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Modal parameters identification of bridge by improved stochastic subspace identification method with Grubbs criterion
Author(s) -
Yulin Zhou,
Xulei Jiang,
Mingjin Zhang,
Jinxiang Zhang,
Hao Sun,
Xin Li
Publication year - 2021
Publication title -
measurement and control
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.286
H-Index - 21
eISSN - 2051-8730
pISSN - 0020-2940
DOI - 10.1177/0020294021993831
Subject(s) - modal , subspace topology , identification (biology) , damping matrix , modal analysis , computer science , system identification , stability (learning theory) , finite element method , bridge (graph theory) , control theory (sociology) , algorithm , mathematics , engineering , structural engineering , data mining , artificial intelligence , stiffness matrix , machine learning , chemistry , botany , control (management) , polymer chemistry , biology , measure (data warehouse) , medicine
In the wind tunnel test of a long-span bridge model, to ensure that the dynamic characteristics of the model can satisfy the test design requirements, it is particularly important to accurately identify the modal parameters of the model. First, the stochastic subspace identification algorithm was used to analyze the modal parameters of the model in the wind tunnel test; then, Grubbs criterion was introduced to effectively eliminate outliers in the damping ratio matrix. Stochastic subspace identification algorithm with Grubbs criterion improved the accuracy of the modal parameter identification and the ability to determine system matrix order and prevented the modal omissions caused by determining the stable condition of the damping ratio in the stability diagram. Finally, Oujiang Bridge was used as an example to verify the stochastic subspace identification algorithm with Grubbs criterion and compare with the results of the finite element method. The example shows that the improved method can be effectively applied to the modal parameter identification of bridges.

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