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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part O. Journal of Risk and Reliability >Collapse fragility curve development using Monte Carlo simulation and artificial neural network
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Collapse fragility curve development using Monte Carlo simulation and artificial neural network

机译:使用蒙特卡洛模拟和人工神经网络的塌陷脆性曲线开发

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摘要

Seismic fragility curves represent likelihood of structures meeting various damage stages. Epistemic as well as aleatory uncertainties associated with seismic loads and structural behaviors are usually taken into account in order to analytically develop such curves. Such structural analyses are time-consuming, demanding extensive computational efforts. In this study, in order to reduce this endeavor, artificial neural network method is applied to develop structural seismic fragility curves under collapse damage state, considering effects of record-to-record variability and modeling parameter uncertainties. Structural analyses are performed for a limited number of scenarios of structures under a limited number of recorded strong ground motion records. Probability distribution for each modeling parameter was used to simulate each structure scenario. Incremental dynamic analysis was used to assess spectral acceleration associated with collapse limit state for each structure scenario. The results of the analyses were used to train and validate a three-layered artificial neural network, and Monte Carlo simulation is implemented based on trained neural network for a sample moment-resisting steel frame in order to derive collapse fragility curve. Application of the proposed method enhances accuracy of identical computational run time compared with response surface-based method.
机译:地震脆性曲线表示结构满足各种破坏阶段的可能性。通常会考虑与地震荷载和结构行为相关的认知以及不确定性,以便分析性地绘制此类曲线。这种结构分析很耗时,需要大量的计算工作。在这项研究中,为了减少这种努力,考虑到记录间的可变性和建模参数不确定性的影响,使用人工神经网络方法来绘制倒塌破坏状态下的结构地震脆性曲线。在有限数量的已记录强地面运动记录下,针对有限数量的结构场景执行结构分析。每个建模参数的概率分布用于模拟每个结构方案。增量动态分析用于评估与每个结构场景的塌陷极限状态相关的光谱加速度。分析的结果用于训练和验证三层人工神经网络,并基于训练的神经网络对样本抗力矩钢框架进行了蒙特卡洛模拟,以得出坍塌脆弱性曲线。与基于响应面的方法相比,该方法的应用提高了相同计算运行时间的准确性。

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