Physics-informed artificial intelligence models for the seismic response prediction of rocking structures

Shirley Shen, C. Málaga‐Chuquitaype
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Abstract

Abstract The seismic response of a wide variety of structures, from small but irreplaceable museum exhibits to large bridge systems, is characterized by rocking. In addition, rocking motion is increasingly being used as a seismic protective strategy to limit the amount of seismic actions (moments) developed at the base of structures. However, rocking is a highly nonlinear phenomenon governed by non-smooth dynamic phases that make its prediction difficult. This study presents an alternative approach to rocking estimation based on a physics-informed convolutional neural network (PICNN). By training a group of PICNNs using limited datasets obtained from numerical simulations and encoding the known physics into the PICNNs, important predictive benefits are obtained relieving difficulties associated with over-fitting and minimizing the requirement for a large training database. Two models are created depending on the validation of the deep PICNN: the first model assumes that state variables including rotations and angular velocities are available, while the second model is useful when only acceleration measurements are known. The analysis is initiated by implementing K-means clustering. This is followed by a detailed statistical assessment and a comparative analysis of the response-histories of a rocking block. It is observed that the deep PICNN is capable of effectively estimating the seismic rocking response history when the rigid block does not overturn.
用于摇晃结构地震响应预测的物理信息人工智能模型
摘要 从小型但不可替代的博物馆展品到大型桥梁系统,各种结构的地震反应都以摇晃为特征。此外,摇晃运动正越来越多地被用作一种抗震保护策略,以限制结构底部产生的地震作用(力矩)。然而,摇晃是一种高度非线性的现象,受非平滑动态阶段的支配,因此很难对其进行预测。本研究提出了一种基于物理信息卷积神经网络(PICNN)的摇晃估算替代方法。通过使用从数值模拟中获得的有限数据集来训练一组 PICNN,并将已知物理信息编码到 PICNN 中,从而获得了重要的预测优势,缓解了与过度拟合相关的困难,并最大限度地降低了对大型训练数据库的要求。根据深度 PICNN 的验证情况,我们创建了两个模型:第一个模型假定可以获得包括旋转和角速度在内的状态变量,而第二个模型在只知道加速度测量值的情况下非常有用。分析开始时采用 K 均值聚类。随后进行详细的统计评估,并对摇动块的响应历史进行比较分析。结果表明,当刚性块体没有倾覆时,深度 PICNN 能够有效地估计地震摇晃响应历史。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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