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首页> 外文期刊>Transportation Research Record >Estimation of Turning Movements at Intersections: Joint Trip Distribution and Traffic Assignment Program Combined with a Genetic Algorithm
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Estimation of Turning Movements at Intersections: Joint Trip Distribution and Traffic Assignment Program Combined with a Genetic Algorithm

机译:交叉口转弯运动的估计:联合行程分配和交通分配程序并结合遗传算法

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摘要

The availability of turning movement data at intersections is essential in carrying out traffic simulations with software such as NETSIM. However, data collection is very time-consuming even for a small network. To estimate turning movements at intersections, a logit-based stochastic user equilibrium (SUE) model was integrated into a genetic algorithm. Three derivative models were developed: (a) a doubly constrained estimator, (b) a singly constrained estimator, and (c) an origin-destination (O-D)-based estimator. In the first and second estimators, the SUE model was formulated as a joint trip distribution and traffic assignment (TD-TA) program, whereas in the third estimator, the SUE model was based on a standard O-D distribution program. These turning movement estimator models were examined by applying them to three road networks: a virtual road network with simulated data, a small road network in the field with data obtained by manual counting, and a road network with data measured with traffic detectors. Application of the models to the virtual road network proves that if prior information on the O-D distribution is available, the O-D-based estimator is most effective in estimating turning movements. Application of the models to real networks for which no prior information on the O-D flows is available shows that the doubly constrained TD-TA-based model is the most accurate and efficient. The turning movements on major links estimated with this model were in relatively good agreement with those actually measured. The correlation coefficient of link flow exceeded 0.90. However, the rationale of the range of unknown variables remains unresolved.
机译:在使用NETSIM等软件进行交通模拟时,交叉路口转弯运动数据的可用性至关重要。但是,即使对于小型网络,数据收集也非常耗时。为了估计十字路口的转弯运动,将基于logit的随机用户平衡(SUE)模型集成到遗传算法中。开发了三个导数模型:(a)双约束估计器,(b)单约束估计器,(c)基于原点(O-D)的估计器。在第一和第二估算器中,SUE模型被公式化为联合出行分配和交通分配(TD-TA)程序,而在第三估算器中,SUE模型基于标准的O-D分配程序。通过将这些转弯运动估算器模型应用于三个道路网络进行了检查:一个具有模拟数据的虚拟道路网络,一个具有通过手动计数获得的数据的小型道路网络以及一个具有交通检测器测量数据的道路网络。该模型在虚拟道路网络上的应用证明,如果可以获得有关O-D分布的先验信息,则基于O-D的估算器将最有效地估算转弯运动。该模型在没有可用O-D流先验信息的真实网络中的应用表明,双重约束的基于TD-TA的模型是最准确和有效的。用该模型估算的主要环节上的转向运动与实际测得的相对一致。链接流的相关系数超过0.90。但是,未知变量范围的基本原理仍未解决。

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