Applicability and Challenges of Deep Reinforcement Learning for Satellite Frequency Plan Design
Juan Jose Garau Luis, Edward Crawley, Bruce Cameron

TL;DR
This paper evaluates the use of Deep Reinforcement Learning for satellite frequency plan design, analyzing tradeoffs and performance impacts of different model elements in various operational scenarios.
Contribution
It systematically explores how different DRL components affect performance in satellite frequency planning, providing insights for practical deployment.
Findings
DRL shows potential for real-time satellite frequency planning.
No single DRL model outperforms others across all scenarios.
Model performance depends on environment features and element choices.
Abstract
The study and benchmarking of Deep Reinforcement Learning (DRL) models has become a trend in many industries, including aerospace engineering and communications. Recent studies in these fields propose these kinds of models to address certain complex real-time decision-making problems in which classic approaches do not meet time requirements or fail to obtain optimal solutions. While the good performance of DRL models has been proved for specific use cases or scenarios, most studies do not discuss the compromises and generalizability of such models during real operations. In this paper we explore the tradeoffs of different elements of DRL models and how they might impact the final performance. To that end, we choose the Frequency Plan Design (FPD) problem in the context of multibeam satellite constellations as our use case and propose a DRL model to address it. We identify 6 different…
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