A review of the application of support vector machines in landslide susceptibility mapping

Landslide is a part of natural natural disasters that causes fatalities to humans, destroys property and overwhelms the regional economy. Various landslide evaluation attempts have been utilized to determine the landslide susceptibility values. Machine learning (ML) has been used in numerous researc...

Full description

Bibliographic Details
Published in:Disaster Advances
Main Author: Yusof M.K.T.M.; Rashid A.S.A.; Apandi N.M.; Khanan M.F.B.A.; Rahman M.Z.B.A.
Format: Review
Language:English
Published: World Researchers Associations 2023
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85175260852&doi=10.25303%2f1611da071083&partnerID=40&md5=d03b320e3805dc33866fa3625d5256cd
id 2-s2.0-85175260852
spelling 2-s2.0-85175260852
Yusof M.K.T.M.; Rashid A.S.A.; Apandi N.M.; Khanan M.F.B.A.; Rahman M.Z.B.A.
A review of the application of support vector machines in landslide susceptibility mapping
2023
Disaster Advances
16
11
10.25303/1611da071083
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85175260852&doi=10.25303%2f1611da071083&partnerID=40&md5=d03b320e3805dc33866fa3625d5256cd
Landslide is a part of natural natural disasters that causes fatalities to humans, destroys property and overwhelms the regional economy. Various landslide evaluation attempts have been utilized to determine the landslide susceptibility values. Machine learning (ML) has been used in numerous research areas including geotechnical disciplines to produce an effective model to resolve the geotechnical challenge. The ML model has been adopted to produce a landslide susceptibility map (LSM) in many studies with various types and algorithms. This review paper discusses the ML approach used to develop LSM with specific approaches: Support Vector Machine (SVM). The basic principle of ML in producing the LSM is determined and discussed. The study also provides information on the types of validation and performance of the model in developing LSM. SVM and its hybrid model were found to yield good performance in producing LSM in most of the studies with SVM outperforming most of the other ML approaches. This research contributes to the landslide mapping field by providing a readily available, State-of-the-Art reference for researchers, practitioners and local authorities in producing efficient and reliable LSM based on the SVM principle. © 2023, World Research Association. All rights reserved.
World Researchers Associations
0974262X
English
Review

author Yusof M.K.T.M.; Rashid A.S.A.; Apandi N.M.; Khanan M.F.B.A.; Rahman M.Z.B.A.
spellingShingle Yusof M.K.T.M.; Rashid A.S.A.; Apandi N.M.; Khanan M.F.B.A.; Rahman M.Z.B.A.
A review of the application of support vector machines in landslide susceptibility mapping
author_facet Yusof M.K.T.M.; Rashid A.S.A.; Apandi N.M.; Khanan M.F.B.A.; Rahman M.Z.B.A.
author_sort Yusof M.K.T.M.; Rashid A.S.A.; Apandi N.M.; Khanan M.F.B.A.; Rahman M.Z.B.A.
title A review of the application of support vector machines in landslide susceptibility mapping
title_short A review of the application of support vector machines in landslide susceptibility mapping
title_full A review of the application of support vector machines in landslide susceptibility mapping
title_fullStr A review of the application of support vector machines in landslide susceptibility mapping
title_full_unstemmed A review of the application of support vector machines in landslide susceptibility mapping
title_sort A review of the application of support vector machines in landslide susceptibility mapping
publishDate 2023
container_title Disaster Advances
container_volume 16
container_issue 11
doi_str_mv 10.25303/1611da071083
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85175260852&doi=10.25303%2f1611da071083&partnerID=40&md5=d03b320e3805dc33866fa3625d5256cd
description Landslide is a part of natural natural disasters that causes fatalities to humans, destroys property and overwhelms the regional economy. Various landslide evaluation attempts have been utilized to determine the landslide susceptibility values. Machine learning (ML) has been used in numerous research areas including geotechnical disciplines to produce an effective model to resolve the geotechnical challenge. The ML model has been adopted to produce a landslide susceptibility map (LSM) in many studies with various types and algorithms. This review paper discusses the ML approach used to develop LSM with specific approaches: Support Vector Machine (SVM). The basic principle of ML in producing the LSM is determined and discussed. The study also provides information on the types of validation and performance of the model in developing LSM. SVM and its hybrid model were found to yield good performance in producing LSM in most of the studies with SVM outperforming most of the other ML approaches. This research contributes to the landslide mapping field by providing a readily available, State-of-the-Art reference for researchers, practitioners and local authorities in producing efficient and reliable LSM based on the SVM principle. © 2023, World Research Association. All rights reserved.
publisher World Researchers Associations
issn 0974262X
language English
format Review
accesstype
record_format scopus
collection Scopus
_version_ 1809677579912740864