Spectrum prediction and interference detection for satellite communications

Lissy Pellaco, N. Singh, Joakim Jald'en
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引用次数: 6

Abstract

Spectrum monitoring and interference detection are crucial for the satellite service performance and the revenue of SatCom operators. Interference is one of the major causes of service degradation and deficient operational efficiency. Moreover, the satellite spectrum is becoming more crowded, as more satellites are being launched for different applications. This increases the risk of interference, which causes anomalies in the received signal, and mandates the adoption of techniques that can enable the automatic and real-time detection of such anomalies as a first step towards interference mitigation and suppression. In this paper, we present a Machine Learning (ML)-based approach able to guarantee a real-time and automatic detection of both short-term and long-term interference in the spectrum of the received signal at the base station. The proposed approach can localize the interference both in time and in frequency and is universally applicable across a discrete set of different signal spectra. We present experimental results obtained by applying our method to real spectrum data from the Swedish Space Corporation. We also compare our ML-based approach to a model-based approach applied to the same spectrum data and used as a realistic baseline. Experimental results show that our method is a more reliable interference detector.
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卫星通信频谱预测与干扰检测
频谱监测和干扰检测对卫星业务性能和卫星通信运营商的收益至关重要。干扰是导致服务退化和运营效率低下的主要原因之一。此外,卫星频谱正变得越来越拥挤,因为越来越多的卫星被发射用于不同的用途。这增加了干扰的风险,从而导致接收到的信号出现异常,并要求采用能够自动实时检测这种异常的技术,作为减少和抑制干扰的第一步。在本文中,我们提出了一种基于机器学习(ML)的方法,能够保证对基站接收信号频谱中的短期和长期干扰进行实时和自动检测。该方法既能在时间上又能在频率上对干扰进行局部定位,在不同信号谱的离散集上普遍适用。本文给出了将该方法应用于瑞典航天公司实际光谱数据的实验结果。我们还将基于ml的方法与应用于相同光谱数据并用作现实基线的基于模型的方法进行了比较。实验结果表明,该方法是一种较为可靠的干扰检测方法。
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