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Forest Fire Probability Mapping in Eastern Serbia: Logistic Regression versus Random Forest Method

Thumbnail
2021
1074.pdf (4.813Mb)
Authors
Milanović, Slobodan
Marković, Nenad
Pamucar, Dragan
Gigović, Ljubomir
Kostić, Pavle
Milanović, Slađan
Article (Published version)
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Abstract
Forest fire risk has increased globally during the previous decades. The Mediterranean region is traditionally the most at risk in Europe, but continental countries like Serbia have experienced significant economic and ecological losses due to forest fires. To prevent damage to forests and infrastructure, alongside other societal losses, it is necessary to create an effective protection system against fire, which minimizes the harmful effects. Forest fire probability mapping, as one of the basic tools in risk management, allows the allocation of resources for fire suppression, within a fire season, from zones with a lower risk to those under higher threat. Logistic regression (LR) has been used as a standard procedure in forest fire probability mapping, but in the last decade, machine learning methods such as fandom forest (RF) have become more frequent. The main goals in this study were to (i) determine the main explanatory variables for forest fire occurrence for both models, LR and ...RF, and (ii) map the probability of forest fire occurrence in Eastern Serbia based on LR and RF. The most important variable was drought code, followed by different anthropogenic features depending on the type of the model. The RF models demonstrated better overall predictive ability than LR models. The map produced may increase firefighting efficiency due to the early detection of forest fire and enable resources to be allocated in the eastern part of Serbia, which covers more than one-third of the country's area.

Keywords:
occurrence of forest fire / machine learning / variable importance / prediction accuracy
Source:
Forests, 2021, 12, 1, 5-
Publisher:
  • MDPI
Funding / projects:
  • Ministry of Agriculture, Forestry and Water Management of the Republic of Serbia-Forest Directorate [401-00-1713/2019-10]
  • Ministry of Education, Science and Technological Development, Republic of Serbia, Grant no. 200015 (University of Belgrade, Institute for Medical Research) (RS-200015)

DOI: 10.3390/f12010005

ISSN: 1999-4907

WoS: 000610210900001

Scopus: 2-s2.0-85099476651
[ Google Scholar ]
36
11
URI
http://rimi.imi.bg.ac.rs/handle/123456789/1077
Collections
  • Radovi istraživača / Researchers' publications
Institution/Community
Institut za medicinska istraživanja
TY  - JOUR
AU  - Milanović, Slobodan
AU  - Marković, Nenad
AU  - Pamucar, Dragan
AU  - Gigović, Ljubomir
AU  - Kostić, Pavle
AU  - Milanović, Slađan
PY  - 2021
UR  - http://rimi.imi.bg.ac.rs/handle/123456789/1077
AB  - Forest fire risk has increased globally during the previous decades. The Mediterranean region is traditionally the most at risk in Europe, but continental countries like Serbia have experienced significant economic and ecological losses due to forest fires. To prevent damage to forests and infrastructure, alongside other societal losses, it is necessary to create an effective protection system against fire, which minimizes the harmful effects. Forest fire probability mapping, as one of the basic tools in risk management, allows the allocation of resources for fire suppression, within a fire season, from zones with a lower risk to those under higher threat. Logistic regression (LR) has been used as a standard procedure in forest fire probability mapping, but in the last decade, machine learning methods such as fandom forest (RF) have become more frequent. The main goals in this study were to (i) determine the main explanatory variables for forest fire occurrence for both models, LR and RF, and (ii) map the probability of forest fire occurrence in Eastern Serbia based on LR and RF. The most important variable was drought code, followed by different anthropogenic features depending on the type of the model. The RF models demonstrated better overall predictive ability than LR models. The map produced may increase firefighting efficiency due to the early detection of forest fire and enable resources to be allocated in the eastern part of Serbia, which covers more than one-third of the country's area.
PB  - MDPI
T2  - Forests
T1  - Forest Fire Probability Mapping in Eastern Serbia: Logistic Regression versus Random Forest Method
IS  - 1
SP  - 5
VL  - 12
DO  - 10.3390/f12010005
UR  - conv_4961
ER  - 
@article{
author = "Milanović, Slobodan and Marković, Nenad and Pamucar, Dragan and Gigović, Ljubomir and Kostić, Pavle and Milanović, Slađan",
year = "2021",
abstract = "Forest fire risk has increased globally during the previous decades. The Mediterranean region is traditionally the most at risk in Europe, but continental countries like Serbia have experienced significant economic and ecological losses due to forest fires. To prevent damage to forests and infrastructure, alongside other societal losses, it is necessary to create an effective protection system against fire, which minimizes the harmful effects. Forest fire probability mapping, as one of the basic tools in risk management, allows the allocation of resources for fire suppression, within a fire season, from zones with a lower risk to those under higher threat. Logistic regression (LR) has been used as a standard procedure in forest fire probability mapping, but in the last decade, machine learning methods such as fandom forest (RF) have become more frequent. The main goals in this study were to (i) determine the main explanatory variables for forest fire occurrence for both models, LR and RF, and (ii) map the probability of forest fire occurrence in Eastern Serbia based on LR and RF. The most important variable was drought code, followed by different anthropogenic features depending on the type of the model. The RF models demonstrated better overall predictive ability than LR models. The map produced may increase firefighting efficiency due to the early detection of forest fire and enable resources to be allocated in the eastern part of Serbia, which covers more than one-third of the country's area.",
publisher = "MDPI",
journal = "Forests",
title = "Forest Fire Probability Mapping in Eastern Serbia: Logistic Regression versus Random Forest Method",
number = "1",
pages = "5",
volume = "12",
doi = "10.3390/f12010005",
url = "conv_4961"
}
Milanović, S., Marković, N., Pamucar, D., Gigović, L., Kostić, P.,& Milanović, S.. (2021). Forest Fire Probability Mapping in Eastern Serbia: Logistic Regression versus Random Forest Method. in Forests
MDPI., 12(1), 5.
https://doi.org/10.3390/f12010005
conv_4961
Milanović S, Marković N, Pamucar D, Gigović L, Kostić P, Milanović S. Forest Fire Probability Mapping in Eastern Serbia: Logistic Regression versus Random Forest Method. in Forests. 2021;12(1):5.
doi:10.3390/f12010005
conv_4961 .
Milanović, Slobodan, Marković, Nenad, Pamucar, Dragan, Gigović, Ljubomir, Kostić, Pavle, Milanović, Slađan, "Forest Fire Probability Mapping in Eastern Serbia: Logistic Regression versus Random Forest Method" in Forests, 12, no. 1 (2021):5,
https://doi.org/10.3390/f12010005 .,
conv_4961 .

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