Traffic light control is one of the main means of controlling road traffic. Improving traffic control is important because it can lead to higher traffic throughput and reduced traffic congestion. This chapter describes multiagent reinforcement learning techniques for automatic optimization of traffic light controllers. Such techniques are attractive because they can automatically discover efficient control strategies for complex tasks, such as traffic control, for which it is hard or impossible to compute optimal solutions directly and hard to develop hand-coded solutions. First, the general multi-agent reinforcement learning framework is described, which is used to control traffic lights in this work. In this framework, multiple local cont...
Increasing traffic congestion poses significant challenges for urban planning and management in metr...
Increasing traffic congestion poses significant challenges for urban planning and management in metr...
In this paper, we propose a new traffic control method based on multiagent reinforcement learning an...
Traffic light control is one of the main means of controlling road traffic. Improving traffic contro...
Due to the increasing amounts of traffic in and around urban areas there is a growing need for intel...
The rapid growth of urbanization and the constant demand for mobility have put a great strain on tra...
Abstract — Optimal traffic light control is a multi-agent decision problem, for which we propose to ...
Abstract — Optimal traffic light control is a multi-agent decision problem, for which we propose to ...
This paper describes using multi-agent rein-forcement learning (RL) algorithms for learn-ing traÆc l...
Optimal control of traffic lights at junctions or traffic signal control (TSC) is essential for redu...
Optimal control of traffic lights at junctions or traffic signal control (TSC) is essential for redu...
In the modern society, traffic is a heated topic in everyday conversations and economics. As more an...
In the modern society, traffic is a heated topic in everyday conversations and economics. As more an...
Increasing traffic congestion poses significant challenges for urban planning and management in metr...
We propose a new multiobjective control algorithm based on reinforcement learning for urban traffic...
Increasing traffic congestion poses significant challenges for urban planning and management in metr...
Increasing traffic congestion poses significant challenges for urban planning and management in metr...
In this paper, we propose a new traffic control method based on multiagent reinforcement learning an...
Traffic light control is one of the main means of controlling road traffic. Improving traffic contro...
Due to the increasing amounts of traffic in and around urban areas there is a growing need for intel...
The rapid growth of urbanization and the constant demand for mobility have put a great strain on tra...
Abstract — Optimal traffic light control is a multi-agent decision problem, for which we propose to ...
Abstract — Optimal traffic light control is a multi-agent decision problem, for which we propose to ...
This paper describes using multi-agent rein-forcement learning (RL) algorithms for learn-ing traÆc l...
Optimal control of traffic lights at junctions or traffic signal control (TSC) is essential for redu...
Optimal control of traffic lights at junctions or traffic signal control (TSC) is essential for redu...
In the modern society, traffic is a heated topic in everyday conversations and economics. As more an...
In the modern society, traffic is a heated topic in everyday conversations and economics. As more an...
Increasing traffic congestion poses significant challenges for urban planning and management in metr...
We propose a new multiobjective control algorithm based on reinforcement learning for urban traffic...
Increasing traffic congestion poses significant challenges for urban planning and management in metr...
Increasing traffic congestion poses significant challenges for urban planning and management in metr...
In this paper, we propose a new traffic control method based on multiagent reinforcement learning an...