Easy to use remote sensing and GIS analysis for landslide risk assessment

Many countries throughout the world suffered from the natural risks, they cause a large damage in property and loss in human lives, we cannot prevent the occurring of these hazards but, it is possible to reduce their affect in saving human lives and reducing the damage in properties. Several methodo...

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Main Authors: Dibs, Hayder, Al-Janabi, Ahmed, Gomes, Gorakanage Arosha Chandima
Format: Article
Language:English
Published: University of Babylon 2018
Online Access:http://psasir.upm.edu.my/id/eprint/72358/1/Easy%20to%20use%20remote%20sensing%20and%20GIS%20analysis%20for%20landslide%20risk%20assessment.pdf
http://psasir.upm.edu.my/id/eprint/72358/
https://www.journalofbabylon.com/index.php/JUBES/article/view/1178
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spelling my.upm.eprints.723582020-05-19T03:35:42Z http://psasir.upm.edu.my/id/eprint/72358/ Easy to use remote sensing and GIS analysis for landslide risk assessment Dibs, Hayder Al-Janabi, Ahmed Gomes, Gorakanage Arosha Chandima Many countries throughout the world suffered from the natural risks, they cause a large damage in property and loss in human lives, we cannot prevent the occurring of these hazards but, it is possible to reduce their affect in saving human lives and reducing the damage in properties. Several methodologies have been conducted to predict the suitable model for landslide assessment. The susceptibility maps of landslide hazard generated by combining the remote sensed data with the capability of GIS (geographic information system). We discussed different type of algorithms and factors for modeling the prediction of landslide risk assessment such as SVM (support vector machine), DT (decision tree), ANFIS (adaptive neural-fuzzy inference system), AHP (analytic hierarchy process), ANN (artificial neural network), probability frequency of landslides occurrence factors model and empirical model. The study evaluated various parameters that are responsible for landslide occurrence and the weighting for each parameter and its importance to probable of landslide activity. AHP method, Weights of evidence model, and back propagation method have been applied for weighting the factors. We found that using ANN algorithm with more than ten factors will give high accuracy result especially if the validation performs by field surveys data. University of Babylon 2018 Article PeerReviewed text en http://psasir.upm.edu.my/id/eprint/72358/1/Easy%20to%20use%20remote%20sensing%20and%20GIS%20analysis%20for%20landslide%20risk%20assessment.pdf Dibs, Hayder and Al-Janabi, Ahmed and Gomes, Gorakanage Arosha Chandima (2018) Easy to use remote sensing and GIS analysis for landslide risk assessment. Journal of Babylon University for Engineering Science, 26 (1). 42 - 54. ISSN ‎2616-9916 https://www.journalofbabylon.com/index.php/JUBES/article/view/1178
institution Universiti Putra Malaysia
building UPM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Putra Malaysia
content_source UPM Institutional Repository
url_provider http://psasir.upm.edu.my/
language English
description Many countries throughout the world suffered from the natural risks, they cause a large damage in property and loss in human lives, we cannot prevent the occurring of these hazards but, it is possible to reduce their affect in saving human lives and reducing the damage in properties. Several methodologies have been conducted to predict the suitable model for landslide assessment. The susceptibility maps of landslide hazard generated by combining the remote sensed data with the capability of GIS (geographic information system). We discussed different type of algorithms and factors for modeling the prediction of landslide risk assessment such as SVM (support vector machine), DT (decision tree), ANFIS (adaptive neural-fuzzy inference system), AHP (analytic hierarchy process), ANN (artificial neural network), probability frequency of landslides occurrence factors model and empirical model. The study evaluated various parameters that are responsible for landslide occurrence and the weighting for each parameter and its importance to probable of landslide activity. AHP method, Weights of evidence model, and back propagation method have been applied for weighting the factors. We found that using ANN algorithm with more than ten factors will give high accuracy result especially if the validation performs by field surveys data.
format Article
author Dibs, Hayder
Al-Janabi, Ahmed
Gomes, Gorakanage Arosha Chandima
spellingShingle Dibs, Hayder
Al-Janabi, Ahmed
Gomes, Gorakanage Arosha Chandima
Easy to use remote sensing and GIS analysis for landslide risk assessment
author_facet Dibs, Hayder
Al-Janabi, Ahmed
Gomes, Gorakanage Arosha Chandima
author_sort Dibs, Hayder
title Easy to use remote sensing and GIS analysis for landslide risk assessment
title_short Easy to use remote sensing and GIS analysis for landslide risk assessment
title_full Easy to use remote sensing and GIS analysis for landslide risk assessment
title_fullStr Easy to use remote sensing and GIS analysis for landslide risk assessment
title_full_unstemmed Easy to use remote sensing and GIS analysis for landslide risk assessment
title_sort easy to use remote sensing and gis analysis for landslide risk assessment
publisher University of Babylon
publishDate 2018
url http://psasir.upm.edu.my/id/eprint/72358/1/Easy%20to%20use%20remote%20sensing%20and%20GIS%20analysis%20for%20landslide%20risk%20assessment.pdf
http://psasir.upm.edu.my/id/eprint/72358/
https://www.journalofbabylon.com/index.php/JUBES/article/view/1178
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score 13.211869