残余物
地震振动台
还原(数学)
推论
结构工程
刚度
插值(计算机图形学)
残余强度
计算机科学
算法
工程类
数学
人工智能
图像(数学)
几何学
作者
Yuncheng Zhuang,Xiaodong Ji,Lei Sun,Koichi Kajiwara,Jae‐Do Kang,Takuya Nagae
标识
DOI:10.1016/j.engstruct.2023.117317
摘要
This paper presents an enhanced vision-based, post-earthquake performance assessment framework for RC building structures. This framework incorporates a damage inference method that can estimate the stiffness and strength reduction factors of components in stories without damage inspection based on the inter-story drift. The framework was validated by the application to the full-scale shaking table test of an E-Defense 2018 ten-story RC structure. The vision-based damage detection method effectively detected multicategory seismic damage on the component surfaces, and the damage states estimated by the vision-based method were consistent with the results estimated by the measured plastic hinge rotation. The proposed inter-story drift-based damage inference method reasonably estimated the reduction factors of components in the stories without damage photos. The numerical model updated by the reduction factors of damaged components provided accurate estimates of the fundamental vibrational frequencies after different levels of seismic shaking, and the drift-based inference method significantly improved the results compared with the trivial linear interpolation method. The residual capacity curves provided by pushover analysis of the updated model using the reduction factors as per FEMA 306 & Chiu et al. reasonably captured the hysteretic responses of the structure.
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