Toward A Task Offloading Framework Based on Cyber Digital Twins in Mobile Edge Computing
【Author】 Tan, Bin; Ai, Lihua; Wang, Min; Wang, Jiaxi
【Source】IEEE WIRELESS COMMUNICATIONS
【影响因子】12.777
【Abstract】In the metaverse, the concept of the digital twin has been expanded from modeling industrial manufacturing to the counterpart of physical objects in cyberspace. The cyber digital twin is updated using real-time data and reasoning to improve decision-making, which imposes a high computational demand on the mobile edge. Mobile edge computing (MEC) provides computing resources for mobile devices to handle complex tasks, addressing the shortcomings of mobile devices in performance. Cyber digital twins with artificial intelligence (AI) capability have great advantages in addressing complex and changing environments. In this article, we propose a cyber digital twin-based mobile edge computing framework, which integrates artificial intelligence into mobile edge networks to enable intelligent resource management. We address the edge computation offloading task through formulating an optimization problem that minimizes the latency of a mobile user via MEC server selection and power allocation. Our solution employs a reinforcement learning-based algorithm, which we demonstrate to be effective. The experimental results show that the cyber digital twin based framework with artificial intelligence capability can further reduce task processing latency and improve the quality of service provided to users.
【Keywords】Performance evaluation; Multi-access edge computing; Quality of service; Mobile handsets; Real-time systems; Digital twins; Resource management
【发表时间】2023 JUN
【收录时间】2023-08-21
【文献类型】
【主题类别】
--
【DOI】 10.1109/MWC.020.2200533
评论