train.py 12 KB

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  1. import os
  2. from datetime import datetime
  3. from pathlib import Path
  4. from pprint import pprint
  5. import pandas as pd
  6. from ...model.DHU.DHU_AB import DHU_AB
  7. from ...model.DHU.SDHU_AB import SDHU_AB
  8. from ...model.Room.room import RoomDewPredictor
  9. from .config_reader import ConfigReader
  10. from ...tools.data_loader import DataLoader
  11. NOW = datetime.now().replace(second=0,microsecond=0)
  12. PATH = os.path.dirname(os.path.realpath(__file__)).replace('\\','/')
  13. MODEL_FUNC_PATH = f'{PATH}/model_func.py'
  14. MODEL_FILE_PATH = f'./model.pkl'
  15. def train(*inputs,config=None):
  16. config = {} if config is None else config
  17. if '__LOCAL' in config.keys():
  18. config_reader_path = config['__LOCAL']
  19. data_URL = config['__URL']
  20. else:
  21. config_reader_path = '/mnt/workflow_data'
  22. data_URL = 'http://basedataportal-svc:8080/data/getpointsdata'
  23. config_reader = ConfigReader(path=f'{config_reader_path}/DHU配置.xlsx')
  24. ALL_RESULT = {
  25. 'EXCEPTION':{
  26. 'Data': {},
  27. 'Fit' : {},
  28. 'Save': {},
  29. 'Plot': {}
  30. }
  31. }
  32. for each_eaup_name in config_reader.all_equp_names:
  33. equp_type = config_reader.get_equp_info(each_eaup_name,key='设备类型',info_type='str')
  34. print(f'{each_eaup_name}开始训练,设备类型为{equp_type}')
  35. # 获取数据
  36. try:
  37. equp_data = load_data(
  38. each_eaup_name=each_eaup_name,each_equp_type=equp_type,config_reader=config_reader,
  39. config_reader_path=config_reader_path,data_URL=data_URL
  40. )
  41. except Exception as E:
  42. ALL_RESULT['EXCEPTION']['Data'][each_eaup_name] = E
  43. continue
  44. # 训练模型
  45. try:
  46. equp_model,equp_data_clean = train_equp_model(
  47. each_eaup_name=each_eaup_name,each_equp_type=equp_type,equp_data=equp_data,
  48. config_reader=config_reader,config_reader_path=config_reader_path)
  49. train_room_model(
  50. each_eaup_name=each_eaup_name,each_equp_type=equp_type,equp_data=equp_data,
  51. config_reader=config_reader,config_reader_path=config_reader_path
  52. )
  53. except Exception as E:
  54. ALL_RESULT['EXCEPTION']['Fit'][each_eaup_name] = E
  55. print(f'{each_eaup_name}模型训练异常 {E}')
  56. continue
  57. # 保存可视化结果
  58. if config_reader.get_app_info(each_eaup_name,'模型训练','保存可视化结果','bool') and equp_model is not None:
  59. try:
  60. save_train_info(
  61. equp_model=equp_model,equp_data=equp_data_clean,
  62. config_reader_path=config_reader_path,each_eaup_name=each_eaup_name)
  63. except Exception as E:
  64. ALL_RESULT['EXCEPTION']['Plot'][each_eaup_name] = E
  65. pass
  66. # 模型迭代
  67. if not config_reader.get_app_info(each_eaup_name,'模型训练','迭代模型','bool') and equp_model is not None:
  68. continue
  69. try:
  70. monitor_point = config_reader.point.loc[lambda dt:dt.类型=='B']
  71. model_update_info = {}
  72. for i in range(len(monitor_point)):
  73. name = monitor_point.loc[:,'编号'].iat[i]
  74. name_cn = monitor_point.loc[:,'名称'].iat[i]
  75. MAE = monitor_point.loc[:,'指标MAE'].iat[i]
  76. model_update_info[name] = {
  77. 'point_id' : name,
  78. 'point_name' : name_cn,
  79. 'point_class': name,
  80. 'thre_mae' : MAE,
  81. 'thre_mape' : 1,
  82. 'thre_days' : 7
  83. }
  84. equp_model.save_to_platform(
  85. version_id = datetime.now().strftime('%Y%m'),
  86. model_id = config_reader.get_equp_info(each_eaup_name,'模型编号','str'),
  87. update_method = 'update',
  88. model_info = model_update_info,
  89. MODEL_FILE_PATH = MODEL_FILE_PATH,
  90. MODEL_FUNC_PATH = MODEL_FUNC_PATH,
  91. )
  92. except Exception as E:
  93. ALL_RESULT['EXCEPTION']['Save'][each_eaup_name] = E
  94. continue
  95. pprint(ALL_RESULT)
  96. def save_data(dir,file:str,data:pd.DataFrame):
  97. Path(dir).mkdir(parents=True,exist_ok=True)
  98. if file.endswith('.csv'):
  99. data.to_csv(os.path.join(dir,file),index=True)
  100. elif file.endswith('.pkl'):
  101. data.to_pickle(os.path.join(dir,file))
  102. else:
  103. raise Exception('file type error')
  104. def load_data(each_eaup_name,each_equp_type,config_reader,config_reader_path,data_URL):
  105. # 部分情况下设备不需要部分点位表中的点位
  106. rm_point_name = []
  107. if not config_reader.get_equp_info(each_eaup_name,'存在回风口','bool'):
  108. rm_point_name += ['mixed_1_TinM','mixed_1_DinM']
  109. if not config_reader.get_equp_info(each_eaup_name,'存在补风口','bool'):
  110. rm_point_name += ['mixed_2_TinM','mixed_2_DinM']
  111. # 获取历史数据
  112. data_loader = DataLoader(
  113. path = f'{config_reader_path}/data/train/data_his/',
  114. start_time = config_reader.get_app_info(each_eaup_name,app_type='模型训练',key='开始时间',info_type='datetime'),
  115. end_time = config_reader.get_app_info(each_eaup_name,app_type='模型训练',key='结束时间',info_type='datetime'),
  116. print_process = config_reader.get_app_info(each_eaup_name,app_type='模型训练',key='打印取数日志',info_type='bool'),
  117. )
  118. data_loader.download_equp_data(
  119. equp_name = each_eaup_name,
  120. point = config_reader.get_equp_point(each_eaup_name,equp_class=['A','B','C']),
  121. url = data_URL,
  122. clean_cache = False,
  123. rm_point_name = rm_point_name
  124. )
  125. equp_data = data_loader.get_equp_data(each_eaup_name)
  126. save_data(f'{config_reader_path}/data/train/data_his_raw',f'{each_eaup_name}.pkl',equp_data)
  127. return equp_data
  128. def train_equp_model(each_eaup_name,each_equp_type,equp_data,config_reader,config_reader_path):
  129. if each_equp_type in ['DHU_A','DHU_B']:
  130. equp_model = DHU_AB(
  131. DHU_type = each_equp_type,
  132. exist_Fa_H = config_reader.get_equp_info(each_eaup_name,'存在回风口','bool'),
  133. exist_Fa_B = config_reader.get_equp_info(each_eaup_name,'存在补风口','bool'),
  134. )
  135. elif each_equp_type in ['SDHU_A','SDHU_B']:
  136. equp_model = SDHU_AB(
  137. DHU_type = each_equp_type,
  138. exist_Fa_H = config_reader.get_equp_info(each_eaup_name,'存在回风口','bool'),
  139. exist_Fa_H0= config_reader.get_equp_info(each_eaup_name,'存在回风口(前表冷后)','bool'),
  140. )
  141. else:
  142. raise NotImplementedError
  143. # 清洗数据
  144. Path(f'{config_reader_path}/data/train/clean_log/').mkdir(parents=True, exist_ok=True)
  145. equp_data_clean = equp_model.clean_data(
  146. data = equp_data,
  147. data_type = ['input','observed'],
  148. print_process = True,
  149. fill_zero = False,
  150. save_log = f'{config_reader_path}/data/train/clean_log/{each_eaup_name}.txt',
  151. )
  152. equp_data_clean = equp_data_clean.resample('15min').mean().dropna()
  153. save_data(f'{config_reader_path}/data/train/data_his_clean',f'{each_eaup_name}.pkl',equp_data_clean)
  154. if not config_reader.get_app_info(each_eaup_name,'模型训练','训练设备模型','bool'):
  155. return None,None
  156. if each_equp_type in ['DHU_A','DHU_B']:
  157. equp_model.fit(
  158. input_data = equp_data_clean,
  159. observed_data = equp_data_clean,
  160. plot_TVP = False,
  161. rw_FA_val = config_reader.get_app_info(each_eaup_name,'模型训练','新风阀门开度参数','bool')
  162. )
  163. elif each_equp_type in ['SDHU_A','SDHU_B']:
  164. equp_model:SDHU_AB
  165. equp_model.fit(
  166. input_data = equp_data_clean,
  167. observed_data = equp_data_clean,
  168. plot_TVP = False
  169. )
  170. else:
  171. raise NotImplementedError
  172. Path(f'{config_reader_path}/model').mkdir(parents=True, exist_ok=True)
  173. equp_model.save(f'{config_reader_path}/model/{each_eaup_name}.pkl')
  174. save_data(f'{config_reader_path}/data/train/data_TVP',f'{each_eaup_name}.csv',equp_model.TVP_data)
  175. save_data(f'{config_reader_path}/data/train/data_metric',f'{each_eaup_name}.csv',equp_model.TVP_metric.round(2))
  176. return equp_model,equp_data_clean
  177. def train_room_model(each_eaup_name,each_equp_type,equp_data,config_reader:ConfigReader,config_reader_path):
  178. if not config_reader.get_app_info(each_eaup_name,'模型训练','训练房间模型','bool'):
  179. return None
  180. N_fit = 24 * 60 * 7
  181. try:
  182. equp_model_path = f'{config_reader_path}/model/{each_eaup_name}.pkl'
  183. if each_equp_type in ['DHU_A','DHU_B']:
  184. equp_model = DHU_AB.load(equp_model_path)
  185. Dout = equp_model.predict(equp_data.iloc[-N_fit:,:])['coil_3']['DoutA']
  186. elif each_equp_type in ['SDHU_A','SDHU_B']:
  187. equp_model = SDHU_AB.load(equp_model_path)
  188. Dout = equp_model.predict(equp_data.iloc[-N_fit:,:])['wheel_1']['DoutP']
  189. else:
  190. raise NotImplementedError
  191. except Exception as E:
  192. Dout = None
  193. print(f'{each_eaup_name}设备模型加载失败,不选了基于除湿机模型的方法')
  194. # 实际送风露点
  195. if each_equp_type in ['DHU_A','DHU_B']:
  196. wheel_1_TinR = equp_data.iloc[-N_fit:,:].loc[:,'wheel_1_TinR'].values
  197. wheel_2_TinR = equp_data.iloc[-N_fit:,:].loc[:,'wheel_2_TinR'].values
  198. wheel_TinR = (wheel_1_TinR+wheel_2_TinR)/2
  199. Dout_real = equp_data.iloc[-N_fit:,:].loc[:,'wheel_2_DoutP'].values
  200. elif each_equp_type in ['SDHU_A','SDHU_B']:
  201. wheel_TinR = equp_data.iloc[-N_fit:,:].loc[:,'wheel_1_TinR'].values
  202. Dout_real = equp_data.iloc[-N_fit:,:].loc[:,'coil_2_DoutA'].values
  203. else:
  204. raise NotImplementedError
  205. N_room = config_reader.get_equp_info(each_eaup_name,'房间数量','int')
  206. path_lagcorr_DHU = f'{config_reader_path}/plot/plot_room_lagcorr_DHU/'
  207. path_lagcorr_Dout = f'{config_reader_path}/plot/plot_room_lagcorr_Dout/'
  208. path_lagcorr_TinR = f'{config_reader_path}/plot/plot_room_lagcorr_TinR/'
  209. Path(path_lagcorr_DHU).mkdir(parents=True, exist_ok=True)
  210. Path(path_lagcorr_Dout).mkdir(parents=True, exist_ok=True)
  211. Path(path_lagcorr_TinR).mkdir(parents=True, exist_ok=True)
  212. for i in range(1,N_room+1):
  213. Droom = equp_data.iloc[-N_fit:,:].loc[:,f'room_{i}_Dpv'].values
  214. # 基于DHU模型
  215. if Dout is not None:
  216. room_model_DHU = RoomDewPredictor(coef_is_pos=True).fit_Droom(Dout=Dout,Droom=Droom)
  217. room_model_DHU.save(f'{config_reader_path}/model/{each_eaup_name}_room_{i}_Dpv_DHU.pkl')
  218. room_model_DHU.plot_diffdata_lagcorr(Dout,Droom).save(filename=f'{path_lagcorr_DHU}/{each_eaup_name}_room_{i}_Dpv.png')
  219. # 基于实际送风露点
  220. room_model_Dout = RoomDewPredictor(coef_is_pos=True).fit_Droom(Dout=wheel_TinR,Droom=Droom)
  221. room_model_Dout.save(f'{config_reader_path}/model/{each_eaup_name}_room_{i}_Dpv_Dout.pkl')
  222. room_model_Dout.plot_diffdata_lagcorr(Dout_real,Droom).save(filename=f'{path_lagcorr_Dout}/{each_eaup_name}_room_{i}_Dpv.png')
  223. # 基于再生加热
  224. room_model_TinR = RoomDewPredictor(coef_is_pos=False).fit_Droom(Dout=wheel_TinR,Droom=Droom)
  225. room_model_TinR.save(f'{config_reader_path}/model/{each_eaup_name}_room_{i}_Dpv_TinR.pkl')
  226. room_model_TinR.plot_diffdata_lagcorr(wheel_TinR,Droom).save(filename=f'{path_lagcorr_TinR}/{each_eaup_name}_room_{i}_Dpv.png')
  227. def save_train_info(equp_model,equp_data,config_reader_path,each_eaup_name):
  228. for plot_name,plot in equp_model.plot_check(equp_data).items():
  229. path = f'{config_reader_path}/plot/{plot_name}/'
  230. Path(path).mkdir(parents=True, exist_ok=True)
  231. plot.save(filename=f'{path}/{each_eaup_name}.png')
  232. path = f'{config_reader_path}/plot/TVP'
  233. Path(path).mkdir(parents=True, exist_ok=True)
  234. equp_model.plot_TVP(equp_model.TVP_data,save_path=f'{path}/{each_eaup_name}.png')