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Post-earthquake damage identification of an RC school building in Nepal using ambient vibration and point cloud data

机译:使用环境振动和点云数据在尼泊尔遥控建筑后地震损害识别

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This paper presents a damage identification and performance assessment study of a four-story masonry-infilled reinforced concrete building in Sankhu, Nepal, using ambient vibration and point cloud data measurements. The building was severely damaged during the 2015 Gorkha earthquake. A set of accelerometers was used to record the ambient response of the building in order to extract its modal parameters, and a series of lidar scans were collected to estimate the surface defects of certain structural components. An initial model of the structure is created using a recently proposed strut model for masonry infills and a novel modeling approach for infilled RC frames. Dimensions are extracted from lidar-derived point cloud data in the absence of as-built drawings. The FE model updating is first performed through a deterministic formulation where optimal model parameters are estimated through a least squares optimization, and then through a Bayesian inference formulation where the joint posterior probability distribution of the updating parameters are estimated based on the prior knowledge of updating parameters and likelihood of measured data. The error functions for both formulations are defined as the difference between identified and model-predicted modal parameters. Two cases of model updating are performed using different parameterizations and different prior information about the damage. In the first case, updating parameters include walls and columns along the four stories of the building and exclude structural components observed to be severely damaged. The prior knowledge about structural component stiffness values is based on the expected material properties. In the second case of model updating, updating parameters include walls and columns of only the first story, and the prior stiffness values are estimated from the point-cloud measurements. The prior values are then updated using the vibration measurements. The damage identification results are in good agreement with visual observations and point cloud damage quantifications. The most probable model parameters in the Bayesian approach are also found to be in good agreement with the optimal results obtained in the deterministic formulation. Finally, it is shown that the probabilistic natural frequency predictions provide more realistic confidence bounds when both modeling errors and parameter uncertainties are accounted for in the prediction process.
机译:本文采用了尼泊尔,尼泊尔四层砌筑钢筋混凝土建筑造成损害识别和性能评估研究,采用环境振动和点云数据测量。在2015年Gorkha地震期间,该建筑严重受损。使用一组加速度计记录建筑物的环境响应,以便提取其模态参数,并且收集一系列LIDAR扫描以估计某些结构部件的表面缺陷。使用最近提出的STRUT模型来创建结构的初始模型,用于熔融填充物填充和infiFed RC帧的新型建模方法。在没有造建的附图的情况下,从LIDAR推导的点云数据中提取尺寸。首先通过确定性制定来执行FE模型更新,其中通过最小二乘优化估计最佳模型参数,然后通过贝叶斯推理配方,其中基于更新参数的先前知识来估计更新参数的接合后验概率分布和测量数据的可能性。两个配方的错误功能被定义为识别和模型预测的模态参数之间的差异。使用不同的参数化和有关损坏的不同事先信息来执行两个模型更新情况。在第一种情况下,更新参数包括沿着建筑物的四个故事的墙壁和列,并且被观察到被认为是严重损坏的结构部件。关于结构部件刚度值的现有知识基于预期的材料特性。在模型更新的第二种情况下,更新参数包括仅第一故事的墙壁和列,并且从点云测量估计先前的刚度值。然后使用振动测量更新先前的值。损害识别结果与视觉观察和点云损伤量化良好。贝叶斯方法中最可能的模型参数也与在确定性制剂中获得的最佳结果吻合良好。最后,示出了当在预测过程中考虑建模误差和参数不确定性时,概率自然频率预测提供了更现实的置信度限制。

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