Machine Learning Approaches for Vehicle Counting on Bridges Based on Global Ground-Based Radar Data

Matthias Arnold, Sina Keller
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Abstract

Abstract. This study introduces a novel data-driven approach for classifying and estimating the number of vehicles crossing a bridge solely on non-invasive ground-based radar time series data (GBR data). GBR is used to measure the bridge displacement remotely. It has recently been investigated for remote bridge weigh-in-motion (BWIM). BWIM mainly focuses on single-vehicle events. However, events with several vehicles should be exploited to increase the amount of data. Therefore, extracting the number of involved vehicles in the first step would be beneficial. Acquiring such information from global bridge responses such as displacement can be challenging. This study indicates that a data-driven machine learning approach can extract the vehicle count from GBR time series data. When classifying events according to the number of vehicles, we achieve a balanced accuracy of up to 80 % on an imbalanced dataset. We also try to estimate the number of cars and trucks separately via regression and acquire a R2 of 0.8. Finally, we show the impact of the data augmentation methods we apply to the GBR data to tackle the skew in the dataset using the feature importance of Random Forests.
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基于全球地基雷达数据的桥梁车辆计数机器学习方法
摘要本研究介绍了一种新颖的数据驱动方法,该方法仅通过非侵入式地基雷达时间序列数据(GBR 数据)对通过桥梁的车辆数量进行分类和估算。GBR 用于远程测量桥梁位移。最近,该技术已被用于远程桥梁移动称重(BWIM)。BWIM 主要关注单车事件。然而,应利用有多辆车参与的事件来增加数据量。因此,在第一步提取涉及车辆的数量将是有益的。从位移等全局桥梁响应中获取此类信息具有挑战性。本研究表明,数据驱动的机器学习方法可以从 GBR 时间序列数据中提取车辆数量。根据车辆数量对事件进行分类时,我们在不平衡数据集上实现了高达 80% 的均衡准确率。我们还尝试通过回归分别估算小汽车和卡车的数量,R2 为 0.8。最后,我们展示了对 GBR 数据采用的数据增强方法的影响,该方法利用随机森林的特征重要性来解决数据集的偏斜问题。
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