TY - JOUR PY - 2024// TI - Trajectory-based spatiotemporal multi-task multi-graph network for traffic state prediction JO - Transportation research record A1 - Fang, Jie A1 - Chen, Wentian A1 - Xu, Mengyun A1 - Liu, Yuxuan A1 - Bi, Ting SP - 659 EP - 673 VL - 2678 IS - 4 N2 - As a critical application in intelligent transportation systems, traffic state prediction still faces various challenges, such as unsatisfactory capability of utilizing multi-source data and modeling spatiotemporal network relevancies. Therefore, we propose a trajectory-based multi-task multi-graph convolutional network (Tr-MTMGN), a novel spatiotemporal deep learning framework for traffic state prediction on a citywide scale. This method firstly mines the underlying information from vehicle trajectories and designs a multi-graph convolution block to investigate spatial correlations. Sequentially, the multi-head self-attention layer is integrated into the multi-task learning framework to capture the temporal dependencies of the traffic state. The proposed model was evaluated on field data collected in Zhangzhou, China, and demonstrated superior performance when compared with existing state-of-the-art baselines.

Language: en

LA - en SN - 0361-1981 UR - http://dx.doi.org/10.1177/03611981231185773 ID - ref1 ER -