EOF

Empirical Orthogonal Functions tailored for spatiotemporal analysis, with a tutorial.

https://www.chadagreene.com/CDT/CDT_Getting_Started.html

現在この提出コンテンツをフォロー中です。

This standalone version of the EOF function is no longer being maintained. It still works fine, but you'll find the most up-to-date version in the Climate Data Toolbox for MATLAB here: https://www.mathworks.com/matlabcentral/fileexchange/70338. If the eof function has been useful for you, please cite our Climate Data Toolbox for MATLAB paper!

This function simplifies the process of applying Empirical Orthogonal Functions (spatiotemporal principal component analysis) to 3D datasets such as climate data. EOF analysis is not terribly difficult to implement, but much time is often spent trying to figure out how to reshape a big 3D dataset, get the EOFs, and then un-reshape. This function does all the reshaping for you, and performs EOF analysis in a computationally efficient manner. The analysis method is a streamlined and optimized version of Guillame MAZE's caleof function, method 2.

For a full description and an in-depth tutorial describing how to perform EOF analysis on climate data, click on the Example tab above.

引用

Greene, C. A., Thirumalai, K., Kearney, K. A., Delgado, J. M., Schwanghart, W., Wolfenbarger, N. S., et al. (2019). The Climate Data Toolbox for MATLAB. Geochemistry, Geophysics, Geosystems, 20. https://doi.org/10.1029/2019GC008392

一般的な情報

MATLAB リリースの互換性

  • すべてのリリースと互換性あり

プラットフォームの互換性

  • Windows
  • macOS
  • Linux
バージョン 公開済み リリース ノート Action
1.2

updated citation.

1.1

Fixed the issues that arose from rounding the explained variance values, fixed the issue of results going complex for large numbers of modes, updated and expanded the Tutorial.

1.0.0.0

Typo fix in the documentation.
Added a simple example in the tutorial.