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首页> 外文期刊>Hydrology and Earth System Sciences >Evaluation of Integrated Nowcasting through Comprehensive Analysis?(INCA) precipitation analysis using a dense rain-gauge network in southeastern Austria
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Evaluation of Integrated Nowcasting through Comprehensive Analysis?(INCA) precipitation analysis using a dense rain-gauge network in southeastern Austria

机译:通过综合分析评价综合讽刺?(印加)在奥地利东南部使用密集的雨量仪网络降水分析

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An accurate estimate of precipitation is essential to improve the reliability of hydrological models and helps in decision making in agriculture and economy. Merged radar–rain-gauge products provide precipitation estimates at high spatial and temporal resolution. In this study, we assess the ability of the INCA (Integrated Nowcasting through Comprehensive Analysis) precipitation analysis product provided by ZAMG (the Austrian Central Institute for Meteorology and Geodynamics) in detecting and estimating precipitation for 12 years in southeastern Austria. The blended radar–rain-gauge INCA precipitation analyses are evaluated using WegenerNet – a very dense rain-gauge network with about one?station per 2?km 2 – as “true precipitation”. We analyze annual, seasonal, and extreme precipitation of the 1?km ? × ?1?km INCA product and its development from?2007 to?2018. From?2007 to?2011, the annual area-mean precipitation in INCA was slightly higher than WegenerNet, except in?2009. However, INCA underestimates precipitation in grid cells farther away from the two ZAMG meteorological stations in the study area (which are used as input for INCA), especially from May to September (“wet season”). From?2012 to?2014, INCA's overestimation of the annual-mean precipitation amount is even higher, with an average of 25?%, but INCA performs better close to the two ZAMG stations. Since new radars were installed during this period, we conclude that this increase in the overestimation is due to new radars' systematic errors. From?2015 onwards, the overestimation is still dominant in most cells but less pronounced than during the second period, with an average of 12.5?%. Regarding precipitation detection, INCA performs better during the wet seasons. Generally, false events in INCA happen less frequently in the cells closer to the ZAMG stations than in other cells. The number of true events, however, is comparably low closer to the ZAMG stations. The difference between INCA and WegenerNet estimates is more noticeable for extremes. We separate individual events using a 1?h minimum inter-event time?(MIT) and demonstrate that INCA underestimates the events' peak intensity until?2012 and overestimates this value after mid-2012 in most cases. In general, the precipitation rate and the number of grid cells with precipitation are higher in INCA. Considering four extreme convective short-duration events, there is a time shift in peak intensity detection. The relative differences in the peak intensity in these events can change from approximately ?40 ?% to 40?%. The results show that the INCA analysis product has been improving; nevertheless, the errors and uncertainties of INCA to estimate short-duration convective rainfall events and the peak of extreme events should be considered for future studies. The results of this study can be used for further improvements of INCA products as well as for future hydrological studies in regions with moderately hilly topography and convective dominance in summer.
机译:准确估算降水至关重要,以提高水文模型的可靠性,并有助于农业和经济决策。合并的雷达 - 雨量产品提供高空间和时间分辨率的降水估计。在这项研究中,我们评估了ZAMG(奥地利中央气象和地磁动力学研究所)提供的降水分析产品的INCA(通过综合分析)的能力,在奥地利东南部检测和估算降水12年。使用Wegenernet - 一种非常致密的雨量尺寸网络评估混合雷达 - 雨量China沉淀分析,其中一个雨量标准网络,每2 km 2的一站 - 作为“真实降水”。我们分析1 km的年度,季节性和极端降水? ×1?KIM INCA产品及其开发从?2007年到2018年。来自2007年到2011年,INCA的年度平均降水量略高于Wegenernet,除了2009年然而,INCA低估了从研究区域的两个ZAMG气象站的栅格细胞中的降水(其用作印加的输入),特别是从5月到9月(“湿季”)。从?2014年到2014年,印加人的高估年平均降水量甚至更高,平均为25?%,但印加更好地靠近两个ZAMG站。由于在此期间安装了新的雷达,我们得出的结论是,高估的增加是由于新的雷达的系统错误。从?2015年开始,大多数小区的高估仍然占主导地位,但比第二个时期不那么明显,平均为12.5?%。关于降水检测,印加在潮湿的季节期间表现更好。通常,在更靠近ZAMG站的细胞中,印花的错误事件比在其他单元中更近于ZAMG站。然而,真实事件的数量与ZAMG站相对较低。 INCA和WEGENERERENET估计之间的差异对于极端更加明显。我们使用1?H最小帧间时间分开单独的事件?(MIT)并证明印加人低估了事件的峰值强度,直到2012年在2012年中期之后高估了这一值。通常,印加的沉淀率和沉淀的网格细胞数量较高。考虑到四个极端的对流短持续时间事件,峰值强度检测有一段时间偏移。这些事件中峰强度的相对差异可以从大约Δ%到40?%的变化。结果表明,印加分析产品一直在改善;然而,应考虑INCA估计短期对流降雨事件的错误和不确定性和极端事件的峰值。本研究的结果可用于进一步改进印加产品以及在夏季中间丘陵地形和对流统治的地区未来的水文研究。

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