基于路网富图的细粒度深度交通推断

Zhanyu Liu, Chumeng Liang, Guanjie Zheng, Hua Wei
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引用次数: 1

摘要

本文提出了细粒度的流量预测任务(例如数据点之间的间隔为1分钟),这对于流量相关的下游应用至关重要。在此设置下,交通流受交通信号的影响较大,交通节点之间的关联是动态的。这导致节点间的交通数据不平滑,难以利用以往关注交通数据平滑的方法。为了解决这个问题,我们提出了细粒度深度流量推断,称为FDTI。具体而言,我们基于交通信号构建了细粒度交通图来建模道路间关系。然后,提出了一个物理可解释的动态移动卷积模块,以捕获交通信号控制下的车辆运动动态。此外,引入了交通流守恒来准确地推断未来的交通量。大量的实验表明,我们的方法达到了最先进的性能,并且具有良好的学习性能。据我们所知,我们是第一个进行城市级细粒度交通预测的公司。
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FDTI: Fine-grained Deep Traffic Inference with Roadnet-enriched Graph
This paper proposes the fine-grained traffic prediction task (e.g. interval between data points is 1 minute), which is essential to traffic-related downstream applications. Under this setting, traffic flow is highly influenced by traffic signals and the correlation between traffic nodes is dynamic. As a result, the traffic data is non-smooth between nodes, and hard to utilize previous methods which focus on smooth traffic data. To address this problem, we propose Fine-grained Deep Traffic Inference, termed as FDTI. Specifically, we construct a fine-grained traffic graph based on traffic signals to model the inter-road relations. Then, a physically-interpretable dynamic mobility convolution module is proposed to capture vehicle moving dynamics controlled by the traffic signals. Furthermore, traffic flow conservation is introduced to accurately infer future volume. Extensive experiments demonstrate that our method achieves state-of-the-art performance and learned traffic dynamics with good properties. To the best of our knowledge, we are the first to conduct the city-level fine-grained traffic prediction.
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