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Landslide Susceptibility Mapping Using Machine Learning Algorithms and Remote Sensing Data in a Tropical Environment

We used AdaBoost (AB), alternating decision tree (ADTree), and their combination as an ensemble model (AB-ADTree) to spatially predict landslides in the Cameron Highlands, Malaysia. The models were trained with a database of 152 landslides compiled using Synthetic Aperture Radar Interferometry, Goog...

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Autores principales: Nhu, Viet-Ha, Mohammadi, Ayub, Shahabi, Himan, Ahmad, Baharin Bin, Al-Ansari, Nadhir, Shirzadi, Ataollah, Clague, John J., Jaafari, Abolfazl, Chen, Wei, Nguyen, Hoang
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7400293/
https://www.ncbi.nlm.nih.gov/pubmed/32650595
http://dx.doi.org/10.3390/ijerph17144933
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author Nhu, Viet-Ha
Mohammadi, Ayub
Shahabi, Himan
Ahmad, Baharin Bin
Al-Ansari, Nadhir
Shirzadi, Ataollah
Clague, John J.
Jaafari, Abolfazl
Chen, Wei
Nguyen, Hoang
author_facet Nhu, Viet-Ha
Mohammadi, Ayub
Shahabi, Himan
Ahmad, Baharin Bin
Al-Ansari, Nadhir
Shirzadi, Ataollah
Clague, John J.
Jaafari, Abolfazl
Chen, Wei
Nguyen, Hoang
author_sort Nhu, Viet-Ha
collection PubMed
description We used AdaBoost (AB), alternating decision tree (ADTree), and their combination as an ensemble model (AB-ADTree) to spatially predict landslides in the Cameron Highlands, Malaysia. The models were trained with a database of 152 landslides compiled using Synthetic Aperture Radar Interferometry, Google Earth images, and field surveys, and 17 conditioning factors (slope, aspect, elevation, distance to road, distance to river, proximity to fault, road density, river density, normalized difference vegetation index, rainfall, land cover, lithology, soil types, curvature, profile curvature, stream power index, and topographic wetness index). We carried out the validation process using the area under the receiver operating characteristic curve (AUC) and several parametric and non-parametric performance metrics, including positive predictive value, negative predictive value, sensitivity, specificity, accuracy, root mean square error, and the Friedman and Wilcoxon sign rank tests. The AB model (AUC = 0.96) performed better than the ensemble AB-ADTree model (AUC = 0.94) and successfully outperformed the ADTree model (AUC = 0.59) in predicting landslide susceptibility. Our findings provide insights into the development of more efficient and accurate landslide predictive models that can be used by decision makers and land-use managers to mitigate landslide hazards.
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spelling pubmed-74002932020-08-23 Landslide Susceptibility Mapping Using Machine Learning Algorithms and Remote Sensing Data in a Tropical Environment Nhu, Viet-Ha Mohammadi, Ayub Shahabi, Himan Ahmad, Baharin Bin Al-Ansari, Nadhir Shirzadi, Ataollah Clague, John J. Jaafari, Abolfazl Chen, Wei Nguyen, Hoang Int J Environ Res Public Health Article We used AdaBoost (AB), alternating decision tree (ADTree), and their combination as an ensemble model (AB-ADTree) to spatially predict landslides in the Cameron Highlands, Malaysia. The models were trained with a database of 152 landslides compiled using Synthetic Aperture Radar Interferometry, Google Earth images, and field surveys, and 17 conditioning factors (slope, aspect, elevation, distance to road, distance to river, proximity to fault, road density, river density, normalized difference vegetation index, rainfall, land cover, lithology, soil types, curvature, profile curvature, stream power index, and topographic wetness index). We carried out the validation process using the area under the receiver operating characteristic curve (AUC) and several parametric and non-parametric performance metrics, including positive predictive value, negative predictive value, sensitivity, specificity, accuracy, root mean square error, and the Friedman and Wilcoxon sign rank tests. The AB model (AUC = 0.96) performed better than the ensemble AB-ADTree model (AUC = 0.94) and successfully outperformed the ADTree model (AUC = 0.59) in predicting landslide susceptibility. Our findings provide insights into the development of more efficient and accurate landslide predictive models that can be used by decision makers and land-use managers to mitigate landslide hazards. MDPI 2020-07-08 2020-07 /pmc/articles/PMC7400293/ /pubmed/32650595 http://dx.doi.org/10.3390/ijerph17144933 Text en © 2020 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Nhu, Viet-Ha
Mohammadi, Ayub
Shahabi, Himan
Ahmad, Baharin Bin
Al-Ansari, Nadhir
Shirzadi, Ataollah
Clague, John J.
Jaafari, Abolfazl
Chen, Wei
Nguyen, Hoang
Landslide Susceptibility Mapping Using Machine Learning Algorithms and Remote Sensing Data in a Tropical Environment
title Landslide Susceptibility Mapping Using Machine Learning Algorithms and Remote Sensing Data in a Tropical Environment
title_full Landslide Susceptibility Mapping Using Machine Learning Algorithms and Remote Sensing Data in a Tropical Environment
title_fullStr Landslide Susceptibility Mapping Using Machine Learning Algorithms and Remote Sensing Data in a Tropical Environment
title_full_unstemmed Landslide Susceptibility Mapping Using Machine Learning Algorithms and Remote Sensing Data in a Tropical Environment
title_short Landslide Susceptibility Mapping Using Machine Learning Algorithms and Remote Sensing Data in a Tropical Environment
title_sort landslide susceptibility mapping using machine learning algorithms and remote sensing data in a tropical environment
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7400293/
https://www.ncbi.nlm.nih.gov/pubmed/32650595
http://dx.doi.org/10.3390/ijerph17144933
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