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Prediction Of Seismic-induced Structural Damage Using Artificial Neural Networks

机译:基于人工神经网络的地震结构损伤预测

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Contemporary methods for estimating the extent of seismic-induced damage to structures include the use of nonlinear finite element method (FEM) and seismic vulnerability curves. FEM is applicable when a small number of predetermined structures is to be assessed, but becomes inefficient for larger stocks. Seismic vulnerability curves enable damage estimation for classes of similar structures characterised by a small number of parameters, and typically use only one parameter to describe ground motion. Hence, they are unable to extend damage prognosis to wider classes of structures, e.g. buildings with a different number of storeys and/or bays, or capture the full complexity of the relationship between damage and seismic excitation parameters. Motivated by these shortcomings, this study presents a general method for predicting seismic-induced damage using Artificial Neural Networks (ANNs). The approach was to describe both the structure and ground motion using a large number of structural and ground motion properties. The class of structures analysed were 2D reinforced concrete (RC) frames that varied in topology, stiffness, strength and damping, and were subjected to a suite of ground motions. Dynamic structural responses were simulated using nonlinear FEM analysis and damage indices describing the extent of damage calculated. Using the results of the numerical simulations, a mapping between the structural and ground motion properties and the damage indices was than established using an ANN. The performance of the ANN was assessed using several examples and the ANN was found to be capable of successfully predicting damage.
机译:估算地震引起的结构破坏程度的现代方法包括使用非线性有限元方法(FEM)和地震易损性曲线。有限元法适用于评估少量预定结构的情况,但对于大量存货而言效率低下。地震易损性曲线能够对以少量参数为特征的类似结构类别进行破坏估算,并且通常仅使用一个参数来描述地面运动。因此,他们无法将损伤预后扩展到更广泛的结构类别,例如具有不同楼层和/或海湾数量的建筑物,或捕获破坏与地震激励参数之间关系的全部复杂性。由于这些缺点,本研究提出了一种使用人工神经网络(ANN)预测地震引起的破坏的通用方法。该方法是使用大量的结构和地面运动特性来描述结构和地面运动。分析的结构类别为2D钢筋混凝土(RC)框架,这些框架的拓扑结构,刚度,强度和阻尼均发生变化,并经受了一系列的地面运动。使用非线性有限元分析和描述破坏程度的破坏指数模拟了动态结构响应。利用数值模拟的结果,然后使用ANN建立了结构和地震动特性与损伤指数之间的映射。使用几个示例评估了ANN的性能,发现该ANN能够成功预测损坏。

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