Reinforcement-learning (RL) algorithms have made great achievements in many scenarios. However, in large-scale traffic signal control (TSC) scenarios, RL still falls into local optima when controlling multiple signal lights. To solve this problem, we propose a novel goal-based multi-agent hierarchical model (GMHM). Specifically, we divide the traffic environment into several regions. The region contains a virtual manager and several workers who control the traffic lights. The manager assigns goals to each worker by observing the environment, and the worker makes decisions according to the environment state and the goal. For the worker, we adapted the goal-based multi-agent deep deterministic policy gradient (MADDPG) algorithm combined with ...
Multi-agent reinforcement learning (MARL) has been applied and shown great potential in multi-inters...
In the modern society, traffic is a heated topic in everyday conversations and economics. As more an...
We propose a new multiobjective control algorithm based on reinforcement learning for urban traffic...
The rapid growth of urbanization and the constant demand for mobility have put a great strain on tra...
The aim of traffic signal control (TSC) is to optimize vehicle traffic in urban road networks, via t...
Increasing traffic congestion poses significant challenges for urban planning and management in metr...
Traffic light control is one of the main means of controlling road traffic. Improving traffic contro...
Traffic signal control is an essential and chal-lenging real-world problem, which aims to alleviate ...
Optimal control of traffic lights at junctions or traffic signal control (TSC) is essential for redu...
Traffic light control is one of the main means of controlling road traffic. Improving traffic contro...
Recent advances in combining deep neural network architectures with reinforcement learning (RL) tech...
Reinforcement learning is an effective method for adaptive traffic signal control in urban transport...
In the adaptive traffic signal control (ATSC), reinforcement learning (RL) is a frontier research ho...
The population is steadily increasing worldwide resulting in intractable traffic congestion in dense...
Traffic signal control (TSC) is an established yet challenging engineering solution that alleviates ...
Multi-agent reinforcement learning (MARL) has been applied and shown great potential in multi-inters...
In the modern society, traffic is a heated topic in everyday conversations and economics. As more an...
We propose a new multiobjective control algorithm based on reinforcement learning for urban traffic...
The rapid growth of urbanization and the constant demand for mobility have put a great strain on tra...
The aim of traffic signal control (TSC) is to optimize vehicle traffic in urban road networks, via t...
Increasing traffic congestion poses significant challenges for urban planning and management in metr...
Traffic light control is one of the main means of controlling road traffic. Improving traffic contro...
Traffic signal control is an essential and chal-lenging real-world problem, which aims to alleviate ...
Optimal control of traffic lights at junctions or traffic signal control (TSC) is essential for redu...
Traffic light control is one of the main means of controlling road traffic. Improving traffic contro...
Recent advances in combining deep neural network architectures with reinforcement learning (RL) tech...
Reinforcement learning is an effective method for adaptive traffic signal control in urban transport...
In the adaptive traffic signal control (ATSC), reinforcement learning (RL) is a frontier research ho...
The population is steadily increasing worldwide resulting in intractable traffic congestion in dense...
Traffic signal control (TSC) is an established yet challenging engineering solution that alleviates ...
Multi-agent reinforcement learning (MARL) has been applied and shown great potential in multi-inters...
In the modern society, traffic is a heated topic in everyday conversations and economics. As more an...
We propose a new multiobjective control algorithm based on reinforcement learning for urban traffic...