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A Novel Atmosphere-Informed Data-Driven Predictive Channel Modeling for B5G/6G Satellite-Terrestrial Wireless Communication Systems at Q-Band

机译:一种新的大气通知的Q5G / 6G卫星 - 地面无线通信系统在Q频带的新的大气通知的数据驱动预测频道建模

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摘要

This paper proposes a novel atmosphere-informed predictive satellite channel model for beyond the fifth-generation (B5G)/the sixth-generation (6G) satellite-terrestrial wireless communication systems at Q-band to model/predict channel attenuation at any specific time. The proposed channel model is a data-driven model based on either of two deep learning networks, i.e., multi-layer perceptron (MLP) and long short-term memory (LSTM). The accuracy of the proposed channel model is measured by cumulative density function (CDF) of absolute error and mean square error (MSE) between modeled/predicted and measured channel attenuation. The complexity of the proposed channel model is assessedby the training time, loading time, and test time of deep learning networks. To further improve the accuracy of the proposed channel model, weather classification is developed at the stage of database construction. Based on our established channel and weather measurement campaign, the performance of the proposed data-driven channel model based on different deep learning networks, e.g., MLP and LSTM, with or without the weather classification is investigated and analyzed comprehensively. Finally, the close agreement is achieved between the channel attenuation modeled/predicted from the proposed atmosphere-informed predictive satellite channel model and the one from real channel measurements, verifying the utility of proposed channel model.
机译:本文提出了一种新的大气通知的预测卫星频道模型,用于超出在Q波段的第五代(B5G)/第六代(6G)卫星 - 地面无线通信系统,以在任何特定时间内模拟/预测信道衰减。所提出的频道模型是基于两个深度学习网络的数据驱动模型,即多层的Perceptron(MLP)和长短短期存储器(LSTM)。所提出的信道模型的准确性通过模型/预测和测量信道衰减之间的绝对误差和均方误差(MSE)的累积密度函数(CDF)来测量。建议的频道模型的复杂性评估了深度学习网络的训练时间,加载时间和测试时间。为了进一步提高所提出的渠道模型的准确性,在数据库建设的阶段开发了天气分类。基于我们建立的频道和天气测量活动,基于不同深度学习网络,例如MLP和LSTM的提出的数据驱动信道模型的性能,并全面地进行了或不进行天气分类。最后,在从建议的大气通知的预测卫星频道模型和来自真实信道测量的频道衰减之间实现密切协议,验证所提出的频道模型的效用。

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