Identifying the most efficient exploration approach for deep reinforcement learning in traffic light control is not a trivial task, and can be a critical step in the development of reinforcement learning solutions that can effectively reduce traffic congestion. It is common to use baseline dithering methods such as -greedy. However, the value of more evolved exploration approaches in this setting has not yet been determined. This paper addresses this concern by comparing the performance of the popular deep Q-learning algorithm using one baseline and two state of the art exploration approaches, and their combination. Specifically, -greedy is used as a baseline, and compared to the exploration approaches Bootstrapped DQN, randomized prior fun...
The rapid economic development has continuously improved the transportation network around the worl...
We propose for the first time two reinforcement learning algorithms with function approximation for ...
Signalized urban intersections are bottlenecks for traffic and cause congestion. To improve traffic ...
Identifying the most efficient exploration approach for deep reinforcement learning in traffic light...
The aim of this thesis was to explore the possibilities of using deep reinforcement learning in traf...
The current traffic light controls are ineffective and causes a handful of problems such as congesti...
Traffic flow optimization at an intersection helps to maintain a smooth urban traffic flow. It can r...
This video demonstration contrasts two approaches to coordination in traffic light control using rei...
The rapid growth of urbanization and the constant demand for mobility have put a great strain on tra...
Treball fi de màster de: Master's Degree in Data Science. Curs 2018-2019Directors: Hrvoje Stojic, An...
Recent advances in combining deep neural network architectures with reinforcement learning (RL) tech...
Eco-approach and departure is a complex control problem wherein a driver’s actions are guided over a...
<p>The basic principle of optimal traffic control is the appropriate real-time response to dynamic t...
The demand for transportation has increased significantly in recent decades in line with the increas...
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...
We propose for the first time two reinforcement learning algorithms with function approximation for ...
Signalized urban intersections are bottlenecks for traffic and cause congestion. To improve traffic ...
Identifying the most efficient exploration approach for deep reinforcement learning in traffic light...
The aim of this thesis was to explore the possibilities of using deep reinforcement learning in traf...
The current traffic light controls are ineffective and causes a handful of problems such as congesti...
Traffic flow optimization at an intersection helps to maintain a smooth urban traffic flow. It can r...
This video demonstration contrasts two approaches to coordination in traffic light control using rei...
The rapid growth of urbanization and the constant demand for mobility have put a great strain on tra...
Treball fi de màster de: Master's Degree in Data Science. Curs 2018-2019Directors: Hrvoje Stojic, An...
Recent advances in combining deep neural network architectures with reinforcement learning (RL) tech...
Eco-approach and departure is a complex control problem wherein a driver’s actions are guided over a...
<p>The basic principle of optimal traffic control is the appropriate real-time response to dynamic t...
The demand for transportation has increased significantly in recent decades in line with the increas...
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...
We propose for the first time two reinforcement learning algorithms with function approximation for ...
Signalized urban intersections are bottlenecks for traffic and cause congestion. To improve traffic ...