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Performance analysis and macromodel simulation of steel frame structures with beam-column joints using cast steel stiffeners for progressive collapse prevention

机译:梁柱节点钢框架结构性能分析和宏观模型仿真

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Progressive collapse is an important failure mechanism that must be considered in the design of critical and essential buildings. For steel moment structures, beam-column joints, which act as transportation hubs of forces, are crucial members to resist progressive collapse. This research investigated the effectiveness of beam-column joints with cast steel stiffeners (CSS) in steel moment frames for progressive collapse resistance. A computationally efficient macromodel that can be used for routine design of steel moment frame buildings with CSS was developed in this paper. The developed model, which considers the deformation of joints with CSS and the catenary action effects during progressive collapse, was validated using a 3D solid finite-element model. Subsequently, the macromodel was utilized to calculate the proper dynamic increase factor for steel moment frame structures with beam-column joints using CSS. The results show that the frame with CSS is less vulnerable to gravity-induced progressive collapse than frames with welded beam-column joints without stiffeners. The proposed macromodel is effective and a dynamic increase factor of 1.6 is suitable for dynamic progressive collapse analysis of steel moment frame structures using beam-column joints with CSS.
机译:渐进式倒塌是重要和重要建筑物设计中必须考虑的重要破坏机制。对于钢矩结构,作为力传递枢纽的梁柱节点是抵抗渐进倒塌的关键构件。这项研究调查了在钢制弯矩框架中采用铸钢加劲肋(CSS)的梁柱节点的抗连续倒塌性能。本文开发了一种计算有效的宏模型,该模型可用于采用CSS的钢制矩型框架建筑物的常规设计。使用3D实体有限元模型验证了所开发的模型,该模型考虑了CSS关节的变形以及渐进塌陷期间的悬链作用效应。随后,该宏模型被用于使用CSS计算具有梁柱节点的钢矩框架结构的适当动力增加系数。结果表明,具有CSS的框架比不具有加强筋的焊接梁柱节点的框架更不容易受到重力引起的渐进塌陷。所提出的宏模型是有效的,并且动态增加因子1.6适用于使用带有CSS的梁柱节点的钢弯矩框架结构的动态渐进倒塌分析。

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