arXiv Analytics

Sign in

arXiv:2202.03648 [eess.SY]AbstractReferencesReviewsResources

Energy Efficiency and Delay Tradeoff in an MEC-Enabled Mobile IoT Network

Han Hu, Weiwei Song, Qun Wang, Rose Qingyang Hu, Hongbo Zhu

Published 2022-02-08Version 1

Mobile Edge Computing (MEC) has recently emerged as a promising technology in the 5G era. It is deemed an effective paradigm to support computation-intensive and delay critical applications even at energy-constrained and computation-limited Internet of Things (IoT) devices. To effectively exploit the performance benefits enabled by MEC, it is imperative to jointly allocate radio and computational resources by considering non-stationary computation demands, user mobility, and wireless fading channels. This paper aims to study the tradeoff between energy efficiency (EE) and service delay for multi-user multi-server MEC-enabled IoT systems when provisioning offloading services in a user mobility scenario. Particularly, we formulate a stochastic optimization problem with the objective of minimizing the long-term average network EE with the constraints of the task queue stability, peak transmit power, maximum CPU-cycle frequency, and maximum user number. To tackle the problem, we propose an online offloading and resource allocation algorithm by transforming the original problem into several individual subproblems in each time slot based on Lyapunov optimization theory, which are then solved by convex decomposition and submodular methods. Theoretical analysis proves that the proposed algorithm can achieve a $[O(1/V), O(V)]$ tradeoff between EE and service delay. Simulation results verify the theoretical analysis and demonstrate our proposed algorithm can offer much better EE-delay performance in task offloading challenges, compared to several baselines.

Related articles: Most relevant | Search more
arXiv:2105.09042 [eess.SY] (Published 2021-05-19)
Dynamic Trajectory and Offloading Control of UAV-enabled MEC under User Mobility
arXiv:2505.05796 [eess.SY] (Published 2025-05-09)
Human-in-the-Loop AI for HVAC Management Enhancing Comfort and Energy Efficiency
arXiv:2102.05005 [eess.SY] (Published 2021-02-09)
Secure and Energy-Efficient Offloading and Resource Allocation in a NOMA-Based MEC Network