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摘要:
This study investigated the axial compressive behavior of UHPC-filled glass-fiber-reinforced polymer pultruded square columns (UFGCs) and UFGCs reinforced with CFRP fabric (UFGRCCs). The influence of stirrup type, stirrup pitch, and CFRP fabric width on the axial compressive behavior was discussed. The experimental results demonstrated that placing stirrups with an appropriate pitch within UHPC can inhibit crack formation and prevent premature loss of load-bearing capacity. The use of CFRP fabric to reinforce the pultruded column strengthens the confinement effect on UHPC. FE analysis demonstrated that the diminishing improvement effect of CFRP fabric on the mechanical properties of UHPC was observed when the number of CFRP fabric layers exceeded 7. The results of FE parametric expansion analysis were utilized to establish a neural network predictive model for load-bearing capacity (Pmax) and ductility (TI). This model not only demonstrated outstanding predictive accuracy but also served as an objective function for Pmax and TI. To maximize the objective functions, a non-dominated sorting genetic algorithm with an elitist strategy (NSGA-II) was utilized for multi objective optimization. The optimal reinforcement method for the CFRP fabric was then determined using the technique for order of preference by similarity to the ideal solution (TOPSIS).
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ENGINEERING STRUCTURES
ISSN: 0141-0296
年份: 2024
卷: 314
5 . 5 0 0
JCR@2022
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