Traffic flow on networks requires knowledge on the behavior across traffic intersections. For macroscopic models based on hyperbolic conservation laws there exist nowadays many ad-hoc models describing this behavior. Based on car trajectory data we propose a novel framework combining data-fitted models with the requirements of consistent coupling conditions for macroscopic models of traffic junctions. A method for deriving density and flux corresponding to the traffic close to the junction for data-driven models is presented. Within the models parameter fitting as well as machine-learning approaches enter to obtain suitable boundary conditions for macroscopic first and second-order traffic flow models. The prediction of various models are compared considering also existing coupling rules at the junction. Numerical results imposing the data-fitted coupling models on a traffic network are presented.
翻译:网络交通流量要求了解跨交通交叉点的行为。对于基于双曲保护法的宏观模型来说,如今有许多描述这种行为的特设模型存在。根据汽车轨迹数据,我们提出了一个新框架,将数据匹配模型与大型交通交叉点模式一致混合条件的要求相结合。介绍了一种与数据驱动模型连接点附近交通量相对应的计算密度和通量的方法。在模型参数匹配和机器学习方法中,进入各种模型是为了为宏观一等和二等交通流量模型获取合适的边界条件。对各种模型的预测也在考虑连接点的现有混合规则。提出了将数据匹配组合模式强加在交通网络上的数值结果。