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Operational Modal Analysis of Bridge Structures with Data from GNSS/Accelerometer Measurements

机译:GNSS /加速度计测量数据对桥梁结构的运行模态分析

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摘要

Real-time dynamic displacement and acceleration responses of the main span section of the Tianjin Fumin Bridge in China under ambient excitation were tested using a Global Navigation Satellite System (GNSS) dynamic deformation monitoring system and an acceleration sensor vibration test system. Considering the close relationship between the GNSS multipath errors and measurement environment in combination with the noise reduction characteristics of different filtering algorithms, the researchers proposed an AFEC mixed filtering algorithm, which is an combination of autocorrelation function-based empirical mode decomposition (EMD) and Chebyshev mixed filtering to extract the real vibration displacement of the bridge structure after system error correction and filtering de-noising of signals collected by the GNSS. The proposed AFEC mixed filtering algorithm had high accuracy (1 mm) of real displacement at the elevation direction. Next, the traditional random decrement technique (used mainly for stationary random processes) was expanded to non-stationary random processes. Combining the expanded random decrement technique (RDT) and autoregressive moving average model (ARMA), the modal frequency of the bridge structural system was extracted using an expanded ARMA_RDT modal identification method, which was compared with the power spectrum analysis results of the acceleration signal and finite element analysis results. Identification results demonstrated that the proposed algorithm is applicable to analyze the dynamic displacement monitoring data of real bridge structures under ambient excitation and could identify the first five orders of the inherent frequencies of the structural system accurately. The identification error of the inherent frequency was smaller than 6%, indicating the high identification accuracy of the proposed algorithm. Furthermore, the GNSS dynamic deformation monitoring method can be used to monitor dynamic displacement and identify the modal parameters of bridge structures. The GNSS can monitor the working state of bridges effectively and accurately. Research results can provide references to evaluate the bearing capacity, safety performance, and durability of bridge structures during operation.
机译:使用全球导航卫星系统(GNSS)动态变形监测系统和加速度传感器振动测试系统,对天津富民大桥主跨段在环境激励下的实时动态位移和加速度响应进行了测试。考虑到GNSS多径误差与测量环境之间的紧密联系以及不同滤波算法的降噪特性,研究人员提出了AFEC混合滤波算法,该算法是基于自相关函数的经验模式分解(EMD)和Chebyshev的组合在系统误差校正和GNSS收集的信号的滤波去噪之后,通过混合滤波提取桥梁结构的真实振动位移。提出的AFEC混合滤波算法在仰角方向的真实位移具有较高的精度(1 mm)。接下来,传统的随机递减技术(主要用于平稳随机过程)被扩展为非平稳随机过程。结合扩展随机减量技术(RDT)和自回归移动平均模型(ARMA),使用扩展ARMA_RDT模态识别方法提取桥梁结构系统的模态频率,并与加速度信号和功率谱的功率谱分析结果进行比较。有限元分析结果。辨识结果表明,该算法适用于分析环境激励下真实桥梁结构的动力位移监测数据,可以准确识别结构系统固有频率的前五个阶。固有频率的识别误差小于6%,说明该算法具有较高的识别精度。此外,GNSS动态变形监测方法可用于监测动态位移并识别桥梁结构的模态参数。 GNSS可以有效,准确地监视桥梁的工作状态。研究结果可为评估桥梁结构在运行过程中的承载力,安全性能和耐久性提供参考。

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