Abstract

Persistent congestions which are varying in strength and duration in the dense traffic networks are the most prominent obstacle towards sustainable mobility. Those types of congestions cannot be adequately resolved by the traditional Adaptive Traffic Signal Control (ATSC). The introduction of Reinforcement Learning (RL) in ATSC as tackled those types of congestions by using on-line learning, which is based on the trial and error approach. Furthermore, RL is prone to the dimensionality curse related to the state–action space size based on which a non-linear quality function is derived. The Deep Reinforcement Learning (DRL) framework uses Deep Neural Networks (DNN) to digest raw traffic data to approximate the quality function of RL. This paper provides a comprehensive analysis of the most recent DRL approaches used for the ATSC algorithm design. Special emphasis is set to overview of the traffic state representation and multi-agent DRL frameworks applied for the large traffic networks. Best practices are provided for choosing the adequate DRL model, hyper-parameters tuning, and model architecture design. Finally, this paper provides a discussion about the importance of the open traffic data concept for the extensive application of DRL in the real world ATSC.

Highlights

  • In the last decade, significant progress has been made in the development of the advanced traffic control methods due to persistent problems with intense congestions and their negative impact on sustainable mobility

  • 4 These are per each Actor and Critic; their design is based on Wolpertinger architecture with Deep Deterministic Policy Gradient (DDPG). 5 One episode lasts for 1.5 h. 6 Each set of parameters is for a separate Actor–Critic Deep Neural Networks (DNN). 7 np is the total number of phases and nd is the number of detectors at the traffic network

  • The application of Deep Reinforcement Learning (DRL) in Adaptive Traffic Signal Control (ATSC) is a relatively new field, the papers reviewed show promising results compared to the traditional ATSC algorithms and ATSC algorithms that are based on Reinforcement Learning (RL) methodologies

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Summary

Introduction

Significant progress has been made in the development of the advanced traffic control methods due to persistent problems with intense congestions and their negative impact on sustainable mobility. This paper provides an analysis of the several most representative DRL frameworks used for traffic signal control Those frameworks are analyzed with respect to their learning hyper-parameters, DNN model design, and optimization algorithms. The main focus is set on detailed analysis regarding the raw intersection data pre-processing which must be in line with the DNN model digestion requirements This analysis is necessary for giving the design guidelines for high-level image-like data formatting in the context of Open Traffic Data [3]. This paper is concluded with the discussion and conclusions

Reinforcement Learning
Drawbacks of Reinforcement Learning
General Deep Reinforcement Learning
Advanced Approaches for Deep Reinforcement Learning
Adaptive Traffic Light Signal Control Based on DRL
Traffic Signal Control on a Larger Scale
Method
Design of the DRL Algorithm for the Traffic Signal Control
State Representation
Action Representation
Reward Function
Million
Open Traffic Data Framework in the Context of Deep Learning
Discussion
Conclusions
Full Text
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