2022
DOI: 10.1155/2022/7344522
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Global-Local Spatial-Temporal Residual Correlation Network for Urban Traffic Status Prediction

Abstract: The recent proposed Spatial-Temporal Residual Network (ST-ResNet) model is an effective tool to extract both spatial and temporal characteristics and has been successfully applied to urban traffic status prediction. However, the ST-ResNet model only extracts the local spatial characteristics and ignores the very important global spatial characteristics. In this paper, a novel Global-Local Spatial-Temporal Residual Correlation Network (GL-STRCN) model is proposed for urban traffic status prediction to further i… Show more

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Cited by 4 publications
(4 citation statements)
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References 43 publications
(45 reference statements)
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“…GraphSAGE has also been used to model spatial dependency for inductive learning ( Liu et al, 2023 ; Liu, Ong & Chen, 2022 ). Temporal modules based on RNN and its LSTM, as well as GRU, have been introduced to learn temporal dependence ( Pan et al, 2022 ; Subramaniyan et al, 2023 ; Bao et al, 2022 ; Shu, Cai & Xiong, 2022 ; Wan et al, 2022 ). To improve computational efficiency, some studies employed CNN instead of RNN to model temporal correlation ( Ji, Yu & Lei, 2023 ; Zhang et al, 2022 ).…”
Section: Literary Reviewmentioning
confidence: 99%
“…GraphSAGE has also been used to model spatial dependency for inductive learning ( Liu et al, 2023 ; Liu, Ong & Chen, 2022 ). Temporal modules based on RNN and its LSTM, as well as GRU, have been introduced to learn temporal dependence ( Pan et al, 2022 ; Subramaniyan et al, 2023 ; Bao et al, 2022 ; Shu, Cai & Xiong, 2022 ; Wan et al, 2022 ). To improve computational efficiency, some studies employed CNN instead of RNN to model temporal correlation ( Ji, Yu & Lei, 2023 ; Zhang et al, 2022 ).…”
Section: Literary Reviewmentioning
confidence: 99%
“…Although traditional trafc anomaly detection methods have made certain progress [19][20][21][22], most traditional anomaly detection algorithms are not suitable for encrypted trafc. In the problem of trafc anomaly detection, encrypted trafc communication and unencrypted trafc communication greatly difer.…”
Section: Related Workmentioning
confidence: 99%
“…The attentional residual network was applied to hydroacoustic target recognition, and the average recognition accuracy was improved [19]. In addition, the residual network has shown excellent performance in the diagnosis of robot joint faults [20], optical character recognition [21], prediction of urban traffic status [22], and protection of agricultural crops [23], and has a large potential for future development.…”
Section: Related Workmentioning
confidence: 99%