ADDGCN: A Novel Approach with Down-Sampling Dynamic Graph Convolution and Multi-Head Attention for Traffic Flow Forecasting
-
Published:2024-05-13
Issue:10
Volume:14
Page:4130
-
ISSN:2076-3417
-
Container-title:Applied Sciences
-
language:en
-
Short-container-title:Applied Sciences
Author:
Li Zuhua1, Wei Siwei2, Wang Haibo3, Wang Chunzhi1
Affiliation:
1. School of Computer Science, Hubei University of Technology, Wuhan 430068, China 2. CCCC Second Highway Consultants Co., Ltd., Wuhan 430056, China 3. School of Economics and Management, Hubei University of Technology, Wuhan 430068, China
Abstract
An essential component of autonomous transportation system management and decision-making is precise and real-time traffic flow forecast. Predicting future traffic conditionsis a difficult undertaking because of the intricate spatio-temporal relationships involved. Existing techniques often employ separate modules to model spatio-temporal features independently, thereby neglecting the temporally and spatially heterogeneous features among nodes. Simultaneously, many existing methods overlook the long-term relationships included in traffic data, subsequently impacting prediction accuracy. We introduce a novel method to traffic flow forecasting based on the combination of the feature-augmented down-sampling dynamic graph convolutional network and multi-head attention mechanism. Our method presents a feature augmentation mechanism to integrate traffic data features at different scales. The subsampled convolutional network enhances information interaction in spatio-temporal data, and the dynamic graph convolutional network utilizes the generated graph structure to better simulate the dynamic relationships between nodes, enhancing the model’s capacity for capturing spatial heterogeneity. Through the feature-enhanced subsampled dynamic graph convolutional network, the model can simultaneously capture spatio-temporal dependencies, and coupled with the process of multi-head temporal attention, it achieves long-term traffic flow forecasting. The findings demonstrate that the ADDGCN model demonstrates superior prediction capabilities on two real datasets (PEMS04 and PEMS08). Notably, for the PEMS04 dataset, compared to the best baseline, the performance of ADDGCN is improved by 2.46% in MAE and 2.90% in RMSE; for the PEMS08 dataset, compared to the best baseline, the ADDGCN performance is improved by 1.50% in RMSE, 3.46% in MAE, and 0.21% in MAPE, indicating our method’s superior performance.
Reference50 articles.
1. Xu, X., Hu, X., Zhao, Y., Lü, X., and Aapaoja, A. (2023). Urban short-term traffic speed prediction with complicated information fusion on accidents. Expert Syst. Appl., 119887. 2. An effective exponential-based trust and reputation evaluation system in wireless sensor networks;Zhao;IEEE Access,2019 3. A survey on modern deep neural network for traffic prediction: Trends, methods and challenges;Tedjopurnomo;IEEE Trans. Knowl. Data Eng.,2020 4. Lan, S., Ma, Y., Huang, W., Wang, W., Yang, H., and Li, P. (2022, January 17–23). Dstagnn: Dynamic spatial-temporal aware graph neural network for traffic flow forecasting. Proceedings of the 39th International Conference on Machine Learning, Baltimore, MD, USA. PMLR International Conference on Machine Learning. 5. Dynamic graph convolutional networks based on spatiotemporal data embedding for traffic flow forecasting;Zhang;Knowl. Based Syst.,2022
|
|