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Machine learning aided switching scheme for hybrid FSO/RF transmission

机译:用于混合FSO / RF传输的机器学习辅助切换方案

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摘要

Free Space Optics (FSO) is one of the technologies which supports immense data transfer requirements. Though it offers high data rate, but experiences atmospheric attenuation due to dynamic weather conditions. On the other hand, RF communication has lower data rates but are comparatively insensitive to weather conditions. This paper focuses on a hybrid FSO/RF system with the application of Machine Learning (ML) on the prediction of Link Margin (LM) and a ML based switching mechanism between FSO/RF based on the current weather conditions. LM is considered as an important quality parameters in the design and analysis of the FSO link. Mainly rain and fog meteorological data are considered for the estimation and classification of link.
机译:自由空间光学(FSO)是支持巨大数据传输要求的技术之一。 虽然它提供高数据速率,但由于动态天气条件而经历大气衰减。 另一方面,RF通信具有较低的数据速率,但对天气条件相对不敏感。 本文重点介绍了混合FSO / RF系统,其应用机器学习(ML)在基于当前天气条件的FSO / RF之间的基于ML基于ML的基于ML的基于ML的基于ML的切换机制。 LM被认为是FSO链路设计和分析中的重要质量参数。 主要是雨和雾气气数据被认为是链接的估计和分类。

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