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contributor authorKühnlein, Meike
contributor authorAppelhans, Tim
contributor authorThies, Boris
contributor authorNauß, Thomas
date accessioned2017-06-09T16:50:23Z
date available2017-06-09T16:50:23Z
date copyright2014/11/01
date issued2014
identifier issn1558-8424
identifier otherams-75063.pdf
identifier urihttp://onlinelibrary.yabesh.ir/handle/yetl/4217358
description abstractnew 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.
publisherAmerican Meteorological Society
titlePrecipitation Estimates from MSG SEVIRI Daytime, Nighttime, and Twilight Data with Random Forests
typeJournal Paper
journal volume53
journal issue11
journal titleJournal of Applied Meteorology and Climatology
identifier doi10.1175/JAMC-D-14-0082.1
journal fristpage2457
journal lastpage2480
treeJournal of Applied Meteorology and Climatology:;2014:;volume( 053 ):;issue: 011
contenttypeFulltext


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