The advent of connected vehicle (CV) technology offers new possibilities for a revolution in future transportation systems. With the availability of real-time traffic data from CVs, it is possible to more effectively optimize traffic signals to reduce congestion, increase fuel efficiency, and enhance road safety. The success of CV-based signal control depends on an accurate and computationally efficient model that accounts for the stochastic and nonlinear nature of the traffic flow. Without the necessity of prior knowledge of the traffic system’s model architecture, reinforcement learning (RL) is a promising tool to acquire the control policy through observing the transition of the traffic states. In this paper, we propose a novel data-driv...
Urban traffic congestion has a significant detrimental impact on the environment, public health and ...
The intersection management system can increase traffic capacity, vehicle safety, and the smoothness...
Many studies confirmed that a proper traffic state representation is more important than complex alg...
The emerging vehicle technologies, i.e. connected vehicle technology and autonomous driving technolo...
The concept of Connected and Automated Vehicles (CAVs) enables instant traffic information to be sha...
With perpetually increasing demand for transportation as a result of continued urbanization and popu...
The proliferation of Connected Vehicles and their ability to collect a large amount of data present ...
Inefficient traffic operations have far-reaching consequences in not just travel mobility but also p...
Traffic signal control problems are critical in urban intersections. Recently, deep reinforcement le...
Controlling traffic signals to alleviate increasing traffic pressure is a concept that has received ...
The recent development of V2V (Vehicle-to-Vehicle), V2I (Vehicle-to-Infrastructure), V2X (Vehicle-to...
Reinforcement Learning (RL) is a popular approach for deciding on an optimum traffic signal control ...
The current traffic light controls are ineffective and causes a handful of problems such as congesti...
The consequences of traffic congestion include increased travel time, fuel consumption, and the numb...
The rapid economic development has continuously improved the transportation network around the worl...
Urban traffic congestion has a significant detrimental impact on the environment, public health and ...
The intersection management system can increase traffic capacity, vehicle safety, and the smoothness...
Many studies confirmed that a proper traffic state representation is more important than complex alg...
The emerging vehicle technologies, i.e. connected vehicle technology and autonomous driving technolo...
The concept of Connected and Automated Vehicles (CAVs) enables instant traffic information to be sha...
With perpetually increasing demand for transportation as a result of continued urbanization and popu...
The proliferation of Connected Vehicles and their ability to collect a large amount of data present ...
Inefficient traffic operations have far-reaching consequences in not just travel mobility but also p...
Traffic signal control problems are critical in urban intersections. Recently, deep reinforcement le...
Controlling traffic signals to alleviate increasing traffic pressure is a concept that has received ...
The recent development of V2V (Vehicle-to-Vehicle), V2I (Vehicle-to-Infrastructure), V2X (Vehicle-to...
Reinforcement Learning (RL) is a popular approach for deciding on an optimum traffic signal control ...
The current traffic light controls are ineffective and causes a handful of problems such as congesti...
The consequences of traffic congestion include increased travel time, fuel consumption, and the numb...
The rapid economic development has continuously improved the transportation network around the worl...
Urban traffic congestion has a significant detrimental impact on the environment, public health and ...
The intersection management system can increase traffic capacity, vehicle safety, and the smoothness...
Many studies confirmed that a proper traffic state representation is more important than complex alg...