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首页> 外文期刊>Natural Hazards and Earth System Sciences Discussions >Data assimilation impact studies with the AROME-WMED reanalysis of the first special observation period of the Hydrological cycle in the Mediterranean Experiment
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Data assimilation impact studies with the AROME-WMED reanalysis of the first special observation period of the Hydrological cycle in the Mediterranean Experiment

机译:数据同化影响研究与地中海实验中水文循环第一个特殊观察期的arome-WMMED分析

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This study was performed in the framework of HyMeX (Hydrological cycle in the Mediterranean Experiment), which aimed to study the heavy precipitation that regularly affects the Mediterranean area. A reanalysis with a convective-scale model AROME-WMED (Application of Research to Operations at MEsoscale western Mediterranean) was performed, which assimilated most of the available data for a 2-month period corresponding to the first special observation period of the field campaign (Fourrié et?al.,?2019). Among them, observations related to the low-level humidity flow were assimilated. Such observations are important for the description of the feeding of the convective mesoscale systems with humidity (Duffourg and Ducrocq,?2011; Bresson et?al.,?2012; Ricard et?al.,?2012). Among them there were a dense reprocessed network of high-quality Global Navigation Satellite System?(GNSS) zenithal total delay?(ZTD) observations, reprocessed data from wind profilers, lidar-derived vertical profiles of humidity (ground and airborne) and Spanish radar data. The aim of the paper is to assess the impact of the assimilation of these four observation types on the analyses and the forecasts from the 3?h forecast range (first guess) up to the 48?h forecast range. In order to assess this impact, several observing system experiments (OSEs) or so-called denial experiments, were carried out by removing one single data set from the observation data set assimilated in the reanalysis. Among the evaluated observations, it is found that the ground-based GNSS ZTD data set provides the largest impact on the analyses and the forecasts, as it represents an evenly spread and frequent data set providing information at each analysis time over the AROME-WMED domain. The impact of the reprocessing of GNSS ZTD data also improves the forecast quality, but this impact is not statistically significant. The assimilation of the Spanish radar data improves the 3?h precipitation forecast quality as well as the short-term (30?h) precipitation forecasts, but this impact remains located over Spain. Moreover, marginal impact from wind profilers was observed on wind background quality. No impacts have been found regarding lidar data, as they represent a very small data set, mainly located over the sea.
机译:该研究是在Hymex的框架(地中海实验中的水文循环)中进行,旨在研究定期影响地中海地区的重度降水。进行了对流级模型的重新分析,AROME-WMMED(在Mescre Western Mediterranean的运营中的应用)进行了分析,它同化了与现场运动的第一个特殊观察期对应的2个月内的大多数可用数据( Fourriéet?al。,?2019)。其中,同化了与低水平湿度流动相关的观察。这种观察对于对具有湿度(Duffourg和Ducrocq的对流Mescose系统的描述是重要的(Duffourg和Ducrocq,2011; Bresson等,?2012; Ricard et?Al。,?2012)。其中包括一个密集的高质量的全球导航卫星系统网络?(GNSS)天顶总延迟?(ZTD)观察,来自风剖面的监控数据,LiDar衍生的湿度(地面和空中)和西班牙雷达数据。本文的目的是评估这些四种观察类型的同化对3?H预测范围(首次猜测)的分析和预测的影响。为了评估这种影响,通过从再分析中同化的观察数据集中取出一个单一数据,进行几种观察系统实验(OS)或所谓的拒绝实验。在评估的观察中,发现基于地面的GNSS ZTD数据集对分析和预测提供了最大的影响,因为它代表了在Arome-WMMED域上的每个分析时间上提供信息的均匀扩展和频繁的数据集。 GNSS ZTD数据再处理的影响还提高了预测质量,但这种影响并不统计学意义。西班牙雷达数据的同化改善了3?H降水预测质量以及短期(30?H)降水预测,但这种影响仍然位于西班牙。此外,在风背景质量上观察到来自风分析器的边缘影响。没有发现关于LIDAR数据的影响,因为它们代表了一个非常小的数据集,主要位于海面。

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