Olive Branch Learning: A Topology-Aware Federated Learning Framework for Space-Air-Ground Integrated Network
Qingze Fang, Zhiwei Zhai, Shuai Yu, Qiong Wu, Xiaowen Gong, and Xu Chen

TL;DR
This paper introduces Olive Branch Learning, a topology-aware federated learning framework for space-air-ground networks that improves data transmission efficiency, privacy, and model convergence in complex SAGIN environments.
Contribution
The paper proposes a novel federated learning framework tailored for SAGIN, including a new CNASA algorithm for efficient satellite-air node assignment and multi-orbit adaptation.
Findings
CNASA accelerates model convergence.
OBL outperforms benchmark policies.
Framework effectively handles complex SAGIN topologies.
Abstract
The space-air-ground integrated network (SAGIN), one of the key technologies for next-generation mobile communication systems, can facilitate data transmission for users all over the world, especially in some remote areas where vast amounts of informative data are collected by Internet of remote things (IoRT) devices to support various data-driven artificial intelligence (AI) services. However, training AI models centrally with the assistance of SAGIN faces the challenges of highly constrained network topology, inefficient data transmission, and privacy issues. To tackle these challenges, we first propose a novel topology-aware federated learning framework for the SAGIN, namely Olive Branch Learning (OBL). Specifically, the IoRT devices in the ground layer leverage their private data to perform model training locally, while the air nodes in the air layer and the ring-structured low…
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Taxonomy
TopicsSatellite Communication Systems · Nanocluster Synthesis and Applications · Advanced Wireless Communication Technologies
