Modelling of shallow landslides with machine learning algorithms
This paper introduces three machine learning (ML) algorithms, the ‘ensemble’ Random Forest (RF), the ‘ensemble’ Gradient Boosted Regression Tree (GBRT) and the MultiLayer Perceptron neural network (MLP) and applies them to the spatial modelling of shallow landslides near Kvam in Norway. In the devel...
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doaj-ad1015ee87534df1ad51b93f7ce5f44c2020-12-05T04:19:17ZengElsevierGeoscience Frontiers1674-98712021-01-01121385393Modelling of shallow landslides with machine learning algorithmsZhongqiang Liu0Graham Gilbert1Jose Mauricio Cepeda2Asgeir Olaf Kydland Lysdahl3Luca Piciullo4Heidi Hefre5Suzanne Lacasse6Corresponding author.; Norwegian Geotechnical Institute (NGI), Sognsveien 72, 0855, Oslo, NorwayNorwegian Geotechnical Institute (NGI), Sognsveien 72, 0855, Oslo, NorwayNorwegian Geotechnical Institute (NGI), Sognsveien 72, 0855, Oslo, NorwayNorwegian Geotechnical Institute (NGI), Sognsveien 72, 0855, Oslo, NorwayNorwegian Geotechnical Institute (NGI), Sognsveien 72, 0855, Oslo, NorwayNorwegian Geotechnical Institute (NGI), Sognsveien 72, 0855, Oslo, NorwayNorwegian Geotechnical Institute (NGI), Sognsveien 72, 0855, Oslo, NorwayThis paper introduces three machine learning (ML) algorithms, the ‘ensemble’ Random Forest (RF), the ‘ensemble’ Gradient Boosted Regression Tree (GBRT) and the MultiLayer Perceptron neural network (MLP) and applies them to the spatial modelling of shallow landslides near Kvam in Norway. In the development of the ML models, a total of 11 significant landslide controlling factors were selected. The controlling factors relate to the geomorphology, geology, geo-environment and anthropogenic effects: slope angle, aspect, plan curvature, profile curvature, flow accumulation, flow direction, distance to rivers, water content, saturation, rainfall and distance to roads. It is observed that slope angle was the most significant controlling factor in the ML analyses. The performance of the three ML models was evaluated quantitatively based on the Receiver Operating Characteristic (ROC) analysis. The results show that the ‘ensemble’ GBRT machine learning model yielded the most promising results for the spatial prediction of shallow landslides, with a 95% probability of landslide detection and 87% prediction efficiency.http://www.sciencedirect.com/science/article/pii/S167498712030116XShallow landslideSpatial modellingMachine learningGIS |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Zhongqiang Liu Graham Gilbert Jose Mauricio Cepeda Asgeir Olaf Kydland Lysdahl Luca Piciullo Heidi Hefre Suzanne Lacasse |
spellingShingle |
Zhongqiang Liu Graham Gilbert Jose Mauricio Cepeda Asgeir Olaf Kydland Lysdahl Luca Piciullo Heidi Hefre Suzanne Lacasse Modelling of shallow landslides with machine learning algorithms Geoscience Frontiers Shallow landslide Spatial modelling Machine learning GIS |
author_facet |
Zhongqiang Liu Graham Gilbert Jose Mauricio Cepeda Asgeir Olaf Kydland Lysdahl Luca Piciullo Heidi Hefre Suzanne Lacasse |
author_sort |
Zhongqiang Liu |
title |
Modelling of shallow landslides with machine learning algorithms |
title_short |
Modelling of shallow landslides with machine learning algorithms |
title_full |
Modelling of shallow landslides with machine learning algorithms |
title_fullStr |
Modelling of shallow landslides with machine learning algorithms |
title_full_unstemmed |
Modelling of shallow landslides with machine learning algorithms |
title_sort |
modelling of shallow landslides with machine learning algorithms |
publisher |
Elsevier |
series |
Geoscience Frontiers |
issn |
1674-9871 |
publishDate |
2021-01-01 |
description |
This paper introduces three machine learning (ML) algorithms, the ‘ensemble’ Random Forest (RF), the ‘ensemble’ Gradient Boosted Regression Tree (GBRT) and the MultiLayer Perceptron neural network (MLP) and applies them to the spatial modelling of shallow landslides near Kvam in Norway. In the development of the ML models, a total of 11 significant landslide controlling factors were selected. The controlling factors relate to the geomorphology, geology, geo-environment and anthropogenic effects: slope angle, aspect, plan curvature, profile curvature, flow accumulation, flow direction, distance to rivers, water content, saturation, rainfall and distance to roads. It is observed that slope angle was the most significant controlling factor in the ML analyses. The performance of the three ML models was evaluated quantitatively based on the Receiver Operating Characteristic (ROC) analysis. The results show that the ‘ensemble’ GBRT machine learning model yielded the most promising results for the spatial prediction of shallow landslides, with a 95% probability of landslide detection and 87% prediction efficiency. |
topic |
Shallow landslide Spatial modelling Machine learning GIS |
url |
http://www.sciencedirect.com/science/article/pii/S167498712030116X |
work_keys_str_mv |
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1724399960129011712 |