Satellite-based high-resolution mapping of rainfall over southern Africa

Meyer, H; Drönner, J; Nauss, T

Forschungsartikel (Zeitschrift) | Peer reviewed

Zusammenfassung

A spatially explicit mapping of rainfall is necessary for southern Africa for eco-climatological studies or nowcasting but accurate estimates are still a challenging task. This study presents a method to estimate hourly rainfall based on data from the Meteosat Second Generation (MSG) Spinning Enhanced Visible and Infrared Imager (SEVIRI). Rainfall measurements from about 350 weather stations from 2010-2014 served as ground truth for calibration and validation. SEVIRI and weather station data were used to train neural networks that allowed the estimation of rainfall area and rainfall quantities over all times of the day. The results revealed that 60% of recorded rainfall events were correctly classified by the model (probability of detection, POD). However, the false alarm ratio (FAR) was high (0.80), leading to a Heidke skill score (HSS) of 0.18. Estimated hourly rainfall quantities were estimated with an average hourly correlation of ρ = 0. 33 and a root mean square error (RMSE) of 0.72. The correlation increased with temporal aggregation to 0.52 (daily), 0.67 (weekly) and 0.71 (monthly). The main weakness was the overestimation of rainfall events. The model results were compared to the Integrated Multi-satellitE Retrievals for GPM (IMERG) of the Global Precipitation Measurement (GPM) mission. Despite being a comparably simple approach, the presented MSG-based rainfall retrieval outperformed GPM IMERG in terms of rainfall area detection: GPM IMERG had a considerably lower POD. The HSS was not significantly different compared to the MSG-based retrieval due to a lower FAR of GPM IMERG. There were no further significant differences between the MSG-based retrieval and GPM IMERG in terms of correlation with the observed rainfall quantities. The MSG-based retrieval, however, provides rainfall in a higher spatial resolution. Though estimating rainfall from satellite data remains challenging, especially at high temporal resolutions, this study showed promising results towards improved spatio-temporal estimates of rainfall over southern Africa.

Details zur Publikation

FachzeitschriftAtmospheric Measurement Techniques
Jahrgang / Bandnr. / Volume10
Ausgabe / Heftnr. / Issue6
Seitenbereich2009-2019
StatusVeröffentlicht
Veröffentlichungsjahr2017
Sprache, in der die Publikation verfasst istEnglisch
DOI10.5194/amt-10-2009-2017
Link zum Volltexthttps://www.atmos-meas-tech.net/10/2009/2017/
StichwörterRainfall; South Africa; optical remote sensing; machine learning

Autor*innen der Universität Münster

Meyer, Hanna
Juniorprofessur für Remote Sensing und Image Processing (Prof. Meyer)
Professur für Remote Sensing und Spatial Modelling (Prof. Meyer)