Attention based spatiotemporal model for short-term traffic flow prediction

被引:0
作者
Singh, Nisha [1 ]
Kumar, Kranti [1 ]
Pokhriyal, Bhawna [1 ]
机构
[1] Dr BR Ambedkar Univ Delhi, Sch Liberal Studies, Delhi 110006, India
关键词
Traffic flow prediction; Resnet; Periodic; Attention; LSTM; LSTM;
D O I
10.1007/s13198-025-02784-7
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
This study presents the development of AST-Deep, an attention-based deep learning model aimed at improving the accuracy and reliability of short-term traffic flow forecasting. Traffic forecasting plays a critical role in managing road operations, reducing congestion, enhancing safety, and optimizing transportation resources. The AST-Deep model consists of three key steps: (1) Spatial Correlation Analysis, where an enhanced version of ResNet is utilized to capture spatial dependencies between mileposts; (2) Temporal Correlation Modeling, where an attention-driven LSTM network is employed to model the temporal dynamics of traffic flow; and (3) Weighted Feature Fusion, which integrates the spatial and temporal features to generate the final traffic flow predictions. The model incorporates three traffic flow patterns-real-time, daily, and weekly-allowing it to account for periodic traffic behavior and improve forecasting precision. Experiments conducted on real-world traffic datasets show that AST-Deep consistently outperforms nine baseline models, including traditional and machine learning approaches, by a significant margin in terms of forecasting accuracy. Specifically, the AST-Deep model achieves a 1 to 5 % improvement in mean absolute error and root mean square error over the best-performing baseline model as the prediction horizon increases. These results demonstrate the effectiveness of AST-Deep in capturing both spatial and temporal dependencies to provide more accurate and reliable short-term traffic flow predictions.
引用
收藏
页码:1517 / 1531
页数:15
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