Expected seismic performance of gravity dams using machine learning techniques

Rocio L. Segura, J. Padgett, P. Paultre
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引用次数: 3

Abstract

Methods for the seismic analysis of dams have improved extensively in the last several decades. Advanced numerical models have become more feasible and constitute the basis of improved procedures for design and assessment. A probabilistic framework is required to manage the various sources of uncertainty that may impact system performance and fragility analysis is a promising approach for depicting conditional probabilities of limit state exceedance under such uncertainties. However, the effect of model parameter variation on the seismic fragility analysis of structures with complex numerical models, such as dams, is frequently overlooked due to the costly and time-consuming revaluation of the numerical model. To improve the seismic assessment of such structures by jointly reducing the computational burden, this study proposes the implementation of a polynomial response surface metamodel to emulate the response of the system. The latter will be computationally and visually validated and used to predict the continuous relative maximum base sliding of the dam in order to build fragility functions and show the effect of modelling parameter variation. The resulting fragility functions are used to assess the seismic performance of the dam and formulate recommendations with respect to the model parameters. To establish admissible ranges of the model parameters in line with the current guidelines for seismic safety, load cases corresponding to return periods for the dam classification are used to attain target performance limit states.
使用机器学习技术预测重力坝的抗震性能
在过去的几十年里,大坝的地震分析方法有了很大的改进。先进的数值模型已变得更加可行,并成为改进设计和评估程序的基础。需要一个概率框架来管理可能影响系统性能的各种不确定性来源,而脆弱性分析是描述在这种不确定性下极限状态超越的条件概率的一种很有前途的方法。然而,模型参数变化对具有复杂数值模型的结构(如大坝)的地震易损性分析的影响往往被忽视,因为数值模型的重估成本高且耗时长。为了通过共同减少计算负担来提高这类结构的地震评估,本研究提出了一个多项式响应面元模型来模拟系统的响应。后者将在计算和视觉上进行验证,并用于预测大坝的连续相对最大基底滑动,以建立易损性函数并显示建模参数变化的影响。得到的易损性函数用于评估大坝的抗震性能,并根据模型参数制定建议。为了建立符合现行地震安全准则的模型参数允许范围,采用与大坝分级回归期相对应的荷载工况来达到目标性能极限状态。
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