tsrTrendAnalyst.py 4.8 KB

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  1. import os
  2. import pandas as pd
  3. import numpy as np
  4. import matplotlib.pyplot as plt
  5. import seaborn as sns
  6. import plotly.graph_objects as go
  7. from behavior.analystExcludeRatedPower import AnalystExcludeRatedPower
  8. from utils.directoryUtil import DirectoryUtil as dir
  9. from algorithmContract.confBusiness import *
  10. class TSRTrendAnalyst(AnalystExcludeRatedPower):
  11. """
  12. 风电机组叶尖速比时序分析
  13. """
  14. def typeAnalyst(self):
  15. return "tsr_trend"
  16. def turbinesAnalysis(self, dataFrameMerge, outputAnalysisDir, confData: ConfBusiness):
  17. self.drawTSRTrend(dataFrameMerge, outputAnalysisDir, confData)
  18. def drawTSRTrend(self,dataFrameMerge:pd.DataFrame, outputAnalysisDir, confData: ConfBusiness):
  19. # 检查所需列是否存在
  20. required_columns = {Field_TSR, Field_YearMonthDay}
  21. if not required_columns.issubset(dataFrameMerge.columns):
  22. raise ValueError(f"DataFrame缺少必要的列。需要的列有: {required_columns}")
  23. # 按设备名分组数据
  24. grouped = dataFrameMerge.groupby(Field_NameOfTurbine)
  25. for name, group in grouped:
  26. # 计算四分位数和IQR
  27. Q1 = group[Field_TSR].quantile(0.15)
  28. Q3 = group[Field_TSR].quantile(0.90)
  29. IQR = Q3 - Q1
  30. # 定义离群值的范围
  31. lower_bound = Q1 - 1.5 * IQR
  32. upper_bound = Q3 + 1.5 * IQR
  33. # 筛选掉离群值
  34. filtered_group = group[(group[Field_TSR] >= lower_bound) & (group[Field_TSR] <= upper_bound)]
  35. # 创建箱线图
  36. fig = go.Figure()
  37. fig.add_trace(go.Box(
  38. x=filtered_group[Field_YearMonthDay], # 设置x轴数据为日期
  39. y=filtered_group[Field_TSR], # 设置y轴数据为风能利用系数
  40. # boxpoints='outliers', # 显示异常值(偏离值),不显示数据的所有点(只显示异常值)
  41. boxpoints=False, # 不显示偏离值
  42. marker=dict(color='lightgoldenrodyellow', size=1), # 设置偏离值的颜色和大小
  43. line=dict(color='lightgray', width=2), # 设置箱线和须线的颜色为灰色,粗细为2
  44. fillcolor='rgba(200, 200, 200, 0.5)', # 设置箱体的填充颜色和透明度
  45. name='TSR' # 图例名称
  46. ))
  47. # 对于每个箱线图的中位数,绘制一个蓝色点
  48. medians = filtered_group.groupby(filtered_group[Field_YearMonthDay])[Field_TSR].median()
  49. fig.add_trace(go.Scatter(
  50. x=medians.index,
  51. y=medians.values,
  52. mode='markers',
  53. marker=dict(color='orange', size=3),
  54. name='Median TSR' # 中位数标记的图例名称
  55. ))
  56. # 设置图表的标题和轴标签
  57. fig.update_layout(
  58. title={
  59. 'text': f'TSR Trend Turbine Name {name}',
  60. 'x':0.5,
  61. },
  62. xaxis_title='time',
  63. yaxis_title='TSR',
  64. xaxis=dict(
  65. tickmode='auto', # 自动设置x轴刻度,以适应日期数据
  66. tickformat='%Y-%m-%d', # 设置x轴时间格式
  67. showgrid=True, # 显示网格线
  68. gridcolor='lightgray', # setting y-axis gridline color to black
  69. tickangle=-45,
  70. linecolor='black', # 设置y轴坐标系线颜色为黑色
  71. ticklen=5, # 设置刻度线的长度
  72. ),
  73. yaxis=dict(
  74. dtick=confData.graphSets["tsr"]["step"] if not self.common.isNone(
  75. confData.graphSets["tsr"]["step"]) else 5, # 设置y轴刻度间隔为0.1
  76. range=[confData.graphSets["tsr"]["min"] if not self.common.isNone(
  77. confData.graphSets["tsr"]["min"]) else 0, confData.graphSets["tsr"]["max"] if not self.common.isNone(confData.graphSets["tsr"]["max"]) else 20], # 设置y轴的范围从0到1
  78. showgrid=True, # 显示网格线
  79. gridcolor='lightgray', # setting y-axis gridline color to black
  80. linecolor='black', # 设置y轴坐标系线颜色为黑色
  81. ticklen=5, # 设置刻度线的长度
  82. ),
  83. paper_bgcolor='white', # 设置纸张背景颜色为白色
  84. plot_bgcolor='white', # 设置图表背景颜色为白色
  85. margin=dict(t=50, b=10) # t为顶部(top)间距,b为底部(bottom)间距
  86. )
  87. # 保存图像
  88. output_file = os.path.join(outputAnalysisDir, f"{name}.png")
  89. fig.write_image(output_file, scale=2)