Analysis of human exposure to landslides with a GIS multiscale approach
Autor: | Modugno S., Johnson S. C. M., Borrelli P., Alam E., Bezak N., Balzter H. |
---|---|
Přispěvatelé: | Modugno, S., Johnson, S. C. M., Borrelli, P., Alam, E., Bezak, N., Balzter, H. |
Jazyk: | angličtina |
Rok vydání: | 2022 |
Předmět: |
Atmospheric Science
plazovi logistic regression sprožitveni dejavniki landslide trigger factors GIS model zmanjševanje tveganja GIS disaster risk reduction globalna karta udc:502/504:55 Earth and Planetary Sciences (miscellaneous) landslide probability regresija Landslide trigger factor global map Water Science and Technology |
Zdroj: | Natural hazards, vol. 10. jan., 2022. |
ISSN: | 0921-030X |
Popis: | Decision-making plays a key role in reducing landslide risk and preventing natural disasters. Land management, recovery of degraded lands, urban planning, and environmental protection in general are fundamental for mitigating landslide hazard and risk. Here, we present a GIS-based multi-scale approach to highlight where and when a country is affected by a high probability of landslide occurrence. In the first step, a landslide human exposure equation is developed considering the landslide susceptibility triggered by rain as hazard, and the population density as exposed factor. The output, from this overview analysis, is a global GIS layer expressing the number of potentially affected people by month, where the monthly rain is used to weight the landslide hazard. As following step, Logistic Regression (LR) analysis was implemented at a national and local level. The Receiver Operating Characteristic indicator is used to understand the goodness of a LR model. The LR models are defined by a dependent variable, presence–absence of landslide points, versus a set of independent environmental variables. The results demonstrate the relevance of a multi-scale approach, at national level the biophysical variables are able to detect landslide hotspot areas, while at sub-regional level geomorphological aspects, like land cover, topographic wetness, and local climatic condition have greater explanatory power. |
Databáze: | OpenAIRE |
Externí odkaz: |