Computer Science ›› 2025, Vol. 52 ›› Issue (11A): 241200215-6.doi: 10.11896/jsjkx.241200215

• Network & Communication • Previous Articles     Next Articles

MEC Network Task Offloading and Migration Strategy Based on Optimization Model

YU Ping1, YAN Hui2, BAO Jie1, GENG Xiaozhong1   

  1. 1 School of Computer Technology and Engineering,Changchun Institute of Engineering,Changchun 130012,China
    2 School of Information Engineering,Suqian University,Suqian,Jiangsu 223800,China
  • Online:2025-11-15 Published:2025-11-10
  • About author:YU Ping,born in 1980,Ph.D candidate,associate professor,master supervisor,young reserve talents in Jilin Province,is a member of CCF(No.B3844G).Her main research interests include mobile edge computing,artificial intelligence,big data and computer applications.
    GENG Xiaozhong,born in 1972,Ph.D,professor,master supervisor,young reserve talents in Jilin Province.Her main research interests include artificial intelligence and brain computer interface.
  • Supported by:
    Jilin Province Science and Technology(S & T) Department(20240404058ZP).

Abstract: The research on task offloading and migration strategies in optimization model-driven Mobile Edge Computing(MEC) networks is conducted against the backdrop of the surge in Internet of Things(IoT) devices and the widespread adoption of 5G technology.MEC significantly reduces data transmission latency and cloud-side pressure by migrating computing resources to the network edge.This study proposes a series of task offloading and migration strategies and validates their effectiveness through performance evaluations.Experimental results demonstrate that the proposed strategies optimize key performance indicators in typical application scenarios: latency is reduced by approximately 25%,energy consumption is decreased by 30% and task throughput is increased by 20%.Specific optimizations include dynamic resource scheduling for load balancing and improved offloading efficiency;a Quality of Service(QoS)-guaranteed migration mechanism to ensure service stability; and cross-layer optimization design to enhance multi-task collaboration capabilities.Additionally,machine learning-based prediction techniques are employed to dynamically adapt to network fluctuations,thereby improving system flexibility.The research conclusions indicate that the optimization model offers significant advantages in ensuring efficient resource allocation and task real-time performance,thereby enhancing the service quality and user experience of MEC networks.The strategies can be widely applied in heterogeneous networks and dynamic environments,demonstrating potential for further expansion.

Key words: Mobile edge computing, Task offloading, Optimization model, Genetic algorithm, Migration strategy

CLC Number: 

  • TP309
[1]HU H,SHEN Y.Load balancing task unloading for multi-type task load prediction [J].Computer System Applications,2024,33(12):16-29.
[2]WU B,LONG T Y,WAN L,et al.Task unloading strategybased on the improved particle swarm algorithm in MEC [J / OL].Computer Engineering,1-12 [2024-12-29].https://doi.org/10.19678/j.issn.1000-3428.0069852.
[3]WANG C,LIU S,ZUO M M.Unloading strategy based on the implicit quantile network [J / OL].Computer Engineering,1-11 [2024-12-29].https://doi.org/10.19678/j.issn.1000-3428.0069929.
[4]ZHU Y,JIANG X.Based on cloud edge collaboration [J / OL].Radio Engineering,1-21 [2024-12-29].http://kns.cnki.net/kcms/detail/13.1097.tn.20241010.0924.004.html.
[5]HOU J R,QU Y W.Research on semi-migration unloadingmode based on mobile edge computing [J].Journal of Yunnan University for Nationalities(Natural Science Edition),2024,33(6):746-752.
[6]CHEN K.Energy efficiency optimization based on depth-determined policy gradient in MEC network [J].Fire and Command and Control,2024,49(7):44-49.
[7]XU F,NING X,AN S,et al.Low-orbit satellite network for M-DRL [J].Journal of Xi’an University of Technology,2024,44(3):395-404.
[8]DENG H N,YE A Y,LIU Y N,et al.An online task unloading mechanism for privacy perception in mobile edge computing [J].Journal of Information Security,2023,8(4):126-138.
[9]KONG X S,YUAN J.Blockchain moving edge computing unloading model based on the bird flock artificial fish flock algorithm [J].Electronics,2024,37(8):26-33.
[10]CHEN L.Reinforcement learning-based task unloading and resource allocation in the MEC network [J].Journal of Wuhan University(Engineering Edition),2024,57(3):363-371.
[1] HUAN Haisheng, ZHAO Peng, CHEN Nuo, KA Zuming. Review of Offloading Technologies Research in Mobile Edge Computing [J]. Computer Science, 2026, 53(2): 367-378.
[2] WEN Jia, WU Shuxia, YU Zhengxin, MIAO Wang, CHEN Zheyi. Multi-objective Optimization for Virtual Machine Placement in Large-scale Hadoop Cluster [J]. Computer Science, 2026, 53(2): 387-395.
[3] WEI Manyi, WANG Gaocai, WEN Yihu. Game Theory-based Optimization of Flight Paths and Task Offloading in UAV-assisted MECSystems [J]. Computer Science, 2026, 53(2): 396-405.
[4] LI Fang, YUAN Baochun, SHEN Hang, WANG Tianjing, BAI Guangwei. Deep Reinforcement Learning-based Aircraft Task Offloading in Low Earth Orbit Satellite Networks [J]. Computer Science, 2026, 53(2): 406-415.
[5] FAN Xinggang, JIANG Xinyang, GU Wenting, XU Juntao, YANG Youdong, LI Qiang. Effective Task Offloading Strategy Based on Heterogeneous Nodes [J]. Computer Science, 2025, 52(8): 354-362.
[6] WANG Wei, ZHAO Yunlong, PENG Xiaoyu, PAN Xiaodong. TSK Fuzzy System Enhanced by TSVR with Cooperative Parameter Optimization [J]. Computer Science, 2025, 52(7): 75-81.
[7] WANG Xiang, HAN Qinghai, LIANG Jiarui, YU Xiaoli, WU Qi, QING Li. Research on Multi-user Task Offloading and Service Caching Strategies [J]. Computer Science, 2025, 52(7): 307-314.
[8] HUANG Ao, LI Min, ZENG Xiangguang, PAN Yunwei, ZHANG Jiaheng, PENG Bei. Adaptive Hybrid Genetic Algorithm Based on PPO for Solving Traveling Salesman Problem [J]. Computer Science, 2025, 52(6A): 240600096-6.
[9] ZHAO Chanchan, YANG Xingchen, SHI Bao, LYU Fei, LIU Libin. Optimization Strategy of Task Offloading Based on Meta Reinforcement Learning [J]. Computer Science, 2025, 52(6A): 240800050-8.
[10] WANG Sitong, LIN Rongheng. Improved Genetic Algorithm with Tabu Search for Asynchronous Hybrid Flow Shop Scheduling [J]. Computer Science, 2025, 52(4): 271-279.
[11] WANG Dongzhi, LIU Yan, GUO Bin, YU Zhiwen. Edge-side Federated Continuous Learning Method Based on Brain-like Spiking Neural Networks [J]. Computer Science, 2025, 52(3): 326-337.
[12] ZHENG Longhai, XIAO Bohuai, YAO Zewei, CHEN Xing, MO Yuchang. Graph Reinforcement Learning Based Multi-edge Cooperative Load Balancing Method [J]. Computer Science, 2025, 52(3): 338-348.
[13] ZHAO Haixia, LI Xin, WEI Yongzhuang. Rank-sorting Hybrid Genetic Algorithm for Search High Quality Balanced Boolean Functions [J]. Computer Science, 2025, 52(12): 351-357.
[14] DAI Mengxuan, XIA Yunni, MA Yong, MA Yuyin, DONG Yumin, LIU Hui, CHEN Peng, SUN Xiaoning, LONG Tingyan. Service Migration Path Selection Method Based on Interest and Mobility Perception in EdgeComputing Environment [J]. Computer Science, 2025, 52(11A): 250200002-8.
[15] LI Xiaogeng, HAN Xiao, XIAO Haiyi. Cooperative Defense Method for Network Space Object of Power Monitoring System [J]. Computer Science, 2025, 52(11A): 241200158-7.
Viewed
Full text


Abstract

Cited

  Shared   
  Discussed   
No Suggested Reading articles found!