Deep reinforcement learning-based task scheduling and resource allocation for NOMA-MEC in Industrial Internet of Things

被引:19
作者
Lin, Lixia [1 ]
Zhou, Wen'an [1 ]
Yang, Zhicheng [1 ]
Liu, Jianlong [1 ]
机构
[1] Beijing Univ Posts & Telecommun, Xitucheng Rd 10th, Beijing 100876, Peoples R China
基金
中国国家自然科学基金;
关键词
Mobile edge computing; Non-Orthogonal Multiple Access; Delay-sensitive; Industrial internet of things; Prediction-based deep reinforcement learning; NONORTHOGONAL MULTIPLE-ACCESS; ENERGY-CONSUMPTION; EDGE; NETWORKS; MINIMIZATION; SYSTEMS;
D O I
10.1007/s12083-022-01348-x
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Mobile Edge Computing (MEC) and Non-Orthogonal Multiple Access (NOMA) have been treated as promising technologies to process the delay-sensitive tasks in the Industrial Internet of Things (IIoT) network. The cooperation among multiple MEC servers is essential to improve the processing capacity of MEC systems. However, the dynamic IIoT environment with unknown changing models, including time-varying wireless channels, diversified task requests, and dynamic load on wireless resources and multiple MEC servers, may continuously affect the task offloading decision and NOMA user pairing, which brings great challenges to the resource management in the NOMA-MEC-based IIoT network. In order to solve this problem, we design a distributed deep reinforcement learning (DRL) based solution to improve the task satisfaction ratio by jointly optimizing the task offloading decision and the sub-channel assignment to support the binary computing offloading policy. For each IIoT device agent, to deal with the problem of partial state observability, the Recurrent Neural Network (RNN) is employed to predict the load states of sub-channels and MEC servers, which is further used for the decision of the RL agent. Simulation results show that the proposed prediction-based-DRL (P-DRL) method can achieve higher task satisfaction ratio than exiting schemes.
引用
收藏
页码:170 / 188
页数:19
相关论文
共 48 条
[1]   NOMA and 5G emerging technologies: A survey on issues and solution techniques [J].
Akbar, Aamina ;
Jangsher, Sobia ;
Bhatti, Farrukh A. .
COMPUTER NETWORKS, 2021, 190 (190)
[2]   Heterogeneous Task Offloading and Resource Allocations via Deep Recurrent Reinforcement Learning in Partial Observable Multifog Networks [J].
Baek, Jungyeon ;
Kaddoum, Georges .
IEEE INTERNET OF THINGS JOURNAL, 2021, 8 (02) :1041-1056
[3]   Computing tasks assignment optimization among edge computing servers via SDN [J].
Bu, Chao ;
Wang, Jinsong .
PEER-TO-PEER NETWORKING AND APPLICATIONS, 2021, 14 (03) :1190-1206
[4]   Energy Consumption Minimization Scheme for NOMA-Based Mobile Edge Computation Networks Underlaying UAV [J].
Budhiraja, Ishan ;
Kumar, Neeraj ;
Tyagi, Sudhanshu ;
Tanwar, Sudeep .
IEEE SYSTEMS JOURNAL, 2021, 15 (04) :5724-5733
[5]  
Chen F., 2022, IEEE T MOBILE COMPUT
[6]  
Chen X, 2022, IEEE Internet Things J
[7]   NOMA-Based Multi-User Mobile Edge Computation Offloading via Cooperative Multi-Agent Deep Reinforcement Learning [J].
Chen, Zhao ;
Zhang, Lei ;
Pei, Yukui ;
Jiang, Chunxiao ;
Yin, Liuguo .
IEEE TRANSACTIONS ON COGNITIVE COMMUNICATIONS AND NETWORKING, 2022, 8 (01) :350-364
[8]   Partial Computation Offloading in NOMA-Assisted Mobile-Edge Computing Systems Using Deep Reinforcement Learning [J].
Dat, Van Tuong ;
Truong, Thanh Phung ;
Nguyen, The-Vi ;
Noh, Wonjong ;
Cho, Sungrae .
IEEE INTERNET OF THINGS JOURNAL, 2021, 8 (17) :13196-13208
[9]   Impact of Non-Orthogonal Multiple Access on the Offloading of Mobile Edge Computing [J].
Ding, Zhiguo ;
Fan, Pingzhi ;
Poor, H. Vincent .
IEEE TRANSACTIONS ON COMMUNICATIONS, 2019, 67 (01) :375-390
[10]   A Survey on Non-Orthogonal Multiple Access for 5G Networks: Research Challenges and Future Trends [J].
Ding, Zhiguo ;
Lei, Xianfu ;
Karagiannidis, George K. ;
Schober, Robert ;
Yuan, Jinhong ;
Bhargava, Vijay K. .
IEEE JOURNAL ON SELECTED AREAS IN COMMUNICATIONS, 2017, 35 (10) :2181-2195