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Bayesian learning for earthquake engineering applications and structural health monitoring

机译:贝叶斯学习地震工程应用和结构健康监测

摘要

Parallel to significant advances in sensor hardware, there have been recent developments of sophisticated methods for quantitative assessment of measured data that explicitly deal with all of the involved uncertainties, including inevitable measurement errors. The existence of these uncertainties often causes numerical instabilities in inverse problems that make them ill-conditioned.The Bayesian methodology is known to provide an efficient way to alleviate this ill-conditioning by incorporating the prior term for regularization of the inverse problem, and to provide probabilistic results which are meaningful for decision making.In this work, the Bayesian methodology is applied to inverse problems in earthquake engineering and especially to structural health monitoring. The proposed methodology of Bayesian earning using automatic relevance determination (ARD) prior, including its kernel version called the Relevance Vector Machine, is presented and applied to earthquake early warning, earthquake ground motion attenuation estimation, and structural health monitoring, using either a Bayesian classification or regression approach.The classification and regression are both performed in three phases: (1) Phase I (feature extraction phase): Determine which features from the data to use in a training dataset; (2) Phase II (training phase): Identify the unknown parameters defining a model by using a training dataset; and (3) Phase III (prediction phase): Predict the results based on the features from new data.This work focuses on the advantages of making probabilistic predictions obtained by Bayesian methods to deal with all uncertainties and the good characteristics of the proposed method in terms of computationally efficient training, and, especially, prediction that make it suitable for real-time operation. It is shown that sparseness (using only smaller number of basis function terms) is produced in the regression equations and classification separating boundary by using the ARD prior along with Bayesian model class selection to select the most probable (plausible) model class based on the data. This model class selection procedure automatically produces optimal regularization of the problem at hand, making it well-conditioned.Several applications of the proposed Bayesian learning methodology are presented. First, automatic near-source and far-source classification of incoming ground motion signals is treated and the Bayesian learning method is used to determine which ground motion features are optimal for this classification. Second, a probabilistic earthquake attenuation model for peak ground acceleration is identified using selected optimal features, especially taking a non-linearly involved parameter into consideration. It is shown that the Bayesian learning method an be utilized to estimate not only linear coefficients but also a non-linearly involved parameter to provide an estimate for an unknown parameter in the kernel basis functions for elevance Vector Machine. Third, the proposed method is extended to a general case of regression problems with vector outputs and applied to structural health monitoring applications. It is concluded that the proposed vector output RVM shows promise for estimating damage locations and their severities from change of modal properties such as natural frequencies and mode shapes.
机译:与传感器硬件的重大进步并行的是,最近出现了用于定量评估测量数据的复杂方法,这些方法可明确处理所有涉及的不确定性,包括不可避免的测量误差。这些不确定性的存在通常会导致反问题中的数值不稳定,从而使它们变得病态。众所周知,贝叶斯方法可以通过合并反问题正则化的前项来提供缓解这种病态的有效方法,并提供在这项工作中,贝叶斯方法被应用于地震工程中的逆问题,尤其是结构健康监测。提出了使用自动相关性确定(ARD)先验的贝叶斯收益拟议方法,包括其内核版本称为相关性向量机,并使用贝叶斯分类法将其应用于地震预警,地震地震动衰减估计和结构健康监测分类和回归都分三个阶段进行:(1)第一阶段(特征提取阶段):从数据中确定在训练数据集中使用哪些特征; (2)第二阶段(训练阶段):使用训练数据集识别定义模型的未知参数; (3)第三阶段(预测阶段):根据新数据的特征预测结果。这项工作着重于进行贝叶斯方法进行概率预测以应对所有不确定性的优点,以及该方法的良好特性。计算有效训练,尤其是预测的术语,使其适合于实时操作。结果表明,通过使用ARD先验和贝叶斯模型类别选择,根据数据选择最可能的(合理的)模型类别,在回归方程和分类分离边界中产生了稀疏性(仅使用较少数量的基函数项) 。该模型类别选择过程会自动生成当前问题的最佳正则化条件,使其条件良好。本文提出了贝叶斯学习方法的几种应用。首先,处理传入的地面运动信号的自动近源和远源分类,并使用贝叶斯学习方法来确定哪些地面运动特征对于此分类是最佳的。其次,使用选定的最佳特征,特别是考虑非线性相关参数,来确定峰值地面加速度的概率地震衰减模型。结果表明,贝叶斯学习方法不仅可以用于估计线性系数,而且可以用于估计非线性相关参数,从而为相关性向量机的核基函数提供未知参数的估计。第三,将所提出的方法扩展到具有向量输出的回归问题的一般情况,并应用于结构健康监测应用。结论是,提出的矢量输出RVM显示出通过模态特性(例如固有频率和模态形状)变化来估计损坏位置及其严重程度的希望。

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    Oh Chang Kook;

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  • 年度 2008
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