4.6 Article

Intersection Signal Timing Optimization: A Multi-Objective Evolutionary Algorithm

Journal

SUSTAINABILITY
Volume 14, Issue 3, Pages -

Publisher

MDPI
DOI: 10.3390/su14031506

Keywords

intersection; signal timing; multi-objective; evolutionary algorithm; NSGA-III

Funding

  1. National Natural Science Foundation of China [61272509, 61801005]
  2. Shaanxi Province Hundred Talents Program
  3. key research and development plan of Shaanxi province [2021GY-072]
  4. Natural Science Basic Research Program of Shaanxi province [2020JQ-903]

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The rapid motorization of cities has led to the increasing contradiction between supply and demand of road resources, with intersections becoming the main bottleneck of traffic congestion. This paper studies a multi-objective urban traffic signal timing problem, and establishes a multi-objective model that takes into account traffic capacity, delay, and exhaust emission index. By using a hybrid constraint strategy and the NSGA-III framework, a better signal timing scheme is obtained.
The rapid motorization of cities has led to the increasingly serious contradiction between supply and demand of road resources, and intersections have become the main bottleneck of traffic congestion. In general, capacity and delay are often used as indicators to improve intersection efficiency, but auxiliary indicators such as vehicle emissions that contribute to sustainable traffic development also need to be considered. It is necessary to evaluate intersection traffic efficiency through multiple measures to reflect different aspects of traffic, and these measures may conflict with each other. Therefore, this paper studies a multi-objective urban traffic signal timing problem, which requires a reasonable signal timing parameter under a given traffic flow condition, to better take into account the traffic capacity, delay and exhaust emission index of the intersection. Firstly, based on the traffic flow as the basic data, combined with the traffic flow description theory and exhaust emission estimation rules, a multi-objective model of signal timing problem is established. Secondly, the target model is solved and tested by the genetic algorithm of non-dominated sorting framework. It is found that the Pareto solution set of traffic indicators obtained by NSGA-III has a larger domain. Finally, the search mechanism of evolutionary algorithm is essentially unconstrained, while the actual traffic signal timing problem is constrained by traffic environment. In order to obtain a better signal timing scheme, this paper introduces the method of combining hybrid constraint strategy and NSGA-III framework, abbreviated as HCNSGA-III. The simulation experiment was carried out based on the same target model. The simulated results were compared with the actual scheme and the timing scheme obtained in recent research. The results show that the indices of traffic capacity, delay and exhaust emission obtained by the proposed method have more obvious advantages.

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