Litcius/Paper detail

Spatiotemporal Residual Graph Attention Network for Traffic Flow Forecasting

Qingyong Zhang, Changwu Li, Fuwen Su, Yuanzheng Li

2023IEEE Internet of Things Journal68 citationsDOI

Abstract

Accurate spatiotemporal traffic flow forecasting is significant for the modern traffic management and control. In order to capture the spatiotemporal characteristics of the traffic flow simultaneously, we propose a novel spatiotemporal residual graph attention network (STRGAT). First, the network adopts a deep full residual graph attention block, which performs a dynamic aggregation of spatial features regarding the node information of the traffic network. Second, a sequence-to-sequence block is designed to capture the temporal dependence in the traffic flow. The traffic flow data with weekly periodic dependencies are also integrated and STRGAT is used for traffic forecasting of traffic road networks. The experiments are conducted on three real data sets in California, USA. Results verify that our proposed STRGAT is able to learn the spatiotemporal correlation of traffic flow well and outperforms the state-of-the-art methods.

Topics & Concepts

Computer scienceResidualGraphTraffic generation modelTraffic flow (computer networking)Data miningNetwork traffic simulationFlow networkBlock (permutation group theory)Data modelingReal-time computingNetwork traffic controlComputer networkAlgorithmTheoretical computer scienceMathematicsDatabaseMathematical optimizationGeometryNetwork packetTraffic Prediction and Management TechniquesTransportation Planning and OptimizationTraffic control and management
Spatiotemporal Residual Graph Attention Network for Traffic Flow Forecasting | Litcius