基于新图卷积模型的大尺度时空交通流数据预测

Ke Wang, Tongtong Shi, Rui He, Wubei Yuan
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引用次数: 0

摘要

及时准确地预测交通流量是非常有用的。有助于交通管理者分析道路占用状况,提前制定动态、灵活的交通控制措施,提高道路通行能力。它还可以为未来的道路使用者提供更精确的导航指导。然而,由于交通流数据具有复杂的相互关系和非线性动态性,难以对大尺度时空交通流数据进行快速、高精度的预测。随着深度学习等技术的发展,许多预测网络可以利用时间序列中积累的历史数据来预测交通流量。针对交通流的地域性特点,系统介绍了新兴的图卷积网络(GCN)模型,并给出了代表性应用。这些成功的应用为快速、合理的交通控制策略提供了可能的途径,可以缓解交通压力、减少潜在冲突、加快应急响应等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of Large Scale Spatio-temporal Traffic Flow Data with New Graph Convolution Model
Prompt and accurate prediction of traffic flow is quite useful. It will help traffic administrator to analyze the road occupancy status and formulate dynamic and flexible traffic control in advance to improve the road capacity. It can also provide more precise navigation guidance for the road users in future. However, it is hard to predict spatiotemporal traffic flow data in large scale promptly with high accuracy caused by complex interrelation and nonlinear dynamic nature. With development of deep learning and other technologies, many prediction networks could predict traffic flow with accumulated historical data in time series. In consideration of the regional characteristics of traffic flow, the emerging Graph Convolutional Network (GCN) model is systematically introduced with representative applications. Those successful applications provide a possible way to contribute fast and proper traffic control strategies that could relieve traffic pressure, reduce potential conflict, fasten emergency response, etc.
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