Physica2022,Vol.58814.DOI:10.1016/j.physa.2021.126531

A data-driven two-lane traffic flow model based on cellular automata

Shang, Xue-Cheng Li, Xin-Gang Xie, Dong-Fan Jia, Bin Jiang, Rui Liu, Feng
Physica2022,Vol.58814.DOI:10.1016/j.physa.2021.126531

A data-driven two-lane traffic flow model based on cellular automata

Shang, Xue-Cheng 1Li, Xin-Gang 1Xie, Dong-Fan 1Jia, Bin 1Jiang, Rui 1Liu, Feng2
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作者信息

  • 1. Beijing Jiaotong Univ
  • 2. Hasselt Univ
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Abstract

In this paper, a data-driven two-lane traffic flow model based on cellular automata is proposed. Long Short-Term Memory (LSTM) and Support Vector Machine (SVM) are used to learn the characteristics of car following behavior and lane changing behavior, respectively, from real operation data of vehicles. Under optimal network parameters, the mean absolute errors of the LSTM network for training and testing data are only 0.001 and 0.006, respectively; while the prediction accuracy of the SVM classifier for both data reaches higher than 0.99. Moreover, forward rules and lane changing rules which are more consistent with actual situation are designed. The simulation results show that: (1) the new model can reflect the first-order phase transition from free flow to synchronized flow; (2) the frequency of unsuccessful lane changing is near zero in low-density traffic areas, but increases sharply in high-density regions; and (3) the lane changing duration and unsuccessful lane changing frequency display similar trends as traffic densities increase. (C) 2021 Elsevier B.V. All rights reserved.

Key words

Cellular automata/Lane changing/Long short-term memory/Support vector machine/Data-driven/CAR-FOLLOWING MODEL/SIMULATION-MODEL/BEHAVIOR/EVACUATION/WAVES

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出版年

2022
Physica

Physica

ISSN:0378-4371
被引量2
参考文献量64
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