Open Datasets for AI-Enabled Radio Resource Control in Non-Terrestrial Networks
Husnain Shahid, Miguel Angel Vazquez, Laurent Reynaud, Fanny Parzysz,, Musbah Shaat

TL;DR
This paper highlights the importance of open datasets for developing AI-based resource control solutions in non-terrestrial networks, aiming to improve spectrum utilization and system performance.
Contribution
It identifies and compiles real-world open datasets relevant to AI-driven radio resource management in non-terrestrial networks, facilitating research and benchmarking.
Findings
Provides a curated collection of datasets for NTN resource management
Supports AI model development with realistic traffic and network data
Lays groundwork for benchmarking and advancing resource allocation solutions
Abstract
By effectively implementing the strategies for resource allocation, the capabilities, and reliability of non-terrestrial networks (NTN) can be enhanced. This leads to enhance spectrum utilization performance while minimizing the unmet system capacity, meeting quality of service (QoS) requirements and overall system optimization. In turn, a wide range of applications and services in various domains can be supported. However, allocating resources in a multi-constellation system with heterogeneous satellite links and highly dynamic user traffic demand pose challenges in ensuring sufficient and fair resource distribution. To mitigate these complexities and minimize the overhead, there is a growing shift towards utilizing artificial intelligence (AI) for its ability to handle such problems effectively. This calls for the development of an intelligent decision-making controller using AI to…
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Taxonomy
TopicsIoT and Edge/Fog Computing · Mobile Agent-Based Network Management
