A Verification Approach Used in Developing the Rapid Refresh and Other Numerical Weather Prediction Models

IF 1.5 Q4 METEOROLOGY & ATMOSPHERIC SCIENCES Journal of Operational Meteorology Pub Date : 2020-02-20 DOI:10.15191/nwajom.2020.0803
D. Turner, J. Hamilton, W. Moninger, M. Smith, B. Strong, R. Pierce, V. Hagerty, K. Holub, S. Benjamin
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引用次数: 2

Abstract

Developing and improving numerical weather prediction models such as the Rapid Refresh (RAP) and High-Resolution Rapid Refresh (HRRR) requires a well-designed, easy-to-use evaluation capability using observations. Owing to the very complex nonlinear interactions between the data assimilation system and the representation of various physics components in the model, changes to one aspect of the modeling system to address a particular shortcoming within the model may have detrimental impacts in another area. Thus, the model verification approach used in the Global Systems Division of the NOAA Earth System Research Laboratory—which actively develops the RAP and HRRR models and other forecasting systems—is designed to allow hypothesis-driven testing of different aspects of the model using observations. In this approach, model changes easily and quickly can be quantified by automatically comparing simulated geophysical variables against many different types of observations that are collected operationally by various agencies, including the National Weather Service. We have implemented this approach in the Model Analysis Tool Suite (MATS). A key aspect of MATS is the use of a database-driven system that stores partial sums of model minus observation pairs over specified geographical regions in order to reduce the dimensionality of the data and, thus, improve the response time of the system. These partial sums are created and stored in a manner that allows the data to be visualized in different ways, thereby providing new insights into the ability of that particular version of the model to replicate the observed atmospheric conditions.
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一种用于快速刷新和其他数值天气预报模型开发的验证方法
开发和改进快速刷新(RAP)和高分辨率快速刷新(HRRR)等数值天气预测模型需要使用观测进行精心设计、易于使用的评估。由于数据同化系统和模型中各种物理组件的表示之间存在非常复杂的非线性相互作用,为解决模型中的特定缺陷而对建模系统的一个方面进行的更改可能会对另一个领域产生不利影响。因此,NOAA地球系统研究实验室全球系统部门使用的模型验证方法——该部门积极开发RAP和HRRR模型以及其他预测系统——旨在允许使用观测对模型的不同方面进行假设驱动的测试。在这种方法中,通过将模拟的地球物理变量与包括国家气象局在内的多个机构实际收集的许多不同类型的观测值进行自动比较,可以轻松快速地量化模型变化。我们已经在模型分析工具套件(MATS)中实现了这种方法。MATS的一个关键方面是使用数据库驱动的系统,该系统存储指定地理区域上模型减去观测对的部分和,以降低数据的维度,从而提高系统的响应时间。这些部分和是以允许以不同方式可视化数据的方式创建和存储的,从而为该特定版本的模型复制观测到的大气条件的能力提供了新的见解。
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来源期刊
Journal of Operational Meteorology
Journal of Operational Meteorology METEOROLOGY & ATMOSPHERIC SCIENCES-
CiteScore
2.40
自引率
0.00%
发文量
4
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