邓晓衡

教授 博士生导师 硕士生导师

入职时间:2006-01-05

所在单位:电子信息学院

职务:院长

学历:博士研究生毕业

性别:男

联系方式:Email:dxh@csu.edu.cn

学位:博士学位

在职信息:在职

主要任职:计算机学院副院长 湖南省数据传感与交换设备工程中心 主任 IEEE RS Chapter长沙 主席CCF普适计算专委 委员 CCF长沙 执委

毕业院校:中南大学

学科:计算机科学与技术
信息与通信工程

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X. Deng, J. Yin, P. Guan, N. N. Xiong, L. Zhang and S. Mumtaz, "Intelligent Delay-Aware Partial Computing Task Offloading for Multiuser Industrial Internet of Things Through Edge Computing," in IEEE Internet of Things Journal, vol. 10, no. 4, pp. 2954-2966, 15 Feb.15, 2023, doi: 10.1109/JIOT.2021.3123406. (中科院 1区)

发布时间:2024-03-13

点击次数:

发表刊物:IEEE Internet of Things Journal

摘要:Abstract—The development of Industrial Internet of Things (IIoT) and Industry 4.0 has completely changed the traditional manufacturing industry. Intelligent IIoT technology usually involves a large number of intensive computing tasks. Resource-constrained IIoT devices often cannot meet the realtime requirements of these tasks. As a promising paradigm, the mobile-edge computing (MEC) system migrates the computation intensive tasks from resource-constrained IIoT devices to nearby MEC servers, thereby obtaining lower delay and energy consumption. However, considering the varying channel conditions as well as the distinct delay requirements for various computing tasks, it is challenging to coordinate the computing task offloading among multiple users. In this article, we propose an autonomous partial offloading system for delay-sensitive computation tasks in multiuser IIoT MEC systems. Our goal is to provide offloading services with minimum delay for better Quality of Service (QoS). Enlighten by the recent advancement of reinforcement learning (RL), we propose two RL-based offloading strategies to automatically optimize the delay performance. Specifically, we first implement the Q-learning algorithm to provide a discrete partial offloading decision. Then, to further optimize the system performance with more flexible task offloading, the offloading decisions are given as continuous based on deep deterministic policy gradient (DDPG). The simulation results show that the Q-learning scheme reduces the delay by 23%, and the DDPG scheme reduces the delay by 30%

备注:http://faculty.csu.edu.cn/dengxiaoheng/zh_CN/lwcg/10445/content/49286.htm

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  • 23-Intelligent Delay-Aware Partial Computing Task Offloading for Multiuser Industrial Internet of Things.pdf

  • 上一条: Y. Li, X. Chen and X. Deng, "Lightweight Deep Joint Source-Channel Coding for Gauss-Markov Sources over AWGN channel," 2023 IEEE Wireless Communications and Networking Conference (WCNC), Glasgow, United Kingdom, 2023, pp. 1-6, doi: 10.1109/WCNC55385.2023.10119015.

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