Traffic Performance Score: Measuring Urban Mobility and Online Predicting of Near-Term Traffic, like Weather Forecasting

Zhiyong Cui, Meng-Ju Tsai, Meixin Zhu, H. Yang, Chenxi Liu, Shuyi Yin, Yinhai Wang
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Abstract

Measuring traffic performance is critical for public agencies which manage traffic and individuals who. This is the topic which the authors attempt to emphasize. One potential challenge for traffic prediction tasks is that short-term-incident-induced traffic pattern changes cannot be timely detected and the deployed model cannot adapt to the new traffic pattern. As for encountering long-term incidents, such as during COVID-19, traffic patterns are gradually changing, and the prediction model also needs to be periodically updated to avoid the so-called out-of-distribution problem. Therefore, the online training and predicting mechanisms can facilitate model updates, deployment of traffic prediction applications, and the planning of trips, especially when special events happen, such as the long-lasting COVID-19 pandemic. However, most existing traffic performance metrics narrowly focus on one aspect of the impacts but not comprehensive changes to the network. Further, during the pandemic, urban traffic patterns and travelers’ trip planning were dramatically affected and, thus, network-wide online traffic prediction became an urgent but more complicated task. To overcome such challenges, this study proposes a traffic performance score (TPS) incorporating multiple parameters for measuring both urban and freeway network-wide traffic performance. The TPS is compared with other metrics to show its superiority. To solve the challenging network-wide online traffic prediction task, this study also proposes an online training and updating strategy to predict network-wide traffic performance. Experimental results indicate that the proposed model with the online learning strategy outperforms existing methods in prediction accuracy and learning efficiency. In addition, the TPS measurement and its related online prediction functions are implemented on a publicly accessible platform and applied in real practice, which is another contribution of this work.
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交通性能评分:像天气预报一样测量城市流动性和在线预测近期交通状况
对于管理交通的公共机构和个人来说,衡量交通绩效至关重要。这正是作者试图强调的主题。交通预测任务面临的一个潜在挑战是,无法及时发现短期事故引发的交通模式变化,部署的模型也无法适应新的交通模式。至于遇到长期事件,如 COVID-19 期间,交通模式是逐渐变化的,预测模型也需要定期更新,以避免所谓的分布外问题。因此,在线训练和预测机制可以促进模型更新、交通预测应用的部署和出行规划,尤其是在特殊事件发生时,如 COVID-19 大流行的长期性。然而,大多数现有的交通性能指标只关注影响的一个方面,而不是网络的全面变化。此外,在大流行病期间,城市交通模式和旅行者的行程规划都受到了极大影响,因此,全网在线交通预测成为一项紧迫但更加复杂的任务。为了克服这些挑战,本研究提出了一种包含多个参数的交通性能评分(TPS),用于衡量城市和高速公路全网的交通性能。将 TPS 与其他指标进行了比较,以显示其优越性。为了解决具有挑战性的全网在线交通预测任务,本研究还提出了一种在线训练和更新策略来预测全网交通性能。实验结果表明,采用在线学习策略的拟议模型在预测准确性和学习效率方面均优于现有方法。此外,TPS 测量及其相关在线预测功能已在一个可公开访问的平台上实现并应用于实际,这是本研究的另一个贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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