Scientific Data (Nov 2023)

FollowNet: A Comprehensive Benchmark for Car-Following Behavior Modeling

  • Xianda Chen,
  • Meixin Zhu,
  • Kehua Chen,
  • Pengqin Wang,
  • Hongliang Lu,
  • Hui Zhong,
  • Xu Han,
  • Xuesong Wang,
  • Yinhai Wang

DOI
https://doi.org/10.1038/s41597-023-02718-7
Journal volume & issue
Vol. 10, no. 1
pp. 1 – 15

Abstract

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Abstract Car-following is a control process in which a following vehicle adjusts its acceleration to keep a safe distance from the lead vehicle. Recently, there has been a booming of data-driven models that enable more accurate modeling of car-following through real-world driving datasets. Although there are several public datasets available, their formats are not always consistent, making it challenging to determine the state-of-the-art models and how well a new model performs compared to existing ones. To address this gap and promote the development of microscopic traffic flow modeling, we establish the first public benchmark dataset for car-following behavior modeling. This benchmark consists of more than 80 K car-following events extracted from five public driving datasets under the same criteria. To give an overview of current progress in car-following modeling, we implemented and tested representative baseline models within the benchmark. The established benchmark provides researchers with consistent data formats and metrics for cross-comparing different car-following models, coming with open datasets and codes.