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An Architecture Concept for Cognitive Space Communication Networks

机译:认知空间通信网络的建筑概念

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It is being increasingly recognized that the near-Earth space environment for civil, defense, and commercial sectors is rapidly becoming more congested and contested. Increasing bandwidth requirements coupled with increasing the number of satellites in LEO, MEO, and GEO orbits will lead to spectrum interference. Space communication networks will require spectrum sensing, dynamic spectrum allocation, and use of spectrum databases to mitigate these issues for the single link connectivity and cognitive networking techniques for the multiple link connectivity. Ground networks, which are capable of automatically connecting to various satellite networks, will need to be augmented with cognitive abilities as well. Emerging spectrum management approaches are becoming increasingly complex. In this paper, we propose an architectural approach based on the integration of technologies such as deep learning, cognitive radios, cognitive networking, and security. The approach enables a significant degree of automation in the space communication network. Several high-level aero and space scenarios where spectrum interference is going to be a key issue are identified. Details of proposed architecture will be systematically described from communications and security perspective. The current status of cognitive radio, networking, and machine learning applied to space communications will be summarized, and an approach to their integration and testing will be detailed.
机译:越来越认识到,民事,防守和商业部门的近地地球空间环境迅速变得更加拥挤和争议。增加带宽要求加上延长狮子座,MEO和地理轨道的卫星数量会导致频谱干扰。空间通信网络将需要频谱传感,动态频谱分配和频谱数据库的使用,以减轻用于多链路连接的单链路连接和认知网络技术的这些问题。能够自动连接到各种卫星网络的地面网络也需要增强认知能力。新兴谱管理方法变得越来越复杂。在本文中,我们提出了一种基于整合技术的架构方法,例如深度学习,认知收音机,认知网络和安全性。该方法可以在空间通信网络中实现显着的自动化。识别频谱干扰是一个关键问题的几个高级航空和空间场景。拟议架构的细节将从通信和安全视角系统地系统地描述。将概括了应用于空间通信的认知无线电,网络和机器学习的当前状态,并详细说明他们集成和测试的方法。

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