UpdtFct.py 21 KB

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  1. import pandas as pd
  2. import pymysql
  3. from sqlalchemy import create_engine
  4. import datetime
  5. import pdb
  6. #建立引擎
  7. engine = create_engine(str(r"mysql+mysqldb://%s:" + '%s' + "@%s/%s") % ('root', 'pengmin', 'localhost', 'qixiangdb'))
  8. #连接到qx数据库
  9. conn_qx = pymysql.connect(
  10. host='rm-bp10j10qy42bzy0q77o.mysql.rds.aliyuncs.com',
  11. user='qx_cas',
  12. password='Qx@123456',#Qx@123456
  13. database='qx_cas',
  14. charset='utf8'
  15. )
  16. #连接到本地数据库,输出物
  17. conn_local = pymysql.connect(
  18. host='localhost',
  19. user='root',
  20. password='pengmin',
  21. database='qixiangdb',
  22. charset='utf8'
  23. )
  24. #计算下一个soc
  25. def getNextSoc(start_soc):
  26. '''输入当前的soc,寻找目标soc函数'''
  27. if start_soc>80:
  28. next_soc=80
  29. elif start_soc>60:
  30. next_soc=60
  31. elif start_soc>40:
  32. next_soc=40
  33. elif start_soc>20:
  34. next_soc=20
  35. else:
  36. next_soc=5#下一次目标soc
  37. return next_soc
  38. #更新全部5个区间段的factor
  39. def updtSnFct(sn_factor_df,end_soc,delta_range,range_soc):
  40. '''输入当前的soc区间段,里程变量量,soc变化量,输出新的df
  41. sn_factor_df为dataframe,delta_range单位为km,range_soc单位为km/persoc'''
  42. if end_soc==80:
  43. updtFctByCol(sn_factor_df,'a0',delta_range,range_soc)
  44. elif end_soc==60:
  45. updtFctByCol(sn_factor_df,'a1',delta_range,range_soc)
  46. elif end_soc==40:
  47. updtFctByCol(sn_factor_df,'a2',delta_range,range_soc)
  48. elif end_soc==20:
  49. updtFctByCol(sn_factor_df,'a3',delta_range,range_soc)
  50. elif end_soc<20:
  51. updtFctByCol(sn_factor_df,'a4',delta_range,range_soc)
  52. return sn_factor_df
  53. #更新一列的factor
  54. def updtFctByCol(sn_factor_df,colmun_name,delta_range,range_soc):
  55. '''更新制定列的factor,sn_factor_df为dataframe,新的系数更新到第一行。delta_range单位为km,
  56. range_soc单位为km/persoc,默认按照100km更新续驶里程权重'''
  57. range_soc_old=sn_factor_df.loc[0,colmun_name]#读取第0行的老factor
  58. debounce_range=100#更新权重
  59. new_factor=range_soc*((delta_range)/debounce_range)+range_soc_old*(1-delta_range/debounce_range)
  60. #在第1行,存储新的factor
  61. sn_factor_df.loc[1,colmun_name]=new_factor
  62. return sn_factor_df
  63. #更新今日的factor
  64. def updtTodayFct(factor_input,sn_day_df):
  65. '''更新今日的Factor***'''
  66. sn_factor_df_last=factor_input
  67. start_soc=sn_day_df.loc[0,'soc']#首行soc
  68. next_soc=getNextSoc(start_soc)#下一个目标soc
  69. start_range=sn_day_df.loc[0,'vehodo']#首行vehodo
  70. sn=sn_day_df.loc[0,'name']#sn号
  71. for index in range(len(sn_day_df)-1):
  72. #寻找分割点,
  73. index_soc=sn_day_df.loc[index,'soc']#当前行soc
  74. next_index_soc=sn_day_df.loc[index+1,'soc']#下一行soc
  75. if (index_soc>=next_soc)&(next_index_soc<next_soc):
  76. #当前行soc>目标soc,下一行低soc<目标soc,说明到达了分割点80-60-40-20
  77. delta_soc_tonext=start_soc-next_soc#两个距离点的soc差,单位为%
  78. delta_range_tonext=sn_day_df.loc[index,'vehodo']-start_range#两个时间点的距离差,单位为m
  79. delta_range_tonext_km=delta_range_tonext/1000#两个时间点的距离差,单位为km
  80. range_soc_tonext=(delta_range_tonext_km)/delta_soc_tonext#单位soc可行驶的公里数
  81. # print(sn+'start_soc: '+str(start_soc),'next_soc: '+str(next_soc),'delta_vehodo; '+str(round(delta_range_tonext_km,3))
  82. # +'km'+' range_soc:'+str(round(range_soc_tonext,3)))#调试用语句,看单次factor变化量
  83. if (delta_range_tonext_km>1)&(delta_range_tonext_km<5*delta_soc_tonext):
  84. #里程变化量>1km。且<5倍的soc变化量,大于此值认为不合理。
  85. sn_factor_df_last=updtSnFct(sn_factor_df_last,next_soc,delta_range_tonext_km,range_soc_tonext)
  86. start_soc=next_index_soc#变更开始soc
  87. next_soc=getNextSoc(start_soc)#变更结束soc
  88. start_range=sn_day_df.loc[index+1,'vehodo']#变更开始里程
  89. return sn_factor_df_last
  90. #对driveinfo进行预处理
  91. def snDayDfPreProcess(sn_day_df):
  92. '''预处理,判断是否在dirvemode,获取drivemode条件下的累计行驶距离。
  93. 增加delta_soc列,drive_flg列,vehodo列'''
  94. sn_day_df=sn_day_df.reset_index(drop=True)#重置index
  95. #增加列,计算delta_soc
  96. for index in range(len(sn_day_df)):
  97. if index==0:
  98. sn_day_df.loc[index,'delta_soc']=0
  99. else:
  100. sn_day_df.loc[index,'delta_soc']=sn_day_df.loc[index,'soc']-sn_day_df.loc[index-1,'soc']
  101. #增加列,判断是否在drive状态
  102. drive_flg=False
  103. accum_distance=0
  104. for index in range(len(sn_day_df)):
  105. if index==0:
  106. sn_day_df.loc[index,'drive_status']=drive_flg
  107. sn_day_df.loc[index,'vehodo']=0
  108. else:
  109. if (sn_day_df.loc[index,'delta_soc']<-0.1)|\
  110. ((sn_day_df.loc[index,'delta_soc']<=0)&(sn_day_df.loc[index,'distance']>500)):#soc处于下降状态,说明在drive
  111. drive_flg=True#置true
  112. elif sn_day_df.loc[index,'delta_soc']>0.1:#soc处于上升状态,说明不在drive
  113. drive_flg=False#置false
  114. accum_distance=0#清零
  115. sn_day_df.loc[index,'drive_flg']=drive_flg
  116. accum_distance+=sn_day_df.loc[index,'distance']#对行驶里程进行累加
  117. sn_day_df.loc[index,'vehodo']=accum_distance
  118. #筛选所有的drive信息行
  119. sn_day_drive_df=sn_day_df.loc[sn_day_df['drive_flg']==True,:]
  120. #按时间进行一次筛选,此处丢弃了晚上0点以后的行车数据
  121. sn_day_drive_df=sn_day_drive_df.reset_index(drop=True)#重置index
  122. return sn_day_drive_df
  123. #更新所有sn,连读多天的的factor
  124. def updtAllSnFct(start_date,end_date):
  125. '''计算开始时间到结束时间的,所有sn的factor'''
  126. start_date_datetime=datetime.datetime.strptime(start_date,'%Y-%m-%d')#开始时间
  127. end_date_datetime=datetime.datetime.strptime(end_date,'%Y-%m-%d')#开始时间
  128. delta_day=(end_date_datetime-start_date_datetime).days#间隔天数
  129. i=1
  130. while i<=delta_day:
  131. end_date=(start_date_datetime+datetime.timedelta(days=i)).strftime("%Y-%m-%d")
  132. updtAllSnTodayFct(start_date,end_date)#调用函数
  133. # print('update all sn factor from '+start_date+" to "+end_date)
  134. start_date=end_date
  135. i+=1#自加
  136. #更新所有sn,一天的factor
  137. def updtAllSnTodayFct(start_date,end_date):
  138. ''''更新今天所有sn的factorx信息,start_date和end_date相隔一天。此处还可优化'''
  139. conn_local = pymysql.connect(
  140. host='localhost',
  141. user='root',
  142. password='pengmin',
  143. database='qixiangdb',
  144. charset='utf8'
  145. )
  146. start_date_str="'"+start_date+"'"
  147. end_date_str="'"+end_date+"'"
  148. sql_cmd="select * from drive_info where time between "+start_date_str+" and "+end_date_str+" and distance!=0;"
  149. range_soc_df = pd.read_sql(sql_cmd, conn_qx)#使用read_sql方法查询qx数据库
  150. #筛选出所有当日数据之后,筛选当日有更新的sn
  151. today_sn_list=range_soc_df['name'].unique().tolist()#[:100]#先一次更新5个
  152. #建立空的dataframe,用于承接所有更新的factor信息
  153. today_sn_fct_df=pd.DataFrame([],columns=['sn','date','a0','a1','a2','a3','a4'])
  154. for sn in today_sn_list:
  155. #寻找factor_df,里面是否有sn号,如果没有sn对应信息,则新增信息。
  156. sn_str="'"+sn+"'"
  157. update_today_factor_flg=True
  158. sql_cmd3="select sn,date,a0,a1,a2,a3,a4 from tb_sn_factor where date="+start_date_str+" and sn="+sn_str
  159. factor_today_df=pd.read_sql(sql_cmd3, conn_local)#使用read_sql方法查询local数据库
  160. if len(factor_today_df)>=1:
  161. print(sn+' '+start_date_str+' factor exist in table! Factor not update.')
  162. update_today_factor_flg=False
  163. sql_cmd2="select sn,date,a0,a1,a2,a3,a4 from tb_sn_factor where date<"+start_date_str+" and sn="+sn_str
  164. #此处可以限定每次查询的数量,例如不高于5行
  165. factor_df=pd.read_sql(sql_cmd2, conn_local)#使用read_sql方法查询local数据库
  166. #按照sn号和日期进行去重,避免运行时重复产生factor数据,保留第一次出现的行。
  167. factor_df=factor_df.drop_duplicates(subset=['sn','date'],keep='first')
  168. if len(factor_df)==0:
  169. #如果没有搜索到factor历史数据,则声明一个新的进行初始化
  170. start_date_datetime=datetime.datetime.strptime(start_date,'%Y-%m-%d')
  171. yesterday=(start_date_datetime+datetime.timedelta(days=-1)).strftime("%Y-%m-%d")
  172. #为sn申请一个新的factor,初始值为1
  173. factor_df=pd.DataFrame({'sn':sn,'date':yesterday,'a0':[1],'a1':[1],'a2':[1],'a3':[1],'a4':[1]})
  174. sn_factor_df=factor_df.loc[factor_df['sn']==sn,:]#筛选sn对应的factor
  175. sn_factor_df=sn_factor_df.sort_values(by='date',ascending='True')#按照日期排序
  176. sn_factor_df_last=sn_factor_df.tail(1).copy()#寻找最后一行,代表最近日期
  177. sn_factor_df_last=sn_factor_df_last.append(sn_factor_df_last)#新增加一行,用于存储新的factor
  178. sn_factor_df_last=sn_factor_df_last.reset_index(drop=True)#重置index
  179. sn_factor_df_last.loc[1,'date']=start_date#更改后一行的date为当前日期
  180. #筛选对应车辆的信息
  181. condition_sn=(range_soc_df['name']==sn)
  182. sn_day_df=range_soc_df.loc[condition_sn,:].copy()
  183. sn_day_df=sn_day_df.reset_index(drop=True)
  184. #使用updtTodayFct函数更新今天的factor
  185. if len(sn_day_df)>=2:
  186. #使用process函数,进行预处理
  187. sn_day_df=snDayDfPreProcess(sn_day_df)#预处理函数
  188. # 临时措施,删除每天晚上0点以后的数据,5点以前的数据,防止对驾驶cycle判断产生影响。
  189. day_start_time=datetime.datetime.strptime(start_date,'%Y-%m-%d')
  190. day_morning_time=day_start_time+datetime.timedelta(hours=5)
  191. morning_time_str=day_morning_time.strftime('%Y-%m-%d %H:%M:%S')
  192. sn_day_df=sn_day_df.loc[sn_day_df['time']>morning_time_str,:]#去除掉了每天晚上0点以后的数据,短期措施
  193. sn_day_df=sn_day_df.reset_index(drop=True)#重置index
  194. if len(sn_day_df)>=2:
  195. sn_factor_df_new=updtTodayFct(sn_factor_df_last,sn_day_df)#
  196. if (len(sn_factor_df_new)>=2)&(update_today_factor_flg):#如果factor
  197. today_sn_fct_df=today_sn_fct_df.append(sn_factor_df_new.loc[1,:])#筛选第一行,进行拼接,最后写入到数据库中
  198. #将today_sn_fct_df写入到数据库中,今天所有factor更新的系数,一次写入。
  199. if len(today_sn_fct_df)>=1:
  200. today_sn_fct_df.to_sql('tb_sn_factor',con=engine,chunksize=10000,if_exists='append',index=False)
  201. #更新一个sn,连续多天的factor
  202. def updtOneSnFct(sn,start_date,end_date):
  203. '''计算开始时间到结束时间的,一个sn的所有factor。
  204. 重复多次调用,updtOneSnTodayFct。
  205. '''
  206. start_date_datetime=datetime.datetime.strptime(start_date,'%Y-%m-%d')#开始时间
  207. end_date_datetime=datetime.datetime.strptime(end_date,'%Y-%m-%d')#开始时间
  208. delta_day=(end_date_datetime-start_date_datetime).days#间隔天数
  209. i=1
  210. while i<=delta_day:
  211. end_date=(start_date_datetime+datetime.timedelta(days=i)).strftime("%Y-%m-%d")
  212. # print('update one '+sn+'factor from '+start_date+" to "+end_date)
  213. updtOneSnTodayFct(sn,start_date,end_date)#调用函数,更新当日的factor。
  214. start_date=end_date
  215. i+=1#自加
  216. #更新一个sn,一天的factor
  217. def updtOneSnTodayFct(sn,start_date,end_date):
  218. '''更新一个sn,一天的factor。'''
  219. #重新建立连接,更新数据库
  220. conn_local = pymysql.connect(
  221. host='localhost',
  222. user='root',
  223. password='pengmin',
  224. database='qixiangdb',
  225. charset='utf8'
  226. )
  227. start_date_str="'"+start_date+"'"
  228. end_date_str="'"+end_date+"'"
  229. sn_str="'"+sn+"'"
  230. sql_cmd="select * from drive_info where time between "+start_date_str+" and "+end_date_str+\
  231. " and distance!=0 and name="+sn_str
  232. range_soc_df = pd.read_sql(sql_cmd, conn_qx)#使用read_sql方法查询qx数据库
  233. if len(range_soc_df)>0:
  234. #筛选出所有当日数据之后,筛选当日有更新的sn
  235. today_sn_list=range_soc_df['name'].unique().tolist()
  236. #建立空的dataframe,用于承接所有更新的factor信息
  237. today_sn_fct_df=pd.DataFrame([],columns=['sn','date','a0','a1','a2','a3','a4'])
  238. for sn in today_sn_list:
  239. #寻找factor_df,里面是否有sn号,如果没有sn对应信息,则新增信息。
  240. sn_str="'"+sn+"'"
  241. update_today_factor_flg=True
  242. sql_cmd3="select sn,date,a0,a1,a2,a3,a4 from tb_sn_factor where date="+start_date_str+" and sn="+sn_str
  243. factor_today_df=pd.read_sql(sql_cmd3, conn_local)#使用read_sql方法查询local数据库
  244. if len(factor_today_df)>=1:
  245. print(sn+' '+start_date_str+' factor exist in table! Factor not update.')
  246. update_today_factor_flg=False
  247. sql_cmd2="select sn,date,a0,a1,a2,a3,a4 from tb_sn_factor where date<="+start_date_str+" and sn="+sn_str
  248. factor_df=pd.read_sql(sql_cmd2, conn_local)#使用read_sql方法查询local数据库
  249. #按照sn号和日期进行去重,避免运行时重复产生factor数据,保留第一次出现的行。
  250. factor_df=factor_df.drop_duplicates(subset=['sn','date'],keep='first')
  251. # pdb.set_trace()
  252. if len(factor_df)==0:
  253. #如果没有搜索到factor历史数据,则声明一个新的进行初始化
  254. start_date_datetime=datetime.datetime.strptime(start_date,'%Y-%m-%d')
  255. yesterday=(start_date_datetime+datetime.timedelta(days=-1)).strftime("%Y-%m-%d")
  256. factor_df=pd.DataFrame({'sn':sn,'date':yesterday,'a0':[1],'a1':[1],'a2':[1],'a3':[1],'a4':[1]})
  257. today_sn_fct_df=today_sn_fct_df.append(factor_df.loc[0,:])#将初始化的行记录到数据库
  258. sn_factor_df=factor_df.loc[factor_df['sn']==sn,:]#筛选sn对应的factor
  259. sn_factor_df=sn_factor_df.sort_values(by='date',ascending='True')#按照日期排序
  260. sn_factor_df_last=sn_factor_df.tail(1).copy()#寻找最后一行,代表最近日期
  261. sn_factor_df_last=sn_factor_df_last.append(sn_factor_df_last)#新增加一行,用于存储新的factor
  262. sn_factor_df_last=sn_factor_df_last.reset_index(drop=True)#重置index
  263. sn_factor_df_last.loc[1,'date']=start_date#更改后一行的date为当前日期
  264. #筛选对应车辆的信息
  265. condition_sn=(range_soc_df['name']==sn)
  266. sn_day_df=range_soc_df.loc[condition_sn,:].copy()
  267. sn_day_df=sn_day_df.reset_index(drop=True)
  268. #使用updtTodayFct函数更新今天的factor
  269. if len(sn_day_df)>=2:
  270. #使用process函数,进行预处理
  271. sn_day_df=snDayDfPreProcess(sn_day_df)#!!!!!!!!!!!增加
  272. # 临时措施,删除每天晚上0点以后的数据,5点以前的数据,防止对驾驶cycle判断产生影响。
  273. day_start_time=datetime.datetime.strptime(start_date,'%Y-%m-%d')
  274. day_morning_time=day_start_time+datetime.timedelta(hours=5)
  275. morning_time_str=day_morning_time.strftime('%Y-%m-%d %H:%M:%S')
  276. sn_day_df=sn_day_df.loc[sn_day_df['time']>morning_time_str,:]#去除掉了每天晚上0点以后的数据,短期措施
  277. sn_day_df=sn_day_df.reset_index(drop=True)#重置index
  278. if len(sn_day_df)>=2:
  279. sn_factor_df_new=updtTodayFct(sn_factor_df_last,sn_day_df)#更新fator的主函数
  280. if (len(sn_factor_df_new)>=2)&(update_today_factor_flg):#如果今日factor没有更新
  281. today_sn_fct_df=today_sn_fct_df.append(sn_factor_df_new.loc[1,:])#筛选第一行,进行拼接,最后写入到数据库中
  282. # #将today_sn_fct_df写入到数据库中
  283. if len(today_sn_fct_df)>=1:
  284. today_sn_fct_df.to_sql('tb_sn_factor',con=engine,chunksize=10000,if_exists='append',index=False)
  285. # print(sn+' factor will be update in table tb_sn_factor!')
  286. return sn_factor_df_new
  287. #更新最新的factor,一天调用一次。
  288. def updtNewestFctTb():
  289. '''更新tb_sn_factor_newest,只保留最新日期的factor。
  290. 从tb_sn_factor中,筛选最新的日期。
  291. 函数每天运行一次,从tb_sn_factor中筛选最新日期的factor。'''
  292. current_time=datetime.datetime.now()#当前时间
  293. current_time_str=current_time.strftime('%Y-%m-%d %H:%M:%S')#时间格式化为字符串,年-月-日 时-分-秒
  294. current_time_str="'"+current_time_str+"'"
  295. sql_cmd_4="select sn,date,a0,a1,a2,a3,a4 from tb_sn_factor where date<"+current_time_str
  296. factor_all_df = pd.read_sql(sql_cmd_4, conn_local)#使用read_sql方法查询qx数据库
  297. #筛选今天之前的所有factor,只保留最近的一天。
  298. sn_list=factor_all_df['sn'].unique().tolist()#筛选sn序列
  299. newest_sn_fct_df=pd.DataFrame([],columns=['sn','date','a0','a1','a2','a3','a4'])#声明空df
  300. for sn in sn_list:
  301. condition_sn=(factor_all_df['sn']==sn)
  302. factor_pick_df=factor_all_df.loc[condition_sn,:]#按照sn进行筛选
  303. factor_pick_df=factor_pick_df.sort_values(by='date')#按照日期排序
  304. factor_last_df=factor_pick_df.tail(1)#选择最后日期
  305. newest_sn_fct_df=newest_sn_fct_df.append(factor_last_df)#拼接到空df中
  306. #按照日期排序,只保留最近的一天,输出factor_unique_df,方法为replace。
  307. #本函数,每天需要运行一次,用于更新factor。
  308. newest_sn_fct_df.to_sql('tb_sn_factor_newest',con=engine,chunksize=10000,\
  309. if_exists='replace',index=False)
  310. #使用factor和soc推荐剩余续驶里程
  311. def calDistFromFct(input_df):
  312. '''根据sn-time-soc-a0-a1-a2-a3-a4,使用factor正向计算计算VehElecRng。'''
  313. row_df=input_df.copy()
  314. soc=row_df['soc']#获取soc
  315. factor=[]
  316. factor.append(row_df['a4'])#0~20之间的factor
  317. factor.append(row_df['a3'])#20~40之间的factor
  318. factor.append(row_df['a2'])#40~60之间的factor
  319. factor.append(row_df['a1'])#60~80之间的factor
  320. factor.append(row_df['a0'])#80~100之间的factor
  321. gap=20
  322. yushu=soc%gap#余数部分
  323. zhengshu=soc//gap#整数部分
  324. i=0
  325. range=0
  326. while i<zhengshu:
  327. dur_factor=factor[i]#当前权重
  328. range+=dur_factor*gap#分段累加里程
  329. i=i+1
  330. if yushu>0.01:#避免soc=100时报错
  331. range=range+yushu*factor[zhengshu]#最后把余项对应的里程加上
  332. row_df['vehelecrng']=range#给VehElecRng列赋值
  333. return row_df
  334. #更新当前时间对应的里程,每5min调用一次
  335. def updtVehElecRng(input_time='2021-07-29 12:01:00'):
  336. '''更新续驶里程,到tb_sn_factor_soc_range。
  337. 部署时设置每5min更新一次。
  338. '''
  339. #设置一个时间作为结束时间
  340. # current_time=datetime.datetime.now()
  341. current_time_raw=input_time#当前时间
  342. current_time=datetime.datetime.strptime(current_time_raw,'%Y-%m-%d %H:%M:%S')#字符串转时间
  343. #结束时间往前4min,59s,作为起始时间
  344. before6min_time_str=(current_time+datetime.timedelta(minutes=-4,seconds=-59)).strftime('%Y-%m-%d %H:%M:%S')#6min前
  345. before6min_time_str="'"+before6min_time_str+"'"
  346. current_time_str=current_time.strftime('%Y-%m-%d %H:%M:%S')#时间格式化为字符串
  347. current_time_str="'"+current_time_str+"'"
  348. #从drive_info里面读取,该时间段内的name,time,soc三列
  349. sql_cmd="select name,time,soc from drive_info where time between "+before6min_time_str+" and "+current_time_str
  350. print(sql_cmd)
  351. range_soc_df = pd.read_sql(sql_cmd, conn_qx)#使用read_sql方法查询qx数据库
  352. range_soc_df.rename(columns={'name':'sn'},inplace=True)#将name列重命名为sn列
  353. #任务2,从tb_sn_factor_newest里面读取最新的factor,获取距离今天最近的一个factor list
  354. sql_cmd_1="select sn,a0,a1,a2,a3,a4 from tb_sn_factor_newest"
  355. print(sql_cmd_1)
  356. sn_factor_newest_df_raw = pd.read_sql(sql_cmd_1, conn_local)#使用read_sql方法查询qx数据库
  357. #任务3,将range_soc_df和sn_factor_newest_df_raw,双表合并成为一个新表格。
  358. sn_soc_factor_df=pd.merge(range_soc_df,sn_factor_newest_df_raw,how='left',on='sn')
  359. sn_soc_factor_df.fillna(1,inplace=True)#如果range_soc_df中有sn号,但sn_factor_newest_df_raw中没有。用1填充。
  360. # sn_soc_factor_df.head()
  361. #填充完成后,sn-time-soc-a0-a1-a2-a3-a4都已经齐全。
  362. #任务4,调用函数,将VehElecRng计算出来
  363. sn_soc_factor_range_df=pd.DataFrame([],columns=['sn','time','soc','a0','a1','a2','a3','a4','vehelecrng'])
  364. for index in sn_soc_factor_df.index.tolist():
  365. input_df=sn_soc_factor_df.loc[index,:]#挑选
  366. sn_soc_factor_range_row=calDistFromFct(input_df)#计算VehElecRng
  367. sn_soc_factor_range_df=sn_soc_factor_range_df.append(sn_soc_factor_range_row)#拼接
  368. ##任务5,将sn_soc_factor_range_df写入到tb_sn_factor_soc_range中,使用替换关系。
  369. sn_soc_factor_range_df.to_sql('tb_sn_factor_soc_range',con=engine,chunksize=10000,\
  370. if_exists='replace',index=False)