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- import json
- import multiprocessing
- import traceback
- from conf.constants import ParallelProcessing
- from etl.common.WaveData import WaveData
- from service.plt_service import get_all_wind
- from service.trans_conf_service import update_trans_status_running, update_trans_transfer_progress, \
- update_trans_status_success, update_trans_status_error
- from service.trans_service import get_wave_conf, save_df_to_db, get_or_create_wave_table, \
- get_wave_data, delete_exist_wave_data
- from utils.file.trans_methods import *
- from utils.log.trans_log import set_trance_id, info, error
- from utils.systeminfo.sysinfo import get_available_cpu_count_with_percent
- # env = "qianan"
- # if len(sys.argv) >= 2:
- # env = sys.argv[1]
- #
- # if env.endswith(".yaml"):
- # conf_path = env
- # else:
- # conf_path = os.path.abspath(f"C:/project/energy-data-trans/conf/etl_config_{env}.yaml")
- #
- # os.environ["ETL_CONF"] = conf_path
- # yaml_config = yaml_conf(conf_path)
- # os.environ["env"] = env
- exec("import datetime")
- exec("from os.path import *")
- exec("import re")
- class WaveTrans(object):
- """波形数据转换类"""
- def __init__(self, id: int, wind_farm_code: str, wind_farm_name: str, read_dir: str):
- """
- 初始化波形数据转换类
-
- Args:
- id: 任务ID
- wind_farm_code: 风电场编码
- read_dir: 读取目录
- """
- self.id = id
- self.wind_farm_code = wind_farm_code
- self.wind_farm_name = wind_farm_name
- self.read_dir = read_dir
- self.begin = datetime.datetime.now()
- self.engine_count = 0
- self.min_date = None
- self.max_date = None
- self.data_count = 0
- def get_data_exec(self, func_code: str, filepath: str, measupoint_names: List[str]) -> List[WaveData]:
- exec(func_code)
- return locals()['get_data'](filepath, measupoint_names) or []
- # return self.get_data(filepath, measupoint_names)
- def del_exists_data(self, df: pd.DataFrame):
- """
- 删除已存在的数据
-
- Args:
- df: 数据帧
- """
- min_date, max_date = df['time_stamp'].min(), df['time_stamp'].max()
- if self.min_date is None:
- self.min_date = min_date
- if self.max_date is None:
- self.max_date = max_date
- self.min_date = min(self.min_date, min_date)
- self.max_date = max(self.max_date, max_date)
- db_df = get_wave_data(self.wind_farm_code + '_wave', min_date, max_date)
- db_df['type'] = db_df['type'].astype(str)
- df['type'] = df['type'].astype(str)
- db_df['time_stamp'] = pd.to_datetime(db_df['time_stamp'], errors='coerce')
- df['time_stamp'] = pd.to_datetime(df['time_stamp'], errors='coerce')
- exists_df = pd.merge(db_df, df,
- on=['detection_type', 'end_frequency', 'eu_spectrum', 'mesure_point_name',
- 'sampling_frequency', 'samples', 'start_frequency', 'time_stamp', 'type',
- 'wind_turbine_name', 'window_type'],
- how='inner')
- ids = [int(i) for i in exists_df['id'].to_list()]
- if ids:
- delete_exist_wave_data(self.wind_farm_code + "_wave", ids)
- def run(self):
- """运行波形数据转换"""
- update_trans_status_running(self.id)
- trance_id = '-'.join([self.wind_farm_code, 'wave'])
- set_trance_id(trance_id)
- wave_conf = get_wave_conf(self.wind_farm_code)
- filter_types = wave_conf.get("filter_types", "txt,csv")
- filter_types = filter_types.replace(",", ",")
- all_files = read_files(self.read_dir, [str(i).strip() for i in filter_types.split(",")])
- wind_turbine_name_set = set()
- if len(all_files) > 0:
- update_trans_transfer_progress(self.id, 5)
- # 最大取系统cpu的 1/2
- split_count = get_available_cpu_count_with_percent(1 / 2)
- # 限制最大进程数
- split_count = min(split_count, ParallelProcessing.MAX_PROCESSES)
- all_wind, _ = get_all_wind(self.wind_farm_code, False)
- # all_wind = {}
- get_or_create_wave_table(self.wind_farm_code + '_wave', self.wind_farm_name)
- base_param_exec = wave_conf.get('base_param_exec', '')
- map_dict = {}
- if base_param_exec:
- base_param_exec = base_param_exec.replace('\r\n', '\n').replace('\t', ' ')
- info(base_param_exec)
- if 'import ' in base_param_exec:
- raise Exception("方法不支持import方法")
- mesure_poins = [key for key, value in wave_conf.items() if str(key).startswith('conf_') and value]
- for point in mesure_poins:
- point_names = wave_conf[point].strip().split('|')
- for name in point_names:
- map_dict[name] = point.replace('conf_', '')
- # 优化批次大小
- batch_size = split_count * 10
- all_array = split_array(all_files, batch_size)
- total_index = len(all_array)
- for index, now_array in enumerate(all_array):
- index_begin = datetime.datetime.now()
- with multiprocessing.Pool(split_count,maxtasksperchild=5) as pool:
- try:
- file_datas_result = pool.starmap(self.get_data_exec,
- [(base_param_exec, i, list(map_dict.keys())) for i in
- now_array])
- file_datas = [x for sub in file_datas_result if sub for x in sub if x]
- info(f'总数:{len(now_array)},返回个数{len(file_datas)}')
- except Exception as e:
- message = str(e)
- error(traceback.format_exc())
- update_trans_status_error(self.id, message[0:len(message) if len(message) < 100 else 100])
- raise e
- update_trans_transfer_progress(self.id, 20 + int(index / total_index * 60))
- info("读取文件耗时:", datetime.datetime.now() - self.begin)
- result_list = [vars(i) for i in file_datas if i]
- if result_list:
- self.data_count += len(result_list)
- df = pd.DataFrame(result_list)
- df['time_stamp'] = df['time_stamp'].apply(lambda x: x.split('.')[0])
- # df['time_stamp'] = pd.to_datetime(df['time_stamp'], errors='coerce')
- # df['time_stamp'] = df['time_stamp'].dt.strftime('%Y-%m-%d %H:%M:%S')
- df['time_stamp'] = pd.to_datetime(df['time_stamp'], errors='coerce')
- df['mesure_point_name'] = df['mesure_point_name'].map(map_dict)
- df.dropna(subset=['mesure_point_name'], inplace=True)
- df['wind_turbine_number'] = df['wind_turbine_name'].map(all_wind).fillna(df['wind_turbine_name'])
- # 批量处理JSON序列化
- df['mesure_data_time'] = df['mesure_data_time'].apply(lambda x: json.dumps(x))
- df['mesure_data_frenquency'] = df['mesure_data_frenquency'].apply(lambda x: json.dumps(x))
- df['mesure_data_env'] = df['mesure_data_env'].apply(lambda x: json.dumps(x))
- df.sort_values(by=['time_stamp', 'mesure_point_name'], inplace=True)
- for col in df['wind_turbine_name'].unique():
- wind_turbine_name_set.add(col)
- self.del_exists_data(df)
- save_df_to_db(self.wind_farm_code + '_wave', df, batch_count=40)
- info(f"总共{total_index}组,当前{index + 1}", "本次写入耗时:", datetime.datetime.now() - index_begin,
- "总耗时:", datetime.datetime.now() - self.begin)
- update_trans_status_success(self.id, len(wind_turbine_name_set), None,
- self.min_date, self.max_date, self.data_count)
- info("总耗时:", datetime.datetime.now() - self.begin)
- # if __name__ == '__main__':
- # trans = WaveTrans(1, 'WOF043800107', '乾安风电场', r'C:\迅雷云盘\04-01\A28')
- #
- # trans.run()
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