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A series of forecasting models for seismic evaluation of dams based on ground motion meta-features

机译:基于地震动元特征的大坝抗震评估预报模型

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摘要

Uncertainty quantification (UQ) due to seismic ground motions variability is an important task in risk-informed condition assessment of infrastructures. Since performing multiple dynamic analyses is computationally expensive, it is valuable to develop a series of forecasting models based on the unique ground motion characteristics.This paper discusses the application of six different machine learning techniques on forecasting the structural behavior of gravity dams. Various time-, frequency-, and intensity-dependent characteristics are extracted from ground motion signals and used in machine learning. A large set of about 2000 real ground motions are used, each includes about 35 meta-features. The major outcome of this study is to show the applicability of meta-modeling-based UQ in seismic safety evaluation of dams. As an intermediary result, the advantages of different machine learning algorithms, as well as meta-feature selection possibility is discussed for the current dataset. This paper proposes a feasibility study to reduce the computational costs in UQ of large-scale infra-structural systems.
机译:由于地震地震动的可变性导致的不确定性量化(UQ)是基础设施的风险知情状态评估中的重要任务。由于执行多个动态分析的计算量很大,因此有必要基于独特的地面运动特征开发一系列的预测模型。本文讨论了六种不同的机器学习技术在预测重力坝结构行为中的应用。从地面运动信号中提取各种与时间,频率和强度有关的特性,并将其用于机器学习。使用了大量的大约2000个真实地面运动,每个运动包含大约35个元特征。这项研究的主要成果是表明基于元模型的UQ在大坝地震安全性评估中的适用性。作为中间结果,讨论了针对当前数据集的不同机器学习算法的优势以及元特征选择的可能性。本文提出了一项可行性研究,以减少大型基础设施系统的统一计量中的计算成本。

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