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Soft computing machine learning applications for assessing regional-scale landslide susceptibility in the Nepal Himalaya

Bikesh Manandhar (Department of Civil Engineering, Pulchowk Campus, Institute of Engineering, Tribhuvan University, Lalitpur, Nepal)
Thanh-Canh Huynh (Institute of Research and Development, Duy Tan University, Danang, Vietnam) (Faculty of Civil Engineering, Duy Tan University, Danang, Vietnam)
Pawan Kumar Bhattarai (Department of Civil Engineering, Pulchowk Campus, Institute of Engineering, Tribhuvan University, Lalitpur, Nepal)
Suchita Shrestha (Department of Mines and Geology, Ministry of Industry, Commerce and Supplies, Government of Nepal, Lainchaur, Kathmandu, Nepal)
Ananta Man Singh Pradhan (Water Resources Research and Development Centre, Ministry of Energy, Water Resources and Irrigation, Government of Nepal, Lalitpur, Nepal)

Engineering Computations

ISSN: 0264-4401

Article publication date: 2 May 2024

Issue publication date: 13 May 2024

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Abstract

Purpose

This research is aimed at preparing landslide susceptibility using spatial analysis and soft computing machine learning techniques based on convolutional neural networks (CNNs), artificial neural networks (ANNs) and logistic regression (LR) models.

Design/methodology/approach

Using the Geographical Information System (GIS), a spatial database including topographic, hydrologic, geological and landuse data is created for the study area. The data are randomly divided between a training set (70%), a validation (10%) and a test set (20%).

Findings

The validation findings demonstrate that the CNN model (has an 89% success rate and an 84% prediction rate). The ANN model (with an 84% success rate and an 81% prediction rate) predicts landslides better than the LR model (with a success rate of 82% and a prediction rate of 79%). In comparison, the CNN proves to be more accurate than the logistic regression and is utilized for final susceptibility.

Research limitations/implications

Land cover data and geological data are limited in largescale, making it challenging to develop accurate and comprehensive susceptibility maps.

Practical implications

It helps to identify areas with a higher likelihood of experiencing landslides. This information is crucial for assessing the risk posed to human lives, infrastructure and properties in these areas. It allows authorities and stakeholders to prioritize risk management efforts and allocate resources more effectively.

Social implications

The social implications of a landslide susceptibility map are profound, as it provides vital information for disaster preparedness, risk mitigation and landuse planning. Communities can utilize these maps to identify vulnerable areas, implement zoning regulations and develop evacuation plans, ultimately safeguarding lives and property. Additionally, access to such information promotes public awareness and education about landslide risks, fostering a proactive approach to disaster management. However, reliance solely on these maps may also create a false sense of security, necessitating continuous updates and integration with other risk assessment measures to ensure effective disaster resilience strategies are in place.

Originality/value

Landslide susceptibility mapping provides a proactive approach to identifying areas at higher risk of landslides before any significant events occur. Researchers continually explore new data sources, modeling techniques and validation approaches, leading to a better understanding of landslide dynamics and susceptibility factors.

Keywords

Acknowledgements

We express our gratitude to the anonymous reviewers for their valuable comments and suggestions on the manuscript. The authors extend their sincere appreciation to all individuals involved in the data collection during fieldwork.

Citation

Manandhar, B., Huynh, T.-C., Bhattarai, P.K., Shrestha, S. and Pradhan, A.M.S. (2024), "Soft computing machine learning applications for assessing regional-scale landslide susceptibility in the Nepal Himalaya", Engineering Computations, Vol. 41 No. 3, pp. 655-681. https://doi.org/10.1108/EC-07-2023-0374

Publisher

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Emerald Publishing Limited

Copyright © 2024, Emerald Publishing Limited

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