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首页> 外文期刊>Vehicular Communications >Exploring spatiotemporal mobilities of highway traffic flows for precise travel time estimation and prediction based on electronic toll collection data
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Exploring spatiotemporal mobilities of highway traffic flows for precise travel time estimation and prediction based on electronic toll collection data

机译:基于电子收费数据的精确旅行时间估算和预测,探索公路交通流量的时空迁移性

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In this paper, we propose a travel time estimation and prediction (TTEP) framework to enhance the driving efficiency on highways through the Internet of Vehicles (IoV). Highway travel time estimation and prediction are important for the drivers in a long-distance traveling. The accurate travel time information on highways is the key to improve the efficiency of transportation systems. When current flow status is collected through the IoV, ITEP can accurately estimate and predict highway travel time by the proposed weighted root-mean-square similarity (Weighted-RMSS) method. In addition, when current flow status is unavailable at the present time, we propose the multiple slope-based linear regression (Multi-SBLR) method to predict highway travel time only using historical traffic data. Furthermore, the spatiotemporal mobilities of vehicles on highways are analyzed and explored to improve the prediction accuracy of the proposed Weighted-RMSS and Multi-SBLR methods. To verify the feasibility and superiority of ITEP, we adopt the open Electronic Toll Collection data of highways in Taiwan to evaluate the prediction accuracy of our approaches. Experimental results show that our approaches outperform existing methods and can significantly reduce the prediction errors of highway travel time. In particular, we further implement the Android-based and web-based systems of ITEP to predict and compare travel time at different departure times and locations for highway drivers. (C) 2021 Elsevier Inc. All rights reserved.
机译:在本文中,我们提出了一种旅行时间估计和预测(TTEP)框架,以通过车辆互联网(IOV)来提高高速公路上的驾驶效率。公路旅行时间估计和预测对于长途旅行中的驱动器非常重要。高速公路准确的旅行时间信息是提高运输系统效率的关键。当通过IOV收集电流流状态时,ITEE可以通过所提出的加权根均值(加权RMS)方法来准确地估计和预测公路旅行时间。另外,当当前流动状态不可用时,我们提出了基于斜率的线性回归(多SBLR)方法,以预测仅使用历史交通数据的公路旅行时间。此外,分析并探索了高速公路上车辆的时空迁移率,以提高所提出的加权RMS和多SBLR方法的预测准确性。为了验证ITEP的可行性和优越性,我们采用台湾高速公路的开放式电子收费数据来评估我们方法的预测准确性。实验结果表明,我们的方法优于现有方法,可以显着降低公路旅行时间的预测误差。特别是,我们进一步实施了基于Android和基于Web的ITEP系统,以预测和比较不同的出发时间和公路驱动程序的地点的旅行时间。 (c)2021 Elsevier Inc.保留所有权利。

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