Cluster-Based Multi-Agent Task Scheduling for Space-Air-Ground Integrated Networks
Zhiying Wang, Gang Sun, Yuhui Wang, Hongfang Yu, Dusit Niyato

TL;DR
This paper introduces a clustering-based multi-agent reinforcement learning algorithm to improve task scheduling and resource allocation in Space-Air-Ground Integrated Networks, significantly enhancing system profit and efficiency.
Contribution
It proposes a novel CMADDPG algorithm that uses dynamic UAV clustering and multi-agent RL for efficient cooperative task scheduling in SAGIN.
Findings
Achieves at least 25% improvement in system profit.
Effectively reduces queue delays and balances load.
Outperforms existing methods in diverse scenarios.
Abstract
The Space-Air-Ground Integrated Network (SAGIN) framework is a crucial foundation for future networks, where satellites and aerial nodes assist in computational task offloading. The low-altitude economy, leveraging the flexibility and multifunctionality of Unmanned Aerial Vehicles (UAVs) in SAGIN, holds significant potential for development in areas such as communication and sensing. However, effective coordination is needed to streamline information exchange and enable efficient system resource allocation. In this paper, we propose a Clustering-based Multi-agent Deep Deterministic Policy Gradient (CMADDPG) algorithm to address the multi-UAV cooperative task scheduling challenges in SAGIN. The CMADDPG algorithm leverages dynamic UAV clustering to partition UAVs into clusters, each managed by a Cluster Head (CH) UAV, facilitating a distributed-centralized control approach. Within each…
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Taxonomy
TopicsSatellite Communication Systems · Opportunistic and Delay-Tolerant Networks · Distributed and Parallel Computing Systems
