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A Neuro-Fuzzy based detection approach for HARQ-CC in FBMC-OQAM systems

机译:FBMC-OQAM系统HARQ-CC基于神经模糊的检测方法

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Hybrid automatic repeat request (HARQ) is a link adaptation scheme that provides high transmission reliability. However, it may suffer from distortions and nonlinearities of the transmission environment. In this paper, we propose a new deep learning approach for joint blind detection and combining of HARQ-CC packets in FBMC-OQAM systems. Our method uses inference rules that deploy a trained neural network to recover the original transmitted packet. Simulations show the effectiveness of the proposed system in terms of Block Error Rate (BLER) and root Mean Square Error (RMSE).
机译:混合自动重复请求(HARQ)是一种提供高传输可靠性的链路适配方案。然而,它可能遭受传输环境的扭曲和非线性。在本文中,我们提出了一种新的深度学习方法,用于联合盲目检测和FBMC-OQAM系统中的HARQ-CC数据包组合。我们的方法使用推理规则部署培训的神经网络以恢复原始传输的数据包。模拟显示所提出的系统在块错误率(BLER)和均方根误差(RMSE)方面的有效性。

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