—Non-terrestrial networks (NTNs) are a critical en- abler of the persistent connectivity vision of sixth-generation networks, as they can service areas where terrestrial infrastructure falls short. However, the integration of these networks with the terrestrial network is laden with obstacles. The dynamic nature of NTN communication scenarios and numerous variables render conventional model-based solutions computationally costly and impracticable for resource allocation, parameter optimization, and other problems. Machine learning (ML)-based solutions, thus, can perform a pivotal role due to their inherent ability to uncover the hidden patterns in time-varying, multi-dimensional data with superior performance and less complexity. Centralized ML (CML) and decentralized ML (DML), named so based on the distribution of the data and computational load, are two classes of ML that are being studied as solutions for the various complications of terrestrial and non-terrestrial networks (TNTN) integration. Both have their benefits and drawbacks under different circumstances, and it is integral to choose the appropriate ML approach for each TNTN integration issue. To this end, this paper goes over the TNTN integration architectures as given in the 3rd generation partnership project standard releases, proposing possible scenarios. Then, the capabilities and challenges of CML and DML are explored from the vantage point of these scenarios.
[1]
Sergey Andreev,et al.
AI-Aided Integrated Terrestrial and Non-Terrestrial 6G Solutions for Sustainable Maritime Networking
,
2022,
IEEE Network.
[2]
M. Marchese,et al.
Data-driven Network Orchestrator for 5G Satellite-Terrestrial Integrated Networks: The ANChOR Project
,
2021,
2021 IEEE Global Communications Conference (GLOBECOM).
[3]
Shao-Yu Lien,et al.
Multi-tier Collaborative Deep Reinforcement Learning for Non-terrestrial Network Empowered Vehicular Connections
,
2021,
ICNP.
[4]
Canh Dinh,et al.
Federated Learning Over Wireless Networks: Convergence Analysis and Resource Allocation
,
2019,
IEEE/ACM Transactions on Networking.
[5]
Sundeep Rangan,et al.
Towards 6G Networks: Use Cases and Technologies
,
2019,
ArXiv.
[6]
6G: The Next Horizon
,
2022
.