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PBL State Estimation with Surface Observations, a Column Model, and an Ensemble Filter

机译:具有表面观察,列模型和集成滤波器的PBL状态估计

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Following recent results showing the potential for using surface observations of temperature, water vapor mixing ratio, and winds to determine PBL profiles, this paper reports on experiments with real observations. A 1D column model with soil, surface-layer, and PBL parameterization schemes that are the same as in the Weather Research and Forecasting model is used to estimate PBL profiles with an ensemble filter. Surface observations over the southern Great Plains are assimilated during the spring and early summer period of 2003. To strictly quantify the utility of the observations for determining PBL profiles in the ensemble filter framework, only climatological information is provided for initialization and forcing. The analysis skill, measured against rawinsondes for an independent verification, is compared against climatology to quantify the influence of the observations. Sensitivity to changing parameterization schemes, and to prescribed values of observation error variance, is examined. Temporal propagation of skillful analyses is also assessed, separating the effects of good prior state estimates from the impact of assimilation at night when covariance is weak. Results show that accurate profiles of temperature, mixing ratio, and winds are estimated with the column model and ensemble filter assimilating only surface observations. Results are largely insensitive to choice of parameterization scheme and specified observation error variance. The effects of using different parameterization schemes within the column model depend on whether assimilation is included, showing the importance of evaluating models within assimilation systems. At night, skillful estimates are possible because the influence of the observations from the previous day is temporally propagated, and atmospheric dynamics in the residual layer operate on slow time scales. It is expected that these profiles will have applications for nowcasting and secondary models (e.g., plume dispersion models) that rely on accurate specification of PBL structure.
机译:根据最近的结果显示了使用温度,水蒸气混合比和风的表面观测来确定PBL分布的潜力,本文报告了具有实际观测结果的实验​​。一维列模型的土壤,表面层和PBL参数化方案与“天气研究和预测”模型中的相同,用于通过集成滤波器估计PBL剖面。 2003年春季和初夏期间,对大平原南部的地面观测进行了同化。为了严格量化观测在确定集合过滤器框架中的PBL剖面时的效用,仅提供了用于初始化和强迫的气候信息。针对原始信号测得的分析技能进行了独立验证,并与气候学进行了比较,以量化观测结果的影响。检查对更改参数化方案以及观察误差方差的规定值的敏感性。还评估了熟练分析的时间传播,将良好的先前状态估计的影响与协方差较弱的夜间同化的影响分开。结果表明,使用柱模型和集成过滤器仅与表面观测值相似,即可估算出温度,混合比和风的精确分布。结果对参数化方案的选择和指定的观察误差方差不敏感。在列模型中使用不同的参数化方案的效果取决于是否包括同化,这显示了评估同化系统中模型的重要性。在晚上,熟练的估算是可能的,因为前一天的观测结果会随时间传播,并且残留层中的大气动力学会以较慢的时间尺度运行。预计这些配置文件将具有依赖PBL结构的准确规范的临近模型和辅助模型(例如羽状扩散模型)的应用程序。

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