Towards 5G: A Reinforcement Learning-Based Scheduling Solution for Data Traffic Management

被引:58
|
作者
Comsa, Ioan-Sorin [1 ]
Zhang, Sijing [2 ]
Aydin, Mehmet Emin [3 ]
Kuonen, Pierre [4 ]
Lu, Yao [5 ]
Trestian, Ramona [6 ]
Ghinea, Gheorghita [1 ]
机构
[1] Brunel Univ London, Dept Comp Sci, Uxbridge UB8 3PH, Middx, England
[2] Univ Bedfordshire, Sch Comp Sci & Technol, Luton LU1 3JU, Beds, England
[3] Univ West England, Dept Comp Sci & Creat Technol, Bristol BS16 1QY, Avon, England
[4] Univ Appl Sci Western Switzerland, Dept Commun & Informat Technol, CH-1700 Fribourg, Switzerland
[5] Univ Fribourg, Dept Informat, CH-1700 Fribourg, Switzerland
[6] Middlesex Univ, Design Engn & Math Dept, London NW4 4BT, England
关键词
5G; packet scheduling; optimization; radio resource management; reinforcement learning; neural networks;
D O I
10.1109/TNSM.2018.2863563
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Dominated by delay-sensitive and massive data applications, radio resource management in 5G access networks is expected to satisfy very stringent delay and packet loss requirements. In this context, the packet scheduler plays a central role by allocating user data packets in the frequency domain at each predefined time interval. Standard scheduling rules are known limited in satisfying higher quality of service (QoS) demands when facing unpredictable network conditions and dynamic traffic circumstances. This paper proposes an innovative scheduling framework able to select different scheduling rules according to instantaneous scheduler states in order to minimize the packet delays and packet drop rates for strict QoS requirements applications. To deal with real-time scheduling, the reinforcement learning (RL) principles are used to map the scheduling rules to each state and to learn when to apply each. Additionally, neural networks are used as function approximation to cope with the RL complexity and very large representations of the scheduler state space. Simulation results demonstrate that the proposed framework outperforms the conventional scheduling strategies in terms of delay and packet drop rate requirements.
引用
收藏
页码:1661 / 1675
页数:15
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