基于自回归模型参数子空间贝叶斯假设检验的环境荷载桥梁损伤检测

Y. Goi, Chul‐Woo Kim
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引用次数: 0

摘要

本研究探索了一种模态属性变化检测方法,以实现基于振动的桥梁结构健康监测中在役损伤检测的自动化和泛化。由于环境载荷引起的噪声往往掩盖了模态特性的差异,给在役损伤检测带来了困难。该方法直接将测量的时间序列转换为简化的异常指标,对负载噪声具有鲁棒性。本研究采用向量自回归模型来表示桥梁的振动。贝叶斯推理产生模型参数的后验概率分布函数。主成分分析在模型参数中提取与模态属性相当的子空间。贝叶斯假设检验量化提取的子空间中的异常。通过实际钢桁架桥梁的现场振动试验,对该方法的可行性进行了评价。现场试验包括对桁架构件的破坏切断。从主成分分析中估计的模态频率和模态振型与先前报道的结果吻合得很好。所提出的损伤检测方法成功地识别出了实验中所考虑的所有损伤。
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Bridge Damage Detection Using Ambient Loads by Bayesian Hypothesis Testing for a Parametric Subspace of an Autoregressive Model
This study explores a change detection method in modal properties to automate and generalize in-service damage detection for vibration-based structural health monitoring of bridges. The noisy conditions caused by ambient loading pose difficulty for in-service damage detection because the load-induced noise often masks the difference in the modal properties. The proposed method directly converts measured time series into a simplified anomaly indicator robust against load-induced noise. This study adopts a vector autoregressive model to represent the vibration of bridges. Bayesian inference produces a posterior probability distribution function of the model parameters. Principal component analysis extracts a subspace comparable to the modal properties in the model parameters. Bayesian hypothesis testing quantifies anomalies in the extracted subspace. The feasibility of the proposed method is assessed with vibration data from field experiments conducted on an actual steel truss bridge. The field experiment includes damage severing the truss members. The modal frequencies and mode shapes estimated from the principal component analysis correspond well to earlier reported results. The proposed damage detection method successfully indicated all damage considered in the experiment.
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