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Downscaling near-surface wind over complex terrain using a physically-based statistical modeling approach

机译:使用基于物理的统计建模方法在复杂地形上缩减近地表风的比例

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摘要

A physically-based statistical modeling approach to downscale coarse resolution reanalysis near-surface winds over a region of complex terrain is developed and tested in this study. Our approach is guided by physical variables and meteorological relationships that are important for determining near-surface wind flow. Preliminary fine scale winds are estimated by correcting the course-to-fine grid resolution mismatch in roughness length. Guided by the physics shaping near-surface winds, we then formulate a multivariable linear regression model which uses near-surface micrometeorological variables and the preliminary estimates as predictors to calculate the final wind products. The coarse-to-fine grid resolution ratio is approximately 10-1 for our study region of southern California. A validated 3-km resolution dynamically-down-scaled wind dataset is used to train and validate our method. Winds from our statistical modeling approach accurately reproduce the dynamically-downscaled near-surface wind field with wind speed magnitude and wind direction errors of <1.5 ms~(-1) and 30°, respectively. This approach can greatly accelerate the production of near-surface wind fields that are much more accurate than reanalysis data, while limiting the amount of computational and time intensive dynamical downscaling. Future studies will evaluate the ability of this approach to downscale other reanalysis data and climate model outputs with varying coarse-to-fine grid resolutions and domains of interest.
机译:在这项研究中,开发并测试了一种基于物理的统计建模方法,用于对复杂地形区域上的近地风进行低尺度的粗分辨率重新分析。我们的方法以物理变量和气象关系为指导,这对于确定近地表风流很重要。通过校正粗糙度长度上的逐级到细网格分辨率不匹配,可以估算初步的细尺度风。然后,在对近地表风进行物理整形的指导下,我们建立了一个多变量线性回归模型,该模型使用近地表微气象变量和初步估计作为预测因子来计算最终的风积。对于我们位于南加州的研究区域,粗细网格分辨率比约为10-1。经过验证的3 km分辨率动态缩小的风数据集用于训练和验证我们的方法。通过我们的统计建模方法获得的风能精确地再现动态缩小的近地表风场,其风速大小和风向误差分别<1.5 ms〜(-1)和30°。这种方法可以大大加速近地表风场的生成,而近地表风场的生成要比重新分析数据准确得多,同时又限制了计算和时间密集型动态缩减的数量。未来的研究将评估这种方法在改变粗略到精细的网格分辨率和关注范围时,缩减其他再分析数据和气候模型输出的能力。

著录项

  • 来源
    《Climate dynamics》 |2015年第2期|529-542|共14页
  • 作者单位

    Joint Institute for Regional Earth System Science and Engineering, University of California, Los Angeles, 7343 Math Science Building, Los Angeles, CA, USA;

    Department of Atmospheric and Oceanic Sciences, University of California, Los Angeles, Los Angeles, CA, USA;

    Institute for Digital Research and Education, University of California, Los Angeles, Los Angeles, CA, USA;

    Department of Atmospheric and Oceanic Sciences, University of California, Los Angeles, Los Angeles, CA, USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Near-surface wind; Dynamical downscaling; Statistical downscaling; Complex terrain;

    机译:近地表风;动态降级;统计缩减;复杂的地形;

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