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Title: Neural network-assisted generic predictive models of safety factor and yield acceleration for seismic slope stability and displacement assessments
Authors: Wang, MX 
Leung, YF 
Li, DQ
Issue Date: 2025
Source: Canadian geotechnical journal, 2025, v. 62
Abstract: As two well-recognized approaches for seismic slope stability assessment, the pseudo-static analysis calculates the factor of safety (FS) and the Newmark-type analysis estimates the permanent downslope-displacement for given yield acceleration (ky). However, FS and ky are usually obtained from nontrivial slope stability calculations, which can become computationally demanding in probabilistic analyses or regional landslide mapping. This study presents neural network-assisted predictive models for (1) seismic or static FS and the category of failure mode; and (2) ky and the thickness of failure mass. Extensive stability analyses of more than 741 000 and 123 000 slope configurations are conducted to compile datasets of FS and ky , respectively. Performance evaluation results indicate that the models produce physically reasonable prediction trends and have good generalization capability with correlation coefficient higher than 0.94 in blind tests. Compared to the infinite slope model and existing predictive tools, the new models achieve improved applicability and functionality, accounting for pore-water pressure, depth to hard stratum, and various failure modes. Both the spreadsheet and MATLAB files established in this study are provided to facilitate generic applications. Therefore, this work not only demonstrates the capability of neural network in slope stability predictions, but also provides useful tools for practitioners, contributing to both the pseudo-static and Newmark-type approaches.
Keywords: Factor of safety
Neural network
Newmark-type approach
Predictive models
Pseudo-static slope stability analysis
Yield acceleration
Publisher: Canadian Science Publishing
Journal: Canadian geotechnical journal 
ISSN: 0008-3674
DOI: 10.1139/cgj-2024-0106
Rights: © 2025 The Author(s). Permission for reuse (free in most cases) can be obtained from copyright.com.
This is the accepted version of the work. The final published article is available at https://doi.org/10.1139/cgj-2024-0106.
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