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Ensemble Kalman filter data assimilation in the presence of large model error.

机译:在存在较大模型误差的情况下集成Kalman滤波器数据同化。

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摘要

Though assimilation of synthetically generated surface flux "observations" into numerical forecast models has been attempted, the topic of observed flux data assimilation over land has received little attention. This may be partially due to the lack of available flux observations in most areas. This study examines model analyses and observed data from the summer of 2004. Sensible heat flux estimates are calculated from Oklahoma Mesonet observations of temperature and wind using an iterative profile method reliant on boundary layer similarity theory. These sensible heat flux estimates are assimilated into the MM5 model, coupled with the Noah LSM, using an ensemble Kalman filter (EnKF) data assimilation scheme. A forecast is run over a 48 h period, with EnKF updates to the model grids occurring every hour. A control forecast with no assimilation is also run over the same 48 h period, as well as a forecast including the assimilation of standard surface data from the Oklahoma Mesonet. Results from these three forecasts are compared and contrasted.;It is shown that the EnKF scheme correctly updates the model low level temperature and moisture fields according to the values of the various terms in the governing equations. However, in the case of sensible heat flux data assimilation, model fields are sometimes updated in a way that creates analyses further from observed data rather than closer. Several factors are noted that make assimilation of sensible heat flux a challenge. Large differences between Mesonet estimates of sensible heat flux and horizontally interpolated values from the model can result in changes to the model forecast fields that are far too great. When combined with covariances generated by the model that are not physically based, the problem is amplified. Consistency checks within the EnKF scheme show that the sensible heat flux observation error selected at the beginning of the study may be far too low, and that the ensemble spread is likely not nearly large enough to provide a reasonable estimate of the model error. These issues will need to be addressed before sensible heat flux assimilation can be expected to consistently perform well.
机译:尽管已尝试将合成生成的表面通量“观测值”吸收到数值预报模型中,但是在陆地上观测到的通量数据吸收的话题却很少受到关注。这可能部分是由于大多数地区缺乏可用的通量观测值。这项研究检查了2004年夏季以来的模型分析和观测数据。根据俄克拉荷马州Mesonet观测到的温度和风,采用了基于边界层相似性理论的迭代剖面方法,计算出了合理的热通量估算值。使用集成卡尔曼滤波器(EnKF)数据同化方案,将这些合理的热通量估算值与Noah LSM一起同化为MM5模型。预测会持续48小时,并且每小时都会对模型网格进行一次EnKF更新。在相同的48小时内还进行了没有同化的对照预测,以及包括对俄克拉荷马气象台标准表面数据的同化的预测。比较和对比了这三个预测的结果;表明EnKF方案根据控制方程中各个项的值正确更新了模型的低层温度和湿度场。但是,在合理地吸收热通量数据的情况下,有时会更新模型字段,从而根据观察到的数据而不是更接近的数据创建分析。注意到有几个因素使显热通量的同化成为一个挑战。 Mesonet的感热通量估计值与模型的水平插值之间的巨大差异可能会导致模型预测字段的变化太大。当与不是基于物理的模型生成的协方差结合使用时,问题就会被放大。 EnKF方案中的一致性检查表明,在研究开始时选择的显热通量观测误差可能太低,并且总体扩展可能不足以提供合理的模型误差估计。在预期显着的热通量同化性能持续良好之前,需要解决这些问题。

著录项

  • 作者

    Taylor, Andrew.;

  • 作者单位

    The University of Oklahoma.;

  • 授予单位 The University of Oklahoma.;
  • 学科 Meteorology.;Atmospheric Sciences.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 135 p.
  • 总页数 135
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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