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Functional PCA for remotely sensed lake surface water temperature data

机译:遥感湖面水温数据的功能PCA

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摘要

Functional principal component analysis is used to investigate a high-dimensional surface water temperature data set of Lake Victoria, which has been produced in the ARC-Lake project. Two different perspectives are adopted in the analysis: modelling temperature curves (univariate functions) and temperature surfaces (bivariate functions). The latter proves to be a better approach in the sense of both dimension reduction and pattern detection. Computational details and some results from an application to Lake Victoria data are presented.
机译:功能性主成分分析用于调查维多利亚湖的高维地表水温数据集,该组在弧湖项目中生产的。在分析中采用了两种不同的观点:建模温度曲线(单变量函数)和温度表面(二元函数)。后者在维度减少和模式检测方面被证明是一种更好的方法。提出了应用于维多利亚湖数据的应用细节和一些结果。

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