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New analytical calculation models for compressive arch action in reinforced concrete structures

机译:钢筋混凝土结构中压拱作用的新解析计算模型

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摘要

Research challenges associated with progressive collapse of reinforced concrete (RC) structures have attracted growing attention from researchers and industries worldwide, since the 1995 explosion at the Murrah Federal Building in Oklahoma City. The compressive arch action (CAA), as a favorable mechanism to provide the structural resistance to progressive collapse under a column removal scenario, has been extensively studied using both experimental and theoretical approaches. However, the existing prediction models for the CAA resistance are either too complicated or in need of additional information like the peak deformation of the specimen. Another major weakness in the previous CAA calculation models is the negligence of the slab effect, which can contribute significantly to the structural resistance. In this study, based on the finite element analysis of 50 progressive collapse tests reported in the literature and 217 newly designed beam-slab substructures, explicit and easy-to-use CAA calculation models are developed for RC frame beams with and without slabs. The proposed models are validated against both experimental and numerical results with a mean absolute error being less than 10%. The findings from this study can serve to provide a quantitative reference for practical design of RC frame structures against progressive collapse.
机译:自1995年俄克拉荷马市穆拉联邦大楼爆炸以来,与钢筋混凝土(RC)结构逐渐倒塌相关的研究挑战引起了全球研究人员和行业的日益关注。压缩拱作用(CAA)作为在柱移除情况下提供结构抵抗渐进塌陷的一种有利机制,已经通过实验和理论方法进行了广泛研究。但是,现有的CAA抗性预测模型要么太复杂,要么需要其他信息,例如试样的峰变形。以前的CAA计算模型的另一个主要弱点是板坯效应的疏忽,这可能会极大地影响结构阻力。在这项研究中,基于对文献中报道的50种渐进倒塌测试和217种新设计的梁-平板子结构的有限元分析,开发了带有和不带有平板的RC框架梁的显式且易于使用的CAA计算模型。所提出的模型针对实验和数值结果进行了验证,平均绝对误差小于10%。这项研究的发现可以为钢筋混凝土框架结构抗渐进倒塌的实用设计提供定量参考。

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