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Predicting tunnel squeezing using support vector machine optimized by whale optimization algorithm

journal contribution
posted on 2024-11-02, 21:01 authored by Jian Zhou, Shuangli Zhu, Yingui Qiu, Danial Armaghani, Annan ZhouAnnan Zhou, Weixun Yong
The squeezing behavior of surrounding rock can be described as the time-dependent large deformation during tunnel excavation, which appears in special geological conditions, such as weak rock masses and high in situ stress. Several problems such as budget increase and construction period extension can be caused by squeezing in rock mass. It is significant to propose a model for accurate prediction of rock squeezing. In this research, the support vector machine (SVM) as a machine learning model was optimized by the whale optimization algorithm (WOA), WOA-SVM, to classify the tunnel squeezing based on 114 real cases. The role of WOA in this system is to optimize the hyper-parameters of SVM model for receiving a higher level of accuracy. In the established database, five input parameters, i.e., buried depth, support stiffness, rock tunneling quality index, diameter and the percentage strain, were used. In the process of model classification, different effective parameters of SVM and WOA were considered, and the optimum parameters were designed. To examine the accuracy of the WOA-SVM, the base SVM, ANN (refers to the multilayer perceptron) and GP (refers to the Gaussian process classification) were also constructed. Evaluation of these models showed that the optimized WOA-SVM is the best model among all proposed models in classifying the tunnel squeezing. It has the highest accuracy (approximately 0.9565) than other un-optimized individual classifiers (SVM, ANN, and GP). This was obtained based on results of different performance indexes. In addition, according to sensitivity analysis, the percentage strain is highly sensitive to the model, followed by buried depth and support stiffness. That means, ɛ, H and K are the best combination of parameters for the WOA–SVM model.

History

Related Materials

  1. 1.
    DOI - Is published in 10.1007/s11440-022-01450-7
  2. 2.
    ISSN - Is published in 18611125

Journal

Acta Geotechnica

Volume

17

Start page

1343

End page

1366

Total pages

24

Publisher

Springer

Place published

Germany

Language

English

Copyright

© The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature 2022

Former Identifier

2006115289

Esploro creation date

2022-09-16

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