论文标题
使用异步移动传感数据进行桥梁结构健康监测
Bridge Structural Health Monitoring using Asynchronous Mobile Sensing Data
论文作者
论文摘要
这项研究为使用大量通过车辆收集的智能手机数据提供了一种灵活的桥梁模态识别方法。每次移动传感器的每次旅行,都会采样桥的时空响应,以及各种噪声来源,例如车辆动力学,环境效果和道路轮廓。本文提供了进一步的证据,以支持以下假设:通过跳闸聚集,可以减轻这种噪声效应,并展示真正的桥梁动力学。在这项研究中,将连续的小波变换应用于每次旅行,并将结果组合在一起以估计桥的结构模态响应。在实验环境中提出并验证了使用连续小波(CMICW)方法的众包模态识别。总而言之,该方法成功地识别了桥梁准确度高的桥梁的固有频率和绝对模式形状。值得注意的是,这些结果是第一个从移动传感器数据中提取扭转模式形状信息的结果。此外,研究了车速对估计精度的影响。最后,提出了一个混合模拟框架来说明原始移动传感数据中的车辆动力学。所提出的方法成功地消除了车辆动态效应和识别模态性能。这些结果有助于对移动人群实践的知识不断增长,以实现运输基础设施的物理特性。
This study presents a flexible approach for bridge modal identification using smartphone data collected by a large pool of passing vehicles. With each trip of a mobile sensor, the spatio-temporal response of the bridge is sampled, plus various sources of noise, e.g., vehicle dynamics, environmental effects, and road profile. This paper provides further evidence to support the hypothesis that through trip aggregation, such noise effects can be mitigated and the true bridge dynamics are exhibited. In this study, the continuous wavelet transform is applied to each trip, and the results are combined to estimate the structural modal response of the bridge. The Crowdsourced Modal Identification using Continuous Wavelets (CMICW) method is presented and validated in an experimental setting. In summary, the method successfully identifies natural frequencies and absolute mode shapes of a bridge with high accuracy. Notably, these results are the first to extract torsional mode shape information from mobile sensor data. Moreover, the influence of vehicle speed on the estimation accuracy is investigated. Finally, a hybrid simulation framework is proposed to account for the vehicle dynamics within the raw mobile sensing data. The proposed method is successful in removing vehicle dynamic effects and identifying modal properties. These results contribute to the growing body of knowledge on the practice of mobile crowdsensing for physical properties of transportation infrastructure.