...
首页> 外文期刊>Hydrology and Earth System Sciences Discussions >Assessing the added value of the Intermediate Complexity Atmospheric Research (ICAR) model for precipitation in complex topography
【24h】

Assessing the added value of the Intermediate Complexity Atmospheric Research (ICAR) model for precipitation in complex topography

机译:评估中间复杂性大气研究(ICAR)模型在复杂地形中降水的附加值

获取原文
           

摘要

The coarse grid spacing of global circulation models necessitates the application of downscaling techniques to investigate the local impact of a changing global climate. Difficulties arise for data-sparse regions in complex topography, as they are computationally demanding for dynamic downscaling and often not suitable for statistical downscaling due to the lack of high-quality observational data. The Intermediate Complexity Atmospheric Research (ICAR) model is a physics-based model that can be applied without relying on measurements for training and is computationally more efficient than dynamic downscaling models. This study presents the first in-depth evaluation of multiyear precipitation time series generated with ICAR on a 4×4?km2 grid for the South Island of New Zealand for an 11-year period, ranging from 2007 to 2017. It focuses on complex topography and evaluates ICAR at 16 weather stations, 11 of which are situated in the Southern Alps between 700 and 2150mm.s.l (mm.s.l refers to meters above mean sea level). ICAR is assessed with standard skill scores, and the effect of model top elevation, topography, season, atmospheric background state and synoptic weather patterns on these scores are investigated. The results show a strong dependence of ICAR skill on the choice of the model top elevation, with the highest scores obtained for 4?km above topography. Furthermore, ICAR is found to provide added value over its ERA-Interim reanalysis forcing data set for alpine weather stations, improving the median of mean squared errors (MSEs) by 30?% and up to 53?%. It performs similarly during all seasons with a MSE minimum during winter, while flow linearity and atmospheric stability are found to increase skill scores. ICAR scores are highest during weather patterns associated with flow perpendicular to the Southern Alps and lowest for flow parallel to the alpine range. While measured precipitation is underestimated by ICAR, these results show the skill of ICAR in a real-world application, and may be improved upon by further observational calibration or bias correction techniques. Based on these findings ICAR shows the potential to generate downscaled fields for long-term impact studies in data-sparse regions with complex topography.
机译:全局循环模型的粗网间距需要应用较低的技术来研究变化的全球气候的局部影响。复杂地形中的数据稀疏区域出现困难,因为它们对动态缩小的计算要求苛刻,并且由于缺乏高质量的观测数据而常用于统计尺寸。中间复杂性大气研究(ICAR)模型是一种基于物理的模型,可以应用而不依赖于训练测量,并且计算地比动态缩小模型更有效。本研究提出了在新西兰南岛南岛的4×4个KM2网格中产生的第一个深入评估,为新西兰南岛为11年,从2007年到2017年。它侧重于复杂的地形并在16个气象站中评估ICAR,其中11个位于700至2150mm.SL之间的南部阿尔卑斯山(MM.SL)中,指平均海平面上方的米)。 ICAR进行了标准技能评分,并研究了模型顶级高度,地形,季节,大气背景和揭示天气模式的效果。结果表明ICAR技能对模型顶部高度选择的强烈依赖,以上额外的4克基础的最高评分。此外,发现ICAR在其ERA-Instim Reanalysis强制迫使Alpine气象站的数据集中提供附加值,从而改善平均平方误差(MSES)的中值30?%,最高53Ω%。它在冬季最少的所有季节期间表现出类似的季节,而流动线性和大气稳定性则被发现增加技能评分。在与南部阿尔卑斯州垂直于南部阿尔卑斯州的流动和平行于高山范围的流动最低的天气模式,ICAR评分最高。虽然ICAR低估了测量的沉淀,但这些结果显示了ICAR在真实应用中的技能,并且可以通过进一步的观察校准或偏置校正技术来改善。基于这些发现,ICAR表示有可能在具有复杂地形的数据稀疏区域中为长期影响研究产生次要字段。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号