Author:
Cen Jiahuan,Zhang Zhisheng,Dai Min,Xia Zhijie,Wen Haiying
Abstract
Abstract
For the scenario of edge computing tasks’ offloading between multi-user and multi-server, the number of offloading strategies increases exponentially with the number of users which makes it difficult to find the optimal solution through brute force search. The task offloading model for this scenario is established, and a combined algorithm using potential game method to avoid the premature convergence of the particle swarm optimization is proposed in this paper. The simulation results have shown the proposed algorithm outcomes have lower system cost and better quality of service.
Reference9 articles.
1. Industrial internet of things: Challenges, opportunities, and directions;Sisinni;IEEE transactions on industrial informatics,2018
2. Edge computing: Vision and challenges;Shi;IEEE internet of things journal,2016
3. Edge Computing Gateway of the Industrial Internet of Things Using Multiple Collaborative Microcontrollers;Chen;IEEE Network,2018
4. Efficient Multi-User Computation Offloading for Mobile-Edge Cloud Computing;Chen;IEEE/ACM Transactions on Networking,2016
5. A New Approach to Accelerate Edge Computing Process Based on Multi-User Computation Offloading;ZhangKun,2022