Short-term traffic prediction under disruptions using deep learning

Yanjie Dong, Fangce Guo, A. Sivakumar, J. Polak
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Abstract

In this chapter, we have proposed a novel graph -based model with TS-TGAT to predict short-term traffic speed under both normal and abnormal traffic fl ow conditions. The novelty of the proposed prediction model is that it can learn both spatial and temporal propagation rules for traffic on a network. Important concepts and improvements are introduced to the model, for example node -level attention weights, multi -head attention and depth -wise separable CNN module to take account of the unique and complex interactions between traffic fl ows and traffic network characteristics. The proposed prediction model was trained and tested using ILDs on a section of the M25 motorway network just before the Dartford Crossing (between Dartford Tunnel and M25 J2 with all slip roads). In order to make the model generic and reusable, the model was trained using generic data (including both normal and abnormal traffic fl ow data) and was tested under mixed conditions and disrupted conditions. A selection of baseline methods was used to benchmark the proposed model performance, including HA, kNN, GBDTs and LSTM, some of which are state-of-the-art methods in the problem of short-term traffic prediction. The results have shown that the proposed TS-TGAT method outperforms other benchmarking methods under both normal and abnormal traffic conditions.
利用深度学习进行中断下的短期交通预测
在本章中,我们提出了一种新的基于图的TS-TGAT模型来预测正常和异常交通流条件下的短期交通速度。该预测模型的新颖之处在于它可以学习网络中流量的时空传播规则。为了考虑交通流与交通网络特性之间独特而复杂的相互作用,在模型中引入了节点级关注权、多头关注和深度可分CNN模块等重要概念和改进。建议的预测模型在达特福德十字路口(达特福德隧道与M25 J2之间,所有支路)之前的一段M25高速公路网络上进行了训练和测试。为了使模型具有通用性和可重用性,使用通用数据(包括正常和异常交通流数据)对模型进行训练,并在混合条件和中断条件下对模型进行测试。采用一系列基准方法对所提出的模型性能进行基准测试,包括HA、kNN、GBDTs和LSTM,其中一些方法是短期交通预测问题的最新方法。结果表明,所提出的TS-TGAT方法在正常和异常交通条件下均优于其他基准测试方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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