A Review of Rock Boreability Evaluation Index and Its Application in TBM Tunnel Construction

  • Li Zichen ,
  • Zhu Jiebing ,
  • Zhang Yihu ,
  • Wang Bin ,
  • Xu Dongdong
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  • Key Laboratory of Geotechnical Mechanics and Engineering of Ministry of Water Resources, Changjiang River Scientific Research Institute, Wuhan 430010, P. R. China

Received date: 2023-10-24

  Online published: 2024-09-30

Abstract

Tool wear accounts for a high percentage of TBM (Tunnel Boring Machine) boring construction costs, which is usually due to a mismatch between the tool design of the TBM and the strength and hardness of the rock. Therefore, it is necessary to evaluate the rock boreability of TBM tunnels to provide a basis for tool design and construction parameters. The evaluation of rock boreability is very important in the classification of TBM surrounding rock and the prediction of tunneling efficiency. It is a key issue to evaluate the efficiency and cost of TBM construction. However, the evaluation of rock boreability in the process of tunnel TBM excavation is usually quite complex, and many parameters need to be considered. So far, there is no standardized definition of the index of boreability at home and abroad. Through literature searches, this paper reviews the research progress of the definition of boreability index and the research and application of boreability. Combined with the existing research results, the future research direction of TBM boreability is prospected.

Cite this article

Li Zichen , Zhu Jiebing , Zhang Yihu , Wang Bin , Xu Dongdong . A Review of Rock Boreability Evaluation Index and Its Application in TBM Tunnel Construction[J]. Chinese Journal of Underground Space and Engineering, 2024 , 20(S1) : 508 -520 . DOI: 10.20174/j.JUSE.2024.S1.59

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