Zhong et al., 2023 - Google Patents
Estimating link flows in road networks with synthetic trajectory data generation: Inverse reinforcement learning approachZhong et al., 2023
View PDF- Document ID
- 3603221106705171525
- Author
- Zhong M
- Kim J
- Zheng Z
- Publication year
- Publication venue
- IEEE Open Journal of Intelligent Transportation Systems
External Links
Snippet
While traffic volume data from loop detectors have been the common data source for link flow estimation, the detectors only cover a subset of links. These days, other data sources such as vehicle trajectory data collected from vehicle tracking sensors are also incorporated …
- 230000002787 reinforcement 0 title abstract description 10
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