2024
DOI: 10.3390/infrastructures9030037
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Machine Learning and Signal Processing for Bridge Traffic Classification with Radar Displacement Time-Series Data

Matthias Arnold,
Sina Keller

Abstract: 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, loc… Show more

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