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Development and validation of nonlinear computational models of dispersed structures under strong earthquake excitation

机译:强烈地震作用下分散结构非线性计算模型的建立与验证

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Structural health monitoring of large multispan flexible bridges is particularly important because of their important role in civil infrastructure and transportation systems. In this study, the response of the Yokohama Bay Bridge (YBB), a three-span cable-stayed bridge, to the 2011 Great East Japan Earthquake is used to perform multi-input multi-output system identification studies. The extensive multicomponent measurements are also used to develop and validate data-driven nonlinear mathematical models that can predict the response of YBB to various earthquake records and can accurately estimate its damping characteristics when the system is driven into the nonlinear response range. A combination of least-square (parametric) and neural network (nonparametric) approaches is used to develop the mathematical models, along with time-marching techniques for dynamic response calculations. It is shown that the nonlinear mathematical models perform better than the equivalent linear models, both for response prediction and damping estimation. The importance of having an accurate approach for quantifying the damping due to the variety of nonlinear features in the YBB response is shown. This study demonstrates the significance of constructing robust mathematical models that can capture the correct physics of the underlying system and that can be used for computational purposes to augment experimental studies. Given the lack of suitable data sets for full-scale structures under extreme loads, the availability of the long-duration measurements from the 2011 Great East Japan Earthquake and its many strong aftershocks provides an excellent opportunity to perform the analyses presented in this study.
机译:大型多跨柔性桥梁的结构健康监测尤为重要,因为它们在民用基础设施和运输系统中发挥着重要作用。在这项研究中,横滨海湾大桥(YBB)(三跨斜拉桥)对2011年东日本大地震的反应被用于进行多输入多输出系统识别研究。广泛的多分量测量还用于开发和验证数据驱动的非线性数学模型,该模型可以预测YBB对各种地震记录的响应,并且在系统进入非线性响应范围时可以准确地估计YBB的阻尼特性。最小二乘(参数)和神经网络(非参数)方法的组合用于开发数学模型,以及用于动态响应计算的时间前进技术。结果表明,在响应预测和阻尼估计方面,非线性数学模型的性能均优于等效线性模型。展示了一种精确的方法来量化由于YBB响应中的非线性特征而引起的阻尼的重要性。这项研究证明了构建健壮的数学模型的重要性,该数学模型可以捕获基础系统的正确物理特性,并且可以用于计算目的以增强实验研究。鉴于在极端载荷下缺乏适合全尺寸结构的合适数据集,从2011年东日本大地震及其多次强烈余震中获得的长期测量数据的可用性为进行本研究提出的分析提供了极好的机会。

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