Age-Based Scheduling for Mobile Edge Computing: A Deep Reinforcement Learning Approach

被引:1
|
作者
He, Xingqiu [1 ,2 ]
You, Chaoqun [1 ,2 ]
Quek, Tony Q. S. [3 ,4 ]
机构
[1] Fudan Univ, Intelligent Networking & Comp Res Ctr, Shanghai 200437, Peoples R China
[2] Fudan Univ, Sch Comp Sci, Shanghai 200437, Peoples R China
[3] Singapore Univ Technol & Design, Singapore 487372, Singapore
[4] Yonsei Univ, Yonsei Frontier Lab, Seoul 03722, South Korea
基金
新加坡国家研究基金会;
关键词
Task analysis; Heuristic algorithms; System dynamics; Measurement; Data processing; Minimization; Servers; Age of information; mobile edge computing; post-decision state; deep reinforcement learning; RESOURCE-ALLOCATION; STATUS UPDATE; PEAK AGE; INFORMATION; COMPUTATION; OPTIMIZATION; NETWORKS; MANAGEMENT; TRADEOFF; QUEUE;
D O I
10.1109/TMC.2024.3370101
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
With the rapid development of Mobile Edge Computing (MEC), various real-time applications have been deployed to benefit people's daily lives. The performance of these applications relies heavily on the freshness of collected environmental information, which can be quantified by its Age of Information (AoI). In the traditional definition of AoI, it is assumed that the status information can be actively sampled and directly used. However, for many MEC-enabled applications, the desired status information is updated in an event-driven manner and necessitates data processing. To better serve these applications, we propose a new definition of AoI and, based on the redefined AoI, we formulate an online AoI minimization problem for MEC systems. Notably, the problem can be interpreted as a Markov Decision Process (MDP), thus enabling its solution through Reinforcement Learning (RL) algorithms. Nevertheless, the traditional RL algorithms are designed for MDPs with completely unknown system dynamics and hence usually suffer long convergence times. To accelerate the learning process, we introduce Post-Decision States (PDSs) to exploit the partial knowledge of the system's dynamics. We also combine PDSs with deep RL to further improve the algorithm's applicability, scalability, and robustness. Numerical results demonstrate that our algorithm outperforms the benchmarks under various scenarios.
引用
收藏
页码:9881 / 9897
页数:17
相关论文
共 50 条
  • [21] A Deep Reinforcement Learning Approach to Online Microservice Deployment in Mobile Edge Computing
    Zhao, Yuqi
    Wang, Jian
    Li, Bing
    SERVICE-ORIENTED COMPUTING, ICSOC 2023, PT II, 2023, 14420 : 127 - 142
  • [22] Smart Resource Allocation for Mobile Edge Computing: A Deep Reinforcement Learning Approach
    Liu, Jiajia (liujiajia@nwpu.edu.cn), 1600, IEEE Computer Society (09):
  • [23] Task Assignment in Mobile Edge Computing Networks: A Deep Reinforcement Learning Approach
    Feng, Mingjie
    Zhao, Qi
    Sullivan, Nichole
    Chen, Genshe
    Pham, Khanh
    Blasch, Erik
    SENSORS AND SYSTEMS FOR SPACE APPLICATIONS XIV, 2021, 11755
  • [24] A Deep Reinforcement Learning Approach for Online Computation Offloading in Mobile Edge Computing
    Zhang, Yameng
    Liu, Tong
    Zhu, Yanmin
    Yang, Yuanyuan
    2020 IEEE/ACM 28TH INTERNATIONAL SYMPOSIUM ON QUALITY OF SERVICE (IWQOS), 2020,
  • [25] Deep-Reinforcement-Learning-Based Offloading Scheduling for Vehicular Edge Computing
    Zhan, Wenhan
    Luo, Chunbo
    Wang, Jin
    Wang, Chao
    Min, Geyong
    Duan, Hancong
    Zhu, Qingxin
    IEEE INTERNET OF THINGS JOURNAL, 2020, 7 (06) : 5449 - 5465
  • [26] Deep Reinforcement Learning-Based Task Scheduling in IoT Edge Computing
    Sheng, Shuran
    Chen, Peng
    Chen, Zhimin
    Wu, Lenan
    Yao, Yuxuan
    SENSORS, 2021, 21 (05) : 1 - 19
  • [27] A Scheduling Scheme in a Container-Based Edge Computing Environment Using Deep Reinforcement Learning Approach
    Lu, Tingting
    Zeng, Fanping
    Shen, Jingfei
    Chen, Guozhu
    Shu, Wenjuan
    Zhang, Weikang
    2021 17TH INTERNATIONAL CONFERENCE ON MOBILITY, SENSING AND NETWORKING (MSN 2021), 2021, : 56 - 65
  • [28] Adaptive Service Function Chain Scheduling in Mobile Edge Computing via Deep Reinforcement Learning
    Wang, Tianfeng
    Zu, Jiachen
    Hu, Guyu
    Peng, Dongyang
    IEEE ACCESS, 2020, 8 : 164922 - 164935
  • [29] EdgeTimer: Adaptive Multi-Timescale Scheduling in Mobile Edge Computing with Deep Reinforcement Learning
    Hao, Yijun
    Yang, Shusen
    Li, Fang
    Zhang, Yifan
    Wang, Shibo
    Ren, Xuebin
    IEEE INFOCOM 2024-IEEE CONFERENCE ON COMPUTER COMMUNICATIONS, 2024, : 671 - 680
  • [30] A Deep Reinforcement Learning Approach to Multi-component Job Scheduling in Edge Computing
    Cao, Zhi
    Zhang, Honggang
    Cao, Yu
    Liu, Benyuan
    2019 15TH INTERNATIONAL CONFERENCE ON MOBILE AD-HOC AND SENSOR NETWORKS (MSN 2019), 2019, : 19 - 24