2021
DOI: 10.5194/nhess-2021-317
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Rainfall-Induced Landslide Early Warning System based on corrected mesoscale numerical models: an application for the Southern Andes

Abstract: Abstract. Rainfall-Induced Landslide Early Warning Systems (RILEWS) are critical tools for reducing and mitigating economic and social damages related to landslides. Despite this critical need, the Southern Andes does not yet possess an operational-scale system to support decision-makers. We propose RILEWS using a logistic regression system in the Southern Andes. The models were forced by corrected simulations of precipitation and geomorphological features. We evaluated the precipitation using the Weather and … Show more

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“…This situation is exacerbated by human activities, which lead to environmental degradation, unsystematic and unplanned use, and the processing of natural resources [18]. Rainfall data can be used as landslide [19][20][21][22][23] and flood [24,25] early warning tools. Early Warning System provides useful data for making better decisions, such as providing alerts or triggering the necessary protection mechanisms [26].…”
Section: Rainfall Data For Early Warning Systemmentioning
confidence: 99%
“…This situation is exacerbated by human activities, which lead to environmental degradation, unsystematic and unplanned use, and the processing of natural resources [18]. Rainfall data can be used as landslide [19][20][21][22][23] and flood [24,25] early warning tools. Early Warning System provides useful data for making better decisions, such as providing alerts or triggering the necessary protection mechanisms [26].…”
Section: Rainfall Data For Early Warning Systemmentioning
confidence: 99%