Machine Learning Approach for Predicting Seasonal Risk of Forest Fires in Morocco

Detalhes bibliográficos
Autor(a) principal: Mharzi Alaoui, Hicham
Data de Publicação: 2019
Outros Autores: Assali, Fouad, Hajji, Hicham, Lahssini, Said, Aadel, Taoufik, Moukrim, Said
Tipo de documento: Artigo
Idioma: eng
Título da fonte: Biodiversidade Brasileira
Texto Completo: https://revistaeletronica.icmbio.gov.br/BioBR/article/view/1116
Resumo: Predicting forest fire risks constitutes a significant component of forest fire management and combatting strategies. It plays a major role in resource allocation, mitigation and recovery efforts. The purpose of this study is to develop a predictive model of seasonal forest fire risk using machine learning approach. Used data consists on 2130 forest fire events that occurred between 1997 and 2011 and their locations, the biophysical characteristics of such locations are represented by 39 variables derived from a digital elevation model, meteorological variables (including precipitation, wind, evaportranspiration, …), and vegetation characteristics derived from 288 satellite images (using the normalized difference vegetation index of MODIS and Landsat images). Random forest algorithm was used to link between theses predictors and seasonal forest fire risk. The trained model performed a good predictive ability (83% of the accuracy, p-value=0.013). It showed that only hevernal precipitations have a strong influence on fire occurrence and seasonal severity in the fire season. Such fact could be explained by the contribution of the rainfall to primary build-up and for fuel dryness. Then, according to the developed model, it become easier to predict seasonal risk knowing the hivernal precipitation and then to best plan for rational uses of fires combatting means.
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spelling Machine Learning Approach for Predicting Seasonal Risk of Forest Fires in Morocco Machine learning approach for predicting seasonal risk of forest fires in Morocco Machine Learning Approach for Predicting Seasonal Risk of Forest Fires in Morocco Forest firemachine learning predictive modelrandom forestseasonal riskPredicting forest fire risks constitutes a significant component of forest fire management and combatting strategies. It plays a major role in resource allocation, mitigation and recovery efforts. The purpose of this study is to develop a predictive model of seasonal forest fire risk using machine learning approach. Used data consists on 2130 forest fire events that occurred between 1997 and 2011 and their locations, the biophysical characteristics of such locations are represented by 39 variables derived from a digital elevation model, meteorological variables (including precipitation, wind, evaportranspiration, …), and vegetation characteristics derived from 288 satellite images (using the normalized difference vegetation index of MODIS and Landsat images). Random forest algorithm was used to link between theses predictors and seasonal forest fire risk. The trained model performed a good predictive ability (83% of the accuracy, p-value=0.013). It showed that only hevernal precipitations have a strong influence on fire occurrence and seasonal severity in the fire season. Such fact could be explained by the contribution of the rainfall to primary build-up and for fuel dryness. Then, according to the developed model, it become easier to predict seasonal risk knowing the hivernal precipitation and then to best plan for rational uses of fires combatting means.Predicting forest fire risks constitutes a significant component of forest fire management and combatting strategies. It plays a major role in resource allocation, mitigation and recovery efforts. The purpose of this study is to develop a predictive model of seasonal forest fire risk using machine learning approach. Used data consists on 2130 forest fire events that occurred between 1997 and 2011 and their locations, the biophysical characteristics of such locations are represented by 39 variables derived from a digital elevation model, meteorological variables (including precipitation, wind, evaportranspiration, …), and vegetation characteristics derived from 288 satellite images (using the normalized difference vegetation index of MODIS and Landsat images). Random forest algorithm was used to link between theses predictors and seasonal forest fire risk. The trained model performed a good predictive ability (83% of the accuracy, p-value=0.013). It showed that only hevernal precipitations have a strong influence on fire occurrence and seasonal severity in the fire season. Such fact could be explained by the contribution of the rainfall to primary build-up and for fuel dryness. Then, according to the developed model, it become easier to predict seasonal risk knowing the hivernal precipitation and then to best plan for rational uses of fires combatting means.Predicting forest fire risks constitutes a significant component of forest fire management and combatting strategies. It plays a major role in resource allocation, mitigation and recovery efforts. The purpose of this study is to develop a predictive model of seasonal forest fire risk using machine learning approach. Used data consists on 2130 forest fire events that occurred between 1997 and 2011 and their locations, the biophysical characteristics of such locations are represented by 39 variables derived from a digital elevation model, meteorological variables (including precipitation, wind, evaportranspiration, …), and vegetation characteristics derived from 288 satellite images (using the normalized difference vegetation index of MODIS and Landsat images). Random forest algorithm was used to link between theses predictors and seasonal forest fire risk. The trained model performed a good predictive ability (83% of the accuracy, p-value=0.013). It showed that only hevernal precipitations have a strong influence on fire occurrence and seasonal severity in the fire season. Such fact could be explained by the contribution of the rainfall to primary build-up and for fuel dryness. Then, according to the developed model, it become easier to predict seasonal risk knowing the hivernal precipitation and then to best plan for rational uses of fires combatting means.Instituto Chico Mendes de Conservação da Biodiversidade (ICMBio)2019-11-15info:eu-repo/semantics/articleinfo:eu-repo/semantics/publishedVersionapplication/pdfhttps://revistaeletronica.icmbio.gov.br/BioBR/article/view/111610.37002/biodiversidadebrasileira.v9i1.1116Biodiversidade Brasileira ; v. 9 n. 1 (2019): Wildfire Conference: Resumos; 187Biodiversidade Brasileira ; Vol. 9 No. 1 (2019): Wildfire Conference: Resumos; 187Biodiversidade Brasileira ; Vol. 9 Núm. 1 (2019): Wildfire Conference: Resumos; 1872236-288610.37002/biodiversidadebrasileira.v9i1reponame:Biodiversidade Brasileirainstname:Instituto Chico Mendes de Conservação da Biodiversidade (ICMBIO)instacron:ICMBIOenghttps://revistaeletronica.icmbio.gov.br/BioBR/article/view/1116/835Copyright (c) 2021 Biodiversidade Brasileira - BioBrasilhttps://creativecommons.org/licenses/by-nc-nd/4.0info:eu-repo/semantics/openAccessMharzi Alaoui, HichamAssali, FouadHajji, HichamLahssini, SaidAadel, TaoufikMoukrim, Said2023-05-09T12:56:02Zoai:revistaeletronica.icmbio.gov.br:article/1116Revistahttps://revistaeletronica.icmbio.gov.br/BioBRPUBhttps://revistaeletronica.icmbio.gov.br/BioBR/oaifernanda.oliveto@icmbio.gov.br || katia.ribeiro@icmbio.gov.br2236-28862236-2886opendoar:2023-05-09T12:56:02Biodiversidade Brasileira - Instituto Chico Mendes de Conservação da Biodiversidade (ICMBIO)false
dc.title.none.fl_str_mv Machine Learning Approach for Predicting Seasonal Risk of Forest Fires in Morocco
Machine learning approach for predicting seasonal risk of forest fires in Morocco
Machine Learning Approach for Predicting Seasonal Risk of Forest Fires in Morocco
title Machine Learning Approach for Predicting Seasonal Risk of Forest Fires in Morocco
spellingShingle Machine Learning Approach for Predicting Seasonal Risk of Forest Fires in Morocco
Mharzi Alaoui, Hicham
Forest fire
machine learning
predictive model
random forest
seasonal risk
title_short Machine Learning Approach for Predicting Seasonal Risk of Forest Fires in Morocco
title_full Machine Learning Approach for Predicting Seasonal Risk of Forest Fires in Morocco
title_fullStr Machine Learning Approach for Predicting Seasonal Risk of Forest Fires in Morocco
title_full_unstemmed Machine Learning Approach for Predicting Seasonal Risk of Forest Fires in Morocco
title_sort Machine Learning Approach for Predicting Seasonal Risk of Forest Fires in Morocco
author Mharzi Alaoui, Hicham
author_facet Mharzi Alaoui, Hicham
Assali, Fouad
Hajji, Hicham
Lahssini, Said
Aadel, Taoufik
Moukrim, Said
author_role author
author2 Assali, Fouad
Hajji, Hicham
Lahssini, Said
Aadel, Taoufik
Moukrim, Said
author2_role author
author
author
author
author
dc.contributor.author.fl_str_mv Mharzi Alaoui, Hicham
Assali, Fouad
Hajji, Hicham
Lahssini, Said
Aadel, Taoufik
Moukrim, Said
dc.subject.por.fl_str_mv Forest fire
machine learning
predictive model
random forest
seasonal risk
topic Forest fire
machine learning
predictive model
random forest
seasonal risk
description Predicting forest fire risks constitutes a significant component of forest fire management and combatting strategies. It plays a major role in resource allocation, mitigation and recovery efforts. The purpose of this study is to develop a predictive model of seasonal forest fire risk using machine learning approach. Used data consists on 2130 forest fire events that occurred between 1997 and 2011 and their locations, the biophysical characteristics of such locations are represented by 39 variables derived from a digital elevation model, meteorological variables (including precipitation, wind, evaportranspiration, …), and vegetation characteristics derived from 288 satellite images (using the normalized difference vegetation index of MODIS and Landsat images). Random forest algorithm was used to link between theses predictors and seasonal forest fire risk. The trained model performed a good predictive ability (83% of the accuracy, p-value=0.013). It showed that only hevernal precipitations have a strong influence on fire occurrence and seasonal severity in the fire season. Such fact could be explained by the contribution of the rainfall to primary build-up and for fuel dryness. Then, according to the developed model, it become easier to predict seasonal risk knowing the hivernal precipitation and then to best plan for rational uses of fires combatting means.
publishDate 2019
dc.date.none.fl_str_mv 2019-11-15
dc.type.driver.fl_str_mv info:eu-repo/semantics/article
info:eu-repo/semantics/publishedVersion
format article
status_str publishedVersion
dc.identifier.uri.fl_str_mv https://revistaeletronica.icmbio.gov.br/BioBR/article/view/1116
10.37002/biodiversidadebrasileira.v9i1.1116
url https://revistaeletronica.icmbio.gov.br/BioBR/article/view/1116
identifier_str_mv 10.37002/biodiversidadebrasileira.v9i1.1116
dc.language.iso.fl_str_mv eng
language eng
dc.relation.none.fl_str_mv https://revistaeletronica.icmbio.gov.br/BioBR/article/view/1116/835
dc.rights.driver.fl_str_mv Copyright (c) 2021 Biodiversidade Brasileira - BioBrasil
https://creativecommons.org/licenses/by-nc-nd/4.0
info:eu-repo/semantics/openAccess
rights_invalid_str_mv Copyright (c) 2021 Biodiversidade Brasileira - BioBrasil
https://creativecommons.org/licenses/by-nc-nd/4.0
eu_rights_str_mv openAccess
dc.format.none.fl_str_mv application/pdf
dc.publisher.none.fl_str_mv Instituto Chico Mendes de Conservação da Biodiversidade (ICMBio)
publisher.none.fl_str_mv Instituto Chico Mendes de Conservação da Biodiversidade (ICMBio)
dc.source.none.fl_str_mv Biodiversidade Brasileira ; v. 9 n. 1 (2019): Wildfire Conference: Resumos; 187
Biodiversidade Brasileira ; Vol. 9 No. 1 (2019): Wildfire Conference: Resumos; 187
Biodiversidade Brasileira ; Vol. 9 Núm. 1 (2019): Wildfire Conference: Resumos; 187
2236-2886
10.37002/biodiversidadebrasileira.v9i1
reponame:Biodiversidade Brasileira
instname:Instituto Chico Mendes de Conservação da Biodiversidade (ICMBIO)
instacron:ICMBIO
instname_str Instituto Chico Mendes de Conservação da Biodiversidade (ICMBIO)
instacron_str ICMBIO
institution ICMBIO
reponame_str Biodiversidade Brasileira
collection Biodiversidade Brasileira
repository.name.fl_str_mv Biodiversidade Brasileira - Instituto Chico Mendes de Conservação da Biodiversidade (ICMBIO)
repository.mail.fl_str_mv fernanda.oliveto@icmbio.gov.br || katia.ribeiro@icmbio.gov.br
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