论文标题
集中式和分散的ML的集成陆地和非事物网络
Centralized and Decentralized ML-Enabled Integrated Terrestrial and Non-Terrestrial Networks
论文作者
论文摘要
非事物网络(NTN)是第六代网络持续连接愿景的关键推动者,因为它们可以为地面基础设施不足的领域提供服务。但是,这些网络与地面网络的集成充满了障碍。 NTN通信方案和众多变量的动态性质使基于常规模型的解决方案在计算上昂贵且不可行,以用于资源分配,参数优化和其他问题。因此,基于机器学习(ML)的解决方案可以扮演关键的角色,因为它们固有的能力可以在时间变化的多维数据中揭示具有较高性能和较不复杂性的多维数据的隐藏模式。基于数据和计算负载的分布命名的集中式ML(CML)和分散的ML(DML)是两类ML,它们被研究为陆地和非物质网络(TNTN)集成的各种并发症的解决方案。在不同情况下,两者都有其好处和缺点,为每个TNTN集成问题选择适当的ML方法是不可或缺的。为此,本文介绍了第三代伙伴关系项目标准版本中给出的TNTN集成体系结构,提出了可能的方案。然后,从这些场景的有利位置探索了CML和DML的功能和挑战。
Non-terrestrial networks (NTNs) are a critical enabler 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.