Abstract

Intelligent traffic control at urban intersections is vital to ensure efficient and sustainable traffic operations. Urban road intersections are hotspots of congestion and traffic accidents. Poor traffic management at these locations could cause numerous issues, such as longer travel time, low travel speed, long vehicle queues, delays, increased fuel consumption, and environmental emissions, and so forth. Previous studies have shown that the mentioned traffic performance measures or measures of effectiveness (MOEs) could be significantly improved by adopting intelligent traffic control protocols. The majority of studies in this regard have focused on mono or bi-objective optimization with homogenous and lane-based traffic conditions. However, decision-makers often have to deal with multiple conflicting objectives to find an optimal solution under heterogeneous stochastic traffic conditions. Therefore, it is essential to determine the optimum decision plan that offers the least conflict among several objectives. Hence, the current study aimed to develop a multi-objective intelligent traffic control protocol based on the non-dominated sorting genetic algorithm II (NSGA-II) at isolated signalized intersections in the city of Dhahran, Kingdom of Saudi Arabia. The MOEs (optimization objectives) that were considered included average vehicle delay, the total number of vehicle stops, average fuel consumption, and vehicular emissions. NSGA-II simulations were run with different initial populations. The study results showed that the proposed method was effective in optimizing considered performance measures along the optimal Pareto front. MOEs were improved in the range of 16% to 23% compared to existing conditions. To assess the efficacy of the proposed approach, an optimization analysis was performed using a Synchro traffic light simulation and optimization tool. Although the Synchro optimization resulted in a relatively lower signal timing plan than NSGA-II, the proposed algorithm outperformed the Synchro optimization results in terms of percentage reduction in MOE values.

Highlights

  • Urban traffic congestion has become a global challenge in road transport networks

  • Traffic engineers are not concerned with knowing the best solution based on a single objective at all costs

  • A close evaluation of the non-dominated sorting genetic algorithm II (NSGA-II) curves presented revealed that all the curves initially tended to converge rapidly to the corresponding minimum objective functions

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Summary

Introduction

Urban traffic congestion has become a global challenge in road transport networks. It has severe negative consequences on the urban economy, traffic operations, safety, and sustainable development [1,2]. According to US national transport statistics, transport sector fuel consumption is estimated to be about 70 percent of total oil consumption [8]. Burning such a massive amount of fuel has brought severe negative environmental concerns. A previous study estimated that a few major Chinese cities have cumulatively suffered a huge daily economic loss worth $ 1 billion due to traffic congestion [12]

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