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A BIVARIATE EXTENSION TO TRADITIONAL EMPIRICAL ORTHOGONAL FUNCTION ANALYSIS

机译:传统经验正交函数分析的二元扩展

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摘要

This paper describes the application of canonical correlations analysis to the joint analysis of global monthly mean values of 1996-1997 sea surface temperature (SST) and height (SSH) data. The SST data are considered as one set and the SSH data as another set of multivariate observations, both with 24 variables. This type of analysis can be considered as an extension of traditional empirical orthogonal function (EOF) analysis which provides a marginal analysis of one variable over time. The motivation for using a bivariate extention stems from the fact that the two fields are interrelated as for example an increase in the SST will lead to an increase in the SSH. The analysis clearly shows the build-up of one of the largest El Nino events on record. Also the analysis indicates a phase lag of approximately one month between the SST and SSH fields.
机译:本文描述了典型相关分析在联合分析1996-1997年海表温度(SST)和高度(SSH)数据的全球月平均值中的应用。 SST数据被视为一组,而SSH数据被视为另一组多变量观测值,均具有24个变量。可以将这种类型的分析视为传统经验正交函数(EOF)分析的扩展,该模型提供了一个随时间变化的边际分析。使用双变量扩展的动机源于两个字段相互关联的事实,例如,SST的增加将导致SSH的增加。分析清楚地显示了有记录以来最大的厄尔尼诺事件之一。分析还表明,SST和SSH字段之间大约相隔一个月。

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