面向shm识别的AR+噪声与AR和ARMA模型

R. Guidorzi, R. Diversi, Loris Vincenzi, Vittorio Simioli
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引用次数: 7

摘要

结构健康监测(SHM)中最常见的方法包括对被监测结构对自然或人工刺激(如风、城市交通、地震事件等)的响应进行加速度测量,并在这些测量的基础上对结构的动力行为进行建模。这些模型尤其可以用于提取和比较主要模态,即主要谐振频率,并将这些频率与有关建筑物初始完整状态的频率进行比较。本文将传统AR和ARMA模型的结果与考虑了观测误差的AR+噪声模型的结果进行了比较,表明这些模型在SHM应用中可以提供一些优势,因为它们更准确地描述了过程的随机背景。比较是在两组不同的数据上进行的:第一组数据是在发生强烈地震事件的工业建筑上收集的,而第二组数据是在受到城市交通刺激的中世纪塔楼上收集的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AR+ noise versus AR and ARMA models in SHM-oriented identification
The most common approach in Structural Health Monitoring (SHM) consists in performing accelerometric measures of the response of the monitored structures to natural or artificial stimuli (e.g. wind, urban traffic, seismic events etc.) and in modeling the dynamic behavior of the structure on the basis of these measures. The models can be used, in particular, to extract and compare the main modes i.e. the main resonant frequencies and in comparing these frequencies with those concerning the initial state of integrity of the building. This paper compares the results given by traditional AR and ARMA models with those offered by AR+noise models where an additive observation error is considered and shows that these models can offer some advantages in SHM applications in that describe more accurately the stochastic context of the process. The comparisons have been performed on two different sets of data: the first one has been collected on an industrial building in occasion of an heavy seismic event whereas the second one has been collected on a medieval tower excited by urban traffic.
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