TY - JOUR PY - 2024// TI - A dual-stream cross AGFormer-GPT network for traffic flow prediction based on large-scale road sensor data JO - Sensors (Basel) A1 - Sun, Yu A1 - Shi, Yajing A1 - Jia, Kaining A1 - Zhang, Zhiyuan A1 - Qin, Li SP - e3905 EP - e3905 VL - 24 IS - 12 N2 - Traffic flow prediction can provide important reference data for managers to maintain traffic order, and can also be based on personal travel plans for optimal route selection. On account of the development of sensors and data collection technology, large-scale road network historical data can be effectively used, but their high non-linearity makes it meaningful to establish effective prediction models. In this regard, this paper proposes a dual-stream cross AGFormer-GPT network with prompt engineering for traffic flow prediction, which integrates traffic occupancy and speed as two prompts into traffic flow in the form of cross-attention, and uniquely mines spatial correlation and temporal correlation information through the dual-stream cross structure, effectively combining the advantages of the adaptive graph neural network and large language model to improve prediction accuracy. The experimental results on two PeMS road network data sets have verified that the model has improved by about 1.2% in traffic prediction accuracy under different road networks.
Language: en
LA - en SN - 1424-8220 UR - http://dx.doi.org/10.3390/s24123905 ID - ref1 ER -