NOMA Assisted Multi-Task Multi-Access Mobile Edge Computing via Deep Reinforcement Learning for Industrial Internet of Things | IEEE Journals & Magazine | IEEE Xplore

NOMA Assisted Multi-Task Multi-Access Mobile Edge Computing via Deep Reinforcement Learning for Industrial Internet of Things


Abstract:

Multiaccess mobile edge computing (MA-MEC) has been envisioned as one of the key approaches for enabling computation-intensive yet delay-sensitive services in future indu...Show More

Abstract:

Multiaccess mobile edge computing (MA-MEC) has been envisioned as one of the key approaches for enabling computation-intensive yet delay-sensitive services in future industrial Internet of Things (IoT). In this article, we exploit nonorthogonal multiple access (NOMA) for computation offloading in MA-MEC and propose a joint optimization of the multiaccess multitask computation offloading, NOMA transmission, and computation-resource allocation, with the objective of minimizing the total energy consumption of IoT device to complete its tasks subject to the required latency limit. We first focus on a static channel scenario and propose a distributed algorithm to solve the joint optimization problem by identifying the layered structure of the formulated nonconvex problem. Furthermore, we consider a dynamic channel scenario in which the channel power gains from the IoT device to the edge-computing servers are time varying. To tackle with the difficulty due to the huge number of different channel realizations in the dynamic scenario, we propose an online algorithm, which is based on deep reinforcement learning (DRL), to efficiently learn the near-optimal offloading solutions for the time-varying channel realizations. Numerical results are provided to validate our distributed algorithm for the static channel scenario and the DRL-based online algorithm for the dynamic channel scenario. We also demonstrate the advantage of the NOMA assisted multitask MA-MEC against conventional orthogonal multiple access scheme under both static and dynamic channels.
Published in: IEEE Transactions on Industrial Informatics ( Volume: 17, Issue: 8, August 2021)
Page(s): 5688 - 5698
Date of Publication: 10 June 2020

ISSN Information:

Funding Agency:

Citations are not available for this document.

I. System Model and Problem Formulation

The growing exploitation of Internet of Things (IoT) in industrial section has yielded a variety of computation-intensive yet delay-sensitive applications, e.g., unmanned warehouse and unmanned factories. However, due to the cost and hardware issues, conventional IoT devices (IoTDs) are usually equipped with limited computation resources, leading to a poor performance when running the computation-intensive tasks. Thanks to the recent advances in multiaccess radio networks, the paradigm of multiaccess mobile edge computing (MA-MEC) has provided a promising approach to address this issue [1]. With MA-MEC, an IoTD can offload part of its computation tasks to several nearby edge-computing servers (ECSs) equipped with a sufficient amount of computation resources, which effectively reduces the latency in completing the tasks. The advantage of MA-MEC and its applications have attracted a lot of research interests [2]–[7]. In particular, the joint management of communication and computation resources plays a crucial role to the performance of computation offloading, e.g., energy efficiency [8]–[12]. Thanks to the recent advances in deep learning (DL), many research efforts have been devoted to exploiting DL for computation offloading [16]–[24].

Cites in Papers - |

Cites in Papers - IEEE (92)

Select All
1.
Lei Zhou, Ying Chen, Kaixin Li, Yaozong Yang, Jiwei Huang, "Stackelberg-Game-Based Computation Offloading in Urban IoT Systems With AAV-Assisted Multiaccess Edge Computing", IEEE Internet of Things Journal, vol.12, no.7, pp.8178-8191, 2025.
2.
Wei Jiang, Xiao Yuan, Caishi Huang, Liping Qian, "NOMA-Assisted Secure Computation Offloading and Resource Allocation in Marine Internet of Things", IEEE Transactions on Cognitive Communications and Networking, vol.11, no.1, pp.534-545, 2025.
3.
Qianru Wang, Liping Qian, Yuan Wu, Xiaoniu Yang, "Energy Minimization Oriented Resource Allocation for Relay Assisted NOMA-MEC Networks", GLOBECOM 2024 - 2024 IEEE Global Communications Conference, pp.1071-1076, 2024.
4.
Chunlin Li, Kun Jiang, Guangxuan He, Fan Bing, Youlong Luo, "A Computation Offloading Method for Multi-UAVs Assisted MEC Based on Improved Federated DDPG Algorithm", IEEE Transactions on Industrial Informatics, vol.20, no.12, pp.14062-14071, 2024.
5.
Siping Han, Yan Luo, Shijun Lin, Xuemin Hong, Jianghong Shi, "DRL-Assisted Energy Minimization for NOMA-Based Dynamic Multiuser Multiaccess MEC Networks", IEEE Internet of Things Journal, vol.11, no.19, pp.31260-31272, 2024.
6.
Guoqiang Chen, Lu Li, Zhengyi Chai, "Self-Adaptive Evolutionary Multitasking Algorithm for Mobile Edge Computing in Internet of Things", IEEE Internet of Things Journal, vol.11, no.18, pp.30323-30340, 2024.
7.
Wenchao Chen, Xinchen Wei, Kaikai Chi, Keping Yu, Amr Tolba, Shahid Mumtaz, Mohsen Guizani, "Computation Time Minimized Offloading in NOMA-Enabled Wireless Powered Mobile Edge Computing", IEEE Transactions on Communications, vol.72, no.11, pp.7182-7197, 2024.
8.
Bin Dai, Yuan Qiu, Weikun Feng, "Scalable Computation Offloading for Industrial IoTs via Distributed Deep Reinforcement Learning", 2024 27th International Conference on Computer Supported Cooperative Work in Design (CSCWD), pp.1681-1686, 2024.
9.
Qiang Tang, Sihao Wen, Shiming He, Kun Yang, "Multi-UAV-Assisted Offloading for Joint Optimization of Energy Consumption and Latency in Mobile Edge Computing", IEEE Systems Journal, vol.18, no.2, pp.1414-1425, 2024.
10.
Tianqing Zhou, Dong Qin, Xuefang Nie, Xuan Li, Nan Jiang, Chunguo Li, "Joint Computation Offloading and Resource Optimization for Minimizing Network-Wide Energy Consumption in Ultradense MEC Networks", IEEE Systems Journal, vol.18, no.2, pp.1115-1126, 2024.
11.
Hanshuai Cui, Zhiqing Tang, Jiong Lou, Weijia Jia, Wei Zhao, "Latency-Aware Container Scheduling in Edge Cluster Upgrades: A Deep Reinforcement Learning Approach", IEEE Transactions on Services Computing, vol.17, no.5, pp.2530-2543, 2024.
12.
Chi Xu, Peifeng Zhang, Haibin Yu, Yonghui Li, "D3QN-Based Multi-Priority Computation Offloading for Time-Sensitive and Interference-Limited Industrial Wireless Networks", IEEE Transactions on Vehicular Technology, vol.73, no.9, pp.13682-13693, 2024.
13.
Na Li, Bingchang Chen, Xiaofeng Tao, "STAR-RIS Assisted Offloading Based on Hybrid NOMA: A Time Minimization Perspective", IEEE Transactions on Vehicular Technology, vol.73, no.8, pp.11719-11734, 2024.
14.
Xiazhi Lai, Tuo Wu, Cunhua Pan, Lifeng Mai, Arumugam Nallanathan, "Short-Packet Edge Computing Networks With Execution Uncertainty", IEEE Transactions on Green Communications and Networking, vol.8, no.4, pp.1875-1887, 2024.
15.
Prakhar Consul, Ishan Budhiraja, Deepak Garg, Neeraj Kumar, Ramendra Singh, Ahmad S. Almogren, "A Hybrid Task Offloading and Resource Allocation Approach for Digital Twin-Empowered UAV-Assisted MEC Network Using Federated Reinforcement Learning for Future Wireless Network", IEEE Transactions on Consumer Electronics, vol.70, no.1, pp.3120-3130, 2024.
16.
Baraka William Nyamtiga, Derek Kwaku Pobi Asiedu, Airlangga Adi Hermawan, Yakub Fahim Luckyarno, Ji-Hoon Yun, "Adaptive Foveated Rendering and Offloading in an Edge-Assisted Virtual Reality System", IEEE Access, vol.12, pp.17308-17327, 2024.
17.
Na Lin, Lu Bai, Ammar Hawbani, Yunchong Guan, Chaojin Mao, Zhi Liu, Liang Zhao, "Deep-Reinforcement-Learning-Based Computation Offloading for Servicing Dynamic Demand in Multi-UAV-Assisted IoT Network", IEEE Internet of Things Journal, vol.11, no.10, pp.17249-17263, 2024.
18.
Thien Hieu Hoang, Chuyen T. Nguyen, Tri Nhu Do, Georges Kaddoum, "Joint Task Offloading and Radio Resource Management in Stochastic MEC Systems", IEEE Transactions on Communications, vol.72, no.5, pp.2670-2686, 2024.
19.
Yan Luo, Shijun Lin, Xuemin Hong, Jianghong Shi, "DRL-Assisted Resource Allocation for Noncompletely Overlapping NOMA-Based Dynamic MEC Systems", IEEE Internet of Things Journal, vol.11, no.9, pp.16103-16118, 2024.
20.
Xing Chen, Shengxi Hu, Chujia Yu, Zheyi Chen, Geyong Min, "Real-Time Offloading for Dependent and Parallel Tasks in Cloud-Edge Environments Using Deep Reinforcement Learning", IEEE Transactions on Parallel and Distributed Systems, vol.35, no.3, pp.391-404, 2024.
21.
Prakhar Consul, Ishan Budhiraja, Deepak Garg, "A Hybrid Secure Resource Allocation and Trajectory Optimization Approach for Mobile Edge Computing Using Federated Learning Based on WEB 3.0", IEEE Transactions on Consumer Electronics, vol.70, no.1, pp.1167-1179, 2024.
22.
Shuhui Chu, Chengxi Gao, Minxian Xu, Kejiang Ye, Zhu Xiao, Chengzhong Xu, "Efficient Multi-Task Computation Offloading Game for Mobile Edge Computing", IEEE Transactions on Services Computing, vol.17, no.1, pp.30-46, 2024.
23.
Muhammad Awais, Haris Pervaiz, Muhammad Ali Jamshed, Wenjuan Yu, Qiang Ni, "Energy-Aware Resource Optimization for Improved URLLC in Multi-Hop Integrated Aerial Terrestrial Networks", IEEE Transactions on Green Communications and Networking, vol.8, no.1, pp.252-264, 2024.
24.
Jiancheng Chi, Tie Qiu, Fu Xiao, Xiaobo Zhou, "ATOM: Adaptive Task Offloading With Two-Stage Hybrid Matching in MEC-Enabled Industrial IoT", IEEE Transactions on Mobile Computing, vol.23, no.5, pp.4861-4877, 2024.
25.
Qichao Xu, Zhou Su, Dongfeng Fang, Yuan Wu, "BASIC: Distributed Task Assignment With Auction Incentive in UAV-Enabled Crowdsensing System", IEEE Transactions on Vehicular Technology, vol.73, no.2, pp.2416-2430, 2024.
26.
Alia Asheralieva, Dusit Niyato, Xuetao Wei, "Ultrareliable Low-Latency Slicing in Space–Air–Ground Multiaccess Edge Computing Networks for Next-Generation Internet of Things and Mobile Applications", IEEE Internet of Things Journal, vol.11, no.3, pp.3956-3978, 2024.
27.
Zemin Sun, Geng Sun, Yanheng Liu, Jian Wang, Dongpu Cao, "BARGAIN-MATCH: A Game Theoretical Approach for Resource Allocation and Task Offloading in Vehicular Edge Computing Networks", IEEE Transactions on Mobile Computing, vol.23, no.2, pp.1655-1673, 2024.
28.
Lei Zhang, Ximing Wu, Feng Wang, Andy Sun, Laizhong Cui, Jiangchuan Liu, "Edge-Based Video Stream Generation for Multi-Party Mobile Augmented Reality", IEEE Transactions on Mobile Computing, vol.23, no.1, pp.409-422, 2024.
29.
Penglin Dai, Biao Han, Xiao Wu, Huanlai Xing, Bingyi Liu, Kai Liu, "Distributed Convex Relaxation for Heterogeneous Task Replication in Mobile Edge Computing", IEEE Transactions on Mobile Computing, vol.23, no.2, pp.1230-1245, 2024.
30.
Enchang Sun, Mengsi Li, Xiaoxuan Dong, Dongying Zhang, "A Joint Distributed Computation Offloading and Resource Allocation Scheme for MEC Networks", 2023 9th International Conference on Computer and Communications (ICCC), pp.271-277, 2023.

Cites in Papers - Other Publishers (40)

1.
Prakhar Consul, Ishan Budhiraja, Deepak Garg, Sahil Garg, Georges Kaddoum, Mohammad Mehedi Hassan, "SFL-TUM: Energy Efficient SFRL method for Large Scale AI Models Task Offloading in UAV-Assisted MEC Networks", Vehicular Communications, pp.100790, 2024.
2.
Ziyang Zhang, Keyu Gu, Zijie Xu, "DRL-based Task and Computational Offloading for Internet of Vehicles in Decentralized Computing", Journal of Grid Computing, vol.22, no.1, 2024.
3.
Yong Liang, Haifeng Sun, Yunfeng Deng, "Energy-Efficient Cloud-Edge Collaborative Computing: Joint Task Offloading, Resource Allocation, and Service Caching", Advanced Intelligent Computing Technology and Applications, vol.14879, pp.285, 2024.
4.
Kunkun Jia, Hui Xia, Rui Zhang, Yue Sun, Kai Wang, "Multi-agent DRL for edge computing: A real-time proportional compute offloading", Computer Networks, pp.110665, 2024.
5.
Lei Shi, Zepeng Li, Shuangliang Zhao, Yuqi Fan, Dingjun Qian, "Non‐orthogonal multiple access‐based task processing and energy optimization in vehicular edge computing networks", Concurrency and Computation: Practice and Experience, 2024.
6.
Wang Dayong, Kamalrulnizam Bin Abu Bakar, Babangida Isyaku, Taiseer Abdalla Elfadil Eisa, Abdelzahir Abdelmaboud, "A Comprehensive Review on Internet of Things Task Offloading in Multi-access Edge Computing", Heliyon, pp.e29916, 2024.
7.
Sekione Reward Jeremiah, David Camacho, Jong Hyuk Park, "Maximizing throughput in NOMA-enable industrial IoT network using digital twin and reinforcement learning", Journal of Advanced Research, 2024.
8.
Anh-Nhat Nguyen, , 2024.
9.
Pengjie Ai, Fei Wang, "Joint optimization for computation offloading and 3C resource allocations over wireless-powered and NOMA-enabled multi-access MEC", Computer Networks, pp.110415, 2024.
10.
Zhikuan Zhu, Hao Xu, Yingyu He, Zhuoyang Pan, Meiyu Zhang, Chengfeng Jian, "A DRL-based online real-time task scheduling method with ISSA strategy", Cluster Computing, 2024.
11.
Yuan Wu, Yang Li, Liping Qian, Xuemin Shen, "NOMA Empowered Multi‐Access Edge Computing and Edge Intelligence" in Next Generation Multiple Access, pp.181-203, 2024.
12.
Prakhar Consul , Ishan Budhiraja , Ruchika Arora , Sahil Garg , Bong Jun Choi , M. Shamim Hossain , " Federated reinforcement learning based task offloading approach for MEC-assisted WBAN-enabled IoMT ", Alexandria Engineering Journal , vol. 86 , pp. 56 , 2024 .
13.
Huahong Ma, Bowen Ji, Honghai Wu, Ling Xing, "Video data offloading techniques in Mobile Edge Computing: A survey", Physical Communication, pp.102261, 2023.
14.
Zhigang Li, Yutong Wang, Wentao Zhang, Shujie Li, Xiaochuan Sun, "ADRLO: Adaptive deep reinforcement learning-based offloading for edge computing", Physical Communication, pp.102228, 2023.
15.
Galiveeti Poornima, Deepak S. Sakkari, T. N. Manjunath, M. A. Sukruth Gowda, R. Pallavi, "Analysis of Geospatial Data Collected by Drones as Part of Aerial Computing", Drone Data Analytics in Aerial Computing, pp.33, 2023.
16.
Van-Truong Truong, Dac-Binh Ha, Anand Nayyar, Muhammad Bilal, Daehan Kwak, "Performance analysis and optimization of multiple IIoT devices radio frequency energy harvesting NOMA mobile edge computing networks", Alexandria Engineering Journal, vol.79, pp.1, 2023.
17.
Udayakumar K, Ramamoorthy S, , 2023.
18.
M. Vignesh Roshan, K. Shoukath Ali, T. Perarasi, V. Sugirdan, S. Soundar, "Fairness for All User in mmWave Massive MIMO-NOMA: Single-Beam Case", Futuristic Communication and Network Technologies, vol.995, pp.177, 2023.
19.
Diego Hortelano, Ignacio de Miguel, Ramon J. Duran, Juan Carlos Aguado, Noemi Merayo, Lidia Ruiz, Adrian Asensio, Xavi Masip-Bruin, Patricia Fernandez, Ruben M. Lorenzo, Evaristo J. Abril, "A comprehensive survey on reinforcement-learning-based computation offloading techniques in edge computing systems", Journal of Network and Computer Applications, pp.103669, 2023.
20.
Ling Lyu, Xinping Guan, Nan Cheng, Xuemin Sherman Shen, "Advanced Wireless Technologies for Industrial Automation", Advanced Wireless Technologies for Industrial Network Systems, pp.21, 2023.
21.
Syed Agha Hassnain Mohsan, Yanlong Li, Alexey V. Shvetsov, Jose Varela-Aldas, Samih M. Mostafa, Abdelrahman Elfikky, "A Survey of Deep Learning Based NOMA: State of the Art, Key Aspects, Open Challenges and Future Trends", Sensors, vol.23, no.6, pp.2946, 2023.
22.
Truong Van Truong, Anand Nayyar, "System performance and optimization in NOMA mobile edge computing surveillance network using GA and PSO", Computer Networks, vol.223, pp.109575, 2023.
23.
Zheng Wan, Xiaogang Dong, "Computation power maximization for mobile edge computing enabled dense network", Computer Networks, vol.220, pp.109458, 2023.
24.
Xiaoming Yuan, Hansen Tian, Zedan Zhang, Zheyu Zhao, Lei Liu, Arun Kumar Sangaiah, Keping Yu, "A MEC Offloading Strategy Based on Improved DQN and Simulated Annealing for Internet of Behavior", ACM Transactions on Sensor Networks, vol.19, no.2, pp.1, 2023.
25.
Himanshu Sharma, Ishan Budhiraja, Prakhar Consul, Neeraj Kumar, Deepak Garg, Liang Zhao, Lie Liu, "Federated learning based energy efficient scheme for MEC with NOMA underlaying UAV", Proceedings of the 5th International ACM Mobicom Workshop on Drone Assisted Wireless Communications for 5G and Beyond, pp.73, 2022.
26.
Maurice Nduwayezu, Ji-Hoon Yun, "Latency and energy aware rate maximization in MC-NOMA-based multi-access edge computing: A two-stage deep reinforcement learning approach", Computer Networks, vol.207, pp.108834, 2022.
27.
Lixia Lin, Wen?an Zhou, Zhicheng Yang, Jianlong Liu, "Deep reinforcement learning-based task scheduling and resource allocation for NOMA-MEC in Industrial Internet of Things", Peer-to-Peer Networking and Applications, 2022.
28.
Wenchao Chen, Bincheng Zhu, Kaikai Chi, Shubin Zhang, "DRL based offloading of industrial IoT applications in wireless powered mobile edge computing", IET Communications, vol.16, no.9, pp.951, 2022.
29.
Wenchao Chen, Guanqun Shen, Kaikai Chi, Shubin Zhang, Xiaolong Chen, "DRL based partial offloading for maximizing sum computation rate of FDMA-based wireless powered mobile edge computing", Computer Networks, vol.214, pp.109158, 2022.
30.
Yuvraj Sahni, Jiannong Cao, Lei Yang, Shengwei Wang, "Distributed resource scheduling in edge computing: Problems, solutions, and opportunities", Computer Networks, vol.219, pp.109430, 2022.
Contact IEEE to Subscribe

References

References is not available for this document.