Deep Learning Aided Channel Estimation Approach for 5G Communication Systems

Ural Mutlu, Y. Kabalci
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引用次数: 4

Abstract

The defining feature of the Fifth Generation (5G) mobile communication systems is going to be Multiple Input Multiple Output (MIMO) transmission scheme, which utilizes the multipath diversities to achieve beamforming and increase spectral efficiency. However, these MIMO algorithms rely on accurate channel parameters. To improve the accuracy of the channel coefficients, the study presents a Deep Learning (DL) based approach that uses the 5G Demodulation Reference Signals (DMRS) as training sequence and Deep Neural Networks (DNN) as training and prediction network in a MIMO scenario. The DNN is trained with training data obtained by applying Least Squares (LS) method to the received pilot signals and by comparing it to Clustered Delay Line (CDL) channel model. The DNN is then used to predict real-time channel coefficients. The results show that the model improves channel estimation performance by reducing the effects of noise, thus improving the Normalized Mean Square Error (NMSE) versus Signal-to-Noise Ratio (SNR) metric of the MIMO system.
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5G通信系统的深度学习辅助信道估计方法
第五代(5G)移动通信系统的决定性特征将是多输入多输出(MIMO)传输方案,该方案利用多径分集实现波束形成并提高频谱效率。然而,这些MIMO算法依赖于精确的信道参数。为了提高信道系数的准确性,该研究提出了一种基于深度学习(DL)的方法,该方法使用5G解调参考信号(DMRS)作为训练序列,深度神经网络(DNN)作为MIMO场景中的训练和预测网络。采用最小二乘(LS)方法对接收到的导频信号进行训练,并与聚簇延迟线(CDL)信道模型进行比较,得到训练数据,对DNN进行训练。然后用深度神经网络预测实时信道系数。结果表明,该模型通过降低噪声的影响提高了信道估计性能,从而提高了MIMO系统的归一化均方误差(NMSE)和信噪比(SNR)指标。
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