', 'head_pressure']].copy()
+              
+
+                # 鏁村悎涓绘祦绋嬫暟鎹�
+                if df_main_speed is not None and not df_main_speed.empty:
+                    df_main_speed = df_main_speed[['time', 'process_main_speed']]
+                    df_merged = pd.merge_asof(
+                        df_merged.sort_values('time'),
+                        df_main_speed.sort_values('time'),
+                        on='time',
+                        direction='nearest',
+                        tolerance=pd.Timedelta('1min')
+                    )
+
+                # 鏁村悎娓╁害鏁版嵁
+                if df_temp is not None and not df_temp.empty:
+                    temp_cols = ['time', 'nakata_extruder_screw_display_temp',
+                               'nakata_extruder_rear_barrel_display_temp',
+                               'nakata_extruder_front_barrel_display_temp',
+                               'nakata_extruder_head_display_temp']
+                    df_temp_subset = df_temp[temp_cols].copy()
+                    df_merged = pd.merge_asof(
+                        df_merged.sort_values('time'),
+                        df_temp_subset.sort_values('time'),
+                        on='time',
+                        direction='nearest',
+                        tolerance=pd.Timedelta('1min')
+                    )
+
+                # 閲嶅懡鍚嶅垪浠ユ彁楂樺彲璇绘��
+                df_merged.rename(columns={
+                    'screw_speed_actual': '铻烘潌杞��',
+                    'head_pressure': '鏈哄ご鍘嬪姏',
+                    'process_main_speed': '娴佺▼涓婚��',
+                    'nakata_extruder_screw_display_temp': '铻烘潌娓╁害',
+                    'nakata_extruder_rear_barrel_display_temp': '鍚庢満绛掓俯搴�',
+                    'nakata_extruder_front_barrel_display_temp': '鍓嶆満绛掓俯搴�',
+                    'nakata_extruder_head_display_temp': '鏈哄ご娓╁害'
+                }, inplace=True)
+
+                # 娓呯悊鏁版嵁
+                df_merged.dropna(subset=['metered_weight'], inplace=True)
+
+                return df_merged
+
+            # 鎵ц鏁版嵁鏁村悎
+            df_analysis = integrate_data(df_extruder_full, df_main_speed, df_temp)
+
+            if df_analysis is None or df_analysis.empty:
+                st.warning("鏁版嵁鏁村悎澶辫触锛岃妫�鏌ユ暟鎹川閲忔垨璋冩暣鏃堕棿鑼冨洿銆�")
+                return
+
+            # 閲嶅懡鍚嶇背閲嶅垪
+            df_analysis.rename(columns={'metered_weight': '绫抽噸'}, inplace=True)
+
+            # --- 鍘熷鏁版嵁瓒嬪娍鍥� ---
+            st.subheader("馃搱 鍘熷鏁版嵁瓒嬪娍鍥�")
+
+            # 鍒涘缓瓒嬪娍鍥�
+            fig_trend = go.Figure()
+
+            # 娣诲姞绫抽噸鏁版嵁
+            if df_extruder_full is not None and not df_extruder_full.empty:
+                fig_trend.add_trace(go.Scatter(
+                    x=df_extruder_full['time'],
+                    y=df_extruder_full['metered_weight'],
+                    name='绫抽噸 (Kg/m)',
+                    mode='lines',
+                    line=dict(color='blue', width=2)
+                ))
+
+                # 娣诲姞铻烘潌杞��
+                fig_trend.add_trace(go.Scatter(
+                    x=df_extruder_full['time'],
+                    y=df_extruder_full['screw_speed_actual'],
+                    name='铻烘潌杞�� (RPM)',
+                    mode='lines',
+                    line=dict(color='green', width=1.5),
+                    yaxis='y2'
+                ))
+
+                # 娣诲姞鏈哄ご鍘嬪姏
+                fig_trend.add_trace(go.Scatter(
+                    x=df_extruder_full['time'],
+                    y=df_extruder_full['head_pressure'],
+                    name='鏈哄ご鍘嬪姏',
+                    mode='lines',
+                    line=dict(color='orange', width=1.5),
+                    yaxis='y3'
+                ))
+
+            # 娣诲姞娴佺▼涓婚��
+            if df_main_speed is not None and not df_main_speed.empty:
+                fig_trend.add_trace(go.Scatter(
+                    x=df_main_speed['time'],
+                    y=df_main_speed['process_main_speed'],
+                    name='娴佺▼涓婚�� (M/Min)',
+                    mode='lines',
+                    line=dict(color='red', width=1.5),
+                    yaxis='y4'
+                ))
+
+            # 娣诲姞娓╁害鏁版嵁
+            if df_temp is not None and not df_temp.empty:
+                # 铻烘潌娓╁害
+                fig_trend.add_trace(go.Scatter(
+                    x=df_temp['time'],
+                    y=df_temp['nakata_extruder_screw_display_temp'],
+                    name='铻烘潌娓╁害 (掳C)',
+                    mode='lines',
+                    line=dict(color='purple', width=1),
+                    yaxis='y5'
+                ))
+
+            # 閰嶇疆瓒嬪娍鍥惧竷灞�
+            fig_trend.update_layout(
+                title='鍘熷鏁版嵁瓒嬪娍',
+                xaxis=dict(
+                    title='鏃堕棿',
+                    rangeslider=dict(visible=True),
+                    type='date'
+                ),
+                yaxis=dict(
+                    title='绫抽噸 (Kg/m)',
+                    title_font=dict(color='blue'),
+                    tickfont=dict(color='blue')
+                ),
+                yaxis2=dict(
+                    title='铻烘潌杞�� (RPM)',
+                    title_font=dict(color='green'),
+                    tickfont=dict(color='green'),
+                    overlaying='y',
+                    side='right'
+                ),
+                yaxis3=dict(
+                    title='鏈哄ご鍘嬪姏',
+                    title_font=dict(color='orange'),
+                    tickfont=dict(color='orange'),
+                    overlaying='y',
+                    side='right',
+                    anchor='free',
+                    position=0.85
+                ),
+                yaxis4=dict(
+                    title='娴佺▼涓婚�� (M/Min)',
+                    title_font=dict(color='red'),
+                    tickfont=dict(color='red'),
+                    overlaying='y',
+                    side='right',
+                    anchor='free',
+                    position=0.75
+                ),
+                yaxis5=dict(
+                    title='娓╁害 (掳C)',
+                    title_font=dict(color='purple'),
+                    tickfont=dict(color='purple'),
+                    overlaying='y',
+                    side='left',
+                    anchor='free',
+                    position=0.15
+                ),
+                legend=dict(
+                    orientation="h",
+                    yanchor="bottom",
+                    y=1.02,
+                    xanchor="right",
+                    x=1
+                ),
+                height=600,
+                margin=dict(l=100, r=200, t=100, b=100),
+                hovermode='x unified'
+            )
+
+            # 鏄剧ず瓒嬪娍鍥�
+            st.plotly_chart(fig_trend, width='stretch', config={'scrollZoom': True})
+
+            # --- 楂樼骇棰勬祴鍒嗘瀽 ---
+            st.subheader("馃搳 楂樼骇棰勬祴鍒嗘瀽")
+
+            # 妫�鏌ユ墍鏈夐粯璁ょ壒寰佹槸鍚﹀湪鏁版嵁涓�
+            missing_features = [f for f in default_features if f not in df_analysis.columns]
+            if missing_features:
+                st.warning(f"鏁版嵁涓己灏戜互涓嬬壒寰�: {', '.join(missing_features)}")
+            else:
+                try:
+                    # 鍑嗗鏁版嵁
+                    # 棣栧厛纭繚df_analysis涓病鏈塏aN鍊�
+                    df_analysis_clean = df_analysis.dropna(subset=default_features + ['绫抽噸'])
+                    
+                    # 妫�鏌ユ竻鐞嗗悗鐨勬暟鎹噺
+                    if len(df_analysis_clean) < 30:
+                        st.warning("鏁版嵁閲忎笉瓒筹紝鏃犳硶杩涜鏈夋晥鐨勯娴嬪垎鏋�")
+                    else:
+                        # 鍒涘缓涓�涓柊鐨凞ataFrame鏉ュ瓨鍌ㄦ墍鏈夌壒寰佸拰鐩爣鍙橀噺
+                        all_features = df_analysis_clean[default_features + ['绫抽噸']].copy()
+                        
+                        # 娣诲姞鏃堕棿鐩稿叧鐗瑰緛
+                        if 'time' in df_analysis_clean.columns:
+                            all_features['hour'] = df_analysis_clean['time'].dt.hour
+                            all_features['minute'] = df_analysis_clean['time'].dt.minute
+                            all_features['second'] = df_analysis_clean['time'].dt.second
+                            all_features['time_of_day'] = all_features['hour'] * 3600 + all_features['minute'] * 60 + all_features['second']
+                        else:
+                            all_features['hour'] = 0
+                            all_features['minute'] = 0
+                            all_features['second'] = 0
+                            all_features['time_of_day'] = 0
+                        
+                        # 娣诲姞婊炲悗鐗瑰緛
+                        for feature in default_features:
+                            for lag in [1, 2, 3]:
+                                all_features[f'{feature}_lag{lag}'] = all_features[feature].shift(lag)
+                                all_features[f'{feature}_diff{lag}'] = all_features[feature].diff(lag)
+                        
+                        # 娣诲姞婊氬姩缁熻鐗瑰緛
+                        for feature in default_features:
+                            all_features[f'{feature}_rolling_mean'] = all_features[feature].rolling(window=5).mean()
+                            all_features[f'{feature}_rolling_std'] = all_features[feature].rolling(window=5).std()
+                            all_features[f'{feature}_rolling_min'] = all_features[feature].rolling(window=5).min()
+                            all_features[f'{feature}_rolling_max'] = all_features[feature].rolling(window=5).max()
+                        
+                        # 娓呯悊鎵�鏈塏aN鍊�
+                        all_features_clean = all_features.dropna()
+                        
+                        # 妫�鏌ユ竻鐞嗗悗鐨勬暟鎹噺
+                        if len(all_features_clean) < 20:
+                            st.warning("鐗瑰緛宸ョ▼鍚庢暟鎹噺涓嶈冻锛屾棤娉曡繘琛屾湁鏁堢殑棰勬祴鍒嗘瀽")
+                        else:
+                            # 鍒嗙鐗瑰緛鍜岀洰鏍囧彉閲�
+                            feature_columns = [col for col in all_features_clean.columns if col != '绫抽噸']
+                            X_final = all_features_clean[feature_columns]
+                            y_final = all_features_clean['绫抽噸']
+                            
+                            # 妫�鏌ユ渶缁堟暟鎹噺
+                            if len(X_final) >= 20:
+                                # 鍒嗗壊璁粌闆嗗拰娴嬭瘯闆�
+                                X_train, X_test, y_train, y_test = train_test_split(X_final, y_final, test_size=0.2, random_state=42)
+                                
+                                # 鏁版嵁鏍囧噯鍖�
+                                scaler_X = StandardScaler()
+                                scaler_y = MinMaxScaler()
+                                
+                                X_train_scaled = scaler_X.fit_transform(X_train)
+                                X_test_scaled = scaler_X.transform(X_test)
+                                y_train_scaled = scaler_y.fit_transform(y_train.values.reshape(-1, 1)).ravel()
+                                y_test_scaled = scaler_y.transform(y_test.values.reshape(-1, 1)).ravel()
+                                
+                                # 妯″瀷璁粌
+                                model = None
+                                y_pred = None
+                                
+                                if model_type == 'RandomForest':
+                                    # 闅忔満妫灄鍥炲綊
+                                    model = RandomForestRegressor(n_estimators=100, random_state=42)
+                                    model.fit(X_train, y_train)
+                                    y_pred = model.predict(X_test)
+                                
+                                elif model_type == 'GradientBoosting':
+                                    # 姊害鎻愬崌鍥炲綊
+                                    model = GradientBoostingRegressor(n_estimators=100, random_state=42)
+                                    model.fit(X_train, y_train)
+                                    y_pred = model.predict(X_test)
+                                
+                                elif model_type == 'SVR':
+                                    # 鏀寔鍚戦噺鍥炲綊
+                                    model = SVR(kernel='rbf', C=1.0, gamma='scale')
+                                    model.fit(X_train_scaled, y_train_scaled)
+                                    y_pred_scaled = model.predict(X_test_scaled)
+                                    y_pred = scaler_y.inverse_transform(y_pred_scaled.reshape(-1, 1)).ravel()
+                                
+                                elif model_type == 'MLP':
+                                    # 澶氬眰鎰熺煡鍣ㄥ洖褰�
+                                    model = MLPRegressor(hidden_layer_sizes=(100, 50), max_iter=500, random_state=42)
+                                    model.fit(X_train_scaled, y_train_scaled)
+                                    y_pred_scaled = model.predict(X_test_scaled)
+                                    y_pred = scaler_y.inverse_transform(y_pred_scaled.reshape(-1, 1)).ravel()
+                                
+                                elif use_deep_learning and model_type in ['LSTM', 'GRU', 'BiLSTM']:
+                                    # 鍑嗗鏃堕棿搴忓垪鏁版嵁
+                                    sequence_length = st.session_state['ma_sequence_length']
+                                    
+                                    def create_sequences(X, y, seq_length):
+                                        X_seq = []
+                                        y_seq = []
+                                        # 纭繚X鍜寉鐨勯暱搴︿竴鑷�
+                                        min_len = min(len(X), len(y))
+                                        # 纭繚X鍜寉鐨勯暱搴﹁嚦灏戜负seq_length + 1
+                                        if min_len <= seq_length:
+                                            return np.array([]), np.array([])
+                                        # 鎴柇X鍜寉鍒扮浉鍚岄暱搴�
+                                        X_trimmed = X[:min_len]
+                                        y_trimmed = y[:min_len]
+                                        # 鍒涘缓搴忓垪
+                                        for i in range(len(X_trimmed) - seq_length):
+                                            X_seq.append(X_trimmed[i:i+seq_length])
+                                            y_seq.append(y_trimmed[i+seq_length])
+                                        return np.array(X_seq), np.array(y_seq)
+                                    
+                                    # 涓烘繁搴﹀涔犳ā鍨嬪垱寤哄簭鍒�
+                                    X_train_seq, y_train_seq = create_sequences(X_train_scaled, y_train_scaled, sequence_length)
+                                    X_test_seq, y_test_seq = create_sequences(X_test_scaled, y_test_scaled, sequence_length)
+                                    
+                                    # 纭繚搴忓垪鏁版嵁闀垮害涓�鑷�
+                                    if len(X_train_seq) != len(y_train_seq):
+                                        min_len_train = min(len(X_train_seq), len(y_train_seq))
+                                        X_train_seq = X_train_seq[:min_len_train]
+                                        y_train_seq = y_train_seq[:min_len_train]
+                                    
+                                    if len(X_test_seq) != len(y_test_seq):
+                                        min_len_test = min(len(X_test_seq), len(y_test_seq))
+                                        X_test_seq = X_test_seq[:min_len_test]
+                                        y_test_seq = y_test_seq[:min_len_test]
+                                    
+                                    # 妫�鏌ュ垱寤虹殑搴忓垪鏄惁涓虹┖
+                                    if len(X_train_seq) == 0 or len(y_train_seq) == 0:
+                                        st.warning(f"鏁版嵁閲忎笉瓒筹紝鏃犳硶鍒涘缓鏈夋晥鐨凩STM搴忓垪銆傞渶瑕佽嚦灏� {sequence_length + 1} 涓牱鏈紝褰撳墠鍙湁 {min(len(X_train_scaled), len(y_train_scaled))} 涓牱鏈��")
+                                        # 浣跨敤闅忔満妫灄浣滀负澶囬�夋ā鍨�
+                                        model = RandomForestRegressor(n_estimators=100, random_state=42)
+                                        model.fit(X_train, y_train)
+                                        y_pred = model.predict(X_test)
+                                    else:
+                                        # 鏋勫缓娣卞害瀛︿範妯″瀷
+                                        input_shape = (sequence_length, X_train_scaled.shape[1])
+                                        
+                                        deep_model = Sequential()
+                                        
+                                        if model_type == 'LSTM':
+                                            deep_model.add(LSTM(64, return_sequences=True, input_shape=input_shape))
+                                            deep_model.add(LSTM(32, return_sequences=False))
+                                        elif model_type == 'GRU':
+                                            deep_model.add(GRU(64, return_sequences=True, input_shape=input_shape))
+                                            deep_model.add(GRU(32, return_sequences=False))
+                                        elif model_type == 'BiLSTM':
+                                            deep_model.add(Bidirectional(LSTM(64, return_sequences=True), input_shape=input_shape))
+                                            deep_model.add(Bidirectional(LSTM(32, return_sequences=False)))
+                                        
+                                        deep_model.add(Dense(32, activation='relu'))
+                                        deep_model.add(Dropout(0.2))
+                                        deep_model.add(Dense(1))
+                                        
+                                        # 缂栬瘧妯″瀷
+                                        deep_model.compile(optimizer=Adam(learning_rate=0.001), loss='mean_squared_error')
+                                        
+                                        # 璁粌妯″瀷
+                                        # 纭繚X_train_seq鍜寉_train_seq闀垮害涓�鑷�
+                                        min_len_train = min(len(X_train_seq), len(y_train_seq))
+                                        min_len_test = min(len(X_test_seq), len(y_test_seq))
+                                        
+                                        if min_len_train > 0 and min_len_test > 0:
+                                            X_train_seq_trimmed = X_train_seq[:min_len_train]
+                                            y_train_seq_trimmed = y_train_seq[:min_len_train]
+                                            X_test_seq_trimmed = X_test_seq[:min_len_test]
+                                            y_test_seq_trimmed = y_test_seq[:min_len_test]
+                                            
+                                            history = deep_model.fit(
+                                                X_train_seq_trimmed, y_train_seq_trimmed,
+                                                validation_data=(X_test_seq_trimmed, y_test_seq_trimmed),
+                                                epochs=50,
+                                                batch_size=32,
+                                                verbose=0
+                                            )
+                                        else:
+                                            st.warning("鏁版嵁閲忎笉瓒筹紝鏃犳硶璁粌娣卞害瀛︿範妯″瀷")
+                                            # 浣跨敤闅忔満妫灄浣滀负澶囬�夋ā鍨�
+                                            model = RandomForestRegressor(n_estimators=100, random_state=42)
+                                            model.fit(X_train, y_train)
+                                            y_pred = model.predict(X_test)
+                                            # 纭繚y_test鍜寉_pred闀垮害涓�鑷�
+                                            min_len = min(len(y_test), len(y_pred))
+                                            if min_len > 0:
+                                                y_test_trimmed = y_test[:min_len]
+                                                y_pred_trimmed = y_pred[:min_len]
+                                            else:
+                                                y_test_trimmed = y_test
+                                                y_pred_trimmed = y_pred
+                                        
+                                        # 棰勬祴
+                                        if 'X_test_seq_trimmed' in locals():
+                                            y_pred_scaled = deep_model.predict(X_test_seq_trimmed).ravel()
+                                        else:
+                                            y_pred_scaled = deep_model.predict(X_test_seq).ravel()
+                                        y_pred = scaler_y.inverse_transform(y_pred_scaled.reshape(-1, 1)).ravel()
+                                        
+                                        # 淇濆瓨妯″瀷
+                                        model = deep_model
+                                
+                                # 璁$畻璇勪及鎸囨爣
+                                # 纭繚y_test鍜寉_pred闀垮害涓�鑷�
+                                min_len = min(len(y_test), len(y_pred))
+                                if min_len > 0:
+                                    y_test_trimmed = y_test[:min_len]
+                                    y_pred_trimmed = y_pred[:min_len]
+                                    r2 = r2_score(y_test_trimmed, y_pred_trimmed)
+                                    mse = mean_squared_error(y_test_trimmed, y_pred_trimmed)
+                                    mae = mean_absolute_error(y_test_trimmed, y_pred_trimmed)
+                                    rmse = np.sqrt(mse)
+                                else:
+                                    r2 = 0
+                                    mse = 0
+                                    mae = 0
+                                    rmse = 0
+
+                                # 鏄剧ず妯″瀷鎬ц兘
+                                metrics_cols = st.columns(2)
+                                with metrics_cols[0]:
+                                    st.metric("R虏 寰楀垎", f"{r2:.4f}")
+                                    st.metric("鍧囨柟璇樊 (MSE)", f"{mse:.6f}")
+                                with metrics_cols[1]:
+                                    st.metric("骞冲潎缁濆璇樊 (MAE)", f"{mae:.6f}")
+                                    st.metric("鍧囨柟鏍硅宸� (RMSE)", f"{rmse:.6f}")
+
+                                # --- 瀹為檯鍊间笌棰勬祴鍊煎姣� ---
+                                st.subheader("馃攧 瀹為檯鍊间笌棰勬祴鍊煎姣�")
+
+                                # 鍒涘缓瀵规瘮鏁版嵁
+                                compare_df = pd.DataFrame({
+                                    '瀹為檯鍊�': y_test_trimmed,
+                                    '棰勬祴鍊�': y_pred_trimmed
+                                })
+                                compare_df = compare_df.sort_index()
+
+                                # 鍒涘缓瀵规瘮鍥�
+                                fig_compare = go.Figure()
+                                fig_compare.add_trace(go.Scatter(
+                                    x=compare_df.index,
+                                    y=compare_df['瀹為檯鍊�'],
+                                    name='瀹為檯鍊�',
+                                    mode='lines+markers',
+                                    line=dict(color='blue', width=2)
+                                ))
+                                fig_compare.add_trace(go.Scatter(
+                                    x=compare_df.index,
+                                    y=compare_df['棰勬祴鍊�'],
+                                    name='棰勬祴鍊�',
+                                    mode='lines+markers',
+                                    line=dict(color='red', width=2, dash='dash')
+                                ))
+                                fig_compare.update_layout(
+                                    title=f'娴嬭瘯闆�: 瀹為檯绫抽噸 vs 棰勬祴绫抽噸 ({model_type})',
+                                    xaxis=dict(title='鏃堕棿'),
+                                    yaxis=dict(title='绫抽噸 (Kg/m)'),
+                                    legend=dict(orientation='h', yanchor='bottom', y=1.02, xanchor='right', x=1),
+                                    height=400
+                                )
+                                st.plotly_chart(fig_compare, width='stretch')
+
+                                # --- 娈嬪樊鍒嗘瀽 ---
+                                st.subheader("馃搲 娈嬪樊鍒嗘瀽")
+
+                                # 璁$畻娈嬪樊
+                                residuals = y_test_trimmed - y_pred_trimmed
+
+                                # 鍒涘缓娈嬪樊鍥�
+                                fig_residual = go.Figure()
+                                fig_residual.add_trace(go.Scatter(
+                                    x=y_pred,
+                                    y=residuals,
+                                    mode='markers',
+                                    marker=dict(color='green', size=8, opacity=0.6)
+                                ))
+                                fig_residual.add_shape(
+                                    type="line",
+                                    x0=y_pred.min(),
+                                    y0=0,
+                                    x1=y_pred.max(),
+                                    y1=0,
+                                    line=dict(color="red", width=2, dash="dash")
+                                )
+                                fig_residual.update_layout(
+                                    title='娈嬪樊鍥�',
+                                    xaxis=dict(title='棰勬祴鍊�'),
+                                    yaxis=dict(title='娈嬪樊'),
+                                    height=400
+                                )
+                                st.plotly_chart(fig_residual, width='stretch')
+
+                                # --- 鐗瑰緛閲嶈鎬э紙濡傛灉妯″瀷鏀寔锛� ---
+                                if model_type in ['RandomForest', 'GradientBoosting']:
+                                    st.subheader("鈿栵笍 鐗瑰緛閲嶈鎬у垎鏋�")
+
+                                    # 璁$畻鐗瑰緛閲嶈鎬�
+                                    feature_importance = pd.DataFrame({
+                                        '鐗瑰緛': X_train.columns,
+                                        '閲嶈鎬�': model.feature_importances_
+                                    })
+                                    feature_importance = feature_importance.sort_values('閲嶈鎬�', ascending=False)
+
+                                    # 鍒涘缓鐗瑰緛閲嶈鎬у浘
+                                    fig_importance = px.bar(
+                                        feature_importance,
+                                        x='鐗瑰緛',
+                                        y='閲嶈鎬�',
+                                        title='鐗瑰緛閲嶈鎬�',
+                                        color='閲嶈鎬�',
+                                        color_continuous_scale='viridis'
+                                    )
+                                    fig_importance.update_layout(
+                                        xaxis=dict(tickangle=-45),
+                                        height=400
+                                    )
+                                    st.plotly_chart(fig_importance, width='stretch')
+
+                                # --- 棰勬祴鍔熻兘 ---
+                                st.subheader("馃敭 绫抽噸棰勬祴")
+
+                                # 鍒涘缓棰勬祴琛ㄥ崟锛屼娇鐢╢orm鍖呰浠ラ槻姝㈣緭鍏ユ椂瑙﹀彂閲嶆柊鍒嗘瀽
+                                with st.form(key="prediction_form"):
+                                    st.write("杈撳叆鐗瑰緛鍊艰繘琛岀背閲嶉娴�:")
+                                    predict_cols = st.columns(2)
+                                    input_features = {}
+
+                                    for i, feature in enumerate(default_features):
+                                        with predict_cols[i % 2]:
+                                            # 鑾峰彇鐗瑰緛鐨勭粺璁′俊鎭�
+                                            min_val = df_analysis_clean[feature].min()
+                                            max_val = df_analysis_clean[feature].max()
+                                            mean_val = df_analysis_clean[feature].mean()
+
+                                            input_features[feature] = st.number_input(
+                                                f"{feature}",
+                                                key=f"ma_pred_{feature}",
+                                                value=float(mean_val),
+                                                min_value=float(min_val),
+                                                max_value=float(max_val),
+                                                step=0.1
+                                            )
+
+                                    # 棰勬祴鎸夐挳
+                                    predict_button = st.form_submit_button("棰勬祴绫抽噸")
+
+                                if predict_button:
+                                    # 鍑嗗棰勬祴鏁版嵁
+                                    input_df = pd.DataFrame([input_features])
+                                    
+                                    # 娣诲姞鏃堕棿鐗瑰緛锛堜娇鐢ㄥ綋鍓嶆椂闂达級
+                                    current_time = datetime.now()
+                                    time_features_input = pd.DataFrame({
+                                        'hour': [current_time.hour],
+                                        'minute': [current_time.minute],
+                                        'second': [current_time.second],
+                                        'time_of_day': [current_time.hour * 3600 + current_time.minute * 60 + current_time.second]
+                                    })
+                                    
+                                    # 娣诲姞婊炲悗鐗瑰緛锛堜娇鐢ㄨ緭鍏ュ�间綔涓烘浛浠o級
+                                    for feature in default_features:
+                                        for lag in [1, 2, 3]:
+                                            time_features_input[f'{feature}_lag{lag}'] = input_features[feature]
+                                            time_features_input[f'{feature}_diff{lag}'] = 0.0
+                                    
+                                    # 娣诲姞婊氬姩缁熻鐗瑰緛锛堜娇鐢ㄨ緭鍏ュ�间綔涓烘浛浠o級
+                                    for feature in default_features:
+                                        time_features_input[f'{feature}_rolling_mean'] = input_features[feature]
+                                        time_features_input[f'{feature}_rolling_std'] = 0.0
+                                        time_features_input[f'{feature}_rolling_min'] = input_features[feature]
+                                        time_features_input[f'{feature}_rolling_max'] = input_features[feature]
+                                    
+                                    # 鍚堝苟鐗瑰緛
+                                    input_combined = pd.concat([input_df, time_features_input], axis=1)
+                                    
+                                    # 棰勬祴
+                                    if model_type in ['SVR', 'MLP']:
+                                        input_scaled = scaler_X.transform(input_combined)
+                                        prediction_scaled = model.predict(input_scaled)
+                                        predicted_weight = scaler_y.inverse_transform(prediction_scaled.reshape(-1, 1)).ravel()[0]
+                                    elif use_deep_learning and model_type in ['LSTM', 'GRU', 'BiLSTM']:
+                                        # 涓烘繁搴﹀涔犳ā鍨嬪垱寤哄簭鍒�
+                                        input_scaled = scaler_X.transform(input_combined)
+                                        # 閲嶅杈撳叆浠ュ垱寤哄簭鍒�
+                                        sequence_length = st.session_state['ma_sequence_length']
+                                        input_seq = np.tile(input_scaled, (sequence_length, 1)).reshape(1, sequence_length, -1)
+                                        prediction_scaled = model.predict(input_seq).ravel()[0]
+                                        predicted_weight = scaler_y.inverse_transform(prediction_scaled.reshape(-1, 1)).ravel()[0]
+                                    else:
+                                        predicted_weight = model.predict(input_combined)[0]
+                                    
+                                    # 鏄剧ず棰勬祴缁撴灉
+                                    st.success(f"棰勬祴绫抽噸: {predicted_weight:.4f} Kg/m")
+
+                                # --- 鏁版嵁棰勮 ---
+                                st.subheader("馃攳 鏁版嵁棰勮")
+                                st.dataframe(df_analysis.head(20), width='stretch')
+                                
+                                # --- 瀵煎嚭鏁版嵁 ---
+                                st.subheader("馃捑 瀵煎嚭鏁版嵁")
+                                # 灏嗘暟鎹浆鎹负CSV鏍煎紡
+                                csv = df_analysis.to_csv(index=False)
+                                # 鍒涘缓涓嬭浇鎸夐挳
+                                st.download_button(
+                                    label="瀵煎嚭鏁村悎鍚庣殑鏁版嵁 (CSV)",
+                                    data=csv,
+                                    file_name=f"metered_weight_advanced_{datetime.now().strftime('%Y%m%d_%H%M%S')}.csv",
+                                    mime="text/csv",
+                                    help="鐐瑰嚮鎸夐挳瀵煎嚭鏁村悎鍚庣殑绫抽噸鍒嗘瀽鏁版嵁"
+                                )
+                except Exception as e:
+                    st.error(f"妯″瀷璁粌鎴栭娴嬪け璐�: {str(e)}")
+            
+    else:
+        # 鎻愮ず鐢ㄦ埛鐐瑰嚮寮�濮嬪垎鏋愭寜閽�
+        st.info("璇烽�夋嫨鏃堕棿鑼冨洿骞剁偣鍑�'寮�濮嬪垎鏋�'鎸夐挳鑾峰彇鏁版嵁銆�")

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