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梁模板施工中应用C形梁夹具设计方法

SUN Ying-zhi,CAO Ying-ri,ZHENG Xing-dong,GUO Wen-xu, HAN Zhao-lun, PEI Wei-chang

Architecture Technology(2022)

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Abstract
本文介绍了C形梁夹具的构造与在梁模板体系中的用法,并总结了设计流程.基于模板施工有关规范,结合模板尺寸和内龙骨的布置情况,对不同情况下内龙骨传递至C形梁夹具的荷载进行计算.将C形梁夹具简化为杆系结构,基于结构力学原理计算C形梁夹具的内力与变形,给出了强度验算与变形验算的算式,为C形梁夹具的设计提供了参考.
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