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Improving CSI Prediction Accuracy with Deep Echo State Networks in 5G Networks

机译:用5G网络中的深度回波状态网络提高CSI预测准确性

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摘要

The forthcoming fifth-generation networks require improvements in cognitive radio intelligence, going towards more smart and aware radio systems. In the emerging radio intelligence approach, the empowerment of cognitive capabilities is performed through the adoption of machine learning techniques. This paper investigates the combined application of the convolutional and recurrent neural networks for the channel state information forecasting, providing a multivariate scalar time series prediction by taking into account the multiple factors dependence of the channel state conditions. Finally, the system performance has been analyzed in terms of prediction accuracy expressed as absolute deviation error and mean percentage error, in comparison with an alternative machine learning method recently proposed in the literature with the aim at solving the same prediction problem.
机译:即将举行的第五代网络需要改进认知无线电智能,朝着更智能和了解的无线电系统。在新兴的无线电智能方法中,通过采用机器学习技术进行认知能力的赋权。本文研究了卷积和经常性神经网络对信道状态信息预测的组合应用,通过考虑了信道状态条件的多因素来提供多元标量时间序列预测。最后,与最近在文献中提出的替代机器学习方法的预测精度和均值百分比误差的预测精度分析了系统性能,其目的是解决相同预测问题的替代机器学习方法。

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