predict.py 11 KB

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  1. # predict.py
  2. import os
  3. import torch
  4. import joblib
  5. import pandas as pd
  6. import numpy as np
  7. from datetime import datetime, timedelta
  8. from gat_lstm import GAT_LSTM
  9. class RealTimePredictor:
  10. def __init__(self, model_path='model.pth', scaler_path='scaler.pkl', device=None):
  11. """
  12. 初始化预测器
  13. """
  14. # 1. 参数配置 (与训练 args.py 保持一致)
  15. self.seq_len = 10 # 输入序列长度
  16. self.feature_num = 32 # 输入特征数 (4时间编码 + 28业务特征)
  17. self.labels_num = 4 # 输出标签数
  18. self.hidden_size = 64
  19. self.num_layers = 1
  20. self.output_size = 5 # 预测未来 5 步
  21. self.dropout = 0
  22. # 2. 设备与资源加载
  23. self.device = device if device else torch.device("cuda:0" if torch.cuda.is_available() else "cpu")
  24. self.model_path = model_path
  25. self.scaler_path = scaler_path
  26. # 加载归一化器
  27. if not os.path.exists(self.scaler_path):
  28. raise FileNotFoundError(f"未找到归一化文件: {self.scaler_path},请确保已完成训练。")
  29. self.scaler = joblib.load(self.scaler_path)
  30. # 加载模型
  31. self._load_model()
  32. # 定义必须存在的列名 (29个,包含index,顺序必须固定)
  33. self.required_columns = [
  34. "index",
  35. "water_out", # 外供水流量
  36. "ns=3;s=AI_ROJSLL_OUT", # 进水流量反馈
  37. "ns=3;s=AI_UFCSLL_OUT", # UF产水流量反馈
  38. "ns=3;s=RO_1DJSLL_SSD", # SSD_Flow_1djs
  39. "ns=3;s=RO_2DJSLL_SSD", # SSD_Flow_2djs
  40. "ns=3;s=RO_NS_SSD", # SSD_Flow_ns
  41. "ns=3;s=AI_JYCSLL1_OUT", # 产水流量计1反馈
  42. "ns=3;s=AI_RODJYL_OUT", # 段间压力反馈
  43. "ns=3;s=AI_ROJSYL_OUT", # 进水压力反馈
  44. "ns=3;s=AI_UFCSYL_OUT", # UF产水压力反馈
  45. "ns=3;s=AI_JYCIPPH_OUT", # CIPph反馈
  46. "ns=3;s=AI_JYCSDD_OUT", # 外供水电导反馈
  47. "ns=3;s=AI_UFCSZD_OUT", # UF产水浊度反馈
  48. "ns=3;s=AI_ROCSDD_OUT", # 产水电导反馈
  49. "ns=3;s=AI_UFJSORP_OUT", # UF进水ORP反馈
  50. "ns=3;s=AI_UFJSPH_OUT", # UF进水ph反馈
  51. "ns=3;s=AI_UFJSYW_OUT", # UF进水温度反馈
  52. "ns=3;s=AI_JYROCSYW_OUT", # 反渗透产水液位计反馈
  53. "ns=3;s=AI_JYSYW_OUT", # 酸液位反馈
  54. "ns=3;s=AI_RODJB_FR_OUT", # RO段间泵频率反馈
  55. "ns=3;s=AI_ROGSB_FR_OUT", # RO供水泵频率反馈
  56. "ns=3;s=AI_ROGYB_FR_OUT", # RO高压泵频率反馈
  57. "ns=3;s=AI_UFFXB_FR_OUT", # UF反洗泵频率反馈
  58. "ns=3;s=AI_UFCSB_FR_OUT", # UF产水泵频率反馈
  59. "ns=3;s=UF_TMP", # SSD跨膜压差
  60. "ns=3;s=RO_CHA1YL_SSD", # SSD_PressCha1
  61. "ns=3;s=RO_CHA2YL_SSD", # SSD_PressCha2
  62. "ns=3;s=RO_ZCS_SSD", # SSD_Flow_zcs
  63. ]
  64. # 用于防空值兜底机制的变量
  65. self.raw_input_data = None
  66. self.target_columns = self.required_columns[-self.labels_num:]
  67. def _load_model(self):
  68. """内部方法:加载模型权重"""
  69. class ModelArgs: pass
  70. args = ModelArgs()
  71. args.feature_num = self.feature_num
  72. args.hidden_size = self.hidden_size
  73. args.num_layers = self.num_layers
  74. args.output_size = self.output_size
  75. args.labels_num = self.labels_num
  76. args.dropout = self.dropout
  77. self.model = GAT_LSTM(args).to(self.device)
  78. # 加载edge_index.pt
  79. if os.path.exists('edge_index.pt'):
  80. edge_index = torch.load('edge_index.pt', map_location=self.device, weights_only=True)
  81. self.model.set_edge_index(edge_index)
  82. if not os.path.exists(self.model_path):
  83. raise FileNotFoundError(f"未找到模型权重文件: {self.model_path}")
  84. state_dict = torch.load(self.model_path, map_location=self.device, weights_only=True)
  85. self.model.load_state_dict(state_dict)
  86. self.model.eval()
  87. def _preprocess(self, df):
  88. """数据预处理:补全、排序、生成时间特征、整体归一化"""
  89. data = df.copy()
  90. # 1. 统一时间列名
  91. if 'datetime' in data.columns:
  92. data = data.rename(columns={'datetime': 'index'})
  93. if 'index' not in data.columns:
  94. data['index'] = pd.date_range(end=datetime.now(), periods=len(data), freq='min')
  95. data['index'] = pd.to_datetime(data['index'])
  96. # 2. 补全长度 (Padding)
  97. if len(data) < self.seq_len:
  98. pad_len = self.seq_len - len(data)
  99. first_row = data.iloc[0:1]
  100. pads = pd.concat([first_row] * pad_len, ignore_index=True)
  101. start_time = data['index'].iloc[0]
  102. for i in range(pad_len):
  103. pads.at[i, 'index'] = start_time - timedelta(minutes=(pad_len-i))
  104. data = pd.concat([pads, data], ignore_index=True)
  105. # 3. 列筛选排序 (提取业务数据,不含index)
  106. try:
  107. # required_columns[0] 是 'index',我们取后面的业务列
  108. business_cols = self.required_columns[1:]
  109. data_business = data[business_cols].copy()
  110. # 策略: 前向填充 -> 后向填充 -> 填充为0
  111. data_business = data_business.ffill().bfill().fillna(0.0)
  112. except KeyError:
  113. missing = list(set(self.required_columns) - set(data.columns))
  114. raise ValueError(f"缺少列: {missing}")
  115. # 4. 生成时间特征
  116. date_col = data['index']
  117. minute_of_day = date_col.dt.hour * 60 + date_col.dt.minute
  118. day_of_year = date_col.dt.dayofyear
  119. time_features = pd.DataFrame({
  120. 'minute_sin': np.sin(2 * np.pi * minute_of_day / 1440),
  121. 'minute_cos': np.cos(2 * np.pi * minute_of_day / 1440),
  122. 'day_year_sin': np.sin(2 * np.pi * day_of_year / 366),
  123. 'day_year_cos': np.cos(2 * np.pi * day_of_year / 366)
  124. })
  125. # 5. 拼接:[时间特征 + 业务特征]
  126. # 注意:训练时的顺序是 time_features + other_columns
  127. # 必须重置索引以避免拼接错位
  128. data_to_scale = pd.concat([
  129. time_features.reset_index(drop=True),
  130. data_business.reset_index(drop=True)
  131. ], axis=1)
  132. # 6. 整体归一化
  133. scaled_array = self.scaler.transform(data_to_scale)
  134. return scaled_array
  135. # --- 备用防空值兜底函数 ---
  136. def get_recent_values_as_fallback(self):
  137. """从原始输入数据中获取最近的output_size条记录作为备用输出,避免输出空值"""
  138. if self.raw_input_data is None or self.raw_input_data.empty:
  139. return np.zeros((self.output_size, self.labels_num))
  140. df_copy = self.raw_input_data.copy()
  141. # 统一时间列格式,防止报错
  142. if 'datetime' in df_copy.columns:
  143. df_copy = df_copy.rename(columns={'datetime': 'index'})
  144. if 'index' not in df_copy.columns:
  145. df_copy['index'] = pd.date_range(end=datetime.now(), periods=len(df_copy), freq='min')
  146. df_copy['index'] = pd.to_datetime(df_copy['index'])
  147. # 按时间排序并取最近的output_size条
  148. recent_data = df_copy.sort_values('index').tail(self.output_size)
  149. # 若数据不足,用最后一条补充
  150. if len(recent_data) < self.output_size:
  151. last_row = recent_data.iloc[-1:] if not recent_data.empty else pd.DataFrame(
  152. {col: [0.0] for col in self.target_columns}, index=[0])
  153. while len(recent_data) < self.output_size:
  154. recent_data = pd.concat([recent_data, last_row], ignore_index=True)
  155. # 确保提取的兜底数据中没有空值 (NaN)
  156. recent_data[self.target_columns] = recent_data[self.target_columns].ffill().bfill().fillna(0.0)
  157. # 提取目标列值并返回
  158. try:
  159. fallback_values = recent_data[self.target_columns].values
  160. except KeyError:
  161. # 极度异常情况兜底(输入中缺少目标列)
  162. fallback_values = np.zeros((self.output_size, self.labels_num))
  163. return fallback_values
  164. def predict(self, df):
  165. """
  166. 返回: List[List[float]]
  167. 格式: [[t+1时刻的4个值], [t+2时刻的4个值], ..., [t+5时刻的4个值]]
  168. """
  169. # --- 保存原始输入数据用于可能的降级策略 ---
  170. self.raw_input_data = df.copy()
  171. # 1. 预处理 (返回的是归一化后的 numpy 数组)
  172. processed_data = self._preprocess(df)
  173. # 2. 取最后 seq_len 个时间步构建 Tensor
  174. input_seq = processed_data[-self.seq_len:]
  175. input_tensor = torch.tensor(input_seq, dtype=torch.float32).unsqueeze(0).to(self.device)
  176. # 3. 推理
  177. with torch.no_grad():
  178. output = self.model(input_tensor)
  179. # 4. 反归一化
  180. # 输出形状调整为 (5, 4) -> 5个步长, 4个变量
  181. preds = output.cpu().numpy().reshape(self.output_size, self.labels_num)
  182. # 获取最后4列的归一化参数 (目标变量)
  183. target_min = self.scaler.min_[-self.labels_num:]
  184. target_scale = self.scaler.scale_[-self.labels_num:]
  185. real_preds = (preds - target_min) / target_scale
  186. real_preds = np.abs(real_preds)
  187. # --- 空值/NaN 检测与兜底机制 ---
  188. # 如果模型因极端情况输出 NaN 或者 inf 无穷大,触发历史数据兜底
  189. if np.isnan(real_preds).any() or np.isinf(real_preds).any():
  190. real_preds = self.get_recent_values_as_fallback()
  191. # 5. 返回纯数值列表
  192. return real_preds.tolist()
  193. if __name__ == "__main__":
  194. # 测试代码
  195. try:
  196. # 初始化
  197. predictor = RealTimePredictor()
  198. # 生成模拟数据
  199. mock_data = pd.DataFrame()
  200. mock_data['index'] = pd.date_range(end=datetime.now(), periods=15, freq='min')
  201. for col in predictor.required_columns[1:]:
  202. mock_data[col] = np.random.rand(15) * 10
  203. # 人为制造空值测试鲁棒性
  204. mock_data.loc[3:6, "water_out"] = np.nan
  205. mock_data.loc[12, predictor.target_columns[0]] = np.nan
  206. # 预测
  207. result = predictor.predict(mock_data)
  208. print("预测结果 (5x4 数组):")
  209. print(result)
  210. except Exception as e:
  211. print(f"Error: {e}")
  212. import traceback
  213. traceback.print_exc()