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The Driver Time Memory Car-Following Model Simulating in Apollo Platform with GRU and Real Road Traffic Data

Author

Listed:
  • Rong Fei
  • Shasha Li
  • Xinhong Hei
  • Qingzheng Xu
  • Fang Liu
  • Bo Hu

Abstract

Car following is the most common phenomenon in single-lane traffic. The accuracy of acceleration prediction can be effectively improved by the driver’s memory in car-following behaviour. In addition, the Apollo autonomous driving platform launched by Baidu Inc. provides fast test vehicle following vehicle models. Therefore, this paper proposes a car-following model (CFDT) with driver time memory based on real-world traffic data. The CFDT model is firstly constructed by embedded gantry control unit storage capacity (GRU assisted) network. Secondly, the NGSIM dataset will be used to obtain the tracking data of small vehicles with similar driving behaviours from the common real road vehicle driving tracks for data preprocessing according to the response time of drivers. Then, the model is calibrated to obtain the driver’s driving memory and the optimal parameters of the model and structure. Finally, the Apollo simulation platform with high-speed automatic driving technology is used for 3D visualization interface verification. Comparative experiments on vehicle tracking characteristics show that the CFDT model is effective and robust, which improves the simulation accuracy. Meanwhile, the model is tested and validated using the Apollo simulation platform to ensure accuracy and utility of the model.

Suggested Citation

  • Rong Fei & Shasha Li & Xinhong Hei & Qingzheng Xu & Fang Liu & Bo Hu, 2020. "The Driver Time Memory Car-Following Model Simulating in Apollo Platform with GRU and Real Road Traffic Data," Mathematical Problems in Engineering, Hindawi, vol. 2020, pages 1-18, March.
  • Handle: RePEc:hin:jnlmpe:4726763
    DOI: 10.1155/2020/4726763
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