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Prediction of the Stability of Various Tunnel Shapes Based on Hoek–Brown Failure Criterion Using Artificial Neural Network (ANN)

Thira Jearsiripongkul, Suraparb Keawsawasvong, Chanachai Thongchom, Chayut Ngamkhanong

2022Sustainability31 citationsDOIOpen Access PDF

Abstract

In this paper, artificial neural network (ANN) models are presented in order to enable a prompt assessment of the stability factor of tunnels in rock masses based on the Hoek–Brown (HB) failure criterion. Importantly, the safety assessment is one of the serious concerns for constructing tunnels and requires a reliable and accurate stability analysis. However, it is challenging for engineers to construct finite element limit analysis (FELA) algorithms with the HB failure criterion for tunnel stability solutions in rock masses. For the first time, a machine-learning-aided prediction of tunnel stability based on the HB failure criterion is proposed in this paper. Three different shapes of tunnels, i.e., heading tunnel, dual square tunnels, and dual circular tunnels, are considered. The inputs include four dimensionless parameters for the heading tunnel including the cover-depth ratio, the normalized uniaxial compressive strength, the geological strength index (GSI), and the mi parameter. Moreover, dual square and circular tunnels include one more additional parameter namely the distance ratio. The results present the best ANN models for each tunnel shape, providing very reliable solutions for predicting the tunnel stability based on the HB failure criterion.

Topics & Concepts

Dimensionless quantityStability (learning theory)Artificial neural networkHoek–Brown failure criterionHeading (navigation)EngineeringStructural engineeringSquare (algebra)Finite element methodGeotechnical engineeringRock mass classificationMathematicsComputer scienceGeometryMechanicsArtificial intelligenceMachine learningPhysicsAerospace engineeringGeotechnical Engineering and AnalysisDam Engineering and SafetyRock Mechanics and Modeling