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Elimination of a measurement problem: A robust prediction model for missing eigenvector value to assess earthquake induced out-of-plane failure of infill wall

机译:消除测量问题:一种稳健的预测模型,用于缺少特征向量来评估地震诱导填充墙壁的面外失效

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One of the effective methods to assess local or global behavior of structural system is to perform shake table experiment. The biggest challenge of all experiments, either shake table or others, are missing data during the experiments due to removed instruments. This problem is arose especially during the out-of-plane tests. This problem is named as "Measurement" problem. This paper is focused on detection the measurement problem and solving this problem by using Adaptive-Network Based Neuro Inference System (ANFIS). Definition of the problem is briefly missing out-of-plane eigenvector value during the implementation of a shake table experiments on a full scale one bay one storey reinforced concrete structural system. For this aim, two shake table experiments were performed with reinforced concrete frame (RCF) and infill wall at the National Civil Engineering Laboratory (LNEC) Portugal. The out-of-plane failure of infill wall was assessed under combined bidirectional seismic load. Shake table experiments were conducted on two types of specimens. One of them is Unreinforced Brick Infill Wall (URBIF) composed of single layer 22 cm thick brick. The other is single layer 22 cm thick Infill Wall with Bed Joint Reinforcement solution (IwBJR). Both specimens were made of a single-layer brick infill wall enclosure with the RCF. Bed joint reinforcement term refers horizontal bed joint reinforcement as a strengthening technique. Shake table experiments were performed on each specimen at four stages. After third level of earthquake load, the accelerometers were removed on the wall to prevent damage to them. The removal of these instruments results in missing data. The missing eigenvector values were predicted with a robust Adaptive-Network Based Neuro Inference System (ANFIS) model to present failure mode of infill wall. The estimation quality was tested with R-2, Mean Absolute Percentage Error (MAPE), Mean Square Error (MSE) and Root Mean Square Error (RMSE) among with available data. The results of the quality indicator of R-2 are 0.999 for URBIF model and 0.997 for IwBJR model, respectively. Moreover, rest of the indicator results are less than %1. The proposed approach is reliable on the base of quality indicator. Moreover, this study can be used for seismic engineering to predict eigenvector values to see local behavior of infill wall and mode shape evolution to determine which mod prone for partial and total collapse of infill wall. (C) 2019 Elsevier Ltd. All rights reserved.
机译:评估结构系统的局部或全球行为的有效方法之一是进行摇头表实验。由于仪器缺失,所有实验,无论是摇动表还是其他人都丢失了数据的最大挑战。这个问题是出现的,特别是在平面外测试期间。此问题名称为“测量”问题。本文专注于检测测量问题,并通过使用基于自适应网络的神经推理系统(ANFIS)来解决这个问题。问题的定义在实施摇动台实验期间在全尺度一架钢筋混凝土结构系统的实施过程中短暂缺失平面外特征向量。为此目的,在国家土木工程实验室(LNEC)葡萄牙的钢筋混凝土框架(RCF)和填充墙上进行了两次摇头表实验。在组合双向地震载量下评估填充壁的外平面失效。在两种类型的样本上进行摇伽比实验。其中一体是由单层22厘米厚砖组成的单层22厘米的砖填充墙(URBIF)。另一层是单层22厘米厚填充壁,带床接头加固溶液(IWBJR)。两个标本都是由具有RCF的单层砖填充壁外壳。床联合加强术语是指水平床接头加固作为强化技术。在四个阶段对每个样品进行摇伽士实验。在第三级地震载荷后,将加速度计移除在墙上以防止损坏它们。删除这些仪器导致数据缺失。使用鲁棒自适应网络的基于网络的神经推断系统(ANFIS)模型预测缺失的特征向量值,以呈现填充墙的故障模式。使用R-2测试估计质量,平均绝对百分比误差(MAPE),均方误差(MSE)和具有可用数据的均线误差(RMSE)。 R-2质量指标的结果分别为UWBJR模型的URBIF模型0.999。此外,剩下的指标结果小于%1。该方法在质量指标基础上是可靠的。此外,该研究可用于地震工程来预测特征向量值,以便看到填充壁和模式形状演化的局部行为,以确定填充壁的部分和完全坍塌的模式。 (c)2019年elestvier有限公司保留所有权利。

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