2021
DOI: 10.3390/w13213115
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Flood Risk Mapping by Remote Sensing Data and Random Forest Technique

Abstract: Detecting effective parameters in flood occurrence is one of the most important issues that has drawn more attention in recent years. Remote Sensing (RS) and Geographical Information System (GIS) are two efficient ways to spatially predict Flood Risk Mapping (FRM). In this study, a web-based platform called the Google Earth Engine (GEE) (Google Company, Mountain View, CA, USA) was used to obtain flood risk indices for the Galikesh River basin, Northern Iran. With the aid of Landsat 8 satellite imagery and the … Show more

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Cited by 84 publications
(50 citation statements)
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“…The accuracy of the flood risk map is affected by the accuracy and quality of the data used. The more accurate the map produced, the higher the spatial resolution of the data [82]. RS technologies select the best spectral bands for detecting changes in the natural environment [83].…”
Section: Satellite Datamentioning
confidence: 99%
“…The accuracy of the flood risk map is affected by the accuracy and quality of the data used. The more accurate the map produced, the higher the spatial resolution of the data [82]. RS technologies select the best spectral bands for detecting changes in the natural environment [83].…”
Section: Satellite Datamentioning
confidence: 99%
“…In Equation ( 2) refers only to the flooding areas which are detected by satellite. Therefore coastal lakes and other water bodies, as well as, vegetate and dense urbanized areas were removed ( [69][70][71]). After model calibration, a number of simulations were carried out, forced by the same rainfall of the event 25 November 2018, with different values of the pumping rates in Mazzocchio station and of the sea level rise, with the goal to identify the most vulnerable areas to flooding and the type and location of the flood defence constructions, as levees, dikes or flood expansion areas.…”
Section: Hydraulic Simulationsmentioning
confidence: 99%
“…In addition, the methods of GIS help to create a spatial database, which is considered as the cornerstone for ood susceptibility analysis and delineating of ood-prone zones (Zhao et al, 2019). Various methods have been developed to map ood-susceptible areas, including the "analytical hierarchy process (AHP) (Seejata et al, 2018;Das and Gupta, 2021); frequency ratio (FR) and index of entropy (IoE) (Feizizadeh et al, 2021), logistic regression (LR)" (Band et al 2020;Malik et al 2020), the extreme gradient boosting (EGB) (Naghibi et al, 2020;Mirzaei et al, 2021), and random forest (RF) (Farhadi and Najafzadeh, 2021).…”
Section: Introductionmentioning
confidence: 99%