Rain-induced man-made slope failures pose great threats to public safety as most man-made slopes are formed in densely populated areas. A critical step in managing landslide risks is to predict the time, locations and consequences of slope failures in future rainstorms. Based on comprehensive databases of in-service man-made slopes, rainstorms and landslides in Hong Kong during the past 35 years, a spatio-temporal landslide forecasting model for man-made slopes is developed in this study within a unified machine learning framework. With a storm-based data integration strategy and multiclass classification on landslide scales, the framework incorporates landslide time and consequences in landslide susceptibility mapping to successfully achieve spatio-temporal landslide forecasting. The machine learning-based landslide forecasting model is validated against historical landslide incidents both temporally and spatially and through a case study of the June 2008 storm; the model significantly outperforms the prevailing statistical rainfall–landslide correlations in terms of prediction accuracy. The model can predict the real-time evolution of probabilities, scales and spatial distribution of landslides during the progression of a rainstorm, which can never be achieved by statistical methods. It can serve as an essential module for state-of-the-art landslide risk assessment and early warning.
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1 September 2023
Research Article|
January 26 2022
Predicting spatio-temporal man-made slope failures induced by rainfall in Hong Kong using machine learning techniques
Te Xiao;
Te Xiao
*Department of Civil and Environmental Engineering, The Hong Kong University of Science and Technology, Hong Kong, P. R. China (Orcid:0000-0003-4935-892X).
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Li Min Zhang;
Li Min Zhang
†Department of Civil and Environmental Engineering, The Hong Kong University of Science and Technology, Hong Kong, P. R. China.
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Raymond Wai Man Cheung;
Raymond Wai Man Cheung
‡Geotechnical Engineering Office, Civil Engineering and Development Department, The Government of the Hong Kong Special Administrative Region, Hong Kong, P. R. China.
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Suzanne Lacasse
Suzanne Lacasse
§Norwegian Geotechnical Institute, Oslo, Norway.
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Publisher: Emerald Publishing
Received:
September 14 2020
Accepted:
January 07 2022
Online ISSN: 1751-7656
Print ISSN: 0016-8505
© 2022 Emerald Publishing Limited: All rights reserved
2022
Geotechnique (2023) 73 (9): 749–765.
Article history
Received:
September 14 2020
Accepted:
January 07 2022
Citation
Xiao T, Zhang LM, Cheung RWM, Lacasse S (2023), "Predicting spatio-temporal man-made slope failures induced by rainfall in Hong Kong using machine learning techniques". Geotechnique, Vol. 73 No. 9 pp. 749–765, doi: https://doi.org/10.1680/jgeot.21.00160
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