统计计算在全球海温拟合中的应用

Xiaoying Wang, Song Jiang, Junping Yin
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摘要

本文利用世界海洋地图集(World Ocean Atlas, WOA)的数据对全球海温进行了统计拟合。我们对标准水平(通常在33个深度)的年、月和季节平均温度进行了网格化装配。为了减少偏差,我们采用了高阶多项式与相互正交多项式相结合的统计回归模型。将拟合结果与WOA数据进行了比较,验证了拟合结果的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The application of statistical computation for fitting the global sea temperature
We present the statistical fittings for global sea temperatures using the data of the World Ocean Atlas (WOA). We have gridded fittings for annual, monthly, and seasonal means of temperatures on standard levels (typically at 33 depths). To decrease bias, we apply the statistical regression models which combine the high-order polynomials with the mutually orthogonal polynomials. The comparison of the fitted results with the data of WOA are given, which demonstrate the accurateness of the fitted results.
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