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首页> 外文期刊>Quarterly Journal of the Royal Meteorological Society >An intermediate-complexity model for four-dimensional variational data assimilation including moist processes
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An intermediate-complexity model for four-dimensional variational data assimilation including moist processes

机译:包括潮湿过程的四维变分数据同化的中间复杂性模型

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This article presents a new Moist Atmosphere Dynamics Data Assimilation Model (MADDAM), an intermediate-complexity system for four-dimensional variational (4D-Var) data assimilation. The prognostic model equations simulate nonlinear moisture advection, precipitation, and the impact of condensational heating on circulation. The 4D-Var assimilation applies the incremental approach and uses transformed relative humidity as a control variable. In contrast to the model dynamical variables, which are analyzed in multivariate fashion using equatorial wave theory, moisture data are assimilated univariately. MADDAM is applied to study the extraction of wind information from time series of moisture observations in the Tropics, where the lack of wind information is most critical. Results show that wind tracing in the unsaturated atmosphere depends largely on the ability of the assimilation model to resolve spatial gradients in the moisture field, which is determined by the spatial density and accuracy of observations. In the saturated atmosphere, a combined assimilation of moisture and temperature data is shown to improve wind analyses significantly, as the intensity of the condensation process is susceptible to the slightest changes in saturation humidity and thus temperature. Moreover, a perfect-model 4D-Var with moisture observations can extract wind information even in precipitating regions and strongly nonlinear flow, provided sufficient observations of humidity gradients are available. MADDAM is envisaged to serve as a testbed for new developments in 4D-Var assimilation, with a focus on interactions between moist processes and dynamics across many scales.
机译:本文提出了一种新的潮湿气氛动力学数据同化模型(MADDAM),一种用于四维变分(4D-VAR)数据同化的中间复杂性系统。预后模型方程模拟非线性水分平流,降水和致敏加热对循环的影响。 4D-VAL同化应用增量方法,并使用变换的相对湿度作为控制变量。与模型动态变量相反,使用赤道波理论以多变量方式分析的模型动态变量,湿度数据不相似。 Maddam应用于研究热带水分观测的时间序列的风信息的提取,其中缺乏风信息是最关键的。结果表明,不饱和气氛中的风追踪主要取决于同化模型在水分场中解析空间梯度的能力,这由空间密度和观察的准确性决定。在饱和气氛中,显示水分和温度数据的组合同化,显着改善风分析,因为冷凝过程的强度易于饱和湿度的最轻微的变化,因此温度。此外,具有水分观测的完美型号4D-Var可以提取风信息,即使在沉淀区域和强烈的非线性流动中,提供了足够的湿度梯度的观察。设想马达姆作为4D-VAR同化的新发展的测试平台,重点是许多尺度潮湿过程与动态之间的相互作用。

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