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Efficient Fragility Analysis of Cross-Fault Hydraulic Tunnels Combining Support Vector Machine and Improved Cloud Method

Benbo Sun, Mingjiang Deng, Sherong Zhang, Weiying Liu, Jia Xu, Chao Wang, Wei Cui

2024Journal of Earthquake Engineering11 citationsDOI

Abstract

One of the primary concerns in the field of seismic risk assessment for underground structures is establishing an accurate connection between seismic intensity and structural responses. The objective of this work is to conduct a rational support vector machine (SVM) model for generating mass data and improved fragility curves of cross-fault hydraulic tunnels (CFHTs). The results highlight that the 900 sets, multiple earthquake intensity measures, and cubic polynomial kernel function of the SVM model can improve reliability in evaluating structural performance. Additionally, the improved Cloud analysis method is more suitable for seismic performance than the typical Cloud analysis.

Topics & Concepts

Support vector machineFragilityReliability (semiconductor)Cloud computingStructural engineeringComputer scienceData miningEngineeringKernel (algebra)Reliability engineeringMachine learningMathematicsChemistryCombinatoricsQuantum mechanicsPower (physics)Operating systemPhysicsPhysical chemistryGeotechnical Engineering and Underground StructuresDam Engineering and SafetyGeotechnical Engineering and Analysis
Efficient Fragility Analysis of Cross-Fault Hydraulic Tunnels Combining Support Vector Machine and Improved Cloud Method | Litcius