data_preprocessor.py 13 KB

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  1. # data_preprocessor.py
  2. import os
  3. import torch
  4. import joblib
  5. import numpy as np
  6. import pandas as pd
  7. from tqdm import tqdm # 进度条显示
  8. from sklearn.preprocessing import MinMaxScaler # 数据归一化工具
  9. from torch.utils.data import DataLoader, TensorDataset # PyTorch数据加载工具
  10. from concurrent.futures import ThreadPoolExecutor # 多线程读取文件
  11. class DataPreprocessor:
  12. """数据预处理类,负责数据加载、划分、转换为模型可输入的格式"""
  13. @staticmethod
  14. def load_and_process_data(args, data):
  15. """
  16. 加载并处理数据,划分训练/验证/测试集,创建数据加载器
  17. 参数:
  18. args: 配置参数(包含数据集划分日期、序列长度等)
  19. data: 预处理后的完整数据(含日期列)
  20. 返回:
  21. train_loader: 训练集数据加载器
  22. val_loader: 验证集数据加载器
  23. test_loader: 测试集数据加载器
  24. data: 原始数据(用于后续处理)
  25. """
  26. # 处理日期列
  27. data['date'] = pd.to_datetime(data['date'])
  28. time_interval = pd.Timedelta(minutes=(4 * args.resolution / 60))
  29. window_time_span = time_interval * (args.seq_len + 1)
  30. # 划分训练/验证/测试集(调整起始日期以适应滑动窗口)
  31. val_start_date = pd.to_datetime(args.val_start_date)
  32. test_start_date = pd.to_datetime(args.test_start_date)
  33. # 调整验证集/测试集起始时间(向前推一个窗口,确保有足够历史数据构建输入序列)
  34. adjusted_val_start = val_start_date - window_time_span
  35. adjusted_test_start = test_start_date - window_time_span
  36. # 构建数据集掩码(按日期筛选)
  37. train_mask = (data['date'] >= pd.to_datetime(args.train_start_date)) & \
  38. (data['date'] <= pd.to_datetime(args.train_end_date))
  39. val_mask = (data['date'] >= adjusted_val_start) & \
  40. (data['date'] <= pd.to_datetime(args.val_end_date))
  41. test_mask = (data['date'] >= adjusted_test_start) & \
  42. (data['date'] <= pd.to_datetime(args.test_end_date))
  43. # 筛选数据并重置索引
  44. train_data = data[train_mask].reset_index(drop=True)
  45. val_data = data[val_mask].reset_index(drop=True)
  46. test_data = data[test_mask].reset_index(drop=True)
  47. # 移除日期列用于建模
  48. train_data = train_data.drop(columns=['date'])
  49. val_data = val_data.drop(columns=['date'])
  50. test_data = test_data.drop(columns=['date'])
  51. # 创建监督学习数据集(输入序列+目标序列)
  52. train_supervised = DataPreprocessor.create_supervised_dataset(
  53. args,
  54. train_data,
  55. 1
  56. )
  57. val_supervised = DataPreprocessor.create_supervised_dataset(
  58. args,
  59. val_data,
  60. 1
  61. )
  62. test_supervised = DataPreprocessor.create_supervised_dataset(
  63. args,
  64. test_data,
  65. args.step_size
  66. )
  67. # 转换为DataLoader
  68. train_loader = DataPreprocessor.load_data(
  69. args,
  70. train_supervised,
  71. shuffle=True
  72. )
  73. val_loader = DataPreprocessor.load_data(
  74. args,
  75. val_supervised,
  76. shuffle=False
  77. )
  78. test_loader = DataPreprocessor.load_data(
  79. args,
  80. test_supervised,
  81. shuffle=False
  82. )
  83. return train_loader, val_loader, test_loader, data # 返回原始数据用于后续处理
  84. @staticmethod
  85. def read_and_combine_csv_files(args):
  86. """
  87. 多线程读取并合并多个CSV文件,进行下采样、日期处理和归一化
  88. 参数:
  89. args: 配置参数(包含数据路径、文件范围等)
  90. 返回:
  91. chunk: 预处理后的合并数据(含日期和归一化特征)
  92. """
  93. current_dir = os.path.dirname(__file__)
  94. parent_dir = os.path.dirname(current_dir)
  95. args.data_dir = os.path.join(parent_dir, args.data_dir)
  96. def read_file(file_count):
  97. """读取单个CSV文件的函数(供多线程调用)"""
  98. file_name = args.file_pattern.format(file_count)
  99. file_path = os.path.join(args.data_dir, file_name)
  100. return pd.read_csv(file_path)
  101. # 生成待读取的文件索引列表
  102. file_indices = list(range(args.start_files, args.end_files + 1))
  103. # 多线程读取文件(加速大文件读取)
  104. max_workers = os.cpu_count()
  105. with ThreadPoolExecutor(max_workers=max_workers) as executor:
  106. results = list(tqdm(executor.map(read_file, file_indices),
  107. total=len(file_indices),
  108. desc="正在读取文件"))
  109. all_data = pd.concat(results, ignore_index=True)
  110. # 根据feature_num筛选特征列
  111. if args.feature_num == 16:
  112. # 定义需要保留的16个特征(包含index列用于后续日期处理)
  113. '''
  114. specified_features = [
  115. "C.M.RO1_FT_JS@out",
  116. "C.M.RO2_FT_JS@out",
  117. "C.M.RO3_FT_JS@out",
  118. "C.M.RO4_FT_JS@out",
  119. "C.M.RO_TT_ZJS@out",
  120. "C.M.RO_Cond_ZCS@out",
  121. "C.M.RO1_DB@DPT_1",
  122. "C.M.RO1_DB@DPT_2",
  123. "C.M.RO2_DB@DPT_1",
  124. "C.M.RO2_DB@DPT_2",
  125. "C.M.RO3_DB@DPT_1",
  126. "C.M.RO3_DB@DPT_2",
  127. "C.M.RO4_DB@DPT_1",
  128. "C.M.RO4_DB@DPT_2"
  129. ]
  130. '''
  131. specified_features = [
  132. "C.M.UF1_FT_JS@out", # UF1进水流量
  133. "C.M.UF2_FT_JS@out", # UF2进水流量
  134. "C.M.UF3_FT_JS@out", # UF3进水流量
  135. "C.M.UF4_FT_JS@out", # UF4进水流量
  136. "C.M.RO_TT_ZJS@out", # 反渗透总进水温度
  137. "C.M.UF_ORP_ZCS@out", # 超滤总产水ORP
  138. "C.M.UF1_DB@press_PV", # UF1跨膜压差
  139. "C.M.UF2_DB@press_PV", # UF2跨膜压差
  140. "C.M.UF3_DB@press_PV", # UF3跨膜压差
  141. "C.M.UF4_DB@press_PV", # UF4跨膜压差
  142. "UF1Per", # UF1膜渗透率
  143. "UF2Per", # UF2膜渗透率
  144. "UF3Per", # UF3膜渗透率
  145. "UF4Per", # UF4膜渗透率
  146. ]
  147. # 必须保留'index'列用于后续日期处理,添加到特征列表
  148. columns_to_keep = ['index'] + specified_features
  149. # 筛选并按指定顺序保留列
  150. all_data = all_data[columns_to_keep]
  151. # 当feature_num=79时,保持原有所有特征
  152. # 按分辨率下采样
  153. chunk = all_data.iloc[::args.resolution, :].reset_index(drop=True)
  154. # 处理日期和时间特征
  155. chunk = DataPreprocessor.process_date(chunk, args)
  156. # 归一化
  157. chunk = DataPreprocessor.scaler_data(chunk, args)
  158. return chunk
  159. @staticmethod
  160. def process_date(data, args):
  161. """
  162. 处理日期列,根据分辨率生成周期性时间特征
  163. 参数:
  164. data: 含'index'列(原始日期)的DataFrame
  165. resolution: 数据分辨率,用于决定生成的时间特征
  166. 返回:
  167. data: 处理后的DataFrame(含日期列和时间特征)
  168. """
  169. data = data.rename(columns={'index': 'date'})
  170. data['date'] = pd.to_datetime(data['date'])
  171. # 生成周期性时间特征
  172. time_features = []
  173. if args.resolution == 60:
  174. # 分辨率为60时,生成分钟级和日级特征
  175. data['minute_of_day'] = data['date'].dt.hour * 60 + data['date'].dt.minute
  176. data['minute_sin'] = np.sin(2 * np.pi * data['minute_of_day'] / 1440)
  177. data['minute_cos'] = np.cos(2 * np.pi * data['minute_of_day'] / 1440)
  178. time_features.extend(['minute_sin', 'minute_cos'])
  179. data.drop(columns=['minute_of_day'], inplace=True)
  180. # 两种分辨率下都保留日级特征
  181. data['day_of_year'] = data['date'].dt.dayofyear
  182. data['day_year_sin'] = np.sin(2 * np.pi * data['day_of_year'] / 366)
  183. data['day_year_cos'] = np.cos(2 * np.pi * data['day_of_year'] / 366)
  184. time_features.extend(['day_year_sin', 'day_year_cos'])
  185. data.drop(columns=['day_of_year'], inplace=True)
  186. # 调整列顺序(日期+时间特征+其他特征)
  187. other_columns = [col for col in data.columns if col not in ['date'] and col not in time_features]
  188. data = data[['date'] + time_features + other_columns]
  189. return data
  190. @staticmethod
  191. def scaler_data(data, args):
  192. """
  193. 对数据进行归一化(0-1缩放),并保存归一化器(供预测时反归一化)
  194. 参数:
  195. data: 含'date'列和特征列的DataFrame
  196. args: 配置参数(包含scaler_path)
  197. 返回:
  198. scaled_data: 归一化后的DataFrame(含日期列)
  199. """
  200. date_col = data[['date']]
  201. data_to_scale = data.drop(columns=['date'])
  202. scaler = MinMaxScaler(feature_range=(0, 1))
  203. scaled_data = scaler.fit_transform(data_to_scale)
  204. joblib.dump(scaler, args.scaler_path) # 保存归一化器
  205. # 转换为DataFrame并拼接日期列
  206. scaled_data = pd.DataFrame(scaled_data, columns=data_to_scale.columns)
  207. scaled_data = pd.concat([date_col.reset_index(drop=True), scaled_data], axis=1)
  208. return scaled_data
  209. @staticmethod
  210. def create_supervised_dataset(args, data, step_size):
  211. """
  212. 创建监督学习数据集(输入序列+目标序列)
  213. 输入序列:历史seq_len个时间步的所有特征
  214. 目标序列:未来output_size个时间步的标签特征(最后labels_num列)
  215. 参数:
  216. args: 配置参数(含seq_len、output_size等)
  217. data: 输入数据(不含日期列的特征数据)
  218. step_size: 采样步长(每隔step_size取一个样本)
  219. 返回:
  220. dataset: 监督学习数据集(DataFrame)
  221. """
  222. data = pd.DataFrame(data)
  223. cols = []
  224. col_names = []
  225. feature_columns = data.columns.tolist()
  226. # 输入序列(t-0到t-(seq_len-1))
  227. for col in feature_columns:
  228. for i in range(args.seq_len - 1, -1, -1):
  229. cols.append(data[[col]].shift(i))
  230. col_names.append(f"{col}(t-{i})")
  231. # 目标序列(仅取最后labels_num列作为预测目标)
  232. target_columns = feature_columns[-args.labels_num:]
  233. for i in range(1, args.output_size + 1):
  234. for col in target_columns:
  235. cols.append(data[[col]].shift(-i))
  236. col_names.append(f"{col}(t+{i})")
  237. # 合并并清洗数据
  238. dataset = pd.concat(cols, axis=1)
  239. dataset.columns = col_names
  240. dataset = dataset.iloc[::step_size, :] # 按步长采样
  241. dataset.dropna(inplace=True) # 移除含缺失值的行
  242. return dataset
  243. @staticmethod
  244. def load_data(args, dataset, shuffle):
  245. """
  246. 将监督学习数据集转换为PyTorch张量,并创建DataLoader
  247. 参数:
  248. args: 配置参数(含特征数、批大小等)
  249. dataset: 监督学习数据集(DataFrame)
  250. shuffle: 是否打乱数据(训练集True,验证/测试集False)
  251. 返回:
  252. data_loader: PyTorch DataLoader
  253. """
  254. input_length = args.seq_len
  255. n_features = args.feature_num
  256. labels_num = args.labels_num
  257. n_features_total = n_features * input_length # 输入特征总维度
  258. n_labels_total = args.output_size * labels_num # 目标总维度
  259. # 分割输入和目标
  260. X = dataset.values[:, :n_features_total]
  261. y = dataset.values[:, n_features_total:n_features_total + n_labels_total]
  262. # 重塑输入为[样本数, 序列长度, 特征数]
  263. X = X.reshape(X.shape[0], input_length, n_features)
  264. X = torch.tensor(X, dtype=torch.float32).to(args.device)
  265. y = torch.tensor(y, dtype=torch.float32).to(args.device)
  266. # 创建数据集和数据加载器
  267. dataset_tensor = TensorDataset(X, y)
  268. generator = torch.Generator()
  269. generator.manual_seed(args.random_seed) # 固定随机种子确保可复现
  270. data_loader = DataLoader(
  271. dataset_tensor,
  272. batch_size=args.batch_size,
  273. shuffle=shuffle,
  274. generator=generator
  275. )
  276. return data_loader