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Integrating Machine Learning Ensembles for Landslide Susceptibility Mapping in Northern Pakistan
by
Altalbe, Ali
, Ali, Rashid
, Ali, Nafees
, Hussain, Muhammad Afaq
, Daud, Hamza
, Chen, Jian
, Fu, Xiaodong
, Hussain, Javid
in
Algorithms
/ baseline learning algorithms
/ data collection
/ Disasters
/ ensemble learning algorithms
/ Geological hazards
/ Geology
/ geophysics
/ Geospatial data
/ infrastructure
/ inventories
/ landslide susceptibility mapping
/ Landslides
/ Landslides & mudslides
/ Logistics
/ Machine learning
/ Mapping
/ Mathematical models
/ Methods
/ Mountains
/ National parks
/ Natural disasters
/ Pakistan
/ Parameter identification
/ Precipitation
/ rain
/ Rainfall
/ Regression analysis
/ Risk assessment
/ Seismic activity
/ Support vector machines
/ Topography
2024
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Integrating Machine Learning Ensembles for Landslide Susceptibility Mapping in Northern Pakistan
by
Altalbe, Ali
, Ali, Rashid
, Ali, Nafees
, Hussain, Muhammad Afaq
, Daud, Hamza
, Chen, Jian
, Fu, Xiaodong
, Hussain, Javid
in
Algorithms
/ baseline learning algorithms
/ data collection
/ Disasters
/ ensemble learning algorithms
/ Geological hazards
/ Geology
/ geophysics
/ Geospatial data
/ infrastructure
/ inventories
/ landslide susceptibility mapping
/ Landslides
/ Landslides & mudslides
/ Logistics
/ Machine learning
/ Mapping
/ Mathematical models
/ Methods
/ Mountains
/ National parks
/ Natural disasters
/ Pakistan
/ Parameter identification
/ Precipitation
/ rain
/ Rainfall
/ Regression analysis
/ Risk assessment
/ Seismic activity
/ Support vector machines
/ Topography
2024
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Do you wish to request the book?
Integrating Machine Learning Ensembles for Landslide Susceptibility Mapping in Northern Pakistan
by
Altalbe, Ali
, Ali, Rashid
, Ali, Nafees
, Hussain, Muhammad Afaq
, Daud, Hamza
, Chen, Jian
, Fu, Xiaodong
, Hussain, Javid
in
Algorithms
/ baseline learning algorithms
/ data collection
/ Disasters
/ ensemble learning algorithms
/ Geological hazards
/ Geology
/ geophysics
/ Geospatial data
/ infrastructure
/ inventories
/ landslide susceptibility mapping
/ Landslides
/ Landslides & mudslides
/ Logistics
/ Machine learning
/ Mapping
/ Mathematical models
/ Methods
/ Mountains
/ National parks
/ Natural disasters
/ Pakistan
/ Parameter identification
/ Precipitation
/ rain
/ Rainfall
/ Regression analysis
/ Risk assessment
/ Seismic activity
/ Support vector machines
/ Topography
2024
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Integrating Machine Learning Ensembles for Landslide Susceptibility Mapping in Northern Pakistan
Journal Article
Integrating Machine Learning Ensembles for Landslide Susceptibility Mapping in Northern Pakistan
2024
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Overview
Natural disasters, notably landslides, pose significant threats to communities and infrastructure. Landslide susceptibility mapping (LSM) has been globally deemed as an effective tool to mitigate such threats. In this regard, this study considers the northern region of Pakistan, which is primarily susceptible to landslides amid rugged topography, frequent seismic events, and seasonal rainfall, to carry out LSM. To achieve this goal, this study pioneered the fusion of baseline models (logistic regression (LR), K-nearest neighbors (KNN), and support vector machine (SVM)) with ensembled algorithms (Cascade Generalization (CG), random forest (RF), Light Gradient-Boosting Machine (LightGBM), AdaBoost, Dagging, and XGBoost). With a dataset comprising 228 landslide inventory maps, this study employed a random forest classifier and a correlation-based feature selection (CFS) approach to identify the twelve most significant parameters instigating landslides. The evaluated parameters included slope angle, elevation, aspect, geological features, and proximity to faults, roads, and streams, and slope was revealed as the primary factor influencing landslide distribution, followed by aspect and rainfall with a minute margin. The models, validated with an AUC of 0.784, ACC of 0.912, and K of 0.394 for logistic regression (LR), as well as an AUC of 0.907, ACC of 0.927, and K of 0.620 for XGBoost, highlight the practical effectiveness and potency of LSM. The results revealed the superior performance of LR among the baseline models and XGBoost among the ensembles, which contributed to the development of precise LSM for the study area. LSM may serve as a valuable tool for guiding precise risk-mitigation strategies and policies in geohazard-prone regions at national and global scales.
Publisher
MDPI AG
Subject
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