Traffic speed prediction is the key to many valuable applications, and it is also a challenging task because of its various influencing factors. Recent work attempts to obtain more information through various hybrid models, thereby improving the prediction accuracy. However, the spatial information acquisition schemes of these methods have two-level differentiation problems. Either the modeling is simple but contains little spatial information, or the modeling is complete but lacks flexibility. In order to introduce more spatial information on the basis of ensuring flexibility, this paper proposes IRNet (Transferable Intersection Reconstruction Network). First, this paper reconstructs the intersection into a virtual intersection with the same structure, which simplifies the topology of the road network. Then, the spatial information is subdivided into intersection information and sequence information of traffic flow direction, and spatiotemporal features are obtained through various models. Third, a self-attention mechanism is used to fuse spatiotemporal features for prediction. In the comparison experiment with the baseline, not only the prediction effect, but also the transfer performance has obvious advantages.
翻译:交通速度预测是许多宝贵应用的关键,也是一项具有挑战性的任务,因为它具有各种影响因素。最近的工作试图通过各种混合模型获取更多信息,从而提高预测的准确性。然而,这些方法的空间信息获取计划存在两种不同的问题。要么建模简单,但很少包含空间信息,要么建模完整,但缺乏灵活性。为了在确保灵活性的基础上引入更多的空间信息,本文件提议了IRNet(可移动的交叉重建网络) 。首先,本文件将交叉点重建成一个虚拟交叉点,与同一结构形成虚拟交叉点,该结构简化了公路网络的地形学。然后,空间信息又细分为交叉信息和交通流量方向的序列信息,而空间特征则通过各种模型获得。第三,使用自留机制将空间时空特性结合用于预测。在对基线的比较试验中,不仅对预测效果进行了分析,而且转移性能也有明显的好处。