Cost Minimization for Space-Air-Ground Integrated Multi-Access Edge Computing Systems
Weihong Qin, Aimin Wang, Geng Sun, Zemin Sun, Jiacheng Wang, Dusit Niyato, Dong In Kim, Zhu Han

TL;DR
This paper introduces a hierarchical SAGIN-MEC architecture and a novel MADDPG-COCG algorithm to optimize cost and performance in space-air-ground integrated edge computing systems, addressing complex decision-making challenges.
Contribution
It proposes a new SAGIN-MEC architecture and a hybrid optimization algorithm combining deep reinforcement learning and game theory for cost minimization.
Findings
Significant reduction in user device cost, delay, and energy consumption.
Enhanced convergence stability and scalability of the proposed algorithm.
Slight increase in UAV energy consumption compared to benchmarks.
Abstract
Space-air-ground integrated multi-access edge computing (SAGIN-MEC) provides a promising solution for the rapidly developing low-altitude economy (LAE) to deliver flexible and wide-area computing services. However, fully realizing the potential of SAGIN-MEC in the LAE presents significant challenges, including coordinating decisions across heterogeneous nodes with different roles, modeling complex factors such as mobility and network variability, and handling real-time decision-making under partially observable environment with hybrid variables. To address these challenges, we first present a hierarchical SAGIN-MEC architecture that enables the coordination between user devices (UDs), uncrewed aerial vehicles (UAVs), and satellites. Then, we formulate a UD cost minimization optimization problem (UCMOP) to minimize the UD cost by jointly optimizing the task offloading ratio, UAV…
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