Energy-Efficient and Latency-Constrained Task Offloading in Cooperative Cube Satellite Network
Loading...
Date
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
Service latency reduction and quality improvement are achieved by Mobile Edge Computing (MEC) through offloading computation-intensive tasks to network edges. Cube satellites (CubeSats) act as assisted MEC servers for large-scale, sparsely distributed user equipment (UE). Considering UEs' limited computation and energy capacities, this paper investigates a collaborative mobile edge computing system with multiple CubeSats. We address task offloading to minimize execution delays and energy consumption via CubeSat task allocation management. A Markov decision process and a cooperative multi-agent deep reinforcement learning framework with an actor-critic algorithm are employed. Results demonstrate our method outperforms other optimization approaches. © 2024 IEEE.