Continual Deep Reinforcement Learning for Decentralized Satellite Routing
Federico Lozano-Cuadra, Beatriz Soret, Israel Leyva-Mayorga, Petar, Popovski

TL;DR
This paper presents a decentralized, multi-agent deep reinforcement learning framework for satellite routing that adapts to dynamic conditions with limited communication, achieving performance comparable to centralized shortest-path solutions.
Contribution
It introduces a novel multi-agent DRL approach with offline training and continual online adaptation using model anticipation and federated learning for satellite routing.
Findings
Achieves shortest-path performance with limited satellite communication.
Effectively adapts to congestion and dynamic network conditions.
Maintains model convergence through anticipation and federated learning.
Abstract
This paper introduces a full solution for decentralized routing in Low Earth Orbit satellite constellations based on continual Deep Reinforcement Learning (DRL). This requires addressing multiple challenges, including the partial knowledge at the satellites and their continuous movement, and the time-varying sources of uncertainty in the system, such as traffic, communication links, or communication buffers. We follow a multi-agent approach, where each satellite acts as an independent decision-making agent, while acquiring a limited knowledge of the environment based on the feedback received from the nearby agents. The solution is divided into two phases. First, an offline learning phase relies on decentralized decisions and a global Deep Neural Network (DNN) trained with global experiences. Then, the online phase with local, on-board, and pre-trained DNNs requires continual learning to…
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Taxonomy
TopicsSatellite Communication Systems · IoT Networks and Protocols · Interconnection Networks and Systems
