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A comprehensive review of machine learning‐based methods in landslide susceptibility map**
S Liu, L Wang, W Zhang, Y He, S Pijush - Geological Journal, 2023 - Wiley Online Library
Landslide susceptibility map** (LSM) has been widely used as an important reference for
development and construction planning to mitigate the potential social‐eco impact caused …
development and construction planning to mitigate the potential social‐eco impact caused …
BIM–GIS integrated utilization in urban disaster management: The contributions, challenges, and future directions
In the 21st Century, disasters have severe negative impacts on cities worldwide. Given the
significant casualties and property damage caused by disasters, it is necessary for disaster …
significant casualties and property damage caused by disasters, it is necessary for disaster …
GIS-based landslide susceptibility map** using logistic regression, random forest and decision and regression tree models in Chattogram District, Bangladesh
MS Chowdhury, MN Rahman, MS Sheikh, MA Sayeid… - Heliyon, 2024 - cell.com
The frequency of landslides and related economic and environmental damage has
increased in recent decades across the hilly areas of the world, no exception is Bangladesh …
increased in recent decades across the hilly areas of the world, no exception is Bangladesh …
[HTML][HTML] Utilizing hybrid machine learning and soft computing techniques for landslide susceptibility map** in a drainage basin
The hydrological system of thebasin of Lake Urmia is complex, deriving its supply from a
network comprising 13 perennial rivers, along withnumerous small springs and direct …
network comprising 13 perennial rivers, along withnumerous small springs and direct …
Handling data imbalance in machine learning based landslide susceptibility map**: a case study of Mandakini River Basin, North-Western Himalayas
Abstract Machine learning methods require a vast amount of data to train a model. The data
necessary for landslide susceptibility map** is a collection of landslide causative factors …
necessary for landslide susceptibility map** is a collection of landslide causative factors …
Unraveling the evolution of landslide susceptibility: a systematic review of 30-years of strategic themes and trends
A Dong, J Dou, Y Fu, R Zhang, K ** (LSM) research is vital for averting and mitigating regional
landslide disasters. Nevertheless, there has been a lack of systematic analysis regarding …
landslide disasters. Nevertheless, there has been a lack of systematic analysis regarding …
Refined landslide susceptibility map** in township area using ensemble machine learning method under dataset replenishment strategy
Landslide susceptibility map** (LSM) warrants considerable attention as a prerequisite for
risk assessment and prevention in response to the increasing global occurrences of …
risk assessment and prevention in response to the increasing global occurrences of …
Performance comparison of landslide susceptibility map** under multiple machine-learning based models considering InSAR deformation: a case study of the …
Landslide susceptibility map** (LSM) comprehensively evaluates the spatial probability of
landslide occurrence by using different environmental factors. However, most of the …
landslide occurrence by using different environmental factors. However, most of the …
[HTML][HTML] Global dynamic rainfall-induced landslide susceptibility map** using machine learning
B Li, K Liu, M Wang, Q He, Z Jiang, W Zhu, N Qiao - Remote Sensing, 2022 - mdpi.com
Precipitation is the main factor that triggers landslides. Rainfall-induced landslide
susceptibility map** (LSM) is crucial for disaster prevention and disaster losses mitigation …
susceptibility map** (LSM) is crucial for disaster prevention and disaster losses mitigation …
Optimization of SVR and CatBoost models using metaheuristic algorithms to assess landslide susceptibility
In this study, a landslide susceptibility assessment is performed by combining two machine
learning regression algorithms (MLRA), such as support vector regression (SVR) and …
learning regression algorithms (MLRA), such as support vector regression (SVR) and …