Immitzer, Markus

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orcid::0000-0001-6758-1207
  • Immitzer, Markus (1)
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Country-Level Modeling of Forest Fires in Austria and the Czech Republic: Insights from Open-Source Data

Milanović, Slobodan; Trailović, Zoran; Milanović, Slađan D.; Hochbichler, Eduard; Kirisits, Thomas; Immitzer, Markus; Cermak, Petr; Pokorny, Radek; Jankovsky, Libor; Jaafari, Abolfazl

(2023)

TY  - JOUR
AU  - Milanović, Slobodan
AU  - Trailović, Zoran
AU  - Milanović, Slađan D.
AU  - Hochbichler, Eduard
AU  - Kirisits, Thomas
AU  - Immitzer, Markus
AU  - Cermak, Petr
AU  - Pokorny, Radek
AU  - Jankovsky, Libor
AU  - Jaafari, Abolfazl
PY  - 2023
UR  - https://omorika.sfb.bg.ac.rs/handle/123456789/1434
AB  - Forest fires are becoming a serious concern in Central European countries such as Austria (AT) and the Czech Republic (CZ). Mapping fire ignition probabilities across countries can be a useful tool for fire risk mitigation. This study was conducted to: (i) evaluate the contribution of the variables obtained from open-source datasets (i.e., MODIS, OpenStreetMap, and WorldClim) for modeling fire ignition probability at the country level; and (ii) investigate how well the Random Forest (RF) method performs from one country to another. The importance of the predictors was evaluated using the Gini impurity method, and RF was evaluated using the ROC-AUC and confusion matrix. The most important variables were the topographic wetness index in the AT model and slope in the CZ model. The AUC values in the validation sets were 0.848 (AT model) and 0.717 (CZ model). When the respective models were applied to the entire dataset, they achieved 82.5% (AT model) and 66.4% (CZ model) accuracy. Cross-comparison revealed that the CZ model may be successfully applied to the AT dataset (AUC = 0.808, Acc = 82.5%), while the AT model showed poor explanatory power when applied to the CZ dataset (AUC = 0.582, Acc = 13.6%). Our study provides insights into the effect of the accuracy and completeness of open-source data on the reliability of national-level forest fire probability assessment.
T2  - Sustainability
T1  - Country-Level Modeling of Forest Fires in Austria and the Czech Republic: Insights from Open-Source Data
IS  - 6
VL  - 15
DO  - 10.3390/su15065269
UR  - conv_1691
ER  - 
@article{
author = "Milanović, Slobodan and Trailović, Zoran and Milanović, Slađan D. and Hochbichler, Eduard and Kirisits, Thomas and Immitzer, Markus and Cermak, Petr and Pokorny, Radek and Jankovsky, Libor and Jaafari, Abolfazl",
year = "2023",
abstract = "Forest fires are becoming a serious concern in Central European countries such as Austria (AT) and the Czech Republic (CZ). Mapping fire ignition probabilities across countries can be a useful tool for fire risk mitigation. This study was conducted to: (i) evaluate the contribution of the variables obtained from open-source datasets (i.e., MODIS, OpenStreetMap, and WorldClim) for modeling fire ignition probability at the country level; and (ii) investigate how well the Random Forest (RF) method performs from one country to another. The importance of the predictors was evaluated using the Gini impurity method, and RF was evaluated using the ROC-AUC and confusion matrix. The most important variables were the topographic wetness index in the AT model and slope in the CZ model. The AUC values in the validation sets were 0.848 (AT model) and 0.717 (CZ model). When the respective models were applied to the entire dataset, they achieved 82.5% (AT model) and 66.4% (CZ model) accuracy. Cross-comparison revealed that the CZ model may be successfully applied to the AT dataset (AUC = 0.808, Acc = 82.5%), while the AT model showed poor explanatory power when applied to the CZ dataset (AUC = 0.582, Acc = 13.6%). Our study provides insights into the effect of the accuracy and completeness of open-source data on the reliability of national-level forest fire probability assessment.",
journal = "Sustainability",
title = "Country-Level Modeling of Forest Fires in Austria and the Czech Republic: Insights from Open-Source Data",
number = "6",
volume = "15",
doi = "10.3390/su15065269",
url = "conv_1691"
}
Milanović, S., Trailović, Z., Milanović, S. D., Hochbichler, E., Kirisits, T., Immitzer, M., Cermak, P., Pokorny, R., Jankovsky, L.,& Jaafari, A.. (2023). Country-Level Modeling of Forest Fires in Austria and the Czech Republic: Insights from Open-Source Data. in Sustainability, 15(6).
https://doi.org/10.3390/su15065269
conv_1691
Milanović S, Trailović Z, Milanović SD, Hochbichler E, Kirisits T, Immitzer M, Cermak P, Pokorny R, Jankovsky L, Jaafari A. Country-Level Modeling of Forest Fires in Austria and the Czech Republic: Insights from Open-Source Data. in Sustainability. 2023;15(6).
doi:10.3390/su15065269
conv_1691 .
Milanović, Slobodan, Trailović, Zoran, Milanović, Slađan D., Hochbichler, Eduard, Kirisits, Thomas, Immitzer, Markus, Cermak, Petr, Pokorny, Radek, Jankovsky, Libor, Jaafari, Abolfazl, "Country-Level Modeling of Forest Fires in Austria and the Czech Republic: Insights from Open-Source Data" in Sustainability, 15, no. 6 (2023),
https://doi.org/10.3390/su15065269 .,
conv_1691 .
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