Landslide Modeling in a Tropical Mountain Basin Using Machine Learning Algorithms and Shapley Additive Explanations

dc.contributor.affiliationVega, J., Facultad de Ingeniería, Universidad de Medellín, Medellin, Colombia
dc.contributor.affiliationSepúlveda-Murillo, F.H., Facultad de Ciencias Básicas, Universidad de Medellín, Medellin, Colombia
dc.contributor.affiliationParra, M., Facultad de Ingeniería, Universidad de Medellín, Medellin, Colombia
dc.contributor.authorVega J
dc.contributor.authorSepúlveda-Murillo F.H
dc.contributor.authorParra M.
dc.date.accessioned2024-07-31T21:07:18Z
dc.date.available2024-07-31T21:07:18Z
dc.date.issued2023
dc.descriptionLandslides are a geological hazard commonly induced by rainfall, earthquakes, deforestation, or human activity causing loss of human life every year specially on highlands or mountain slopes with serious impacts that threaten communities and its infrastructure. The incidence and recurrence of landslides are conditioned by several aspects related to soil properties, geological structure, climatic conditions, soil cover, and water flow. Precisely, Colombia is one of the most affected by this type of natural hazard, as well as by floods, since they are the natural phenomena that bring with them the most severe risks for communities. In this work, we articulated the statistical approach of the landslide conditioning factors, Machine Learning Algorithms (MLA), and Geographic Information System (GIS), evaluating a flexible and agile methodology to estimate the landslide susceptibility defining areas prone to the landslide occurrence. The MLA were validated in a case study in the “La Liboriana” River basin, located in the Municipality of Salgar in the Colombian mountains Andes where Landslide Susceptibility Maps (LSMs) were obtained. The obtained MLA results hold immense potential in the field of regional landslide mapping, facilitating the development of effective strategies aimed at minimizing the devastating impacts on human lives, infrastructure, and the natural environment. By leveraging these findings, proactive measures can be devised to safeguard vulnerable areas, mitigate risks, and ensure the safety and well-being of communities. Seven supervised MLA were employed, two regression algorithms (Logistic) and five decision tree algorithms (Recursive Partitioning and Regression Trees [RPART], Conditional Inference Trees [CTREE], Random Forest [RF], Ranger, and Extreme Gradient Boosting Algorithm [XGBoost]). The LSMs were produced for each MLA. Considering different performance metrics, the RF model yields the best classification accuracy with an area under receiver operating characteristic (ROC) curve of 95% and 90% of accuracy, providing the most representative results. Finally, the contribution of each landslide conditioning factor on predictions with RF model is explained using the SHAP method. © The Author(s) 2023.
dc.identifier.doi10.1177/11786221231195824
dc.identifier.instnameinstname:Universidad de Medellínspa
dc.identifier.issn11786221
dc.identifier.reponamereponame:Repositorio Institucional Universidad de Medellínspa
dc.identifier.repourlrepourl:https://repository.udem.edu.co/
dc.identifier.urihttp://hdl.handle.net/11407/8537
dc.language.isoeng
dc.publisherSAGE Publications Ltdspa
dc.publisher.facultyFacultad de Ingenieríasspa
dc.publisher.facultyFacultad de Ciencias Básicasspa
dc.publisher.programIngeniería Civilspa
dc.relation.citationvolume16
dc.relation.isversionofhttps://www.scopus.com/inward/record.uri?eid=2-s2.0-85169702391&doi=10.1177%2f11786221231195824&partnerID=40&md5=808fcf7f6b98dff493cb6024834a2e88
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dc.rights.accessrightsinfo:eu-repo/semantics/restrictedAccess
dc.sourceAir, Soil and Water Research
dc.sourceAir Soil Water Res.
dc.sourceScopus
dc.subjectColombian Andeseng
dc.subjectlandslideseng
dc.subjectMachine learningeng
dc.subjectSHAPeng
dc.subjectStatistical methodseng
dc.subjectSusceptibilityeng
dc.titleLandslide Modeling in a Tropical Mountain Basin Using Machine Learning Algorithms and Shapley Additive Explanationseng
dc.typearticle
dc.type.localArtículospa
dc.type.versioninfo:eu-repo/semantics/publishedVersion

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