Ineffective traffic signal control is one of the major causes of congestion in urban road networks. Dynamically changing traffic conditions and live traffic state estimation are fundamental challenges that limit the ability of the existing signal infrastructure in rendering individualized signal control in real-time. We use deep reinforcement learning (DRL) to address these challenges. Due to economic and safety constraints associated training such agents in the real world, a practical approach is to do so in simulation before deployment. Domain randomisation is an effective technique for bridging the reality gap and ensuring effective transfer of simulation-trained agents to the real world. In this paper, we develop a fully-autonomous, vis...
Deep reinforcement learning methods have shown promising results in the development of adaptive traf...
Continuous increases in traffic volume and limited available capacity in the roadway system have cre...
The advent of connected vehicle (CV) technology offers new possibilities for a revolution in future ...
Ineffective traffic signal control is one of the major causes of congestion in urban road networks. ...
Traffic signals provide one of the primary means to administer conflicting road traffic flows. The e...
Traffic signals provide one of the primary means to administer conflicting traffic flows. Existing s...
With perpetually increasing demand for transportation as a result of continued urbanization and popu...
Recent advances in combining deep neural network architectures with reinforcement learning (RL) tech...
Traffic signal control is an essential and chal-lenging real-world problem, which aims to alleviate ...
Nowadays, traffic congestion poses critical problems including the undermined mobility and sustainab...
Reinforcement learning (RL) for traffic signal control (TSC) has shown better performance in simulat...
The aim of traffic signal control (TSC) is to optimize vehicle traffic in urban road networks, via t...
The emergence of reinforcement learning (RL) methods in traffic signal control tasks has achieved be...
Signalized urban intersections are bottlenecks for traffic and cause congestion. To improve traffic ...
Traffic signal control plays a pivotal role in reducing traffic congestion. Traffic signals cannot b...
Deep reinforcement learning methods have shown promising results in the development of adaptive traf...
Continuous increases in traffic volume and limited available capacity in the roadway system have cre...
The advent of connected vehicle (CV) technology offers new possibilities for a revolution in future ...
Ineffective traffic signal control is one of the major causes of congestion in urban road networks. ...
Traffic signals provide one of the primary means to administer conflicting road traffic flows. The e...
Traffic signals provide one of the primary means to administer conflicting traffic flows. Existing s...
With perpetually increasing demand for transportation as a result of continued urbanization and popu...
Recent advances in combining deep neural network architectures with reinforcement learning (RL) tech...
Traffic signal control is an essential and chal-lenging real-world problem, which aims to alleviate ...
Nowadays, traffic congestion poses critical problems including the undermined mobility and sustainab...
Reinforcement learning (RL) for traffic signal control (TSC) has shown better performance in simulat...
The aim of traffic signal control (TSC) is to optimize vehicle traffic in urban road networks, via t...
The emergence of reinforcement learning (RL) methods in traffic signal control tasks has achieved be...
Signalized urban intersections are bottlenecks for traffic and cause congestion. To improve traffic ...
Traffic signal control plays a pivotal role in reducing traffic congestion. Traffic signals cannot b...
Deep reinforcement learning methods have shown promising results in the development of adaptive traf...
Continuous increases in traffic volume and limited available capacity in the roadway system have cre...
The advent of connected vehicle (CV) technology offers new possibilities for a revolution in future ...