Intelligent Classification of Stable and Unstable Slope Conditions Based on Landslide Movement
One of the most critical problems in the study of geohazards is the displacement brought on by landslides. This research aims to investigate stable and unstable conditions for this important issue using new techniques. There are several effective parameters on landslide movement that need to be thor...
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Semnan University
2024-08-01
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Series: | Journal of Rehabilitation in Civil Engineering |
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Online Access: | https://civiljournal.semnan.ac.ir/article_8159_067a86c4859185a6b6e68f3a4882affb.pdf |
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author | Long Tsang Ali Ghorbani Seyed Mohammad Hossein Khatami Dmitrii Ulrikh |
author_facet | Long Tsang Ali Ghorbani Seyed Mohammad Hossein Khatami Dmitrii Ulrikh |
author_sort | Long Tsang |
collection | DOAJ |
description | One of the most critical problems in the study of geohazards is the displacement brought on by landslides. This research aims to investigate stable and unstable conditions for this important issue using new techniques. There are several effective parameters on landslide movement that need to be thoroughly investigated/observed, making the process of determining the movement of landslides a difficult one. In this research, different machine learning-based approaches were used to analyze and manage this problem. A set of data was compiled for this investigation including groundwater level, prior rainfall, infiltration coefficient, shear strength, and monitored slope gradient are all influential in landslide movement. Three models of Tree, Adaboost and artificial neural network (ANN) were developed for classification into two categories, stable and unstable. The results showed well that two Adaboost and Tree models can provide significant performance for determining stable and unstable conditions. For the test data, the Adaboost model with an accuracy of 0.857 has the highest accuracy, followed by the Tree model with an accuracy of 0.786. Finally, in this research, unstable data using machine learning was used to evaluate and predict the amount of slope movement. This system is well suited for its high flexibility and high-accuracy assessment for conditions with more movement. |
format | Article |
id | doaj-art-ea2c31b93a2d4a538eafd3b657b2ac12 |
institution | Kabale University |
issn | 2345-4415 2345-4423 |
language | English |
publishDate | 2024-08-01 |
publisher | Semnan University |
record_format | Article |
series | Journal of Rehabilitation in Civil Engineering |
spelling | doaj-art-ea2c31b93a2d4a538eafd3b657b2ac122025-01-21T20:47:41ZengSemnan UniversityJournal of Rehabilitation in Civil Engineering2345-44152345-44232024-08-01123173110.22075/jrce.2023.30293.18338159Intelligent Classification of Stable and Unstable Slope Conditions Based on Landslide MovementLong Tsang0Ali Ghorbani1Seyed Mohammad Hossein Khatami2Dmitrii Ulrikh3Geofirst Pty Ltd., 2/7 Luso Drive, Unanderra, NSW 2526, AustraliaAssistant Professor, Department of Engineering, Payame Noor University, Tehran, IranDepartment of Civil Engineering, Technical and Vocational University (TVU), Tehran, IranDepartment of Urban Planning, Engineering Networks and Systems, Institute of Architecture and Construction, South Ural State University, 76, Lenin Prospect, 454080 Chelyabinsk, RussiaOne of the most critical problems in the study of geohazards is the displacement brought on by landslides. This research aims to investigate stable and unstable conditions for this important issue using new techniques. There are several effective parameters on landslide movement that need to be thoroughly investigated/observed, making the process of determining the movement of landslides a difficult one. In this research, different machine learning-based approaches were used to analyze and manage this problem. A set of data was compiled for this investigation including groundwater level, prior rainfall, infiltration coefficient, shear strength, and monitored slope gradient are all influential in landslide movement. Three models of Tree, Adaboost and artificial neural network (ANN) were developed for classification into two categories, stable and unstable. The results showed well that two Adaboost and Tree models can provide significant performance for determining stable and unstable conditions. For the test data, the Adaboost model with an accuracy of 0.857 has the highest accuracy, followed by the Tree model with an accuracy of 0.786. Finally, in this research, unstable data using machine learning was used to evaluate and predict the amount of slope movement. This system is well suited for its high flexibility and high-accuracy assessment for conditions with more movement.https://civiljournal.semnan.ac.ir/article_8159_067a86c4859185a6b6e68f3a4882affb.pdflandslideclassificationrainfallmovementprediction |
spellingShingle | Long Tsang Ali Ghorbani Seyed Mohammad Hossein Khatami Dmitrii Ulrikh Intelligent Classification of Stable and Unstable Slope Conditions Based on Landslide Movement Journal of Rehabilitation in Civil Engineering landslide classification rainfall movement prediction |
title | Intelligent Classification of Stable and Unstable Slope Conditions Based on Landslide Movement |
title_full | Intelligent Classification of Stable and Unstable Slope Conditions Based on Landslide Movement |
title_fullStr | Intelligent Classification of Stable and Unstable Slope Conditions Based on Landslide Movement |
title_full_unstemmed | Intelligent Classification of Stable and Unstable Slope Conditions Based on Landslide Movement |
title_short | Intelligent Classification of Stable and Unstable Slope Conditions Based on Landslide Movement |
title_sort | intelligent classification of stable and unstable slope conditions based on landslide movement |
topic | landslide classification rainfall movement prediction |
url | https://civiljournal.semnan.ac.ir/article_8159_067a86c4859185a6b6e68f3a4882affb.pdf |
work_keys_str_mv | AT longtsang intelligentclassificationofstableandunstableslopeconditionsbasedonlandslidemovement AT alighorbani intelligentclassificationofstableandunstableslopeconditionsbasedonlandslidemovement AT seyedmohammadhosseinkhatami intelligentclassificationofstableandunstableslopeconditionsbasedonlandslidemovement AT dmitriiulrikh intelligentclassificationofstableandunstableslopeconditionsbasedonlandslidemovement |