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首页> 外文期刊>Journal of Advances in Modeling Earth Systems >A decision tree algorithm for investigation of model biases related to dynamical cores and physical parameterizations
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A decision tree algorithm for investigation of model biases related to dynamical cores and physical parameterizations

机译:用于研究与动态核心和物理参数化有关的模型偏差的决策树算法

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摘要

An object?¢????based evaluation method using a pattern recognition algorithm (i.e., classification trees) is applied to the simulated orographic precipitation for idealized experimental setups using the National Center of Atmospheric Research (NCAR) Community Atmosphere Model (CAM) with the finite volume (FV) and the Eulerian spectral transform dynamical cores with varying resolutions. Daily simulations were analyzed and three different types of precipitation features were identified by the classification tree algorithm. The statistical characteristics of these features (i.e., maximum value, mean value, and variance) were calculated to quantify the difference between the dynamical cores and changing resolutions. Even with the simple and smooth topography in the idealized setups, complexity in the precipitation fields simulated by the models develops quickly. The classification tree algorithm using objective thresholding successfully detected different types of precipitation features even as the complexity of the precipitation field increased. The results show that the complexity and the bias introduced in small?¢????scale phenomena due to the spectral transform method of CAM Eulerian spectral dynamical core is prominent, and is an important reason for its dissimilarity from the FV dynamical core. The resolvable scales, both in horizontal and vertical dimensions, have significant effect on the simulation of precipitation. The results of this study also suggest that an efficient and informative study about the biases produced by GCMs should involve daily (or even hourly) output (rather than monthly mean) analysis over local scales.
机译:使用美国国家大气研究中心(NCAR)社区大气模型(CAM)将使用模式识别算法(即分类树)的基于对象的评估方法应用于模拟地形降水,以实现理想的实验设置分辨率不同的有限体积(FV)和欧拉光谱变换动力核心。每天进行模拟分析,并通过分类树算法确定三种不同类型的降水特征。计算这些特征的统计特性(即最大值,平均值和方差)以量化动态核心与变化的分辨率之间的差异。即使理想化设置中的地形简单且平滑,通过模型模拟的降水场的复杂性也会迅速发展。即使增加了降水场的复杂度,使用客观阈值的分类树算法也成功地检测到不同类型的降水特征。结果表明,CAM Eulerian谱动力核的谱变换方法在小尺度现象中引入的复杂性和偏差是突出的,并且是其与FV动力核相异的重要原因。在水平和垂直方向上可分辨的水垢,对降水的模拟都有重要影响。这项研究的结果还表明,有关GCM产生的偏差的有效且内容丰富的研究应包括在本地范围内进行每日(甚至每小时)产出(而不是每月平均值)分析。

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