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A Unified Deep Learning Based Polar-LDPC Decoder for 5G Communication Systems

机译:用于5G通信系统的统一深度基于深度学习的极性LDPC解码器

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In the 5G communication systems, a hybrid approach to support polar codes for control plane and LDPC codes for data plane has been identified as the channel coding solution for enhanced mobile broadband (eMBB) scenario. One of the major challenges to implement this approach is to design powerful decoders at the terminal side. Inspired from a useful machine learning based polar decoder, we proposed a deep learning based unified polar-LDPC by concatenating an indicator section. Through numerical experiments, we show that the proposed deep neural network (DNN) based decoding architecture can achieve the similar decoding performance compared with the traditional BP-based decoding algorithm. Meanwhile, the proposed unified approach shares the same network architecture and parameters with isolated approaches, which saves significant implementation resources consequently.
机译:在5G通信系统中,已经识别了用于支持数据平面的控制平面和LDPC码的混合方法作为增强的移动宽带(embb)场景的信道编码解决方案。实现这种方法的主要挑战之一是在终端侧设计强大的解码器。灵感来自基于机器学习的极性解码器,我们通过连接指示器部分提出了一种基于深度学习的统一极性LDPC。通过数值实验,我们表明,与传统的基于BP的解码算法相比,所提出的基于深度神经网络(DNN)的解码架构可以实现类似的解码性能。同时,拟议的统一方法与孤立方法共享相同的网络架构和参数,从而节省了重要的实现资源。

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