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Damage Level Prediction of Reinforced Concrete Building Based on Earthquake Time History Using Artificial Neural Network

机译:基于地震时间史的钢筋混凝土建筑利用人工神经网络损伤水平预测

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摘要

The strong motion earthquake could cause the building damage in case of the building not considered in the earthquake design of the building. The study aims to predict the damage-level of building due to earthquake using Artificial Neural Networks method. The building model is a reinforced concrete building with ten floors and height between floors is 3.6 m. The model building received a load of the earthquake based on nine earthquake time history records. Each time history scaled to 0,5g, 0,75g, and 1,0g. The Artificial Neural Networks are designed in 4 architectural models using the MATLAB program. Model 1 used the displacement, velocity, and acceleration as input and Model 2 used the displacement only as the input. Model 3 used the velocity as input, and Model 4 used the acceleration just as input. The output of the Neural Networks is the damage level of the building with the category of Safe (1), Immediate Occupancy (2), Life Safety (3) or in a condition of Collapse Prevention (4). According to the results, Neural Network models have the prediction rate of the damage level between 85%-95%. Therefore, one of the solutions for analyzing the structural responses and the damage level promptly and efficiently when the earthquake occurred is by using Artificial Neural Network
机译:在建筑物地震设计中未考虑的建筑物的情况下,强烈的运动地震可能导致建筑物损坏。该研究旨在预测使用人工神经网络方法由于地震而预测建筑物的损害水平。建筑模型是一个钢筋混凝土建筑,楼层10层,地板之间的高度为3.6米。基于九个地震时间历史记录,模型建筑物接收了地震的负荷。每次历史都缩放到0.5g,0,75g和1,0g。人工神经网络设计在4个架构模型中,使用MATLAB程序。模型1使用了位移,速度和加速作为输入,型号2仅使用位移作为输入。模型3使用速度作为输入,并且型号4使用加速器作为输入。神经网络的输出是建筑物的损坏水平,具有安全(1)类别,即时占用(2),生命安全(3)或崩溃预防条件(4)。根据结果​​,神经网络模型的预测速率为85%-95%之间的损伤水平。因此,当发生地震发生时,用于分析结构响应和损坏水平的一个解决方案是使用人工神经网络

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