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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Variational optimization for global climate analysis on ESA's high performance computing grid
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Variational optimization for global climate analysis on ESA's high performance computing grid

机译:ESA高性能计算网格上全球气候分析的变分优化

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State of the arte assimilation techniques, such as 3D-Var, are relatively seldom used within climate analysis frameworks, partly because of the enormous numerical costs. In order to face this issue ESA's high performance computing Grid. on-Demand (G-POD) is used. We assimilate Global Navigation Satellite System (GNSS) based radio occultations (RO). RO data in general exhibit some favorable properties, like global coverage, all-weather capability expected long-term stability and accuracy. These properties and the continuity of data offered by the Meteorological Operational Satellite (MetOp) program and other RO missions are an ideal opportunity to study the long term atmospheric and climate variability. This paper investigates the assimilation of RO refractivity profiles into first guess fields derived from 21 years of ECMWF's ERA40 dataset on a monthly mean basis divided into four synoptic time layers in order to take the diurnal cycle into account. In contrast to NWP systems, the assimilation procedure is applied without cycling, thus enabling us to run our 3D-Var implementation within G-POD parallel for different time layers. Results indicate a significant analysis increment which is partly systematic, emphasizing the ability of RO data to add independent information to ECMWF analysis fields, with a potential to correct biases. This work lays the ground for further studies using data from existing instruments within a framework based on a mature methodology. (C) 2007 Elsevier Inc. All rights reserved.
机译:诸如3D-Var等先进的同化技术在气候分析框架中相对很少使用,部分原因是巨大的数值成本。为了面对这个问题,ESA的高性能计算网格。使用按需(G-POD)。我们吸收了基于全球导航卫星系统(GNSS)的无线电掩星(RO)。反渗透数据通常表现出一些有利的性质,例如全球覆盖范围,全天候能力,预期的长期稳定性和准确性。这些特性以及气象卫星(MetOp)计划和其他反渗透任务提供的数据连续性,是研究长期大气和气候变化性的理想机会。本文研究了将RO折射率分布图同化为ECMWF的ERA40数据集21年的第一个猜测字段,并按月均值将其划分为四个天气时间层,以便将昼夜周期考虑在内。与NWP系统相比,应用同化程序时无需循环,因此使我们能够在G-POD中针对不同的时间层并行运行3D-Var实现。结果表明,部分系统的分析增量显着,强调了RO数据向ECMWF分析字段添加独立信息的能力,并且有可能纠正偏差。这项工作为在基于成熟方法论的框架内利用现有工具中的数据进行进一步研究奠定了基础。 (C)2007 Elsevier Inc.保留所有权利。

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