Multi‐criteria evolutionary optimization of a traffic light using genetics algorithm and teaching‐learning based optimization

Author:

Yektamoghadam Hossein1,Nikoofard Amirhossein2ORCID,Behzadi Masoumeh2,Khosravy Mahdi3,Dey Nilanjan4,Witkowski Olaf3

Affiliation:

1. School of Electrical and Computer Engineering, College of Engineering University of Tehran Tehran Iran

2. Department of Electrical Engineering K. N. Toosi University of Technology Tehran Iran

3. Cross Labs, Cross‐Compass Ltd Tokyo Japan

4. Department of Computer Science and Engineering Techno International New Town Kolkata India

Abstract

AbstractToday, the development of urbanization and increasing the number of vehicles has resulted in displeased consequences like traffic congestion and vehicle queuing. The vast majority of countries in the world encounter the challenge of the explosive rise in traffic demand. In this regard, it is necessary to meet traffic demand in transport networks, especially in metropolitans. In traffic management and shortening the trip duration, traffic lights on the signalized intersections play an essential role in urban pathways. This work provides a multi‐criteria decision‐making method for optimum traffic light control in an isolated corner. The main idea involves establishing a set of sub‐optimal solutions for traffic light timing and selecting the best one among the diverse solutions. We have mathematically modelled the problem as an optimization problem to achieve an optimal solution with less waiting time for vehicles in intersections and the lowest cost. Genetic algorithm (GA) and Teaching‐Learning‐based Optimization (TLBO) are utilized for each phase to create a set of suitable timing scenarios. The Technique for Order of Preference by Similarity to Ideal Solution (TOPSIS) method is used to identify the best scenario, considering both waiting vehicles and traffic capacity as decision criteria. Its efficiency has been demonstrated over three different traffic volumes. Also, in a real‐world implementation, its practical capability has been approved at a crossroads in Mashhad, Iran. The simulations indicate the improvement in the number of vehicles waiting behind the crossroad and the traffic capacity by 10% and 6.76% compared to the existing signal timing of the studied intersection, respectively.

Publisher

Wiley

Subject

Artificial Intelligence,Computational Theory and Mathematics,Theoretical Computer Science,Control and Systems Engineering

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