Assessing and mapping multi-hazard risk susceptibility using a machine learning technique

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作者
Hamid Reza Pourghasemi
Narges Kariminejad
Mahdis Amiri
Mohsen Edalat
Mehrdad Zarafshar
Thomas Blaschke
Artemio Cerda
机构
[1] Department of Natural Resources and Environmental Engineering,
[2] College of Agriculture,undefined
[3] Shiraz University,undefined
[4] Department of Watershed and Arid Zone Management,undefined
[5] Gorgan University of Agricultural Sciences and Natural Resources,undefined
[6] Crop Production and Plant Breeding Department,undefined
[7] School of Agriculture,undefined
[8] Shiraz University,undefined
[9] Natural Resources Department,undefined
[10] Fars Agricultural and Natural Resources Research and Education Center,undefined
[11] AREEO,undefined
[12] Shiraz,undefined
[13] Department of Geoinformatics–Z_GIS,undefined
[14] University of Salzburg,undefined
[15] Soil Erosion and Degradation Research Group,undefined
[16] Department de Geografia,undefined
[17] Universitat de València,undefined
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摘要
The aim of the current study was to suggest a multi-hazard probability assessment in Fars Province, Shiraz City, and its four strategic watersheds. At first, we construct maps depicting the most effective factors on floods (12 factors), forest fires (10 factors), and landslides (10 factors), and used the Boruta algorithm to prioritize the impact of each respective factor on the occurrence of each hazard. Subsequently, flood, landslides, and forest fire susceptibility maps prepared using a Random Forest (RF) model in the R statistical software. Results indicate that 42.83% of the study area are not susceptible to any hazards, while 2.67% of the area is at risk of all three hazards. The results of the multi-hazard map in Shiraz City indicate that 25% of Shiraz city is very susceptible to flooding, while 16% is very susceptible to landslide occurrences. For four strategic watersheds, it is notable that in the Dorodzan Watershed, landslides and floods are the most important hazards; whereas, flood occurrences cover the largest area of the Maharlou Watershed. In contrast, the Tashk-Bakhtegan Watershed is so sensible to floods and landslides, respectively. Finally, in the Ghareaghaj Watershed, forest fire ranks as the strongest hazard, followed by floods. The validation results indicate an AUC of 0.834, 0.939, and 0.943 for the flood, landslide, and forest fire susceptibility maps, respectively. Also, other accuracy measures including, specificity, sensitivity, TSS, CCI, and Gini coefficient confirmed results of the AUC values. These results allow us to forecast the spatial behavior of such multi-hazard events, and researchers and stakeholders alike can apply them to evaluate hazards under various mitigation scenarios.
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