Full-scale spatio-temporal traffic flow estimation for city-wide networks: a transfer learning based approach
Journal article, 2023

The full-scale spatio-temporal traffic flow estimation/prediction has always been a hot spot in transportation engineering. The low coverage rate of detectors in transport networks brings difficulties to the city-wide traffic flow estimation/prediction. Moreover, it is difficult for traditional analytical traffic flow models to deal with the traffic flow estimation/prediction problem over urban transport networks in a complex environment. Current data-driven methods mainly focus on road segments with detectors. An instance-based transfer learning method is proposed to estimate network-wide traffic flows including road segments without detectors. Case studies based on simulation data and empirical data collected from the open-source PeMS database are conducted to verify its effectiveness. For the traffic flow estimation of segments without detectors, the mean absolute percentage error (MAPE) is approximately 11% for both datasets, which is superior to the existing methods in the literature and reduces MAPE by two percentage points.

Transport network flow estimation

clustering ensemble algorithm

link relevance

transfer learning method

Gaussian process

Author

Yuan Zhang

Southeast University

Qixiu Cheng

Hong Kong Polytechnic University

Southeast University

Yang Liu

Chalmers, Architecture and Civil Engineering, Geology and Geotechnics

Zhiyuan Liu

Southeast University

Transportmetrica B

2168-0566 (ISSN) 2168-0582 (eISSN)

Vol. 11 1 869-895

Subject Categories

Transport Systems and Logistics

Fluid Mechanics and Acoustics

Oceanography, Hydrology, Water Resources

DOI

10.1080/21680566.2022.2143453

More information

Latest update

3/15/2023