generatorSpeedTorqueAnalyst.py 21 KB

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  1. import os
  2. from datetime import datetime
  3. import numpy as np
  4. import pandas as pd
  5. import plotly.express as px
  6. import plotly.graph_objects as go
  7. from algorithmContract.confBusiness import *
  8. from algorithmContract.contract import Contract
  9. from behavior.analystWithGoodPoint import AnalystWithGoodPoint
  10. class GeneratorSpeedTorqueAnalyst(AnalystWithGoodPoint):
  11. """
  12. 风电机组发电机转速-转矩分析
  13. """
  14. def typeAnalyst(self):
  15. return "speed_torque"
  16. def turbinesAnalysis(self, outputAnalysisDir, conf: Contract, turbineCodes):
  17. dictionary = self.processTurbineData(turbineCodes, conf, [
  18. Field_DeviceCode, Field_Time,Field_RotorSpeed,Field_GeneratorSpeed,Field_GeneratorTorque, Field_WindSpeed, Field_ActiverPower])
  19. dataFrameOfTurbines = self.userDataFrame(
  20. dictionary, conf.dataContract.configAnalysis, self)
  21. # 检查所需列是否存在
  22. required_columns = {Field_CodeOfTurbine,Field_RotorSpeed,Field_GeneratorSpeed,Field_GeneratorTorque}
  23. if not required_columns.issubset(dataFrameOfTurbines.columns):
  24. raise ValueError(f"DataFrame缺少必要的列。需要的列有: {required_columns}")
  25. turbrineInfos = self.common.getTurbineInfos(
  26. conf.dataContract.dataFilter.powerFarmID, turbineCodes, self.turbineInfo)
  27. groupedOfTurbineModel = turbrineInfos.groupby(Field_MillTypeCode)
  28. returnDatas = []
  29. for turbineModelCode, group in groupedOfTurbineModel:
  30. currTurbineCodes = group[Field_CodeOfTurbine].unique().tolist()
  31. currTurbineModeInfo = self.common.getTurbineModelByCode(
  32. turbineModelCode, self.turbineModelInfo)
  33. currDataFrameOfTurbines = dataFrameOfTurbines[dataFrameOfTurbines[Field_CodeOfTurbine].isin(
  34. currTurbineCodes)]
  35. # 将 currTurbineInfos 转换为字典
  36. currTurbineInfos_dict = turbrineInfos.set_index(Field_CodeOfTurbine)[Field_NameOfTurbine].to_dict()
  37. # 使用 map 函数来填充 Field_NameOfTurbine 列
  38. currDataFrameOfTurbines[Field_NameOfTurbine] = currDataFrameOfTurbines[Field_CodeOfTurbine].map(currTurbineInfos_dict).fillna("")
  39. result2D = self.drawScatter2DMonthly(
  40. currDataFrameOfTurbines, outputAnalysisDir, conf,currTurbineModeInfo)
  41. returnDatas.extend(result2D)
  42. result3D = self.drawScatterGraph(
  43. currDataFrameOfTurbines, outputAnalysisDir, conf,currTurbineModeInfo)
  44. returnDatas.extend(result3D)
  45. resultTotal = self.drawScatterGraphForTurbines(
  46. currDataFrameOfTurbines, outputAnalysisDir, conf, currTurbineModeInfo)
  47. returnDatas.extend(resultTotal)
  48. returnDataFrame = pd.DataFrame(returnDatas)
  49. return returnDataFrame
  50. def drawScatter2DMonthlyOfTurbine(self, dataFrame: pd.DataFrame, turbineModelInfo: pd.Series, outputAnalysisDir: str, conf: Contract, name: str):
  51. # 设置颜色条参数
  52. dataFrame = dataFrame.sort_values(by=Field_YearMonth)
  53. # 绘制 Plotly 散点图
  54. fig = go.Figure(data=go.Scatter(
  55. x=dataFrame[Field_GeneratorSpeed],
  56. y=dataFrame[Field_GeneratorTorque],
  57. # color=Field_YearMonth,
  58. # color_continuous_scale='Rainbow', # 颜色条样式
  59. mode='markers',
  60. marker=dict(
  61. color=dataFrame['monthIntTime'],
  62. colorscale='Rainbow',
  63. size=3,
  64. opacity=0.7,
  65. colorbar=dict(
  66. tickvals=np.linspace(
  67. dataFrame['monthIntTime'].min(), dataFrame['monthIntTime'].max(), 6),
  68. ticktext=[datetime.fromtimestamp(ts).strftime('%Y-%m') for ts in np.linspace(
  69. dataFrame['monthIntTime'].min(), dataFrame['monthIntTime'].max(), 6)],
  70. thickness=18,
  71. len=1, # 设置颜色条的长度,使其占据整个图的高度
  72. outlinecolor='rgba(255,255,255,0)'
  73. ),
  74. showscale=True
  75. ),
  76. # labels={Field_GeneratorSpeed: 'Generator Speed',
  77. # Field_YearMonth: 'Time', Field_GeneratorTorque: 'Torque'},
  78. showlegend=False
  79. ))
  80. # # 设置固定散点大小
  81. # fig.update_traces(marker=dict(size=3))
  82. # 如果需要颜色轴的刻度和标签
  83. # 以下是以比例方式进行色彩的可视化处理
  84. fig.update_layout(
  85. title={
  86. "text": f'月度发电机转速扭矩散点图: {name[0]}',
  87. # "x": 0.5
  88. },
  89. xaxis=dict(
  90. title='发电机转速',
  91. dtick=self.axisStepGeneratorSpeed,
  92. range=[self.axisLowerLimitGeneratorSpeed,
  93. self.axisUpperLimitGeneratorSpeed],
  94. tickangle=-45
  95. ),
  96. yaxis=dict(
  97. title='扭矩',
  98. dtick=self.axisStepGeneratorTorque,
  99. range=[self.axisLowerLimitGeneratorTorque,
  100. self.axisUpperLimitGeneratorTorque],
  101. )
  102. # coloraxis=dict(
  103. # colorbar=dict(
  104. # title="Time",
  105. # ticks="outside",
  106. # len=1, # 设置颜色条的长度,使其占据整个图的高度
  107. # thickness=20, # 调整颜色条的宽度
  108. # orientation='v', # 设置颜色条为垂直方向
  109. # tickmode='array', # 确保刻度按顺序排列
  110. # tickvals=dataFrame[Field_YearMonth].unique(
  111. # ).tolist(), # 确保刻度为唯一的年月
  112. # ticktext=dataFrame[Field_YearMonth].unique(
  113. # ).tolist() # 以%Y-%m格式显示标签
  114. # )
  115. # )
  116. )
  117. # 确保从 Series 中提取的是具体的值
  118. engineTypeCode = turbineModelInfo.get(Field_MillTypeCode, "")
  119. if isinstance(engineTypeCode, pd.Series):
  120. engineTypeCode = engineTypeCode.iloc[0]
  121. engineTypeName = turbineModelInfo.get(Field_MachineTypeCode, "")
  122. if isinstance(engineTypeName, pd.Series):
  123. engineTypeName = engineTypeName.iloc[0]
  124. # 使用 apply() 对每个元素调用 datetime.fromtimestamp
  125. dataFrame['monthIntTime']=dataFrame['monthIntTime'].apply(lambda x: datetime.fromtimestamp(x).strftime('%Y-%m'))
  126. # 构建最终的JSON对象
  127. json_output = {
  128. "analysisTypeCode": "发电机转速和转矩分析",
  129. "engineCode": engineTypeCode,
  130. "engineTypeName": engineTypeName,
  131. "xaixs": "发电机转速(r/min)",
  132. "yaixs": "扭矩(N·m)",
  133. "data": [{
  134. "engineName": name[0],
  135. "engineCode": name[1],
  136. "title":f' 发电机转速和转矩分析{name[0]}',
  137. "xData": dataFrame[Field_GeneratorSpeed].tolist(),
  138. "yData":dataFrame[Field_GeneratorTorque].tolist(),
  139. "timeData": dataFrame[Field_UnixYearMonth].tolist(),
  140. "color": dataFrame['monthIntTime'].tolist(),
  141. "colorbartitle": "时间",
  142. "mode":'markers'
  143. }]
  144. }
  145. # 保存图片
  146. # outputFilePathPNG = os.path.join(
  147. # outputAnalysisDir, f"{name[0]}.png")
  148. # fig.write_image(outputFilePathPNG, width=800, height=600, scale=3)
  149. # # 保存html
  150. # outputFileHtml = os.path.join(outputAnalysisDir, f"{name[0]}.html")
  151. # fig.write_html(outputFileHtml)
  152. # 将JSON对象保存到文件
  153. output_json_path = os.path.join(outputAnalysisDir, f"speed_torque{name[0]}.json")
  154. with open(output_json_path, 'w', encoding='utf-8') as f:
  155. import json
  156. json.dump(json_output, f, ensure_ascii=False, indent=4)
  157. result = []
  158. # 如果需要返回DataFrame,可以包含文件路径
  159. result.append({
  160. Field_Return_TypeAnalyst: self.typeAnalyst(),
  161. Field_PowerFarmCode: conf.dataContract.dataFilter.powerFarmID,
  162. Field_Return_BatchCode: conf.dataContract.dataFilter.dataBatchNum,
  163. Field_CodeOfTurbine: name[1],
  164. Field_Return_FilePath: output_json_path,
  165. Field_Return_IsSaveDatabase: True
  166. })
  167. # result.append({
  168. # Field_Return_TypeAnalyst: self.typeAnalyst(),
  169. # Field_PowerFarmCode: conf.dataContract.dataFilter.powerFarmID,
  170. # Field_Return_BatchCode: conf.dataContract.dataFilter.dataBatchNum,
  171. # Field_CodeOfTurbine: dataFrame[Field_CodeOfTurbine].iloc[0],
  172. # Field_Return_FilePath: outputFilePathPNG,
  173. # Field_Return_IsSaveDatabase: False
  174. # })
  175. # result.append({
  176. # Field_Return_TypeAnalyst: self.typeAnalyst(),
  177. # Field_PowerFarmCode: conf.dataContract.dataFilter.powerFarmID,
  178. # Field_Return_BatchCode: conf.dataContract.dataFilter.dataBatchNum,
  179. # Field_CodeOfTurbine: dataFrame[Field_CodeOfTurbine].iloc[0],
  180. # Field_Return_FilePath: outputFileHtml,
  181. # Field_Return_IsSaveDatabase: True
  182. # })
  183. return result
  184. def drawScatterGraphOfTurbine(self, dataFrame: pd.DataFrame,turbineModelInfo: pd.Series,outputAnalysisDir: str, conf: Contract, name: str):
  185. # 创建3D散点图
  186. fig = px.scatter_3d(dataFrame,
  187. x=Field_GeneratorSpeed,
  188. y=Field_YearMonth,
  189. z=Field_GeneratorTorque,
  190. color=Field_YearMonth,
  191. labels={Field_GeneratorSpeed: '发电机转速',
  192. Field_YearMonth: '时间', Field_GeneratorTorque: '扭矩'}
  193. )
  194. # 设置固定散点大小
  195. fig.update_traces(marker=dict(size=1.5))
  196. # 更新图形的布局
  197. fig.update_layout(
  198. title={
  199. "text": f'月度发电机转速扭矩3D散点图: {name[0]}',
  200. "x": 0.5
  201. },
  202. scene=dict(
  203. xaxis=dict(
  204. title='发电机转速',
  205. dtick=self.axisStepGeneratorSpeed, # 设置y轴刻度间隔
  206. range=[self.axisLowerLimitGeneratorSpeed,
  207. self.axisUpperLimitGeneratorSpeed], # 设置y轴的范围
  208. showgrid=True, # 显示网格线
  209. ),
  210. yaxis=dict(
  211. title='时间',
  212. tickformat='%Y-%m', # 日期格式,
  213. dtick='M1', # 每月一个刻度
  214. showgrid=True, # 显示网格线
  215. ),
  216. zaxis=dict(
  217. title='扭矩',
  218. dtick=self.axisStepGeneratorTorque,
  219. range=[self.axisLowerLimitGeneratorTorque,
  220. self.axisUpperLimitGeneratorTorque],
  221. showgrid=True, # 显示网格线
  222. )
  223. ),
  224. scene_camera=dict(
  225. up=dict(x=0, y=0, z=1), # 保持相机向上方向不变
  226. center=dict(x=0, y=0, z=0), # 保持相机中心位置不变
  227. eye=dict(x=-1.8, y=-1.8, z=1.2) # 调整eye属性以实现水平旋转180°
  228. ),
  229. # 设置图例标题
  230. # legend_title_text='Time',
  231. legend=dict(
  232. orientation="h",
  233. itemsizing="constant", # Use constant size for legend items
  234. itemwidth=80 # Set the width of legend items to 50 pixels
  235. )
  236. )
  237. # 确保从 Series 中提取的是具体的值
  238. engineTypeCode = turbineModelInfo.get(Field_MillTypeCode, "")
  239. if isinstance(engineTypeCode, pd.Series):
  240. engineTypeCode = engineTypeCode.iloc[0]
  241. engineTypeName = turbineModelInfo.get(Field_MachineTypeCode, "")
  242. if isinstance(engineTypeName, pd.Series):
  243. engineTypeName = engineTypeName.iloc[0]
  244. # 构建最终的JSON对象
  245. json_output = {
  246. "analysisTypeCode": "发电机转速和转矩分析",
  247. "engineCode": engineTypeCode,
  248. "engineTypeName": engineTypeName,
  249. "xaixs": "发电机转速(r/min)",
  250. "yaixs": "时间",
  251. "zaixs": "扭矩(N·m)",
  252. "data": [{
  253. "engineName": name[0],
  254. "engineCode": name[1],
  255. "title":f' 月度发电机转速扭矩3D散点图:{name[0]}',
  256. "xData": dataFrame[Field_GeneratorSpeed].tolist(),
  257. "yData":dataFrame[Field_YearMonth].tolist(),
  258. "zData":dataFrame[Field_GeneratorTorque].tolist(),
  259. "color": dataFrame[Field_YearMonth].tolist(),
  260. "mode":'markers'
  261. }]
  262. }
  263. # 保存图像
  264. # outputFileHtml = os.path.join(
  265. # outputAnalysisDir, "{}_3D.html".format(name[0]))
  266. # fig.write_html(outputFileHtml)
  267. result = []
  268. # 将JSON对象保存到文件
  269. output_json_path = os.path.join(outputAnalysisDir, f"3D_{name[0]}.json")
  270. with open(output_json_path, 'w', encoding='utf-8') as f:
  271. import json
  272. json.dump(json_output, f, ensure_ascii=False, indent=4)
  273. # 如果需要返回DataFrame,可以包含文件路径
  274. result.append({
  275. Field_Return_TypeAnalyst: self.typeAnalyst(),
  276. Field_PowerFarmCode: conf.dataContract.dataFilter.powerFarmID,
  277. Field_Return_BatchCode: conf.dataContract.dataFilter.dataBatchNum,
  278. Field_CodeOfTurbine: name[1],
  279. Field_Return_FilePath: output_json_path,
  280. Field_Return_IsSaveDatabase: True
  281. })
  282. # result.append({
  283. # Field_Return_TypeAnalyst: self.typeAnalyst(),
  284. # Field_PowerFarmCode: conf.dataContract.dataFilter.powerFarmID,
  285. # Field_Return_BatchCode: conf.dataContract.dataFilter.dataBatchNum,
  286. # Field_CodeOfTurbine: dataFrame[Field_CodeOfTurbine].iloc[0],
  287. # Field_Return_FilePath: outputFileHtml,
  288. # Field_Return_IsSaveDatabase: True
  289. # })
  290. return result
  291. def drawScatter2DMonthly(self, dataFrameMerge: pd.DataFrame, outputAnalysisDir, conf: Contract,turbineModelInfo: pd.Series):
  292. results = []
  293. grouped = dataFrameMerge.groupby(
  294. [Field_NameOfTurbine, Field_CodeOfTurbine])
  295. for name, group in grouped:
  296. result = self.drawScatter2DMonthlyOfTurbine(
  297. group,turbineModelInfo, outputAnalysisDir, conf, name)
  298. results.extend(result)
  299. return results
  300. def drawScatterGraph(self, dataFrame: pd.DataFrame, outputAnalysisDir, conf: Contract,turbineModelInfo: pd.Series):
  301. """
  302. 绘制风速-功率分布图并保存为文件。
  303. 参数:
  304. dataFrameMerge (pd.DataFrame): 包含数据的DataFrame,需要包含设备名、风速和功率列。
  305. outputAnalysisDir (str): 分析输出目录。
  306. confData (Contract): 配置
  307. """
  308. results = []
  309. dataFrame = dataFrame[(dataFrame[Field_GeneratorTorque] > 0)].sort_values(
  310. by=Field_YearMonth)
  311. grouped = dataFrame.groupby(
  312. [Field_NameOfTurbine, Field_CodeOfTurbine])
  313. # 遍历每个设备的数据
  314. for name, group in grouped:
  315. if len(group[Field_YearMonth].unique()) > 1:
  316. result = self.drawScatterGraphOfTurbine(
  317. group,turbineModelInfo, outputAnalysisDir, conf, name)
  318. results.extend(result)
  319. return results
  320. def drawScatterGraphForTurbines(self, dataFrame: pd.DataFrame, outputAnalysisDir, conf: Contract, turbineModelInfo: pd.Series):
  321. """
  322. 绘制风速-功率分布图并保存为文件。
  323. 参数:
  324. dataFrameMerge (pd.DataFrame): 包含数据的DataFrame,需要包含设备名、风速和功率列。
  325. outputAnalysisDir (str): 分析输出目录。
  326. confData (Contract): 配置
  327. """
  328. dataFrame = dataFrame[(dataFrame[Field_GeneratorTorque] > 0)].sort_values(
  329. by=Field_NameOfTurbine)
  330. # 创建3D散点图
  331. fig = px.scatter_3d(dataFrame,
  332. x=Field_GeneratorSpeed,
  333. y=Field_NameOfTurbine,
  334. z=Field_GeneratorTorque,
  335. color=Field_NameOfTurbine,
  336. labels={Field_GeneratorSpeed: '发电机转速',
  337. Field_NameOfTurbine: '机组', Field_GeneratorTorque: '实际扭矩'}
  338. )
  339. # 设置固定散点大小
  340. fig.update_traces(marker=dict(size=1.5))
  341. # 更新图形的布局
  342. fig.update_layout(
  343. title={
  344. "text": f'发电机转速扭矩3D散点图-{turbineModelInfo[Field_MachineTypeCode]}',
  345. "x": 0.5
  346. },
  347. scene=dict(
  348. xaxis=dict(
  349. title='发电机转速',
  350. dtick=self.axisStepGeneratorSpeed, # 设置y轴刻度间隔
  351. range=[self.axisLowerLimitGeneratorSpeed,
  352. self.axisUpperLimitGeneratorSpeed], # 设置y轴的范围
  353. showgrid=True, # 显示网格线
  354. ),
  355. yaxis=dict(
  356. title='机组',
  357. showgrid=True, # 显示网格线
  358. ),
  359. zaxis=dict(
  360. title='实际扭矩',
  361. dtick=self.axisStepGeneratorTorque,
  362. range=[self.axisLowerLimitGeneratorTorque,
  363. self.axisUpperLimitGeneratorTorque],
  364. )
  365. ),
  366. scene_camera=dict(
  367. up=dict(x=0, y=0, z=1), # 保持相机向上方向不变
  368. center=dict(x=0, y=0, z=0), # 保持相机中心位置不变
  369. eye=dict(x=-1.8, y=-1.8, z=1.2) # 调整eye属性以实现水平旋转180°
  370. ),
  371. # 设置图例标题
  372. # legend_title_text='Turbine',
  373. # margin=dict(t=50, b=10) # t为顶部(top)间距,b为底部(bottom)间距
  374. legend=dict(
  375. orientation="h",
  376. itemsizing="constant", # Use constant size for legend items
  377. itemwidth=80 # Set the width of legend items to 50 pixels
  378. )
  379. )
  380. # 确保从 Series 中提取的是具体的值
  381. engineTypeCode = turbineModelInfo.get(Field_MillTypeCode, "")
  382. if isinstance(engineTypeCode, pd.Series):
  383. engineTypeCode = engineTypeCode.iloc[0]
  384. engineTypeName = turbineModelInfo.get(Field_MachineTypeCode, "")
  385. if isinstance(engineTypeName, pd.Series):
  386. engineTypeName = engineTypeName.iloc[0]
  387. # 构建最终的JSON对象
  388. json_output = {
  389. "analysisTypeCode": "发电机转速和转矩分析",
  390. "engineCode": engineTypeCode,
  391. "engineTypeName": engineTypeName,
  392. "xaixs": "发电机转速(r/min)",
  393. "yaixs": "机组",
  394. "zaixs": "实际扭矩(N·m)",
  395. "data": [{
  396. "title":f' 发电机转速扭矩3D散点图-{turbineModelInfo[Field_MachineTypeCode]}',
  397. "xData": dataFrame[Field_GeneratorSpeed].tolist(),
  398. "yData":dataFrame[Field_NameOfTurbine].tolist(),
  399. "zData":dataFrame[Field_GeneratorTorque].tolist(),
  400. "color": dataFrame[Field_NameOfTurbine].tolist(),
  401. "mode":'markers'
  402. }]
  403. }
  404. # # 保存图像
  405. # outputFileHtml = os.path.join(
  406. # outputAnalysisDir, "{}-{}.html".format(self.typeAnalyst(),turbineModelInfo[Field_MillTypeCode]))
  407. # fig.write_html(outputFileHtml)
  408. result = []
  409. # 将JSON对象保存到文件
  410. output_json_path = os.path.join(outputAnalysisDir, f"total_3D_{turbineModelInfo[Field_MillTypeCode]}.json")
  411. with open(output_json_path, 'w', encoding='utf-8') as f:
  412. import json
  413. json.dump(json_output, f, ensure_ascii=False, indent=4)
  414. # 如果需要返回DataFrame,可以包含文件路径
  415. result.append({
  416. Field_Return_TypeAnalyst: self.typeAnalyst(),
  417. Field_PowerFarmCode: conf.dataContract.dataFilter.powerFarmID,
  418. Field_Return_BatchCode: conf.dataContract.dataFilter.dataBatchNum,
  419. Field_CodeOfTurbine:Const_Output_Total,
  420. Field_MillTypeCode:turbineModelInfo[Field_MillTypeCode],
  421. Field_Return_FilePath: output_json_path,
  422. Field_Return_IsSaveDatabase: True
  423. })
  424. # result.append({
  425. # Field_Return_TypeAnalyst: self.typeAnalyst(),
  426. # Field_PowerFarmCode: conf.dataContract.dataFilter.powerFarmID,
  427. # Field_Return_BatchCode: conf.dataContract.dataFilter.dataBatchNum,
  428. # Field_CodeOfTurbine: Const_Output_Total,
  429. # Field_Return_FilePath: outputFileHtml,
  430. # Field_Return_IsSaveDatabase: True
  431. # })
  432. return result