• Corpus ID: 212628397

Modeling Spontaneous Exit Choices in Intercity Expressway Traffic with Quantum Walk

  title={Modeling Spontaneous Exit Choices in Intercity Expressway Traffic with Quantum Walk},
  author={Zhaoyuan Yu and Xinxin Zhou and Xu Hu and Wen Luo and Linwang Yuan and A-Xing Zhu},
  journal={arXiv: Physics and Society},
In intercity expressway traffic, a driver frequently makes decisions to adjust driving behavior according to time, location and traffic conditions, which further affects when and where the driver will leave away from the expressway traffic. Spontaneous exit choices by drivers are hard to observe and thus it is a challenge to model intercity expressway traffic sufficiently. In this paper, we developed a Spontaneous Quantum Traffic Model (SQTM), which models the stochastic traffic fluctuation… 

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