Connected and autonomous vehicles (CAVs) promise next-gen transportation systems with enhanced safety, energy efficiency, and sustainability. One typical control strategy for CAVs is the so-called cooperative adaptive cruise control (CACC) where vehicles drive in platoons and cooperate to achieve safe and efficient transportation. In this study, we formulate CACC as a multi-agent reinforcement learning (MARL) problem. Diverging from existing MARL methods that use centralized training and decentralized execution which require not only a centralized communication mechanism but also dense inter-agent communication, we propose a fully-decentralized MARL framework for enhanced efficiency and scalability. In addition, a quantization-based communi...
The research of reinforcement learning is increasing recently due to its application in different fi...
With the development of sensing and communication technologies in networked cyber-physical systems (...
A growing number of real-world control problems require teams of software agents to solve a joint ta...
Reinforcement learning algorithms require a large amount of samples; this often limits their real-wo...
Multi-Agent Reinforcement Learning (MARL) has become a classic paradigm to solve diverse, intelligen...
International audienceThis paper presents new decentralized optimal strategies for Cooperative Adapt...
Abstract—Recently, improvements in sensing, communicating, and computing technologies have led to th...
The recent wide availability of semi-autonomous vehicles with distance and lane keep capabilities ha...
The vehicle platoon will be the most dominant driving mode on future roads. To the best of our knowl...
We consider the problem of joint channel assignment and power allocation in underlaid cellular vehic...
Connectivity-enabled automation of distributed control systems allow for better anticipation of syst...
The vehicle platoon will be the most dominant driving mode on future roads. To the best of our knowl...
The rapid development of our transportation systems has brought much convenience to our daily lives,...
The rise of vehicle usage causes roads to reach capacity limits. When capacity is reached, traffic j...
Connected automated vehicles (CAVs) have brought new opportunities to improve traffic throughput and...
The research of reinforcement learning is increasing recently due to its application in different fi...
With the development of sensing and communication technologies in networked cyber-physical systems (...
A growing number of real-world control problems require teams of software agents to solve a joint ta...
Reinforcement learning algorithms require a large amount of samples; this often limits their real-wo...
Multi-Agent Reinforcement Learning (MARL) has become a classic paradigm to solve diverse, intelligen...
International audienceThis paper presents new decentralized optimal strategies for Cooperative Adapt...
Abstract—Recently, improvements in sensing, communicating, and computing technologies have led to th...
The recent wide availability of semi-autonomous vehicles with distance and lane keep capabilities ha...
The vehicle platoon will be the most dominant driving mode on future roads. To the best of our knowl...
We consider the problem of joint channel assignment and power allocation in underlaid cellular vehic...
Connectivity-enabled automation of distributed control systems allow for better anticipation of syst...
The vehicle platoon will be the most dominant driving mode on future roads. To the best of our knowl...
The rapid development of our transportation systems has brought much convenience to our daily lives,...
The rise of vehicle usage causes roads to reach capacity limits. When capacity is reached, traffic j...
Connected automated vehicles (CAVs) have brought new opportunities to improve traffic throughput and...
The research of reinforcement learning is increasing recently due to its application in different fi...
With the development of sensing and communication technologies in networked cyber-physical systems (...
A growing number of real-world control problems require teams of software agents to solve a joint ta...