A deep learning urban traffic congestion forecast model blending the temporal continuity and periodicity

Bin Mu, Yuxi Huang
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Abstract

Traffic congestion has become an inevitable and difficult disease in the process of urban development, and it has also brought harm and hidden dangers to citizens' travel and urban development. The emergence of GCN solves the problem of capturing the spatial characteristics of urban road traffic. Based on this, we propose a new method that considers the periodicity of traffic patterns and builds a neural network model with multiple time scales to capture more detailed features. And the experiment proves that our model is better in predicting traffic congestion.
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一种融合时间连续性和周期性的深度学习城市交通拥堵预测模型
交通拥堵已成为城市发展过程中不可避免的顽疾,也给市民出行和城市发展带来了危害和隐患。GCN的出现解决了城市道路交通空间特征的捕捉问题。在此基础上,我们提出了一种考虑交通模式周期性的新方法,并建立了一个多时间尺度的神经网络模型来捕捉更详细的特征。实验证明,该模型能较好地预测交通拥堵。
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