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Mesoscale Predictability and Error Growth in Short Range Ensemble Forecasts.

机译:中尺度可预测性和短期集合预报中的误差增长。

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摘要

Although it was originally suggested that small-scale, unresolved errors corrupt forecasts at all scales through an inverse error cascade, some authors have proposed that those mesoscale circulations resulting from stationary forcing on the larger scale may inherit the predictability of the large-scale motions. Further, the relative contributions of large- and small-scale uncertainties in producing error growth in the mesoscales remain largely unknown. Here, 100 member ensemble forecasts are initialized from an ensemble Kalman filter (EnKF) to simulate two winter storms impacting the East Coast of the United States in 2010. Four verification metrics are considered: the local snow water equivalence, total liquid water, and 850 hPa temperatures representing mesoscale features; and the sea level pressure field representing a synoptic feature. It is found that while the predictability of the mesoscale features can be tied to the synoptic forecast, significant uncertainty existed on the synoptic scale at lead times as short as 18 hours. Therefore, mesoscale details remained uncertain in both storms due to uncertainties at the large scale. Additionally, the ensemble perturbation kinetic energy did not show an appreciable upscale propagation of error for either case. Instead, the initial condition perturbations from the cycling EnKF were maximized at large scales and immediately amplified at all scales without requiring initial upscale propagation. This suggests that relatively small errors in the synoptic-scale initialization may have more importance in limiting predictability than errors in the unresolved, small-scale initial conditions.
机译:尽管最初提出小规模的,无法解决的误差会通过反误差级联破坏所有规模的预测,但一些作者提出,那些由较大尺度上的平稳强迫产生的中尺度环流可能会继承大尺度运动的可预测性。此外,在中尺度上产生误差增长的大型和小型不确定性的相对贡献仍然未知。在这里,从集合卡尔曼滤波器(EnKF)初始化了100个成员集合预报,以模拟2010年影响美国东海岸的两次冬季风暴。考虑了四个验证指标:当地雪水当量,总液态水和850 hPa温度代表中尺度特征;海平面压力场代表天气特征。结果发现,虽然中尺度特征的可预测性可以与天气预测相联系,但在天气尺度上,在短至18个小时的交货时间上存在明显的不确定性。因此,由于大规模的不确定性,中尺度细节在两次风暴中仍然不确定。另外,对于任何一种情况,整体扰动动能均未显示出可观的误差扩展。取而代之的是,来自循环EnKF的初始条件扰动会在最大范围内最大化,并在所有范围内立即放大,而无需初始范围的扩展。这表明天气尺度初始化中相对较小的误差在限制可预测性方面比未解决的小尺度初始条件中的误差更重要。

著录项

  • 作者

    Gingrich, Mark.;

  • 作者单位

    University of Washington.;

  • 授予单位 University of Washington.;
  • 学科 Atmospheric sciences.
  • 学位 Masters
  • 年度 2013
  • 页码 82 p.
  • 总页数 82
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:41:14

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