基于注意力的通道交通速度预测门控循环单元

G. Khodabandelou, Mehdi Katranji, Sami Kraiem, W. Kheriji, F. Hadj-Selem
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引用次数: 4

摘要

随着快速城市化对高效交通规划政策的要求和交通流量的激增,交通速度预测成为一个规范的、蓬勃发展的研究领域。此外,车辆的速度对拥堵程度起着至关重要的作用。然后,交通速度估计可以帮助交通当局和网络用户处理道路基础设施的拥堵,或者至少提供每日客流的全球图景。在这项工作中,我们提出了第一种方法来预测未来的交通速度在路段(即链接)完全基于交通流量数据使用浮动汽车数据。在这项研究中,我们为遍布大巴黎的几个网络链路预处理了超过一百万的车辆流量。采用基于注意力的递归神经网络捕获交通流时间序列与速度时间序列之间的相关性。注意层从近期交通流的权重中学习模式,从而在非自由流条件下提取交通速度与许多因素(例如事件、高峰时间、土地使用等)的内在相互依赖性。结果表明,该模型在排除历史交通速度和网络图等附加数据的情况下,具有较好的预测效率。这是一个重要的属性,因为它可以避免数据混合中的繁琐,并促进资源可用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attention-based Gated Recurrent Unit for Links Traffic Speed Forecasting
With urge of demands on efficient transport planning policies along with surge of travel flow volumes due to fast urbanization, traffic speed forecasting becomes a canonical and thriving research domain. Furthermore, the vehicles speed plays a critical role in the level of congestion. Traffic speed estimation then helps transport authorities as well as network users to handle congestion over road infrastructures or at least provides a global picture of daily passenger flow. In this work, we propose the first methodology to forecast the future traffic speed over the road segments (i.e. links) exclusively based on traffic flow data using floating car data. For this study, we pre-process over one million vehicles flow for several network links spread all over the Greater Paris. A attention-based recurrent neural network is used to capture the correlation between the temporal sequences of traffic flow and that of speed. The attention layer learns patterns from weights of near-term traffic flow, thus extracts the inherent interdependency of traffic speed to many factors (e.g. incidents, rush hour, land use, etc.) in non-free-flow conditions. The results demonstrate the efficiency of the proposed model in traffic speed forecasting excluding additional data such as historic traffic speed and network graph contrary to cutting-edge work in the field. This is a substantial property since it allows avoiding the cumbersomeness in data mixing and facilitating resource availability.
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