Clustering of climate data in Yugoslavia by using the SOM neural network

I. Reljin, B. Reljin, G. Jovanović
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引用次数: 9

Abstract

The climate data are In the form of spatial-temporal fields. The most popular method for analyzing such signals is the empirical orthogonal functions (EOF) method. The method is based on the eigenvectors of the spatial cross-covariance matrix of a meteorological field. The EOF method, being linear, is optimal for feature extraction if the data are well characterized by a set of orthogonal structures or functions. Since the dynamics of climate are nonlinear the EOF may become inefficient. Several nonlinear methods for analyzing such fields are known. Here, the nonlinear analysis by using a neural network of the self-organizing map (SOM) structure is applied on the precipitation and the temperature data observed in the region of Yugoslavia.
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基于SOM神经网络的南斯拉夫气候数据聚类
气候资料以时空场的形式呈现。分析此类信号最常用的方法是经验正交函数(EOF)方法。该方法基于气象场空间交叉协方差矩阵的特征向量。如果数据被一组正交结构或函数很好地表征,则EOF方法是线性的,是特征提取的最佳方法。由于气候动力学是非线性的,EOF可能变得低效。目前已知的几种分析这种场的非线性方法。本文利用自组织映射(SOM)结构的神经网络对南斯拉夫地区的降水和温度观测资料进行非线性分析。
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