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Efficient Detection of Rare Beacon Events in GEO Satellite Communication Systems using Deep Learning

机译:利用深度学习有效地检测Geo卫星通信系统中的珍稀信标事件

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Geosynchronous satellite (GEO) communications are highly susceptible to interference from environments such as rain, clouds, and hail. This exhibits a technical challenge to accurately detect the status of the weak Q-band (39.4 GHz) satellite beacon signals, which is critical for ensuring reliable satellite pointing using the ground station antenna. This paper exploits recent advances in deep learning to cope with this challenge. The proposed approach based on deep neural networks (DNN) and filtering (Filter-DNN) classifies rare events such as cloud, mist, rain as Non-line of sight (NLOS) and ordinary clear skies as Line of sight (LOS). Beacon data from a GEO satellite (Alphasat) ground station under two different attenuation conditions is used for validation. The experimental results show that our method can detect the rare event with an accuracy score of 92% by using only 2000 data sample points, while conventional approaches such as MUSIC require about 100k sample points to maintain detection. These results indicate that the proposed technique could be a promising tool for achieving satisfactory results in space exploration and gain insights into GEO satellite communication problems.
机译:地球同步卫星(GEO)通信非常容易受到雨,云和冰雹等环境的干扰。这表现出技术挑战,以准确检测弱Q频段(39.4GHz)卫星信标信号的状态,这对于确保使用地面站天线确保可靠的卫星指向至关重要。本文剥削了最近深入了解应对这一挑战的进展。基于深度神经网络(DNN)和滤波(Filter-DNN)的所提出的方法对云,雾,雨作为非视线(NLOS)和普通透明天空作为视线(LOS)等罕见的事件进行分类。在两个不同衰减条件下的Geo卫星(AlphaSAT)地面站的信标数据用于验证。实验结果表明,我们的方法可以通过仅使用2000个数据采样点来检测罕见的事件,精度得分为92%,而音乐等传统方法需要大约100k采样点以​​维持检测。这些结果表明,该技术可能是实现太空探索的令人满意的令人满意的有希望的工具,并进入地理卫星通信问题的洞察力。

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