GIS-Based Forest Fire Susceptibility Zonation with IoT Sensor Network Support, Case Study—Nature Park Golija, Serbia
Autor: | Djordje B. Lukic, Ivan Samardzic, Marija Tadic, Marko Milosevic, Snezana Djurdjic, Ivan Novković, Slavoljub Dragicevic, Tijana Lezaic, Goran Marković |
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Rok vydání: | 2021 |
Předmět: |
010504 meteorology & atmospheric sciences
Fire prevention Endangered species Climate change TP1-1185 random forest (RF) 02 engineering and technology Forests 01 natural sciences Biochemistry Fires Article Wildfires Analytical Chemistry Environmental data forest fire susceptibility remote sensing 0202 electrical engineering electronic engineering information engineering Humans technique for order of preference by similarity to ideal solution (TOPSIS) Electrical and Electronic Engineering Natural disaster Instrumentation Risk management 0105 earth and related environmental sciences IoT sensor networks Warning system business.industry Chemical technology Environmental resource management 15. Life on land GIS Atomic and Molecular Physics and Optics High forest Geography 13. Climate action Geographic Information Systems 020201 artificial intelligence & image processing fire outbreak occurrence business Serbia fuzzy analytic hierarchy process (fuzzy AHP) |
Zdroj: | Sensors (Basel, Switzerland) Sensors Volume 21 Issue 19 Sensors, Vol 21, Iss 6520, p 6520 (2021) |
ISSN: | 1424-8220 |
Popis: | The territory of the Republic of Serbia is vulnerable to various natural disasters, among which forest fires stand out. In relation with climate changes, the number of forest fires in Serbia has been increasing from year to year. Protected natural areas are especially endangered by wildfires. For Nature Park Golija, as the second largest in Serbia, with an area of 75,183 ha, and with MaB Reserve Golija-Studenica on part of its territory (53,804 ha), more attention should be paid in terms of forest fire mitigation. GIS and multi-criteria decision analysis are indispensable when it comes to spatial analysis for the purpose of natural disaster risk management. Index-based and fuzzy AHP methods were used, together with TOPSIS method for forest fire susceptibility zonation. Very high and high forest fire susceptibility zone were recorded on 26.85% (Forest Fire Susceptibility Index) and 25.75% (fuzzy AHP). The additional support for forest fire prevention is realized through an additional Internet of Thing (IoT)-based sensor network that enables the continuous collection of local meteorological and environmental data, which enables low-cost and reliable real-time fire risk assessment and detection and the improved long-term and short-term forest fire susceptibility assessment. Obtained results can be applied for adequate forest fire risk management, improvement of the monitoring, and early warning systems in the Republic of Serbia, but are also important for relevant authorities at national, regional, and local level, which will be able to coordinate and intervene in a case of emergency events. |
Databáze: | OpenAIRE |
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