The main motivation of this work is to assess the validity of a LWR traffic flow model to model measurements obtained from trajectory data, and propose extensions of this model to improve it. A formulation for a discrete dynamical system is proposed aiming at reproducing the evolution in time of the density of vehicles along a road, as observed in the measurements. This system is formulated as a chemical reaction network where road cells are interpreted as compartments, the transfer of vehicles from one cell to the other is seen as a chemical reaction between adjacent compartment and the density of vehicles is seen as a concentration of reactant. Several degrees of flexibility on the parameters of this system, which basically consist of the reaction rates between the compartments, can be considered: a constant value or a function depending on time and/or space. Density measurements coming from trajectory data are then interpreted as observations of the states of this system at consecutive times. Optimal reaction rates for the system are then obtained by minimizing the discrepancy between the output of the system and the state measurements. This approach was tested both on simulated and real data, proved successful in recreating the complexity of traffic flows despite the assumptions on the flux-density relation.
翻译:这项工作的主要动机是评估液态、液态和液态气流模型的有效性,以模拟从轨迹数据获得的测量结果,并提出该模型的扩展,以改进该模型。建议制定一种离散动态系统,目的是复制测量所观察到的公路上车辆密度在时间上的变化。这个系统是化学反应网络,将公路电池解释为隔间,将车辆从一个电池转移到另一个电池,将车辆从一个电池转移到另一个电池视为相邻隔间隔间的一种化学反应,将车辆密度视为反应力的集中。这个系统参数的灵活度有几度,基本上由各舱间的反应率组成,可以考虑:一个固定值或功能,取决于时间和/或空间。从轨迹数据得出的密度测量结果随后被解释为连续对该系统状态的观测。然后通过尽量减少系统输出与状态测量结果之间的差异而获得系统的最佳反应率。这个方法在模拟数据和真实数据上都经过测试,证明在重新确定交通流量的复杂性方面是成功的,尽管假设通量密度关系。