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自组织网络与广义回归网络耦合的副热带高压指数预测
引用本文:王彦磊,滕军,张韧,万齐林,董兆俊,白志鹏.自组织网络与广义回归网络耦合的副热带高压指数预测[J].热带气象学报,2008,24(5):475-482.
作者姓名:王彦磊  滕军  张韧  万齐林  董兆俊  白志鹏
作者单位:1. 中国人民解放军61741部队,北京,100081
2. 解放军理工大学气象学院海洋与空间环境系,江苏,南京,211101;中国气象局广州热带海洋气象研究所,广东,广州,510080
3. 中国气象局广州热带海洋气象研究所,广东,广州,510080
基金项目:国家自然科学基金,热带海洋气象科研项目,热带季风重点开放实验室课题共同资助项目
摘    要:利用亚洲夏季风系统中各成员变化活动与西太平洋副高存在的不同程度的时延相关性,从1995~ 2004年NCEP/NCAR逐日再分析资料中,提取了亚洲夏季风系统各成员变化活动的特征指标及其对应的超前三候的西太平洋副高(简称副高)面积和脊线指数.在此基础之上,建立了自组织网络与径向基函数网络串级耦合的副高指数预测模型.该模型首先用自组织网络对各指标样本按其自身相似原则进行无监督分类,随后用广义回归网络分别对分类出的各指数样本子集进行有监督的训练建模和预测.模型的预测试验结果表明:副高指数的预测结果与其实际值之间的相关系数达到0.89,明显优于单一的神经网络模型预测效果.

关 键 词:太平洋副高  亚洲季风  自组织神经网络  径向基函数网络
收稿时间:2007/4/10 0:00:00
修稿时间:2007/10/28 0:00:00

PREDICTING THE SUBTROPICAL HIGH INDEX BY COUPLING SELF-ORGANIZING FEATURE MAP AND GENERALIZED REGRESSION NEURAL NETWORK
WANG Yan-lei,TENG Jun,ZHANG Ren,WAN Qi-lin,DONG Zhao-jun and BAI Zhi-peng.PREDICTING THE SUBTROPICAL HIGH INDEX BY COUPLING SELF-ORGANIZING FEATURE MAP AND GENERALIZED REGRESSION NEURAL NETWORK[J].Journal of Tropical Meteorology,2008,24(5):475-482.
Authors:WANG Yan-lei  TENG Jun  ZHANG Ren  WAN Qi-lin  DONG Zhao-jun and BAI Zhi-peng
Institution:61741 Troops, PLA, Beijing 100081, China;61741 Troops, PLA, Beijing 100081, China;Institute of Meteorology, PLA University of Science and Technology, Nanjing 211101, China;Institute of Tropical and Marine Meteorology, CMA, Guangzhou 510080, China;Institute of Tropical and Marine Meteorology, CMA, Guangzhou 510080, China;61741 Troops, PLA, Beijing 100081, China;61741 Troops, PLA, Beijing 100081, China
Abstract:Based on time-lag correlation between the activity of individual members of the Asian monsoon system and the Western Pacific Subtropical High,character index of the members' variation and the corresponding subtropical high three pentads ahead were extracted from the NCEP/NCAR daily reanalysis dataset during the ten years from 1995 to 2004. The subtropical high index predicting model was built that coupled Self-Organizing Feature Map(SOFM) and Generalized Regression Neural Network(GRNN) in series. The model sorted the index samples without supervision according to the characteristic similarity by the SOFM Neural Network,and then built and trained the model by the GRNN based on the index sample subset. The prediction experiment results show that the correlation coefficient between the predicted result and the actual value reached 0.89 and that experiment results were much better than that by single Neural Network prediction model.
Keywords:Pacific subtropical high  Asia Monsoon  Self-Organizing Feature Map Neural Network  Generalized Regression Neural Network
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