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首页> 外文期刊>Geoscientific Model Development Discussions >The Sailor diagram – A new diagram for the verification of two-dimensional vector data from multiple models
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The Sailor diagram – A new diagram for the verification of two-dimensional vector data from multiple models

机译:水手图 - 用于验证来自多个模型的二维矢量数据的新图

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A new diagram is proposed for the verification of vector quantities generated by multiple models against a set of observations. It has been designed with the objective, as in the Taylor diagram, of providing a visual diagnostic tool which allows an easy comparison of simulations by multiple models against a reference dataset. However, the Sailor diagram extends this ability to two-dimensional quantities such as currents, wind, horizontal fluxes of water vapour and other geophysical variables by adding features which allow us to evaluate directional properties of the data as well. The diagram is based on the analysis of the two-dimensional structure of the mean squared error matrix between model and observations. This matrix is separated in a part corresponding to the bias and the relative rotation of the two orthogonal directions (empirical orthogonal functions; EOFs) which best describe the vector data. Since there is no truncation of the retained EOFs, these orthogonal directions explain the total variability of the original dataset. We test the performance of this new diagram to identify the differences amongst the reference dataset and a series of model outputs by using some synthetic datasets and real-world examples with time series of variables such as wind, current and vertically integrated moisture transport. An alternative setup for spatially varying time-fixed fields is shown in the last examples, in which the spatial average of surface wind in the Northern and Southern Hemisphere according to different reanalyses and realizations from ensembles of CMIP5 models are compared. The Sailor diagrams presented here show that it is a tool which helps in identifying errors due to the bias or the orientation of the simulated vector time series or fields. The R implementation of the diagram presented together with this paper allows us also to easily retrieve the individual diagnostics of the different components of the mean squared error and additional diagnostics which can be presented in tabular form.
机译:提出了一种新图,用于验证由多个模型产生的对一组观察结果产生的矢量数量。它已经设计为具有提供视觉诊断工具的目标,该目的允许通过多个模型对参考数据集轻松比较模拟。然而,通过添加允许我们提供数据的方向性,将这种能力延伸到诸如电流,风,水蒸气水平和其他地球物理变量的水平磁通量的能力。该图基于分析模型和观测之间平均平衡误差矩阵的二维结构。该矩阵在与偏置的偏置和两个正交方向的相对旋转(经验正交功能; EOF)的部分中分开,这是最能描述矢量数据的偏置。由于没有保留的EOF截断,因此这些正交方向解释了原始数据集的总可变性。我们测试了该新图的性能,以通过使用一些合成数据集和现实世界示例来识别参考数据集和一系列模型输出的差异,以及带有时间序列的变量,如风,电流和垂直集成水分运输。最后一个例子示出了用于空间变化的时间固定字段的替代设置,其中北部和南半球的表面风的空间平均值根据不同的Reanalyses和来自CMIP5模型的集合的实现。这里提出的水手图表明它是一种工具,有助于识别由于模拟矢量时间序列或字段的偏置或方向引起的错误。与本文一起呈现的图的R实现允许我们允许我们容易地检索平均断平误差和其他诊断的各个诊断,以及可以以表格形式呈现的附加诊断。

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