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A two-level probabilistic approach for validation of stochastic traffic simulations: impact of drivers' heterogeneity models

机译:一种用于验证随机流量模拟的两级概率方法:司机异质性模型的影响

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摘要

This paper shows how traffic heterogeneity, and the way it is encoded into a model, drastically affects a model ability to reproduce observed traffic. Being heterogeneity a major source of uncertainty, to correctly frame the proposed validation methodology we have first reviewed and adapted cross-disciplinary theoretical concepts about uncertainty modelling to traffic simulation. A number of open issues, including error compensation and model overfitting, has been interpreted and clarified through the proposed framework. A two-level probabilistic approach has been applied to run stochastic simulations of three NGSIM I-80 traffic scenarios, and quantitatively infer the impact of heterogeneity. According to this approach, both the car-following and the lane-changing models of each vehicle have been calibrated against observed trajectories. Based on the estimated parameters distributions, different models of heterogeneity have been quantitatively validated against macroscopic traffic patterns. Being traffic a collective phenomenon emerging from microscopic interactions, even models calibrated on microscopic trajectories need to be quantitatively validated on macroscopic traffic patterns too. Among other results, normal distributions of the model parameters, which are customarily applied in traffic simulation practice, have been found unable to reproduce the observed congestion patterns. Parameters correlation, being claimed as highly influential in previous works, is responsible for a model overfitting in traffic scenarios with low congestion. In the end, it has been demonstrated that a thorough characterization of parameters heterogeneity cannot be left out in traffic simulation, if an ersatz representation of traffic is to be avoided.
机译:本文显示了流量异质性,以及它被编码到模型中的方式,大大影响了重现观察到的流量的模型能力。经常性成为不确定性的主要来源,正确地框架建议的验证方法,我们首先审查了关于交通模拟的不确定性建模的跨学科理论概念。通过所提出的框架解释和阐明了许多开放问题,包括错误补偿和模型过度装备。两级概率方法已应用于运行三个NGSIM I-80交通场景的随机模拟,并定量推断异质性的影响。根据这种方法,汽车跟踪和每个车辆的车道改变模型都被校准针对观察到的轨迹。基于估计的参数分布,针对宏观交通模式已经定量验证了不同模型的异质性。交通从显微镜相互作用出现的集体现象,甚至在微观轨迹上校准的模型也需要定量验证宏观交通模式。在其他结果中,已经发现,已经在交通仿真实践中通常应用的模型参数的正常分布不能再现观察到的拥塞模式。参数相关性,在以前的作品中声称是高度影响力的,负责在具有低拥塞的交通方案中的模型过度装备。最后,已经证明,如果要避免交通的ersatz表示,则在交通模拟中不能遗漏参数异质性的彻底表征。

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