GenAI-Based Models for NGSO Satellites Interference Detection

Almoatssimbillah Saifaldawla;Flor Ortiz;Eva Lagunas;Abuzar B. M. Adam;Symeon Chatzinotas
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Abstract

Recent advancements in satellite communications have highlighted the challenge of interference detection, especially with the new generation of non-geostationary orbit satellites (NGSOs) that share the same frequency bands as legacy geostationary orbit satellites (GSOs). Despite existing radio regulations during the filing stage, this heightened congestion in the spectrum is likely to lead to instances of interference during real-time operations. This paper addresses the NGSO-to-GSO interference problem by proposing advanced artificial intelligence (AI) models to detect interference events. In particular, we focus on the downlink interference case, where signals from low-Earth orbit satellites (LEOs) potentially impact the signals received at the GSO ground stations (GGSs). In addition to the widely used autoencoder-based models (AEs), we design, develop, and train two generative AI-based models (GenAI), which are a variational autoencoder (VAE) and a transformer-based interference detector (TrID). These models generate samples of the expected GSO signal, whose error with respect to the input signal is used to flag interference. Actual satellite positions, trajectories, and realistic system parameters are used to emulate the interference scenarios and validate the proposed models. Numerical evaluation reveals that the models exhibit higher accuracy for detecting interference in the time-domain signal representations compared to the frequency-domain representations. Furthermore, the results demonstrate that TrID significantly outperforms the other models as well as the traditional energy detector (ED) approach, showing an increase of up to 31.23% in interference detection accuracy, offering an innovative and efficient solution to a pressing challenge in satellite communications.
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基于 GenAI 的 NGSO 卫星干扰探测模型
卫星通信领域的最新进展凸显了干扰探测的挑战,特别是新一代非地球静止轨道卫星(NGSO)与传统地球静止轨道卫星(GSO)共享相同的频段。尽管在申报阶段已有无线电管理条例,但频谱的高度拥堵很可能导致实时运行期间的干扰事件。本文通过提出先进的人工智能 (AI) 模型来检测干扰事件,从而解决 NGSO 对 GSO 的干扰问题。我们尤其关注下行链路干扰情况,在这种情况下,来自低地轨道卫星 (LEO) 的信号可能会影响 GSO 地面站 (GGS) 接收到的信号。除了广泛使用的基于自动编码器的模型(AE)外,我们还设计、开发并训练了两个基于人工智能的生成模型(GenAI),即变异自动编码器(VAE)和基于变压器的干扰检测器(TrID)。这些模型生成预期 GSO 信号的样本,其与输入信号的误差用于标记干扰。实际的卫星位置、轨迹和现实的系统参数被用来模拟干扰场景并验证所提出的模型。数值评估结果表明,与频域信号表示法相比,这些模型在时域信号表示法中检测干扰的准确度更高。此外,结果表明 TrID 明显优于其他模型和传统的能量检测器(ED)方法,干扰检测精度提高了 31.23%,为卫星通信领域面临的紧迫挑战提供了创新而高效的解决方案。
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