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Machine Learning-Based Characterization of SNR in Digital Satellite Communication Links

机译:基于机器学习的数字卫星通信链路SNR的特征

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Signals traveling through a Satellite Communication (SatCom) channel are subject to noise and interference effects, impacting their Signal-to-Noise ratio (SNR). Furthermore, non-linear distortion arising from the nonlinear characteristic of the amplifiers in the system also adversely impacts performance. Current state-of-the-art techniques estimate these effects by including a sequence of known pilot symbols in the transmitted signals. While robust, a downside of these approaches is that pilot symbols do not include useful information, thus introducing overhead. This paper presents a Machine Learning (ML) approach to characterize the SNR, using the received signal in the return link of SatCom systems, independent of the signal's distortion level and without relying on pilot symbols. The proposed technique is validated through a suitable application example: the characterization of SNR in a SatCom system using a 16-APSK modulation scheme.
机译:通过卫星通信(SATCOM)通道的信号受到噪声和干扰效应,影响其信噪比(SNR)。 此外,系统中放大器的非线性特性产生的非线性变形也不利地影响性能。 目前的最先进技术通过包括发送信号中的已知导频符号的序列来估计这些效果。 虽然强大,这些方法的缺点是导频符号不包括有用的信息,从而引入开销。 本文介绍了一种机器学习(ML)方法来表征SNR,在SATCOM系统的返回链路中使用所接收的信号,与信号的失真级别无关,而不依赖于导频符号。 通过合适的应用示例验证了所提出的技术:使用16-APSK调制方案在SATCOM系统中表征SNR。

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