A Graph-Based Temporal Attention Framework for Multi-Sensor Traffic Flow Forecasting

2021 
Accurate spatio-temporal traffic forecasting serves as the basis of dynamic strategy and applications for intelligent transportation systems, which is of great practical significance for improving traffic safety and mitigating road congestion. Recently, deep learning methods such as convolutional neural networks (CNN) have been applied to traffic flow forecasting, which exhibits better performance than conventional methods. However, these CNN-based methods typically learn traffic as images to model spatial correlation, which is only applicable to Euclidean grid map data rather than non-Euclidean multi-sensor data. To address this problem, we propose a graph-based temporal attention framework GTA, which considers both spatial and temporal correlation, to forecast traffic flow based on data collected from multiple sensors. More specifically, GTA can better capture spatial dependencies leveraging graph embedding techniques on sensor networks because it preserves more details in the algorithms. We also introduce an attention mechanism to adaptively identify the relations among temporal submodules. Spatio-temporal dependencies are more effectively and comprehensively integrated due to the full use of the topological properties of transportation networks. We evaluate GTA with a large-scale traffic dataset from England and enhance it with topology information. The experimental results show that our approach outperforms several state-of-the-art baselines.
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