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Erschienen in: Environmental Earth Sciences 3/2024

01.02.2024 | Original Article

A comparative evaluation of landslide susceptibility mapping using machine learning-based methods in Bogor area of Indonesia

verfasst von: Dian Nuraini Melati, Raditya Panji Umbara, Astisiasari Astisiasari, Wisyanto Wisyanto, Syakira Trisnafiah, Trinugroho Trinugroho, Firman Prawiradisastra, Yukni Arifianti, Taufik Iqbal Ramdhani, Samsul Arifin, Maria Susan Anggreainy

Erschienen in: Environmental Earth Sciences | Ausgabe 3/2024

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Abstract

Landslide is one of the most highly frequent natural hazards that can bring serious casualties. One of the most susceptible landslide regions in Indonesia is Bogor area (the Regency and City of Bogor), which records the highest landslide events in the Province of West Java, Indonesia. An assessment of landslide susceptibility is one of the mitigation measures that can spatially model the zone of landslide hazard. Recently, the Landslide Susceptibility Mapping (LSM) model has been developed using Machine Learning (ML) algorithms. However, there is still no agreement yet on which ML technique is the most appropriate for LSM. Accordingly, this paper aims to explore and compare the 7 ML algorithms for generating the most promising LSM. The LSM uses the available 13 landslide causal factors and a dataset consisting of 822 authorized landslide records and 822 prepared non-landslide points. The resulting LSMs are classified into 5 susceptibility levels, and evaluated through the Area Under Curve (AUC) of the Receiver-Operating Curve (ROC) and statistical indices (sensitivity, specificity, precision, F1-score, and accuracy). The resulting LSMs present that: (1) the very high (VH) class has the largest area percentage in all LSM models, (2) generally, the 7 MLs perform excellent for achieving > 90% AUC value, except for the Decision Tree (DT) (87.68%) in model classification, and (3) moreover, the overall accuracy (ACC) reflects that Random Forest (RF) outperforms the other MLs in model prediction. With this promising result, ML-based LSM models can be promoted as one of the mitigation measures for landslide disaster management.

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Metadaten
Titel
A comparative evaluation of landslide susceptibility mapping using machine learning-based methods in Bogor area of Indonesia
verfasst von
Dian Nuraini Melati
Raditya Panji Umbara
Astisiasari Astisiasari
Wisyanto Wisyanto
Syakira Trisnafiah
Trinugroho Trinugroho
Firman Prawiradisastra
Yukni Arifianti
Taufik Iqbal Ramdhani
Samsul Arifin
Maria Susan Anggreainy
Publikationsdatum
01.02.2024
Verlag
Springer Berlin Heidelberg
Erschienen in
Environmental Earth Sciences / Ausgabe 3/2024
Print ISSN: 1866-6280
Elektronische ISSN: 1866-6299
DOI
https://doi.org/10.1007/s12665-023-11402-3

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