利用射频信标和深度学习预测射频/FSO 混合链路中的光学可用性

Mostafa Ibrahim;Arsalan Ahmad;Sabit Ekin;Peter LoPresti;Serhat Altunc;Obadiah Kegege;John F. O'Hara
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摘要

射频(RF)通信提供可靠但低数据传输率和低能效的卫星链路,而自由空间光学(FSO)承诺提供高带宽,但在大气效应的干扰下举步维艰。射频/FSO 混合架构旨在实现空间通信的最佳可靠性和高数据传输率。准确预测地面到卫星 FSO 链路的动态可用性对于低地轨道星座的路由决策至关重要。在本文中,我们提出了一个系统,利用无处不在的射频链路,在信号降到阈值水平以下之前主动预测 FSO 链路的衰减。这样就能预先计算重新路由,在整个天气影响期间最大限度地保持高数据速率 FSO 链路。我们实施了一个监督学习模型,根据对射频模式的分析来预测 FSO 衰减。通过模拟密集的低地球轨道 (LEO) 卫星群,我们展示了我们的方法在模拟卫星网络中的功效,强调了预测准确性和预测持续时间之间的平衡。我们提出了一个模拟云衰减模型,以便深入了解射频信号的时间轮廓及其与 FSO 信道动态的相关性。我们的研究揭示了射频信标数量和邻近性在预测期限和准确性之间的权衡。
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Anticipating Optical Availability in Hybrid RF/FSO Links Using RF Beacons and Deep Learning
Radiofrequency (RF) communications offer reliable but low data rates and energy-inefficient satellite links, while free-space optical (FSO) promises high bandwidth but struggles with disturbances imposed by atmospheric effects. A hybrid RF/FSO architecture aims to achieve optimal reliability along with high data rates for space communications. Accurate prediction of dynamic ground-to-satellite FSO link availability is critical for routing decisions in low-earth orbit constellations. In this paper, we propose a system leveraging ubiquitous RF links to proactively forecast FSO link degradation prior to signal drops below threshold levels. This enables pre-calculation of rerouting to maximally maintain high data rate FSO links throughout the duration of weather effects. We implement a supervised learning model to anticipate FSO attenuation based on the analysis of RF patterns. Through the simulation of a dense lower earth orbit (LEO) satellite constellation, we demonstrate the efficacy of our approach in a simulated satellite network, highlighting the balance between predictive accuracy and prediction duration. An emulated cloud attenuation model is proposed to provide insight into the temporal profiles of RF signals and their correlation to FSO channel dynamics. Our investigation sheds light on the trade-offs between prediction horizon and accuracy arising from RF beacon numbers and proximity.
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