Department of Mathematics Applied to Information and Communication Technologies, Universidad Politécnica de Madrid, 28040 Madrid, Spain.
Sensors (Basel). 2022 Jun 17;22(12):4565. doi: 10.3390/s22124565.
Bluetooth monitoring systems (BTMS) have opened a new era in traffic sensing, providing a reliable, economical, and easy-to-deploy solution to uniquely identify vehicles. Raw data from BTMS have traditionally been used to calculate travel time and origin-destination matrices. However, we could extend this to include other information like the number of vehicles or their residence times. This information, together with their temporal components, can be applied to the complex task of forecasting traffic. Level of service (LOS) prediction has opened a novel research line that fulfills the need to anticipate future traffic states, based on a standard link-based variable, accepted for both researchers and practitioners. In this paper, we incorporate BTMS's extended variables and temporal information to an LOS classifier based on a Random Undersampling Boost algorithm, which is proven to efficiently respond to the data unbalance intrinsic to this problem. By using this approach, we achieve an overall recall of 87.2% for up to 15-min prediction horizons, reaching 96.6% predicting congestion, and improving the results for the intermediate traffic states, especially complex given their intrinsic instability. Additionally, we provide detailed analyses on the impact of temporal information on the LOS predictor's performance, observing improvements up to a separation of 50 min between last features and prediction horizons. Furthermore, we study the predictor importance resulting from the classifiers to highlight those features contributing the most to the final achievements.
蓝牙监测系统(BTMS)开创了交通感应的新纪元,为独特地识别车辆提供了可靠、经济且易于部署的解决方案。BTMS 的原始数据传统上用于计算行程时间和出行起讫矩阵。然而,我们可以将其扩展到包括其他信息,如车辆数量或停留时间。这些信息及其时间组成部分可以应用于预测交通的复杂任务。服务水平(LOS)预测开辟了一条新的研究路线,满足了根据研究人员和从业者都接受的基于标准链路的变量来预测未来交通状态的需求。在本文中,我们将 BTMS 的扩展变量和时间信息纳入基于随机欠采样提升算法的 LOS 分类器中,该算法已被证明能够有效地应对该问题固有的数据不平衡问题。通过使用这种方法,我们在长达 15 分钟的预测时间范围内实现了 87.2%的整体召回率,达到了 96.6%的拥堵预测准确率,并提高了中间交通状态的预测准确率,尤其是对于那些由于其内在不稳定性而变得复杂的交通状态。此外,我们还对时间信息对 LOS 预测器性能的影响进行了详细分析,观察到在最后特征和预测时间之间的间隔长达 50 分钟时,性能有所提高。此外,我们研究了分类器产生的预测器重要性,以突出那些对最终结果贡献最大的特征。