利用雷达位移时间序列数据进行桥梁交通分类的机器学习和信号处理

Matthias Arnold, Sina Keller
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摘要

本文通过深度学习(DL)和非侵入式地基雷达(GBR)时间序列数据,介绍了一种新颖的 "路面无物"(NOR)桥梁动态称重(BWIM)方法。BWIM 可对特定地点进行结构健康监测(SHM),但通常难以安装和维护。GBR 可测量桥梁的非接触挠度。在本研究中,GBR 和无人飞行器 (UAV) 监测了德国的一座两跨桥梁,以收集地面实况数据。根据无人飞行器的数据,我们确定了车辆类型、车道、位置、速度、车轴数和车轴间距,以确定单个存在的车辆过桥情况。由于位移是一种全局响应,像传统的基于应变的 BWIM 那样使用峰值检测具有挑战性。因此,我们研究了数据驱动的机器学习方法,直接从位移数据中提取车辆配置。尽管真实世界的数据集较小且不平衡,但所提出的方法对卡车轴数等进行了分类,均衡准确率达到 76.7%,令人满意。此外,我们还证明,对于所选的桥梁,高频振动可能与穿过街道和桥梁交界处的车轴相吻合。我们评估了是否可以利用带通滤波或小波变换的滤波方法来识别车轴数和车轴间距。总之,我们可以证明 GBR 是 BWIM 系统的有力竞争者。
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Machine Learning and Signal Processing for Bridge Traffic Classification with Radar Displacement Time-Series Data
This paper introduces a novel nothing-on-road (NOR) bridge weigh-in-motion (BWIM) approach with deep learning (DL) and non-invasive ground-based radar (GBR) time-series data. BWIMs allow site-specific structural health monitoring (SHM) but are usually difficult to attach and maintain. GBR measures the bridge deflection contactless. In this study, GBR and an unmanned aerial vehicle (UAV) monitor a two-span bridge in Germany to gather ground-truth data. Based on the UAV data, we determine vehicle type, lane, locus, speed, axle count, and axle spacing for single-presence vehicle crossings. Since displacement is a global response, using peak detection like conventional strain-based BWIMs is challenging. Therefore, we investigate data-driven machine learning approaches to extract the vehicle configurations directly from the displacement data. Despite a small and imbalanced real-world dataset, the proposed approaches classify, e.g., the axle count for trucks with a balanced accuracy of 76.7% satisfyingly. Additionally, we demonstrate that, for the selected bridge, high-frequency vibrations can coincide with axles crossing the junction between the street and the bridge. We evaluate whether filtering approaches via bandpass filtering or wavelet transform can be exploited for axle count and axle spacing identification. Overall, we can show that GBR is a serious contender for BWIM systems.
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