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基于决策树算法的江苏省不同区域 短时强降水预报研究
引用本文:史达伟,沈阳,马晨晨,董京铭,颜佳任.基于决策树算法的江苏省不同区域 短时强降水预报研究[J].气象科学,2022,42(5):631-637.
作者姓名:史达伟  沈阳  马晨晨  董京铭  颜佳任
作者单位:连云港市气象局, 江苏 连云港 222006;江苏省气象台, 南京 210041
基金项目:江苏省科协青年科技人才托举工程项目(TJ-2021-21);连云港市重点研发计划(SF2132);江苏省气象局青年基金项目(KQ202123);连云港市"521工程"科研项目(LYG06521202138);江苏省气象局科研项目(KZ202107)
摘    要:采用2000—2019年13个地级市气象站地面观测站点观测资料以及ERA5再分析资料,基于机器学习中的经典的C4.5算法对江苏省不同区域是否出现短时强降水建立气象要素预报模型。结果表明:基于C4.5算法的决策树预测模型能够较为直观准确的对江苏省不同区域是否发生短时强降水进行预测,并且该决策树模型具有较高的泛化能力。决策树模型利用各区域总样本的前15 a数据样本进行自学习,学习准确率在淮北地区为89.70%,在江淮之间地区为87.89%,在长江以南地区为87.88%,利用各区域剩余5 a样本对该决策树模型的泛化能力进行测试,测试准确率在淮北地区为85.73%,在江淮之间地区为83.39%,在长江以南地区为93.92%。

关 键 词:决策树  短时强降水  机器学习  C4.5算法
收稿时间:2022/2/7 0:00:00
修稿时间:2022/5/3 0:00:00

Study on short-term heavy precipitation forecast in different regions of Jiangsu basedon decision tree algorithm
SHI Dawei,SHEN Yang,MA Chenchen,DONG Jingming,YAN Jiaren.Study on short-term heavy precipitation forecast in different regions of Jiangsu basedon decision tree algorithm[J].Scientia Meteorologica Sinica,2022,42(5):631-637.
Authors:SHI Dawei  SHEN Yang  MA Chenchen  DONG Jingming  YAN Jiaren
Institution:Lianyungang Meteorological Bureau, Jiangsu Lianyungang 222006, China;Jiangsu Meteorological Observatory, Nanjing 210041, China
Abstract:Based on the observation data from 13 prefecture-level meteorological stations from 2000 to 2019 and associated ERA5 reanalysis data, Based on the classic C4.5 algorithm in machine learning, established a meteorological element prediction model for short-term heavy precipitation forecast in different regions of Jiangsu. The results show that the decision tree prediction model based on C4.5 algorithm can intuitively and accurately predict the occurrence of short-term heavy precipitation in different regions of Jiangsu, and the decision tree model has a high generalization ability. The self-learning process is conducted based on the first 15 years of the total samples of each region. The learning accuracy is 89.70% in the Huaibei region, 87.89% in the region between the Yangtze River and Huaihe River, and 87.88% in the region south of the Yangtze River, respectively. The generalization ability of the decision tree model is tested by using the remaining 5 years samples in each region, and the test accuracy is 85.73% in the Huaibei region, 83.39% between the Yangtze River and Huaihe River, and 93.92% in the region south of the Yangtze River, respectively.
Keywords:decision tree  short term heavy precipitation  machine learning  C4  5 algorithm
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