Míriam Born, D. Adamatti, Marilton Sanchotene de Aguiar, Weslen Schiavon de Souza
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引用次数: 0
摘要
目前,城市交通和空气质量问题十分突出,这主要是由于车辆的大量通行和污染物的排放在大气中消散。在文献中,提出了一种基于遗传算法的交通信号灯最优控制模型。这些算法是在控制流量的背景下介绍的。为了寻找主要城市中心交通信号灯问题的可能解决方案。因此,研究污染物的扩散和遗传算法,并在城市移动模拟器SUMO (Simulation of Urban Mobility)中进行仿真,寻求令人满意的解决方案。AG使用染色体的交叉,在这种情况下是交通灯的时间,具有最好的绿灯时间和每个模拟周期中每种污染物的总和。通过对仿真结果的比较分析表明,遗传算法在这种情况下的应用是很有前途的。
Use SUMO Simulator for the Determination of Light Times in Order to Reduce Pollution
Nowadays, urban mobility and air quality issues are prominent, due to the heavy traffic of vehicles and the emission of pollutants dissipated in the atmosphere. In the literature, a model of optimal control of traffic lights using Genetic Algorithms (GA) has been proposed. These algorithms have been introduced in the context of control traffic. In order to search for possible solutions to the problems of traffic lights in major urban centers. Thus, the study of the dispersion of pollutants and Genetic Algorithms with simulations performed in Urban Mobility Simulator SUMO (Simulation of Urban Mobility), seek satisfactory solutions to such problems. The AG uses the crossing of chromosomes, in this case the times of the traffic lights, featuring the finest green light times and the sum of each of the pollutants each simulation cycle. The simulations were performed and the results compared analyzes showed that the use of the genetic algorithm is very promising in this context.