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利用行驶车辆中的智能手机对桥梁进行频率识别的逆滤波:基础发展与实验室验证

Inverse Filtering for Frequency Identification of Bridges Using Smartphones in Passing Vehicles: Fundamental Developments and Laboratory Verifications.

作者信息

Shirzad-Ghaleroudkhani Nima, Gül Mustafa

机构信息

Department of Civil and Environmental Engineering, University of Alberta, Edmonton, AB T6G 1H9, Canada.

出版信息

Sensors (Basel). 2020 Feb 21;20(4):1190. doi: 10.3390/s20041190.

DOI:10.3390/s20041190
PMID:32098089
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7070502/
Abstract

This paper puts forward a novel methodology of employing inverse filtering technique to extract bridge features from acceleration signals recorded on passing vehicles using smartphones. Since the vibration of a vehicle moving on a bridge will be affected by various features related to the vehicle, such as suspension and speed, this study focuses on filtering out these effects to extract bridge frequencies. Hence, an inverse filter is designed by employing the spectrum of vibration data of the vehicle when moving off the bridge to form a filter that will remove the car-related frequency content. Later, when the same car is moving on the bridge, this filter is applied to the spectrum of recorded data to suppress the car-related frequencies and amplify the bridge-related frequencies. The effectiveness of the proposed methodology is evaluated with experiments using a custom-built robot car as the vehicle moving over a lab-scale simply supported bridge. Nine combinations of speed and suspension stiffness of the car have been considered to investigate the robustness of the proposed methodology against car features. The results demonstrate that the inverse filtering method offers significant promise for identifying the fundamental frequency of the bridge. Since this approach considers each data source separately and designs a unique filter for each data collection device within each car, it is robust against device and car features.

摘要

本文提出了一种新颖的方法,即利用逆滤波技术从使用智能手机记录的过往车辆的加速度信号中提取桥梁特征。由于车辆在桥梁上行驶时的振动会受到与车辆相关的各种特征的影响,如悬架和速度,本研究专注于滤除这些影响以提取桥梁频率。因此,通过利用车辆驶离桥梁时的振动数据频谱设计一个逆滤波器,以形成一个能够去除与汽车相关频率成分的滤波器。之后,当同一辆车在桥梁上行驶时,将此滤波器应用于记录数据的频谱,以抑制与汽车相关的频率并放大与桥梁相关的频率。使用定制的机器人汽车作为在实验室规模的简支桥上行驶的车辆进行实验,评估了所提出方法的有效性。考虑了汽车速度和悬架刚度的九种组合,以研究所提出方法对汽车特征的鲁棒性。结果表明,逆滤波方法在识别桥梁基频方面具有很大的前景。由于这种方法分别考虑每个数据源,并为每辆车中的每个数据采集设备设计一个独特的滤波器,因此它对设备和汽车特征具有鲁棒性。

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