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Bayesian Multiple Linear Regression and New Modeling Paradigm for Structural Deflection Robust to Data Time Lag and Abnormal Signal

偏转(物理) 滞后 线性回归 计算机科学 贝叶斯概率 结构健康监测 时间序列 数据挖掘 算法 人工智能 工程类 机器学习 结构工程 计算机网络 光学 物理
作者
Hanwei Zhao,Youliang Ding,Libo Meng,Zuowei Qin,Fan Yang,Aiqun Li
出处
期刊:IEEE Sensors Journal [Institute of Electrical and Electronics Engineers]
卷期号:23 (17): 19635-19647 被引量:31
标识
DOI:10.1109/jsen.2023.3294912
摘要

Long-span bridges are the lifeline throats of urban transportation network. Deflection (i.e., deformation) behavior of long-span bridges is complex. It can be found from long-term monitoring data that there is an obvious time-lag effect between the quasi-static behavior of deflection and environmental temperature, and abnormal signals, such as drift and jump-point, appear sporadically in the deflection data. In order to deal with the interference from the data time lag and abnormal signal, this article adopts the Bayesian multiple linear regression (BMLR) method to establish the mathematical model of bridge deflection based on temperature, other points’ deflection, or cable force data. A new paradigm of the recursive modeling strategy of BMLR for bridge deflection based on short-term data is proposed, which truly realizes the dynamic update ability of Bayes’ theorem in multiple regression modeling. Under the same conditions of modeling, the proposed paradigm performs higher accuracy of prediction and lower space of data storage occupied than the traditional multiple linear regression method and is less time taken than methods of deep learning. The whole process was validated to be robust to the data time lag and abnormal signal. When faced with the situation of sparse sensing points and not enough long time of monitoring, it is possible to fast predict deflection of new-added/adjusted sensing points using short-term observation data.
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