Enabling Resilient Access Equality for 6G LEO Satellite Swarm Networks

Shih-Chun Lin, Chia-Hung Lin, Liang C. Chu, Shao-Yu Lien
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引用次数: 1

Abstract

Low earth orbit (LEO) mega-constellations, integrating government space systems and commercial practices, become enabling technologies for the sixth generation (6G) networks due to their excellent merits of global coverage and ubiquitous services for military and civilian use cases. However, convergent LEO-based satellite networking infrastructures lack leveraging the synergy of space and terrestrial systems. This paper extends conventional cloud platforms with serverless edge learning architectures for 6G satellite swarm ecosystems and provides a new distributed training design from a networking perspective. The proposed method dynamically orchestrates communications, computation functionalities, and resources among heterogeneous physical units to efficiently fulfill multi-agent deep reinforcement learning for service-level agreements. Innovative ecosystem enhancements, including ultra-broadband access, anti-jamming transmissions, resilient networking, and related open challenges, are investigated for end-to-end connectivity, communications, and learning performance.
实现6G LEO卫星群网络的弹性接入平等
低地球轨道(LEO)巨型星座,集成了政府空间系统和商业实践,由于其全球覆盖和无处不在的军事和民用用例服务的卓越优点,成为第六代(6G)网络的使能技术。然而,基于近地轨道的融合卫星网络基础设施缺乏利用空间和地面系统的协同作用。针对6G卫星群生态系统,采用无服务器边缘学习架构对传统云平台进行了扩展,并从网络角度提供了一种新的分布式训练设计。该方法动态地协调异构物理单元之间的通信、计算功能和资源,以有效地实现服务水平协议的多智能体深度强化学习。创新的生态系统增强,包括超宽带接入、抗干扰传输、弹性网络和相关的开放挑战,研究了端到端连接、通信和学习性能。
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