Reinforcement Learning for Cognitive Delay/Disruption Tolerant Network Node Management in an LEO-based Satellite Constellation
Xue Sun, Changhao Li, Lei Yan, Suzhi Cao

TL;DR
This paper introduces a reinforcement learning-based method for managing DTN nodes in LEO satellite constellations, improving data delivery success and resource efficiency over traditional policies.
Contribution
It proposes a centralized A2C reinforcement learning approach for dynamic DTN node buffer management in LEO satellites, a novel application in space communication networks.
Findings
A2C strategy achieves higher reward than non-RL policies.
The method balances delivery success rate and resource consumption.
It reduces node memory utilization effectively.
Abstract
In recent years, with the large-scale deployment of space spacecraft entities and the increase of satellite onboard capabilities, delay/disruption tolerant network (DTN) emerged as a more robust communication protocol than TCP/IP in the case of excessive network dynamics. DTN node buffer management is still an active area of research, as the current implementation of the DTN core protocol still relies on the assumption that there is always enough memory available in different network nodes to store and forward bundles. In addition, the classical queuing theory does not apply to the dynamic management of DTN node buffers. Therefore, this paper proposes a centralized approach to automatically manage cognitive DTN nodes in low earth orbit (LEO) satellite constellation scenarios based on the advanced reinforcement learning (RL) strategy advantage actor-critic (A2C). The method aims to…
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Taxonomy
TopicsAge of Information Optimization · Satellite Communication Systems · Opportunistic and Delay-Tolerant Networks
MethodsA2C
