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Using Sentinel-1 and Google Earth Engine cloud computing for detecting historical flood hazards in tropical urban regions: a case of Dar es Salaam
Demissie, B.; Vanhuysse, S.; Grippa, T.; Flasse, C.; Wolff, E. (2023). Using Sentinel-1 and Google Earth Engine cloud computing for detecting historical flood hazards in tropical urban regions: a case of Dar es Salaam. Geomatics Natural Hazards & Risk 14(1): 2202296. https://dx.doi.org/10.1080/19475705.2023.2202296
In: Geomatics Natural Hazards & Risk. TAYLOR & FRANCIS LTD: Abingdon. ISSN 1947-5705; e-ISSN 1947-5713, more
Peer reviewed article  

Available in  Authors 

Keywords
    Marine/Coastal; Fresh water; Terrestrial
Author keywords
    Google Earth Engine; urban flooding; open-access data; flood monitoring; SAR

Authors  Top 
  • Demissie, B., more
  • Vanhuysse, S.
  • Grippa, T.
  • Flasse, C.
  • Wolff, E.

Abstract

    This study investigates the potential of freely available Sentinel-1 imagery coupled with Google Earth Engine (GEE) for mapping and monitoring flooding in Dar es Salaam. Sentinel-1 images (n = 55) available during the rainy season (March–May) since 2016 were used and processed in GEE. For separating water and land surfaces, we used a histogram-based automatic thresholding method. The binarization accuracy was assessed using confusion matrix based on 1064 randomly generated points in GEE. Overall accuracy of 95% (Kappa = 0.90) were achieved. Dar es Salaam has experienced flood inundation per flood event on average over an area of 50 km2 in March 2019 and 2021. Territories located along the Ocean and inland water shores, built and bare ground were subject to flooding compared to other land cover types. Flooding inundations have been difficult to detect in the city center. With the current temporal and spatial resolution of Sentinel-1, flood detection in city centers remains a challenge yet. However, Sentinel-1 images, coupled with GEE cloud computing simplified flood mapping and monitoring in a large urban region and this approach can be applied in other large cities and their surroundings for countries where data gap and lack of processing tools are critical challenges.


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