Affiliation:
1. School of Computer, Zhongshan Institute, University of Electronic Science and Technology of China, Zhognshan 528400, China
2. Engineering and Technology, Central Queensland University, Brisbane 4000, Australia
Abstract
Delay-sensitive task offloading in a device-to-device assisted mobile edge computing (D2D-MEC) system with energy harvesting devices is a critical challenge due to the dynamic load level at edge nodes and the variability in harvested energy. In this paper, we propose a joint dynamic task offloading and CPU frequency control scheme for delay-sensitive tasks in a D2D-MEC system, taking into account the intricacies of multi-slot tasks, characterized by diverse processing speeds and data transmission rates. Our methodology involves meticulous modeling of task arrival and service processes using queuing systems, coupled with the strategic utilization of D2D communication to alleviate edge server load and prevent network congestion effectively. Central to our solution is the formulation of average task delay optimization as a challenging nonlinear integer programming problem, requiring intelligent decision making regarding task offloading for each generated task at active mobile devices and CPU frequency adjustments at discrete time slots. To navigate the intricate landscape of the extensive discrete action space, we design an efficient multi-agent DRL learning algorithm named MAOC, which is based on MAPPO, to minimize the average task delay by dynamically determining task-offloading decisions and CPU frequencies. MAOC operates within a centralized training with decentralized execution (CTDE) framework, empowering individual mobile devices to make decisions autonomously based on their unique system states. Experimental results demonstrate its swift convergence and operational efficiency, and it outperforms other baseline algorithms.
Funder
Science and Technology Foundation of Guangdong Province
Reference36 articles.
1. Joint computing, communication and cost-aware task offloading in d2d-enabled het-mec;Abbas;Comput. Netw.,2022
2. Multi-objective parallel task offloading and content caching in d2d-aided mec networks;Xiao;IEEE Trans. Mob. Comput.,2022
3. Deep reinforcement learning-based adaptive computation offloading for mec in heterogeneous vehicular networks;Ke;IEEE Trans. Veh. Technol.,2020
4. Intelligent offloading in multi-access edge computing: A state-of-the-art review and framework;Cao;IEEE Commun. Mag.,2019
5. Mi, X., and He, H. (2023, January 19). Multi-agent deep reinforcement learning for d2d-assisted mec system with energy harvesting. Proceedings of the 2023 25th International Conference on Advanced Communication Technology (ICACT), Pyeongchang, South Korea.
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