Abstract

Traffic signal control is an integral component of an intelligent transportation system (ITS) that play a vital role in alleviating traffic congestion. Poor traffic management and inefficient operations at signalized intersections cause numerous problems as excessive vehicle delays, increased fuel consumption, and vehicular emissions. Operational performance at signalized intersections could be significantly enhanced by optimizing phasing and signal timing plans using intelligent traffic control methods. Previous studies in this regard have mostly focused on lane-based homogenous traffic conditions. However, traffic patterns are usually non-linear and highly stochastic, particularly during rush hours, which limits the adoption of such methods. Hence, this study aims to develop metaheuristic-based methods for intelligent traffic control at isolated signalized intersections, in the city of Dhahran, Saudi Arabia. Genetic algorithm (GA) and differential evolution (DE) were employed to enhance the intersection’s level of service (LOS) by optimizing the signal timings plan. Average vehicle delay through the intersection was selected as the primary performance index and algorithms objective function. The study results indicated that both GA and DE produced a systematic signal timings plan and significantly reduced travel time delay ranging from 15 to 35% compared to existing conditions. Although DE converged much faster to the objective function, GA outperforms DE in terms of solution quality i.e., minimum vehicle delay. To validate the performance of proposed methods, cycle length-delay curves from GA and DE were compared with optimization outputs from TRANSYT 7F, a state-of-the-art traffic signal simulation, and optimization tool. Validation results demonstrated the adequacy and robustness of proposed methods.

Highlights

  • Traffic congestion has become a threatening social concern in major urban cities around the world

  • We proposed a couple of meta-heuristic-based including Genetic algorithm (GA) and differential evolution (DE) methods for efficient traffic control at signalized intersections

  • Optimum delay estimated were obtained by optimizing the signal timing plan in response to existing traffic demand

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Summary

Introduction

Traffic congestion has become a threatening social concern in major urban cities around the world. It has severe negative consequences for smooth mobility, urban economy as well as increased environmental issues [1,2,3]. Kingdom of Saudi Arabia (KSA) along with neighboring Gulf states have witnessed rapid rise in economy, increased population growth, and motorization rate since the oil boom in 1970s, which has led to less unsustainable travel patterns such as extreme traffic congestion, social costs, and environmental emissions [10]. The primary cause of increased traffic congestion in KSA is lack of public transport and infrastructure except few main cities (Jeddah, Riyadh, Mecca, and Madinah), which has resulted in increased auto-ownership. There is an urgent need to take appropriate steps to make transport infrastructure in KSA more user friendly and environmentally sustainable

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