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Determining the Optimal Restricted Driving Zone Using Genetic Algorithm in a Smart City

机译:用遗传算法确定智能城市的最佳限制驾驶区

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摘要

Traffic control is one of the most challenging issues in metropolitan cities with growing populations and increased travel demands. Poor traffic control can result in traffic congestion and air pollution that can lead to health issues such as respiratory problems, asthma, allergies, anxiety, and stress. The traffic congestion can also result in travel delays and potential obstruction of emergency services. One of the most well-known traffic control methods is to restrict and control the access of private vehicles in predetermined regions of the city. The aim is to control the traffic load in order to maximize the citizen satisfaction given limited resources. The selection of restricted traffic regions remains a challenge because a large restricted area can reduce traffic load but with reduced citizen satisfaction as their mobility will be limited. On the other hand, a small restricted area may improve citizen satisfaction but with a reduced impact on traffic congestion or air pollution. The optimization of the restricted zone is a dynamic multi-regression problem that may require an intelligent trade-off. This paper proposes Optimal Restricted Driving Zone (ORDZ) using the Genetic Algorithm to select appropriate restricted traffic zones that can optimally control the traffic congestion and air pollution that will result in improved citizen satisfaction. ORDZ uses an augmented genetic algorithm and determinant theory to randomly generate different foursquare zones. This fitness function considers a trade-off between traffic load and citizen satisfaction. Our simulation studies show that ORDZ outperforms the current well-known methods in terms of a combined metric that considers the least traffic load and the most enhanced citizen satisfaction with over 30.6% improvements to some of the comparable methods.
机译:在人口增长和旅行需求增加的大城市中,交通管制是最具挑战性的问题之一。交通控制不善可能导致交通拥堵和空气污染,从而导致健康问题,例如呼吸系统问题,哮喘,过敏,焦虑和压力。交通拥堵还可能导致旅行延误和紧急服务的潜在障碍。一种最著名的交通控制方法是在城市的预定区域限制和控制私人车辆的进入。目的是控制交通负荷,以在有限资源的情况下最大程度地提高市民的满意度。限制交通区域的选择仍然是一个挑战,因为较大的限制区域可以减少交通负荷,但是由于人们的机动性有限,市民满意度降低。另一方面,较小的禁区可以提高市民的满意度,但对交通拥堵或空气污染的影响减小。限制区的优化是一个动态的多元回归问题,可能需要进行明智的权衡。本文提出了使用遗传算法的最佳限制驾驶区(ORDZ),以选择适当的限制交通区域,以最佳地控制交通拥堵和空气污染,从而提高市民的满意度。 ORDZ使用增强的遗传算法和行列式理论随机生成不同的Foursquare区域。该适应度函数考虑了交通负荷与市民满意度之间的权衡。我们的模拟研究表明,ORDZ在综合指标方面优于当前的众所周知的方法,该指标考虑了最小的交通负荷和最大的市民满意度,与某些可比方法相比,提高了30.6%。

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