Household evacuation preparation time during a cyclone: Random Forest algorithm and variable degree analysis

Household evacuation preparation time is important to ensure safe and successful evacuations and is essential for the estimation of the total evacuation time during a disaster. Previous research has shown that machine learning can provide a higher prediction accuracy, especially using the random for...

Descripción completa

Guardado en:
Detalles Bibliográficos
Autores principales: Md Atikur Rahman, Akihiko Hokugo, Nobuhito Ohtsu
Formato: article
Lenguaje:EN
Publicado: Elsevier 2021
Materias:
Acceso en línea:https://doaj.org/article/59f31ccd9f284553a1a565e91c977560
Etiquetas: Agregar Etiqueta
Sin Etiquetas, Sea el primero en etiquetar este registro!
id oai:doaj.org-article:59f31ccd9f284553a1a565e91c977560
record_format dspace
spelling oai:doaj.org-article:59f31ccd9f284553a1a565e91c9775602021-12-04T04:35:45ZHousehold evacuation preparation time during a cyclone: Random Forest algorithm and variable degree analysis2590-061710.1016/j.pdisas.2021.100209https://doaj.org/article/59f31ccd9f284553a1a565e91c9775602021-12-01T00:00:00Zhttp://www.sciencedirect.com/science/article/pii/S2590061721000697https://doaj.org/toc/2590-0617Household evacuation preparation time is important to ensure safe and successful evacuations and is essential for the estimation of the total evacuation time during a disaster. Previous research has shown that machine learning can provide a higher prediction accuracy, especially using the random forest model. However, no studies have investigated predictions of household evacuation preparation time considering the safe evacuation of coastal communities during cyclone disasters. This study proposes a methodology to predict household evacuation preparation time following demographic and behavioral input variables based on a random forest algorithm focusing on cyclones. In addition, this research analyzes the variable importance and partial dependence plot to identify the key influential factors that affect household evacuation preparation time. A case study was conducted in Gabura Union, Shaymnagar Upzila in Bangladesh regarding cyclone Bulbul in 2019 to gather demographic and behavioral data for a preparation time simulation. The prediction results showed efficient assessment of household evacuation preparation time prediction, meriting application for cases of future disasters. Our results show that the most important factors that impact household evacuation preparation time are evacuation companions and age, followed by shelter distance, income, and shelter type. The results of the prediction model can assist emergency response and evacuation planners and national disaster management authorities in developing and improving effective evacuation plans that take household evacuation preparation time into consideration for future disasters.Md Atikur RahmanAkihiko HokugoNobuhito OhtsuElsevierarticleHousehold evacuation preparation timePrediction of preparation timeRandom ForestImportance of variablePartial dependence plot (PDP)Environmental sciencesGE1-350Social sciences (General)H1-99ENProgress in Disaster Science, Vol 12, Iss , Pp 100209- (2021)
institution DOAJ
collection DOAJ
language EN
topic Household evacuation preparation time
Prediction of preparation time
Random Forest
Importance of variable
Partial dependence plot (PDP)
Environmental sciences
GE1-350
Social sciences (General)
H1-99
spellingShingle Household evacuation preparation time
Prediction of preparation time
Random Forest
Importance of variable
Partial dependence plot (PDP)
Environmental sciences
GE1-350
Social sciences (General)
H1-99
Md Atikur Rahman
Akihiko Hokugo
Nobuhito Ohtsu
Household evacuation preparation time during a cyclone: Random Forest algorithm and variable degree analysis
description Household evacuation preparation time is important to ensure safe and successful evacuations and is essential for the estimation of the total evacuation time during a disaster. Previous research has shown that machine learning can provide a higher prediction accuracy, especially using the random forest model. However, no studies have investigated predictions of household evacuation preparation time considering the safe evacuation of coastal communities during cyclone disasters. This study proposes a methodology to predict household evacuation preparation time following demographic and behavioral input variables based on a random forest algorithm focusing on cyclones. In addition, this research analyzes the variable importance and partial dependence plot to identify the key influential factors that affect household evacuation preparation time. A case study was conducted in Gabura Union, Shaymnagar Upzila in Bangladesh regarding cyclone Bulbul in 2019 to gather demographic and behavioral data for a preparation time simulation. The prediction results showed efficient assessment of household evacuation preparation time prediction, meriting application for cases of future disasters. Our results show that the most important factors that impact household evacuation preparation time are evacuation companions and age, followed by shelter distance, income, and shelter type. The results of the prediction model can assist emergency response and evacuation planners and national disaster management authorities in developing and improving effective evacuation plans that take household evacuation preparation time into consideration for future disasters.
format article
author Md Atikur Rahman
Akihiko Hokugo
Nobuhito Ohtsu
author_facet Md Atikur Rahman
Akihiko Hokugo
Nobuhito Ohtsu
author_sort Md Atikur Rahman
title Household evacuation preparation time during a cyclone: Random Forest algorithm and variable degree analysis
title_short Household evacuation preparation time during a cyclone: Random Forest algorithm and variable degree analysis
title_full Household evacuation preparation time during a cyclone: Random Forest algorithm and variable degree analysis
title_fullStr Household evacuation preparation time during a cyclone: Random Forest algorithm and variable degree analysis
title_full_unstemmed Household evacuation preparation time during a cyclone: Random Forest algorithm and variable degree analysis
title_sort household evacuation preparation time during a cyclone: random forest algorithm and variable degree analysis
publisher Elsevier
publishDate 2021
url https://doaj.org/article/59f31ccd9f284553a1a565e91c977560
work_keys_str_mv AT mdatikurrahman householdevacuationpreparationtimeduringacyclonerandomforestalgorithmandvariabledegreeanalysis
AT akihikohokugo householdevacuationpreparationtimeduringacyclonerandomforestalgorithmandvariabledegreeanalysis
AT nobuhitoohtsu householdevacuationpreparationtimeduringacyclonerandomforestalgorithmandvariabledegreeanalysis
_version_ 1718372912301342720