Zheng et al., 2023 - Google Patents
Hybrid deep learning models for traffic prediction in large-scale road networksZheng et al., 2023
View PDF- Document ID
- 4522280586353984997
- Author
- Zheng G
- Chai W
- Duanmu J
- Katos V
- Publication year
- Publication venue
- Information Fusion
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Snippet
Traffic prediction is an important component in Intelligent Transportation Systems (ITSs) for enabling advanced transportation management and services to address worsening traffic congestion problems. The methodology for traffic prediction has evolved significantly over …
- 238000000605 extraction 0 abstract description 26
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