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Modeling and diagnosis of structural systems through sparse dynamic graphical models

机译:通过稀疏动态图形模型对结构系统进行建模和诊断

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摘要

Since their introduction into the structural health monitoring field, time-domain statistical models have been applied with considerable success. Current approaches still have several flaws, however, as they typically ignore the structure of the system, using individual sensor data for modeling and diagnosis. This paper introduces a Bayesian framework containing much of the previous work with autoregressive models as a special case. In addition, the framework allows for natural inclusion of structural knowledge through the form of prior distributions on the model parameters. Acknowledging the need for computational efficiency, we extend the framework through the use of decomposable graphical models, exploiting sparsity in the system to give models that are simple to fit and understand. This sparsity can be specified from knowledge of the system, from the data itself, or through a combination of the two. Using both simulated and real data, we demonstrate the capability of the model to capture the dynamics of the system and to provide clear indications of structural change and damage. We also demonstrate how learning the sparsity in the system gives insight into the structure's physical properties.
机译:自从将它们引入结构健康监测领域以来,时域统计模型已得到了成功应用。但是,当前的方法仍然存在一些缺陷,因为它们通常会使用单独的传感器数据进行建模和诊断而忽略系统的结构。本文介绍了一个贝叶斯框架,其中包含许多以前的工作,并以自回归模型作为特例。另外,该框架允许通过模型参数上先验分布的形式自然地包含结构知识。认识到对计算效率的需求,我们通过使用可分解的图形模型来扩展框架,利用系统中的稀疏性来提供易于拟合和理解的模型。可以根据系统知识,数据本身或两者的结合来指定这种稀疏性。通过使用仿真数据和实际数据,我们演示了该模型捕获系统动态并提供结构变化和损坏的清晰指示的能力。我们还将演示如何学习系统中的稀疏性,从而洞悉结构的物理特性。

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