Litcius/Paper detail

Leveraging Deep Reinforcement Learning for Traffic Engineering: A Survey

Yang Xiao, Jun Liu, Jiawei Wu, Nirwan Ansari

2021IEEE Communications Surveys & Tutorials115 citationsDOI

Abstract

After decades of unprecedented development, modern networks have evolved far beyond expectations in terms of scale and complexity. In many cases, traditional traffic engineering (TE) approaches fail to address the quality of service (QoS) requirements of modern networks. In recent years, deep reinforcement learning (DRL) has proved to be a feasible and effective solution for autonomously controlling and managing complex systems. Massive growth in the use of DRL applications in various domains is beginning to benefit the communications industry. In this paper, we firstly provide a comprehensive overview of DRL-based TE. Then, we present a detailed literature review on applications of DRL for TE including three fundamental issues: routing optimization, congestion control, and resource management. Finally, we discuss our insights into the challenges and future research perspectives of DRL-based TE.

Topics & Concepts

Reinforcement learningQuality of serviceComputer scienceTraffic engineeringResource (disambiguation)Scale (ratio)Quality (philosophy)Artificial intelligenceTelecommunicationsComputer networkGeographyPhilosophyEpistemologyCartographySoftware-Defined Networks and 5GAdvanced Optical Network TechnologiesAdvanced MIMO Systems Optimization
Leveraging Deep Reinforcement Learning for Traffic Engineering: A Survey | Litcius