Machine learning: : modeling the risk of forest fires ignition in the mediterranean region (North-West Morocco)

Detalhes bibliográficos
Autor(a) principal: Assali, Fouad
Data de Publicação: 2019
Outros Autores: Mharzi Alaoui, Hicham, Hajji, Hicham, Lahlou, Mouanis, Aadel, Taoufik, Taberkant, Samir
Tipo de documento: Artigo
Idioma: eng
Título da fonte: Biodiversidade Brasileira
Texto Completo: https://revistaeletronica.icmbio.gov.br/index.php/BioBR/article/view/1111
Resumo: This scientific paper explores the spatial predictability of forest fire ignitions in the mediterranean region (North-west of Morocco). The geographic information system was used to locate 704 forest fires recorded between 2002 and 2018. Using 20 human and biophysical variables, the building of dichotomous prediction model (Fire or No Fire) was developed using 3 classification models namely: the binary logistic regression, the random forest and XG-Boost. Data analysis provide relevant information to understand the human factors, climate, topography and vegetation type, affecting forest fire ignitions processes in the study area. A random sample of observations (60%) was used to build the model and external observations (40%) have been reserved for testing the ability of the model to predict forest fire ignitions. The explanatory variables included in the model, report on the impact of factors related to (1) human action represented by localities with high frequency of fires and accessibility (roads and trails), (2) topoclimatic, including, temperature, relative air humidity and slopes and (3) biological, namely the type of fuel, (pine and cork oak trees, Matorral, …). The 3 types of machine learning models (binary logistic regression, random forest and XG Boost) have shown very interesting results in terms of forest fire predictability by correctly classifying an average of 85% of the sample reserved for the model training and data validation. The forest fire ignitions probability maps produced could operationally improve the alerts processes, the lookout posts positioning and the early intervention against fires by the units in charge of initial attacks.
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spelling Machine learning: : modeling the risk of forest fires ignition in the mediterranean region (North-West Morocco) Forest fireignition probability machine learning logistic regression random forestXG BoostSpatial modelingFlorest fireignition probability machine learninglogisticrandomXG BoostSpatial modelingThis scientific paper explores the spatial predictability of forest fire ignitions in the mediterranean region (North-west of Morocco). The geographic information system was used to locate 704 forest fires recorded between 2002 and 2018. Using 20 human and biophysical variables, the building of dichotomous prediction model (Fire or No Fire) was developed using 3 classification models namely: the binary logistic regression, the random forest and XG-Boost. Data analysis provide relevant information to understand the human factors, climate, topography and vegetation type, affecting forest fire ignitions processes in the study area. A random sample of observations (60%) was used to build the model and external observations (40%) have been reserved for testing the ability of the model to predict forest fire ignitions. The explanatory variables included in the model, report on the impact of factors related to (1) human action represented by localities with high frequency of fires and accessibility (roads and trails), (2) topoclimatic, including, temperature, relative air humidity and slopes and (3) biological, namely the type of fuel, (pine and cork oak trees, Matorral, …). The 3 types of machine learning models (binary logistic regression, random forest and XG Boost) have shown very interesting results in terms of forest fire predictability by correctly classifying an average of 85% of the sample reserved for the model training and data validation. The forest fire ignitions probability maps produced could operationally improve the alerts processes, the lookout posts positioning and the early intervention against fires by the units in charge of initial attacks.Instituto Chico Mendes de Conservação da Biodiversidade (ICMBio)2019-05-15info:eu-repo/semantics/articleinfo:eu-repo/semantics/publishedVersionapplication/pdfhttps://revistaeletronica.icmbio.gov.br/index.php/BioBR/article/view/111110.37002/biodiversidadebrasileira.v9i1.1111Biodiversidade Brasileira ; Vol. 9 No. 1 (2019): Wildfire Conference: Resumos; 184Biodiversidade Brasileira ; Vol. 9 Núm. 1 (2019): Wildfire Conference: Resumos; 184Biodiversidade Brasileira ; v. 9 n. 1 (2019): Wildfire Conference: Resumos; 1842236-288610.37002/biodiversidadebrasileira.v9i1reponame:Biodiversidade Brasileirainstname:Instituto Chico Mendes de Conservação da Biodiversidade (ICMBIO)instacron:ICMBIOenghttps://revistaeletronica.icmbio.gov.br/index.php/BioBR/article/view/1111/832Copyright (c) 2021 Biodiversidade Brasileira - BioBrasilhttps://creativecommons.org/licenses/by-nc-nd/4.0info:eu-repo/semantics/openAccessAssali, FouadMharzi Alaoui, HichamHajji, HichamLahlou, MouanisAadel, TaoufikTaberkant, Samir2024-07-02T15:32:26Zoai:ojs.revistaeletronica.icmbio.gov.br:article/1111Revistahttps://revistaeletronica.icmbio.gov.br/BioBRPUBhttps://revistaeletronica.icmbio.gov.br/BioBR/oaifernanda.oliveto@icmbio.gov.br || katia.ribeiro@icmbio.gov.br2236-28862236-2886opendoar:2024-07-02T15:32:26Biodiversidade Brasileira - Instituto Chico Mendes de Conservação da Biodiversidade (ICMBIO)false
dc.title.none.fl_str_mv Machine learning: : modeling the risk of forest fires ignition in the mediterranean region (North-West Morocco)
title Machine learning: : modeling the risk of forest fires ignition in the mediterranean region (North-West Morocco)
spellingShingle Machine learning: : modeling the risk of forest fires ignition in the mediterranean region (North-West Morocco)
Assali, Fouad
Forest fire
ignition probability
machine learning
logistic regression
random forest
XG Boost
Spatial modeling
Florest fire
ignition probability
machine learning
logistic
random
XG Boost
Spatial modeling
title_short Machine learning: : modeling the risk of forest fires ignition in the mediterranean region (North-West Morocco)
title_full Machine learning: : modeling the risk of forest fires ignition in the mediterranean region (North-West Morocco)
title_fullStr Machine learning: : modeling the risk of forest fires ignition in the mediterranean region (North-West Morocco)
title_full_unstemmed Machine learning: : modeling the risk of forest fires ignition in the mediterranean region (North-West Morocco)
title_sort Machine learning: : modeling the risk of forest fires ignition in the mediterranean region (North-West Morocco)
author Assali, Fouad
author_facet Assali, Fouad
Mharzi Alaoui, Hicham
Hajji, Hicham
Lahlou, Mouanis
Aadel, Taoufik
Taberkant, Samir
author_role author
author2 Mharzi Alaoui, Hicham
Hajji, Hicham
Lahlou, Mouanis
Aadel, Taoufik
Taberkant, Samir
author2_role author
author
author
author
author
dc.contributor.author.fl_str_mv Assali, Fouad
Mharzi Alaoui, Hicham
Hajji, Hicham
Lahlou, Mouanis
Aadel, Taoufik
Taberkant, Samir
dc.subject.por.fl_str_mv Forest fire
ignition probability
machine learning
logistic regression
random forest
XG Boost
Spatial modeling
Florest fire
ignition probability
machine learning
logistic
random
XG Boost
Spatial modeling
topic Forest fire
ignition probability
machine learning
logistic regression
random forest
XG Boost
Spatial modeling
Florest fire
ignition probability
machine learning
logistic
random
XG Boost
Spatial modeling
description This scientific paper explores the spatial predictability of forest fire ignitions in the mediterranean region (North-west of Morocco). The geographic information system was used to locate 704 forest fires recorded between 2002 and 2018. Using 20 human and biophysical variables, the building of dichotomous prediction model (Fire or No Fire) was developed using 3 classification models namely: the binary logistic regression, the random forest and XG-Boost. Data analysis provide relevant information to understand the human factors, climate, topography and vegetation type, affecting forest fire ignitions processes in the study area. A random sample of observations (60%) was used to build the model and external observations (40%) have been reserved for testing the ability of the model to predict forest fire ignitions. The explanatory variables included in the model, report on the impact of factors related to (1) human action represented by localities with high frequency of fires and accessibility (roads and trails), (2) topoclimatic, including, temperature, relative air humidity and slopes and (3) biological, namely the type of fuel, (pine and cork oak trees, Matorral, …). The 3 types of machine learning models (binary logistic regression, random forest and XG Boost) have shown very interesting results in terms of forest fire predictability by correctly classifying an average of 85% of the sample reserved for the model training and data validation. The forest fire ignitions probability maps produced could operationally improve the alerts processes, the lookout posts positioning and the early intervention against fires by the units in charge of initial attacks.
publishDate 2019
dc.date.none.fl_str_mv 2019-05-15
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/index.php/BioBR/article/view/1111
10.37002/biodiversidadebrasileira.v9i1.1111
url https://revistaeletronica.icmbio.gov.br/index.php/BioBR/article/view/1111
identifier_str_mv 10.37002/biodiversidadebrasileira.v9i1.1111
dc.language.iso.fl_str_mv eng
language eng
dc.relation.none.fl_str_mv https://revistaeletronica.icmbio.gov.br/index.php/BioBR/article/view/1111/832
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 ; Vol. 9 No. 1 (2019): Wildfire Conference: Resumos; 184
Biodiversidade Brasileira ; Vol. 9 Núm. 1 (2019): Wildfire Conference: Resumos; 184
Biodiversidade Brasileira ; v. 9 n. 1 (2019): Wildfire Conference: Resumos; 184
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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