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A Short-Term Climate Prediction Model Based on a Modular Fuzzy Neural Network
作者姓名:JIN Long  JIN Jian  YAO Cai
作者单位:[1]GuangxiResearchInstituteofMeteorologicalDisastersMitigation,Nanning530022 [2]DepartmentofComputerScience,EastChinaNormalUniversity,Shanghai200062
基金项目:This reasearch was supported by the Science Foundation of Guangxi under grant No,国家自然科学基金
摘    要:In terms of the modular fuzzy neural network (MFNN) combining fuzzy c-mean (FCM) cluster and single-layer neural network, a short-term climate prediction model is developed. It is found from modeling results that the MFNN model for short-term climate prediction has advantages of simple structure, no hidden layer and stable network parameters because of the assembling of sound functions of the selfadaptive learning, association and fuzzy information processing of fuzzy mathematics and neural network methods. The case computational results of Guangxi flood season (JJA) rainfall show that the mean absolute error (MAE) and mean relative error (MRE) of the prediction during 1998 2002 are 68.8 mm and 9.78%, and in comparison with the regression method, under the conditions of the same predictors and period they are 97.8 mm and 12.28% respectively. Furthermore, it is also found from the stability analysis of the modular model that the change of the prediction results of independent samples with training times in the stably convergent interval of the model is less than 1.3 mm. The obvious oscillation phenomenon of prediction results with training times, such as in the common back-propagation neural network (BPNN) model, does not occur, indicating a better practical application potential of the MFNN model.

关 键 词:模块化模糊神经网络  短期天气预报  洪水季节  信息处理

A short-term climate prediction model based on a modular fuzzy neural network
JIN Long,JIN Jian,YAO Cai.A Short-Term Climate Prediction Model Based on a Modular Fuzzy Neural Network[J].Advances in Atmospheric Sciences,2005,22(3):428-435.
Authors:Jin Long  Jin Jian  Yao Cai
Institution:Guangxi Research Institute of Meteorological Disasters Mitigation, Nanning 530022,Department of Computer Science, East China Normal University, Shanghai 200062,Guangxi Research Institute of Meteorological Disasters Mitigation, Nanning 530022
Abstract:In terms of the modular fuzzy neural network (MFNN) combining fuzzy c-mean (FCM) cluster and single-layer neural network, a short-term climate prediction model is developed. It is found from modeling results that the MFNN model for short-term climate prediction has advantages of simple structure, no hidden layer and stable network parameters because of the assembling of sound functions of the selfadaptive learning, association and fuzzy information processing of fuzzy mathematics and neural network methods. The case computational results of Guangxi flood season (JJA) rainfall show that the mean absolute error (MAE) and mean relative error (MRE) of the prediction during 1998-2002 are 68.8 mm and 9.78%, and in comparison with the regression method, under the conditions of the same predictors and period they are 97.8 mm and 12.28% respectively. Furthermore, it is also found from the stability analysis of the modular model that the change of the prediction results of independent samples with training times in the stably convergent interval of the model is less than 1.3 mm. The obvious oscillation phenomenon of prediction results with training times, such as in the common back-propagation neural network (BPNN)model, does not occur, indicating a better practical application potential of the MFNN model.
Keywords:modular fuzzy neural network  short-term climate prediction  flood season
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