难以跟踪的超5G航空Ad-Hoc网络的数字孪生演进

Q1 Social Sciences
T. Bilen, B. Canberk, T. Duong
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引用次数: 2

摘要

这些飞机是扰乱5G及其他领域无缝连接要求的首要场所。航空自组织网络(AANET)以其低成本、易于部署和连续覆盖的特点满足了这一连接要求,引起了工业界和学术界的关注。另一方面,具有非结构化拓扑结构的AANET的超动态特性使其环境难以跟踪。在这里,基于人工智能(AI)的方法论在处理这种难以遵循的环境的管理复杂性方面发挥着重要作用。然而,由于持续更新、收敛时间和可扩展性问题,这些方法增加了飞机的计算复杂性。在这一点上,我们建议利用数字孪生(DT)技术来处理AANET的管理复杂性,同时解决基于人工智能的方法论的主要问题。DT可以通过实时闭环反馈虚拟复制物理AANET组件。因此,本文介绍了DT技术在AANET编排中的应用,并提出了一个支持DT的AANET(DT-AANET)拓扑管理框架。该框架由物理AANET双胞胎和控制器组成,包括带操作模块的数字AANET双胞胎。在这里,数字AANET Twin虚拟地代表了物理环境,而操作模块通过基于无监督学习的训练或基于监督学习的预测来执行基于人工智能的计算。最后,我们给出了一个基于学习向量量化(LVQ)的案例研究,以展示所提出的框架的可用性,并通过评估结果支持这一点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Digital Twin Evolution for Hard-to-Follow Aeronautical Ad-Hoc Networks in Beyond 5G
The aircrafts were top of the places that disrupted the seamless connectivity requirement of 5G and beyond. The Aeronautical Ad-hoc Networks (AANETs) take the attention of both industry and academia to satisfy this connectivity requirement with the low cost, easy deployment, and continuous coverage features. On the other hand, the ultra-dynamic characteristics of AANET with unstructured topology make its environment hard-to-follow. Here, Artificial Intelligence (AI)-based methodologies have an essential role in handling the management complexity of this hard-to-follow environment. However, these methodologies increase the computational complexity of aircraft due to the continuous update, convergence time, and scalability issues. At that point, we propose the utilization of the Digital Twin (DT) technology to handle the management complexity of AANET while solving the main issues of AI-based methodologies on it. The DT can virtually replicate the physical AANET components through closed-loop feedback in real-time. Therefore, this work introduces the utilization of DT technology for the AANET orchestration and, accordingly, proposes a DT-enabled AANET (DT-AANET) topology management framework. This framework consists of the Physical AANET Twin and Controller, including Digital AANET Twin with Operational Module. Here, the Digital AANET Twin virtually represents the physical environment while the operational module executes the AI-based computations on them through unsupervised learning-based training or supervised learning-based prediction. Finally, we present a case study based on Learning Vector Quantization (LVQ) to show the usability of the proposed framework and support this through evaluation results.
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来源期刊
CiteScore
10.80
自引率
0.00%
发文量
55
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