Channel Quality Prediction in 5G LTE Small Cell Mobile Network Using Deep Learning

Ndolane Diouf, Massa Ndong, Dialo Diop, K. Talla, Mamadou Sarr, A. Beye
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引用次数: 2

Abstract

Prior knowledge of wireless channel quality with high accuracy is essential to enable anticipated networking tasks. Traditional channel quality prediction problems rely on past channel information to predict its future quality. In this paper, we investigate the channel quality prediction problem over different wireless channels. We propose an efficient prediction scheme based on deep learning, to predict channel quality. For the deep learning task, we use deep neural networks and long short-term memory networks. We compare their performance on a dataset collected from a commercial 4G mobile radio network of Orange Senegal. The performance evaluation performed on the benchmark dataset demonstrates the validity of the proposed deep learning approach, reaching a root mean square error of 0.27 for the LSTM model and 0.28 for the DNN model. The performances in terms of RMSE with the same dataset for each of the models used in this study were compared to other models. Thus, the DNN and LSTM models give low RMSEs compared to the models of our previous work. The proposed prediction method can be applied for 5G small cell networks.
基于深度学习的5G LTE小蜂窝移动网络信道质量预测
高精度无线信道质量的先验知识对于实现预期的网络任务至关重要。传统的信道质量预测问题依赖于过去的信道信息来预测其未来的信道质量。本文研究了不同无线信道下的信道质量预测问题。我们提出了一种基于深度学习的有效预测方案来预测信道质量。对于深度学习任务,我们使用深度神经网络和长短期记忆网络。我们在从Orange塞内加尔的商业4G移动无线网络收集的数据集上比较了它们的性能。在基准数据集上进行的性能评估证明了所提出的深度学习方法的有效性,LSTM模型的均方根误差为0.27,DNN模型的均方根误差为0.28。本研究中使用的每个模型在相同数据集的RMSE方面的性能与其他模型进行了比较。因此,与我们以前的工作模型相比,DNN和LSTM模型给出了较低的均方根误差。该预测方法可应用于5G小蜂窝网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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