Abstract
Autonomous Vehicles (AVs) promise to disrupt the traditional systems of transportation. An autonomous driving environment requires an uninterrupted, continuous stream of data and information based on complex traffic data sets and predictive measurements to make critical and real-time decisions in uncertain situations. Such an environment fosters a self-organizing system where vehicles must be seamlessly connected and various other services and intelligent decisions to manage traffic flow must be executed in an emergent manner. To proceed towards this vision, in this paper, we develop a traffic flow management model which is based on a novel two-phase approach for AVs to optimize traffic during congestion periods. In the first phase of our approach, we build an adaptive traffic signal control, using Deep Reinforcement Learning (DRL) to optimize traffic flow on road intersections during the periods when traffic is congested. In the second phase, we implement a Smart Re-routing (SR) technique for the traffic approaching intersections. Re-routing is used to carry out load-balancing of traffic to alternate paths to avoid congested road intersections. The experimental evaluation of the proposed approach is validated using simulations that demonstrate up to 31% improved performance efficiency compared to the traditional settings using pre-timed signals and without re-routing. The two-phase approach improves the overall traffic flow while reducing delays and minimizing long traffic queues' lengths. This approach is useful for making infrastructure intelligent enough to handle traffic congestion and balance traffic flow efficiently.
Highlights
Autonomous vehicles have opened new avenues in the area of Intelligent Transportation System (ITS) [1]
All the results show that using reinforcement learning to control traffic light and infrastructural components for smart routing can improve performance and make traffic flow efficient in autonomous vehicles
We observe that traffic signals are using longer queue lengths and waiting times to adjust dynamically
Summary
Autonomous vehicles have opened new avenues in the area of Intelligent Transportation System (ITS) [1]. By incorporating intelligent control techniques, ITS has an immense potential to revolutionize the coordination between vehicles and road infrastructure [2]. This gives rise to a novel system of mobility called Automated Highway Systems (AHS) [3], which incorporates intelligence at various levels of a transportation network. Considerable progress is required to make autonomous vehicles behave smoothly and reliably in heavy traffic during loaded hours. This needs a mechanism to learn traffic patterns in real-time and perform predictable measures to optimize traffic flows and minimize congestion. Q values stored in a matrix are the expected reward of a state-action pair based on knowledge learned by RL agent [40]
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