Universal Snow Avalanche Modeling Index Based on SAFI–Flow-R Approach in Poorly-Gauged Regions

Author:

Durlević Uroš1ORCID,Valjarević Aleksandar1ORCID,Novković Ivan1ORCID,Vujović Filip2ORCID,Josifov Nemanja1ORCID,Krušić Jelka3ORCID,Komac Blaž4,Djekić Tatjana5ORCID,Singh Sudhir Kumar6ORCID,Jović Goran7,Radojković Milan1,Ivanović Marko8ORCID

Affiliation:

1. Faculty of Geography, University of Belgrade, Studentski Trg 3/3, 11000 Belgrade, Serbia

2. Department of Geography, Faculty of Philosophy, University of Montenegro, Danila Bojovića bb, 81400 Nikšić, Montenegro

3. Faculty of Mining and Geology, University of Belgrade, Đušina 7, 11120 Belgrade, Serbia

4. Research Centre of the Slovenian Academy of Sciences and Arts, Novi trg 2, 1000 Ljubljana, Slovenia

5. Department of Geography, Faculty of Science and Mathematics, University of Niš, Višegradska 33, 18000 Niš, Serbia

6. K. Banerjee Centre of Atmospheric & Ocean Studies, IIDS, Nehru Science Centre, University of Allahabad, Prayagraj 211002, India

7. Faculty of Philosophy, University of East Sarajevo, Vuka Karadžića 30, 71126 Lukavica, Bosnia and Herzegovina

8. Department of Geography, Faculty of Sciences, University of Priština in Kosovska Mitrovica, Lole Ribara 29, 38220 Kosovska Mitrovica, Serbia

Abstract

Most high-mountain regions worldwide are susceptible to snow avalanches during the winter or all year round. In this study, a Universal Snow Avalanche Modeling Index is developed, suitable for determining avalanche hazard in mountain regions. The first step in the research is the collection of data in the field and their processing in geographic information systems and remote sensing. In the period 2023–2024, avalanches were mapped in the field, and later, avalanches as points in geographic information systems (GIS) were overlapped with the dominant natural conditions in the study area. The second step involves determining the main criteria (snow cover, terrain slope, and land use) and evaluating the values to obtain the Snow Avalanche Formation Index (SAFI). Thresholds obtained through field research and the formation of avalanche inventory were used to develop the SAFI index. The index is applied with the aim of identifying locations susceptible to avalanche formation (source areas). The values used for the calculation include Normalized Difference Snow Index (NDSI > 0.6), terrain slope (20–60°) and land use (pastures, meadows). The third step presents the analysis of SAFI locations with meteorological conditions (winter precipitation and winter air temperature). The fourth step is the modeling of the propagation (simulation) of other parts of the snow avalanche in the Flow-R software 2.0. The results show that 282.9 km2 of the study area (Šar Mountains, Serbia) is susceptible to snow avalanches, with the thickness of the potentially triggered layer being 50 cm. With a 5 m thick snowpack, 299.9 km2 would be susceptible. The validation using the ROC-AUC method confirms a very high predictive power (0.94). The SAFI–Flow-R approach offers snow avalanche modeling for which no avalanche inventory is available, representing an advance for all mountain areas where historical data do not exist. The results of the study can be used for land use planning, zoning vulnerable areas, and adopting adequate environmental protection measures.

Funder

Ministry of Science, Technological Development and Innovation of the Republic of Serbia

Publisher

MDPI AG

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