AI Article Synopsis

  • This paper addresses the challenges of achieving both displacement coordination and static equilibrium at the rock-support interface in tunnels using mechanical analysis methods.
  • It proposes new approximation methods for calculating radial displacement and support force based on laboratory test data of yielding elements and numerical simulations.
  • The results indicate that the bisection method is the most stable and convergent compared to other methods, but the study acknowledges limitations due to varying geological conditions that may affect the algorithm's effectiveness.

Article Abstract

In solving the whole process of interaction between soft rock and yielding support in high-stress environments in tunnels using mechanical analysis methods, it is challenging to simultaneously satisfy both displacement coordination and static equilibrium at the contact surface between the rock and the support structure. This paper, based on the mechanical analysis of rock and rigid support, considers the impact of the circumferential installation of yielding elements on radial displacement, and proposes displacement approximation and support force approximation methods using displacement coordination and static equilibrium as approximation conditions. The study fits curves of numerical simulation results and laboratory test results of yielding elements, and attempts to directly use the laboratory test data set of yielding elements as computational data. By calculating two circular tunnel examples and comparing the effects of the trisection method, bisection method, and substitution method on the convergence of the displacement approximation method, the effectiveness of the methods proposed in this paper is verified. The research results show that the two approximation algorithms proposed in this paper have good accuracy and reliability in calculating the relative displacement of rock and yielding support structure contact surfaces, and the support force of yielding support. The bisection method outperforms the trisection and substitution methods in terms of stability and convergence. However, there are certain limitations in this study, such as the effectiveness of the algorithm may be influenced by geological conditions; the complexity of actual geological conditions may exceed the assumptions of the current rock-support mechanical analysis model.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10936814PMC
http://journals.plos.org/plosone/article?id=10.1371/journal.pone.0299426PLOS

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