西安电子科技大学学报 ›› 2023, Vol. 50 ›› Issue (5): 65-74.doi: 10.19665/j.issn1001-2400.20221101

• 信息与通信工程 & 计算机科学与技术 • 上一篇    下一篇

一种融合纵横时空特征的交通流预测方法

侯越(),郑鑫(),韩成艳()   

  1. 兰州交通大学 电子与信息工程学院,甘肃 兰州 730070
  • 收稿日期:2022-08-03 出版日期:2023-10-20 发布日期:2023-11-21
  • 作者简介:侯 越(1979—),女,教授,E-mail:houyue@mail.lzjtu.cn;|郑 鑫(1998—),男,兰州交通大学硕士研究生,E-mail:zhengxin9810@163.com;|韩成艳(1998—),女,兰州交通大学硕士研究生,E-mail:Hanchengy2021@163.com
  • 基金资助:
    国家自然科学基金(62063014);甘肃省自然基金(22JR5RA365);甘肃省教育科技创新项目(2021CYZC-04)

Traffic flow prediction method for integrating longitudinal and horizontal spatiotemporal characteristics

HOU Yue(),ZHENG Xin(),HAN Chengyan()   

  1. School of Electronics and Information Engineering,Lanzhou Jiaotong University,Lanzhou 730070,China
  • Received:2022-08-03 Online:2023-10-20 Published:2023-11-21

摘要:

针对现有城市道路交通流预测研究中,上下游交通流时滞特性与空间流动特性挖掘不足、车道级交通流时空特性考虑不充分的问题,提出一种融合纵横时空特征的交通流预测方法。首先,通过计算延迟时间量化并消除上下游交通流断面间的空间时滞影响,增强上下游交通流序列的时空相关性。其次,将消除空间时滞的交通流通过向量拆分数据输入方式传入双向长短时记忆网络,用以捕捉上下游交通流纵向的传递与回溯双向时空关系,同时利用多尺度卷积群挖掘待预测断面内部各车道交通流间多时间步横向时空关系。最后,采用注意力机制动态融合纵横时空特征得到预测输出值。实验结果表明,相较于常规时间序列预测模型,所提方法在单步预测实验中,平均绝对误差、均方根误差分别下降了约15.26%、13.83%,决定系数提升了约1.25%。在中长时多步预测实验中,进一步证明了所提方法可有效挖掘纵横向交通流的细粒化时空特征,并具有一定的稳定性和普适性。

关键词: 城市交通, 交通流预测, 纵横时空相关性, 深度学习, 特征融合

Abstract:

Aiming at the problems of insufficient mining of time delay characteristics and spatial flow characteristics of upstream and downstream traffic flow as well as insufficient consideration of spatiotemporal characteristics of lane-level traffic flow in existing urban road traffic flow prediction research,a traffic flow prediction method for integrating longitudinal and horizontal spatiotemporal characteristics is proposed.First,the method quantifies and eliminates the effect of spatial time lag between upstream and downstream traffic flow by calculating the delay time to enhance the spatiotemporal correlation of upstream and downstream traffic flow sequences.Then,the traffic flow with the elimination of spatial time lag is passed into the bidirectional long short-term memory network through the vector split data input method to capture the longitudinal transmission and backtracking bidirectional spatiotemporal relationship of upstream and downstream traffic flow.At the same time,the multiscale convolution group is used to mine the multi-time step horizontal spatiotemporal relationship between the traffic flows of each lane in the section to be predicted.Finally,the attention mechanism is used to dynamically fuse the longitudinal and horizontal spatiotemporal characteristics to obtain the predicted value.Experimental results show that by applying the proposed method in the single-step prediction experiment,the MAE and RMSE decrease by 15.26% and 13.83% respectively,and increase by 1.25% compared with conventional time series prediction model.In the medium and long-term multi-step prediction experiment,it is further proved that the proposed method can effectively mine the fine-grained spatiotemporal characteristics of longitudinal and horizontal traffic flow,and has a certain stability and universality.

Key words: urban transportation, traffic flow prediction, longitudinal and horizontal spatiotemporal correlation, deep learning, feature fusion

中图分类号: 

  • U491
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