Modelling Discrete Urban Traffic Network System with Cellular Automata

Helen Sin Ee Chuo, Yuan Han Swa, M. K. Tan, Kit Guan Lim, L. Barukang, Kenneth Tze Kin Teo
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引用次数: 1

Abstract

The main objective of this project is to model and simulate a discrete based urban traffic network system. Nowadays, the congestion in traffic network is affecting the citizen’s standard of living especially for those who lives in urban area. This phenomenon cannot be avoided due to the increment of population in urban area. The effective and fast way to reduce this problem is by applying traffic lights optimiser at urban traffic network. Hence, high accuracy of traffic model is required to optimise the traffic lights signalisation. Cellular Automata is proposed to model the multiple intersections of urban traffic network system. Microscopic traffic network model is used to model the traffic flow of the traffic network. The vehicle parameters are determined for the computation of traffic condition. The purpose of applying these parameters is to estimate the traffic flow at the intersection more accurately. There are differences in the traffic flow when the vehicles are transferring from one intersection to another. The vehicles tend to decelerate for turning to left or right and accelerate for going straight. Besides, the probability of vehicles transferring to other lanes is required to model the real traffic network condition. Therefore, the modelling of the lane changing behaviour at the intersections has enhanced the precision of the developed model. Traffic light signalisation for the developed model is controlled by Petri Net. This traffic network model with consideration of more vehicle parameters such as time delay, maximum velocity, acceleration and deceleration has achieved a higher accuracy of traffic condition estimation.
离散城市交通网络系统的元胞自动机建模
这个项目的主要目标是建模和模拟一个基于离散的城市交通网络系统。如今,交通网络的拥堵正影响着市民的生活水平,尤其是那些生活在城市地区的人。由于城市人口的增加,这一现象是无法避免的。在城市交通网络中应用交通灯优化器是解决这一问题的有效途径。因此,优化交通灯信号需要较高的交通模型精度。提出了元胞自动机对城市交通网络系统中的多个交叉口进行建模。采用微观交通网络模型对交通网络中的交通流进行建模。确定车辆参数,进行交通状况的计算。应用这些参数的目的是为了更准确地估计十字路口的交通流量。当车辆从一个十字路口转向另一个十字路口时,交通流是不同的。车辆倾向于在左转或右转时减速,在直行时加速。此外,为了模拟真实的交通网络状况,还需要车辆转移到其他车道的概率。因此,对交叉口变道行为的建模提高了所建模型的精度。所开发模型的交通灯信号由Petri网控制。该交通网络模型考虑了更多的车辆参数,如时延、最大速度、加减速等,达到了较高的交通状况估计精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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