Improved genetic programming modeling of slope stability and landslide susceptibility
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- @Article{Yu:2025:ress,
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author = "Beichen Yu and Yingke Liu and Dongming Zhang and
Bin Xu and Changbao Jiang and Chao Liu",
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title = "Improved genetic programming modeling of slope
stability and landslide susceptibility",
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journal = "Reliability Engineering and System Safety",
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year = "2025",
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volume = "264",
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pages = "111296",
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keywords = "genetic algorithms, genetic programming, Slope
stability, Landslide, Probabilistic prediction",
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ISSN = "0951-8320",
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URL = "
https://www.sciencedirect.com/science/article/pii/S0951832025004971",
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DOI = "
doi:10.1016/j.ress.2025.111296",
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abstract = "The prediction of slope stability and landslide
susceptibility is crucial for ensuring the safety and
reliability of high slopes and disasters prevention.
This study used genetic programming (GP) to predict
slope stability and landslide risks. To address the
limitations of GP such as local convergence and code
redundancy growth and enhance prediction accuracy,
hierarchical fair competition model based on K-means
clustering algorithm (K-means-HFC), niche technique of
similarity based on crowding (NTSC), and self-adaptive
change in probability were proposed to improve the
traditional GP. Then, the improved GP was used to
conduct modelling research for prediction, including
slope stability, land-slide dynamic characterisation,
probabilistic hazard of seismic landslide, and blasting
vibration parameters and hazard. The results showed
that K-mean-HFC and NTSC separately increased inter-
and intra-cluster population diversity and promoted the
fitness, further enhancing the model prediction
accuracy. In the case of multi-parameter prediction,
the improved GP could realize attribute reduction on
the prediction parameters, eliminate the attributes
unrelated to the prediction parameters, and clearly
obtain the prediction formulas. By using the improved
GP, the prediction model of slope stability was
acquired, the mutual prediction of surface displacement
rate and subsurface volumetric was established, the
probabilistic prediction diagram of seismic landslide
in Sichuan Province was generated, the influence of
prediction parameters was analysed, and the prediction
of blasting vibration parameters and hazard of slope
blasting under the influence of multiple parameters was
realized. The derived prediction formulas possessed a
significant reference for solving the same type of
slope reliability and landslide prevention problems",
- }
Genetic Programming entries for
Beichen Yu
Yingke Liu
Dongming Zhang
Bin Xu
Changbao Jiang
Chao Liu
Citations