FTPG: A Fine-Grained Traffic Prediction Method With Graph Attention Network Using Big Trace Data

Short-term traffic prediction is of great importance to the management of traffic congestion, a pervasive and difficult-to-solve problem in many metropolises all over the world. However, existing studies on traffic prediction contain rough traffic information at the carriageway level that ignore the...

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Veröffentlicht in:IEEE transactions on intelligent transportation systems 2022-06, Vol.23 (6), p.5163-5175
Hauptverfasser: Fang, Mengyuan, Tang, Luliang, Yang, Xue, Chen, Yang, Li, Chaokui, Li, Qingquan
Format: Artikel
Sprache:eng
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Zusammenfassung:Short-term traffic prediction is of great importance to the management of traffic congestion, a pervasive and difficult-to-solve problem in many metropolises all over the world. However, existing studies on traffic prediction contain rough traffic information at the carriageway level that ignore the distinction between different turns in one intersection. With the aim of predicting traffic at road intersections from big trace data on a finer scale, this study proposes a novel method, the fine-grained traffic prediction method (FTPG) with a graph attention network (GAT), which predicts traffic information, including traffic flow speeds, traffic states, and average queue lengths, at the turn level. In the FTPG, a method for estimation of the queue starting point is proposed to improve the accuracy of traffic information detection. Furthermore, the topology is constructed under turn-level conditions, and a GAT-based method, the spatio-temporal residual graph attention network (ST-RGAN), is proposed to improve the prediction accuracy. Experiments are performed using taxi GPS trace data collected in the city of Wuhan and show that the proposed FTPG method can make predictions with fine-grained traffic information for road intersections accurately and robustly.
ISSN:1524-9050
1558-0016
DOI:10.1109/TITS.2021.3049264