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Annual Frequency of Tropical Cyclones Directly Affecting Guangdong Province:Prediction Based on LSTM-FC 被引量:1

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摘要 Tropical cyclone(TC)annual frequency forecasting is significant for disaster prevention and mitigation in Guangdong Province.Based on the NCEP-NCAR reanalysis and NOAA Extended Reconstructed global sea surface temperature(SST)V5 data in winter,the TC frequency climatic features and prediction models have been studied.During 1951-2019,353 TCs directly affected Guangdong with an annual average of about 5.1.TCs have experienced an abrupt change from abundance to deficiency in the mid to late 1980 with a slightly decreasing trend and a normal distribution.338 primary precursors are obtained from statistically significant correlation regions of SST,sea level pressure,1000hPa air temperature,850hPa specific humidity,500hPa geopotential height and zonal wind shear in winter.Then those 338 primary factors are reduced into 19 independent predictors by principal component analysis(PCA).Furthermore,the Multiple Linear Regression(MLR),the Gaussian Process Regression(GPR)and the Long Short-term Memory Networks and Fully Connected Layers(LSTM-FC)models are constructed relying on the above 19 factors.For three different kinds of test sets from 2010 to 2019,2011 to 2019 and 2010 to 2019,the root mean square errors(RMSEs)of MLR,GPR and LSTM-FC between prediction and observations fluctuate within the range of 1.05-2.45,1.00-1.93 and 0.71-0.95 as well as the average absolute errors(AAEs)0.88-1.0,0.75-1.36 and 0.50-0.70,respectively.As for the 2010-2019 experiment,the mean deviations of the three model outputs from the observation are 0.89,0.78 and 0.56,together with the average evaluation scores 82.22,84.44 and 88.89,separately.The prediction skill comparisons unveil that LSTM-FC model has a better performance than MLR and GPR.In conclusion,the deep learning model of LSTM-FC may shed light on improving the accuracy of short-term climate prediction about TC frequency.The current research can provide experience on the development of deep learning in this field and help to achieve further progress of TC disaster prevention and mitigation in Guangdong Province.
作者 胡娅敏 陈韵竹 何健 刘圣军 闫文杰 赵亮 汪明圣 李芷卉 王娟怀 董少柔 刘新儒 HU Ya-min;CHEN Yun-zhu;HE Jian;LIU Sheng-jun;YAN Wen-jie;ZHAO Liang;WANG Ming-sheng;LI Zhi-hui;WANG Juan-huai;DONG Shao-rou;LIU Xin-ru(Guangdong Climate Center,Guangzhou 510641 China;School of Mathematics and Statistics,Central South University,Changsha 410083 China;State Key Laboratory of Numerical Modeling for Atmosphere Sciences and Geophysical Fluid Dynamics(LASG),Institute of Atmospheric Physics,Chinese Academy of Sciences,Beijing 100029 China)
出处 《Journal of Tropical Meteorology》 SCIE 2022年第1期45-56,共12页 热带气象学报(英文版)
基金 National Key R&D Program of China(2017YFA0605004) Guangdong Major Project of Basic and Applied Basic Research(2020B0301030004) National Basic R&D Program of China(2018YFA0606203) Special Fund of China Meteorological Administration for Innovation and Development(CXFZ2021J026) Special Fund for Forecasters of China Meteorological Administration(CMAYBY2020-094) Graduate Independent Exploration and Innovation Project of Central South University(2021zzts0477) Science and Technology Planning Program of Guangdong Province(20180207)。
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