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利用卷积神经网络开展偏振雷达定量降水估测研究
引用本文:蔡康龙,胡志群,谭浩波,黄锦灿,张伟强,张晶晶,植江玲. 利用卷积神经网络开展偏振雷达定量降水估测研究[J]. 热带气象学报, 2024, 0(1): 64-74
作者姓名:蔡康龙  胡志群  谭浩波  黄锦灿  张伟强  张晶晶  植江玲
作者单位:1.佛山市龙卷风研究中心/中国气象局龙卷风重点开放实验室,广东 佛山 528000;2. 中国气象科学研究院灾害天气国家重点实验室,北京 100081;3. 广东省气象局,广东 广州 510080;4. 高明区气象局,广东 佛山528000
摘    要:利用偏振升级改造后的广州新一代天气雷达(CINRAD/SAD)水平反射率ZH、差分传播相移率KDP、差分反射率因子ZDR和广东佛山219个地面气象自动站雨量数据,形成不同偏振量组合的8个数据集。基于卷积神经网络(CNN),建立雷达定量降水估测网络架构QPEnet, 并将该架构用于雷达定量降水估测(QPE),评估结果表明:数据集通道数N的增加可降低QPEnet的定量降雨估测的均方根误差(RMSE),并提高相关系数(CORR);对于由ZH形成的数据集Z、Z_1~3 km和Z_6 min,随着通道数N的增加,数据集Z、Z_1~3 km和Z_6 min的性能逐步得到提高,数据集Z_1~3 km和Z_6 min的均方根误差(RMSE)分别是4.71和3.78,比数值集Z分别降低了1.3%和18.7%;数据集Z_1~3 km和Z_6 min的CORR分别是0.82和0.88,比数据集Z分别提高了2.5%和10.0%;对于ZH、KDP和ZDR偏振量组成的数据集里面,数据集Z_ZDR_KDP的拟合性能最好,RMSE为3.97,比数据集Z的RMSE降低了14.6%,CORR是0.86,比数据集Z提高了7.5%;分别对0.6~5 mm、5~10 mm、10~20 mm、20~30 mm、30~40 mm、40~50 mm和50 mm以上的7个降水量级的均方根误差(RMSE)、平均偏差比(MBR)、平均误差(AE)和相对误差(RE)等的统计结果表明,数据集Z_6 min降雨精度最高。

关 键 词:定量降水估测;卷积神经网络;S波段双偏振雷达;测雨精度

Research on Quantitative Precipitation Estimation by Polarized Radar Using CNN
CAI Kanglong,HU Zhiqun,TAN Haobo,HUANG Jincan,ZHANG Weiqiang,ZHANG Jingjing,ZHI Jiangling. Research on Quantitative Precipitation Estimation by Polarized Radar Using CNN[J]. Journal of Tropical Meteorology, 2024, 0(1): 64-74
Authors:CAI Kanglong  HU Zhiqun  TAN Haobo  HUANG Jincan  ZHANG Weiqiang  ZHANG Jingjing  ZHI Jiangling
Affiliation:1. Foshan Tornado Research catter, China Meteorological Administration Tornado Key Laboratory, Foshan, Guangdong 528000, China;2.Chinese Academy of Meteorological Sciences, Beijing 100081, China;3.Guangdong Meteorological Bureau, Guangzhou,51080, China;4.Gaoming Meteorological Bureau, Foshan, Guangdong 528000, China
Abstract:The ZH , ZDR and KDP of Guangzhou S-band dual polarization radar and rainfall data of 219 automatic meteorological stations in Foshan are used to form 8 datasets. Based on the convolutional neural network CNN, a radar quantitative precipitation estimation model is established, which will be used for ground precipitation estimation. The evaluating results of 8 datasets applied to the same precipitation estimation model are compared to each other. The results show that: The increase in the number of channels(N) of the datasets is beneficial to reduce the RMSE and improve CORR of the quantitative rainfall estimation results; For the datasets Z, Z_1~3 km and Z_6 min formed by ZH, as the number of channels increases, the performance of the data sets Z, Z_1~3 km and Z_6 min are gradually improved, and the RMSE of Z_1~3 km and Z_6 min are 4.71 and 3.78, which are -1.3% and 18.7% lower than that of dataset Z; the CORR of Z_1~3 km and Z_6 min are 0.82 and 0.88, which are 2.5% and 10% higher than that of dataset Z; Among other datasets composed of KDP and ZDR , the dataset Z_ZDR_KDP has the best fitting performance. The RMSE is 3.97, which is 14.6% lower than that of dataset Z, and the CORR is 0.86, which is 7.5% higher than that of dataset Z; The statistical results of RMSE, MBR, AE and RE for seven precipitation levels of 0.6~5 mm, 5~10 mm, 10~20 mm, 20~30 mm, 30~40 mm, 40~50 mm and above 50 mm respectively, show that dataset Z_6 min has the highest rainfall accuracy.
Keywords:Quantitative Precipitation Estimation(QPE)   convolutional neural network   S-band dual polarization   measurement accuracy
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