An enhanced stability evaluation system for entry-type excavations: Utilizing a hybrid bagging-SVM model, GP and kriging techniques
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- @Article{Huang:2025:jrmge,
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author = "Shuai Huang and Jian Zhou",
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title = "An enhanced stability evaluation system for entry-type
excavations: Utilizing a hybrid bagging-{SVM} model,
{GP} and kriging techniques",
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journal = "Journal of Rock Mechanics and Geotechnical
Engineering",
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year = "2025",
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volume = "17",
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number = "4",
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pages = "2360--2373",
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keywords = "genetic algorithms, genetic programming, Entry-type
excavations, Critical span graph, Stability evaluation,
Machine learning, Support vector machine",
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ISSN = "1674-7755",
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URL = "
https://www.sciencedirect.com/science/article/pii/S1674775524003068",
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DOI = "
doi:10.1016/j.jrmge.2024.05.024",
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abstract = "In underground mining, especially in entry-type
excavations, the instability of surrounding rock
structures can lead to incalculable losses. As a
crucial tool for stability analysis in entry-type
excavations, the critical span graph must be updated to
meet more stringent engineering requirements. Given
this, this study introduces the support vector machine
(SVM), along with multiple ensemble (bagging, adaptive
boosting, and stacking) and optimisation (Harris hawks
optimisation (HHO), cuckoo search (CS)) techniques, to
overcome the limitations of the traditional methods.
The analysis indicates that the hybrid model combining
SVM, bagging, and CS strategies has a good prediction
performance, and its test accuracy reaches 0.86.
Furthermore, the partition scheme of the critical span
graph is adjusted based on the CS-BSVM model and 399
cases. Compared with previous empirical or
semi-empirical methods, the new model overcomes the
interference of subjective factors and possesses higher
interpretability. Since relying solely on one
technology cannot ensure prediction credibility, this
study further introduces genetic programming (GP) and
kriging interpolation techniques. The explicit
expressions derived through GP can offer the stability
probability value, and the kriging technique can
provide interpolated definitions for two new
subclasses. Finally, a prediction platform is developed
based on the above three approaches, which can rapidly
provide engineering feedback",
- }
Genetic Programming entries for
Shuai Huang
Jian Zhou
Citations