论文标题
下一代大型卫星网络的人工智能技术
Artificial Intelligence Techniques for Next-Generation Mega Satellite Networks
论文作者
论文摘要
由于太空发射,电子,加工能力和小型化的重大进展,空间通信,特别是大型卫星网络,成为下一代网络的吸引人候选人。但是,由于它们的动态和独特的功能,例如轨道速度,卫星间的链接,短途通行时间和卫星足迹等,大量的卫星网络依赖于无法使用常规使用模型真正捕获的许多基本和相互交织的过程。因此,需要新的方法来使网络能够主动调整链接中关联的迅速变化条件。人工智能(AI)提供了捕获这些过程,分析其行为并建模其对网络的影响的途径。本文介绍了AI技术在集成的陆地卫星网络中的应用,尤其是大型卫星网络通信。它详细介绍了大型卫星网络的独特功能,以及与当前通信基础架构的集成在一起的总体挑战。此外,本文提供了对通信链接各个层次的最新AI技术的见解。这需要应用AI预测高度动态的无线电通道,频谱传感和分类,信号检测和解调,卫星间和卫星访问网络优化以及网络安全性。此外,概述了未来的范例和这些机制在实用网络上的映射。
Space communications, particularly massive satellite networks, re-emerged as an appealing candidate for next generation networks due to major advances in space launching, electronics, processing power, and miniaturization. However, massive satellite networks rely on numerous underlying and intertwined processes that cannot be truly captured using conventionally used models, due to their dynamic and unique features such as orbital speed, inter-satellite links, short pass time, and satellite footprint, among others. Hence, new approaches are needed to enable the network to proactively adjust to the rapidly varying conditions associated within the link. Artificial intelligence (AI) provides a pathway to capture these processes, analyze their behavior, and model their effect on the network. This article introduces the application of AI techniques for integrated terrestrial satellite networks, particularly massive satellite network communications. It details the unique features of massive satellite networks, and the overarching challenges concomitant with their integration into the current communication infrastructure. Moreover, this article provides insights into state-of-the-art AI techniques across various layers of the communication link. This entails applying AI for forecasting the highly dynamic radio channel, spectrum sensing and classification, signal detection and demodulation, inter-satellite and satellite access network optimization, and network security. Moreover, future paradigms and the mapping of these mechanisms onto practical networks are outlined.