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首页> 外文期刊>Journal of Applied Meteorology and Climatology >Precipitation Estimates from MSG SEVIRI Daytime, Nighttime, and Twilight Data with Random Forests
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Precipitation Estimates from MSG SEVIRI Daytime, Nighttime, and Twilight Data with Random Forests

机译:来自味精SEVIRI白天,夜晚和暮光数据在随机森林中的降水估计

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摘要

A new rainfall retrieval technique for determining rainfall rates in a continuous manner (day, twilight, and night) resulting in a 24-h estimation applicable to midlatitudes is presented. The approach is based on satellite-derived information on cloud-top height, cloud-top temperature, cloud phase, and cloud water path retrieved from Meteosat Second Generation (MSG) Spinning Enhanced Visible and Infrared Imager (SEVIRI) data and uses the random forests (RF) machine-learning algorithm. The technique is realized in three steps: (i) precipitating cloud areas are identified, (ii) the areas are separated into convective and advective-stratiform precipitating areas, and (iii) rainfall rates are assigned separately to the convective and advective-stratiform precipitating areas. Validation studies were carried out for each individual step as well as for the overall procedure using collocated ground-based radar data. Regarding each individual step, the models for rain area and convective precipitation detection produce good results. Both retrieval steps show a general tendency toward elevated prediction skill during summer months and daytime. The RF models for rainfall-rate assignment exhibit similar performance patterns, yet it is noteworthy how well the model is able to predict rainfall rates during nighttime and twilight. The performance of the overall procedure shows a very promising potential to estimate rainfall rates at high temporal and spatial resolutions in an automated manner. The near-real-time continuous applicability of the technique with acceptable prediction performances at 3-8-hourly intervals is particularly remarkable. This provides a very promising basis for future investigations into precipitation estimation based on machine-learning approaches and MSG SEVIRI data.
机译:提出了一种新的降雨检索技术,用于以连续方式(白天,黄昏和夜晚)确定降雨量,从而得出适用于中纬度的24小时估算值。该方法基于从Meteosat第二代(MSG)旋转增强型可见光和红外成像仪(SEVIRI)数据中检索到的有关卫星的云顶高度,云顶温度,云相和云水路径的信息,并使用随机森林(RF)机器学习算法。该技术分三步实现:(i)识别出云区,(ii)将这些区域分为对流和对流层状降水区,(iii)将降雨率分别分配给对流和对流层状降水地区。使用并置的地面雷达数据,对每个步骤以及整个程序进行了验证研究。对于每个单独的步骤,雨区和对流降水检测模型均能产生良好的效果。在夏季月份和白天,这两个检索步骤均显示出提高预测技能的总体趋势。用于降雨率分配的RF模型表现出相似的性能模式,但是值得注意的是,该模型能够很好地预测夜间和黄昏时的降雨率。整个程序的性能显示出以自动化方式估算高时空分辨率下降雨率的潜力很大。该技术以3-8小时的间隔具有可接受的预测性能的近实时连续适用性尤其出色。这为未来基于机器学习方法和MSG SEVIRI数据的降水估算研究提供了非常有希望的基础。

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