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DISO: A rethink of Taylor diagram

机译:咄咄逼人:泰勒图的重新思考

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摘要

Climate models use quantitative methods to simulate the interactions of the important drivers of climate system, to reveal the corresponding physical mechanisms, and to project the future climate dynamics among atmosphere, oceans, land surface and ice, such as regional climate models and global climate models. A comprehensive assessment of these climate models is important to identify their different overall performances, such as the accuracy of the simulated temperature and precipitation against the observed field. However, until now, the comprehensive performances of these models have not been quantified by a comprehensive index except the existed single statistical index, such as correlation coefficient (r), absolute error (AE), and the root-mean-square error (RMSE). To address this issue, therefore, in this study, a new comprehensive index Distance between Indices of Simulation and Observation (DISO) is developed to describe the overall performances of different models against the observed field quantitatively. This new index DISO is a merge of different statistical metrics including r, AE, and RMSE according to the distance between the simulated model and observed field in a three-dimension space coordinate system. From the relationship between AE, RMSE, and RMS difference (RMSD) (i.e., standard deviation [SD] of bias time series), the new index also has the information of RMSD which is the statistical index in Taylor diagram. An example is applied objectively to display the applications of DISO and Taylor diagram in identifying the overall performances of different simulated models. Overall, with the strong physical characteristic of the distance in three dimensional space and the strict mathematical proof, the new comprehensive index DISO can convey the performances among different models. It can be applied in the comparison between different model data and in tracking changes in their performances.
机译:气候模型使用定量方法来模拟气候系统重要司机的相互作用,揭示相应的物理机制,并将未来的气候动态项目在大气,海洋,陆地和冰等地区,如区域气候模型和全球气候模型。对这些气候模型的全面评估对于确定其不同的整体表现是重要的,例如模拟温度和对观察领域的降水的准确性。然而,到目前为止,这些模型的综合性能尚未通过综合指数来量化,除了存在的单一统计指标,例如相关系数(R),绝对误差(AE)和根均方误差(RMSE) )。因此,在本研究中解决了这个问题,开发了模拟和观察指数(DISO)之间的新综合指标距离,以描述定量地对观察到的场的整体性能。这种新的指数DISO是根据模拟模型与三维空间坐标系中的模拟模型和观察字段之间的距离的不同统计度量的合并,包括R,AE和RMSE。从AE,RMSE和RMS差之间的关系(RMSD)(即,偏差时间序列的标准偏差[SD]),新索引还具有RMSD的信息,它是泰勒图中的统计指标。客观地应用示例以显示抗议和泰勒图在识别不同模拟模型的整体性能时的应用。总体而言,随着三维空间的距离的强大物理特征和严格的数学证据,新的综合指标可以在不同型号之间传达性能。它可以应用于不同模型数据之间的比较和跟踪其性能的变化。

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