Application of a hybrid model of neural networks and genetic algorithms to evaluate landslide susceptibility

Abstract Background In the last few decades, the development of Geographical Information Systems (GIS) technology has provided a method for the evaluation of landslide susceptibility and hazard. Slope units were found to be appropriate for the fundamental morphological elements in landslide suscepti...

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Main Authors: H. B. Wang, J. M. Li, B. Zhou, Y. Zhou, Z. Q. Yuan, Y. P. Chen
Format: Article
Language:English
Published: SpringerOpen 2017-04-01
Series:Geoenvironmental Disasters
Subjects:
Online Access:http://link.springer.com/article/10.1186/s40677-017-0076-y
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author H. B. Wang
J. M. Li
B. Zhou
Y. Zhou
Z. Q. Yuan
Y. P. Chen
author_facet H. B. Wang
J. M. Li
B. Zhou
Y. Zhou
Z. Q. Yuan
Y. P. Chen
author_sort H. B. Wang
collection DOAJ
description Abstract Background In the last few decades, the development of Geographical Information Systems (GIS) technology has provided a method for the evaluation of landslide susceptibility and hazard. Slope units were found to be appropriate for the fundamental morphological elements in landslide susceptibility evaluation. Results Following the DEM construction in a loess area susceptible to landslides, the direct-reverse DEM technology was employed to generate 216 slope units in the studied area. Of the 216 slope units, 123 involved landslides. To analyze the mechanism of these landslides, six environmental factors were selected to evaluate landslide occurrence: slope angle, aspect, the height and shape of the slope, distance to river and human activities. The spatial analysis demonstrates that most of the landslides are located on convex slopes at an elevation of 100-150 m with slope angles from 135°-225° and 40°-60°. Landslide occurrence was then checked according to these environmental factors using an artificial neural network with back propagation, optimized by genetic algorithms. A dataset of 120 slope units was chosen for training the neural network model, and the parameters of genetic algorithms and neural networks were set. Conclusion After training on the datasets, the susceptibility of landslides was mapped for the land-use plan and hazard mitigation. Comparing the susceptibility map with landslide inventory, the verification shows satisfactory agreement with an accuracy of 86.46% between the susceptibility map and the landslide locations. In the landslide susceptibility assessment, ten new slopes were predicted to show potential for failure, which can be confirmed by the engineering geological conditions of these slopes.
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spelling doaj.art-2d6232871fee4fadbf3ffc22519fdf712022-12-21T23:39:19ZengSpringerOpenGeoenvironmental Disasters2197-86702017-04-014111210.1186/s40677-017-0076-yApplication of a hybrid model of neural networks and genetic algorithms to evaluate landslide susceptibilityH. B. Wang0J. M. Li1B. Zhou2Y. Zhou3Z. Q. Yuan4Y. P. Chen5School of Civil Engineering and Mechanics, Huazhong University of Science & TechnologySchool of Civil Engineering and Mechanics, Huazhong University of Science & TechnologySchool of Civil Engineering and Mechanics, Huazhong University of Science & TechnologySchool of Civil Engineering and Mechanics, Huazhong University of Science & TechnologySchool of Civil Engineering and Mechanics, Huazhong University of Science & TechnologyWenhua CollegeAbstract Background In the last few decades, the development of Geographical Information Systems (GIS) technology has provided a method for the evaluation of landslide susceptibility and hazard. Slope units were found to be appropriate for the fundamental morphological elements in landslide susceptibility evaluation. Results Following the DEM construction in a loess area susceptible to landslides, the direct-reverse DEM technology was employed to generate 216 slope units in the studied area. Of the 216 slope units, 123 involved landslides. To analyze the mechanism of these landslides, six environmental factors were selected to evaluate landslide occurrence: slope angle, aspect, the height and shape of the slope, distance to river and human activities. The spatial analysis demonstrates that most of the landslides are located on convex slopes at an elevation of 100-150 m with slope angles from 135°-225° and 40°-60°. Landslide occurrence was then checked according to these environmental factors using an artificial neural network with back propagation, optimized by genetic algorithms. A dataset of 120 slope units was chosen for training the neural network model, and the parameters of genetic algorithms and neural networks were set. Conclusion After training on the datasets, the susceptibility of landslides was mapped for the land-use plan and hazard mitigation. Comparing the susceptibility map with landslide inventory, the verification shows satisfactory agreement with an accuracy of 86.46% between the susceptibility map and the landslide locations. In the landslide susceptibility assessment, ten new slopes were predicted to show potential for failure, which can be confirmed by the engineering geological conditions of these slopes.http://link.springer.com/article/10.1186/s40677-017-0076-yLandslideGeographical Information SystemsGenetic algorithmsBack propagation neural networksSusceptibility evaluation
spellingShingle H. B. Wang
J. M. Li
B. Zhou
Y. Zhou
Z. Q. Yuan
Y. P. Chen
Application of a hybrid model of neural networks and genetic algorithms to evaluate landslide susceptibility
Geoenvironmental Disasters
Landslide
Geographical Information Systems
Genetic algorithms
Back propagation neural networks
Susceptibility evaluation
title Application of a hybrid model of neural networks and genetic algorithms to evaluate landslide susceptibility
title_full Application of a hybrid model of neural networks and genetic algorithms to evaluate landslide susceptibility
title_fullStr Application of a hybrid model of neural networks and genetic algorithms to evaluate landslide susceptibility
title_full_unstemmed Application of a hybrid model of neural networks and genetic algorithms to evaluate landslide susceptibility
title_short Application of a hybrid model of neural networks and genetic algorithms to evaluate landslide susceptibility
title_sort application of a hybrid model of neural networks and genetic algorithms to evaluate landslide susceptibility
topic Landslide
Geographical Information Systems
Genetic algorithms
Back propagation neural networks
Susceptibility evaluation
url http://link.springer.com/article/10.1186/s40677-017-0076-y
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