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Application of the Artificial Neural Network for Predicting Mainshock-Aftershock Sequences in Seismic Assessment of Reinforced Concrete Structures

机译:人工神经网络在钢筋混凝土结构地震评估中预测主轴 - 余震序列的应用

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Studies from past earthquakes have shown that aftershocks can increase the vulnerability of structures damaged under mainshocks. However, the main challenge is to take these threats into account during the process of design and retrofit. Using the accelerograms that are compatible with the mainshock and the corresponding aftershocks can lead to a proper evaluation of seismic performance of a structure during the mainshock and aftershock, based on time history analyses. Therefore, it is necessary to simulate the aftershock motions consistent with the predicted mainshock spectrum. This study first investigates the relationship between the frequency content of an aftershock and its corresponding mainshock. It then discusses the development of a method for the generation of artificial aftershocks based on the acceleration response spectrum obtained from the artificial neural networks. To evaluate the effectiveness of the proposed method for the generation of artificial seismic sequences, a large number of time-history analyses have been conducted using both the current (the conventional back-to-back approach) and the proposed methods for three different structures including a column (representing the pier of a bridge), a reinforced concrete (RC) building, and an RC bridge. In these analyses, a wide range of different elements and materials have been employed and different responses, including maximum drift, residual drift, inter-story drift, floor acceleration, column curvature, and base shear, have also been studied. The results revealed that the proposed method produces the appropriate estimation of structural responses, and has a considerably higher efficiency compared to the conventional BTB approach that often introduces considerably large errors in the estimation of responses.
机译:过去地震的研究表明,余震可以增加主轴损坏的结构的脆弱性。然而,主要挑战是在设计和改造过程中考虑这些威胁。使用与主轴兼容的AcceleroGram和相应的余震可以在主座血管和余震过程中正确评估主轴和余震过程中结构的地震性能。因此,有必要模拟与预测的主轴光谱一致的余震运动。本研究首先研究了余震频率含量与其对应主轴之间的关系。然后,它讨论了基于从人工神经网络获得的加速度响应谱产生人造余震的方法的发展。为了评估所提出的方法生成人工地震序列的有效性,已经使用电流(传统的背对背方法)和三种不同结构的所提出的方法进行了大量的时间历史分析一列(代表桥梁的码头),钢筋混凝土(RC)建筑和RC桥。在这些分析中,还研究了各种不同的元素和材料,并且还研究了不同的响应,包括最大漂移,残余漂移,故事际漂移,地板加速度,柱曲率和碱剪切。结果显示,与传统的BTB方法相比,所提出的方法产生适当的结构响应估计,并且与常规的BTB方法相比具有相当高的效率,这些方法通常在估计响应时常规引入大幅误差。

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