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A novel deep neural network based approach for sparse code multiple access

机译:一种基于新型深度神经网络的稀疏代码多路访问方法

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Sparse code multiple access (SCMA) has been one of the non-orthogonal multiple access (NOMA) schemes aiming to support high spectral efficiency and ubiquitous access requirements for 5G communication networks. Conventional SCMA approaches are confronting challenges in designing low-complexity high-accuracy decoding algorithm and constructing optimum codebooks. Fortunately, the recent spotlighted deep learning technologies are of significant potentials in solving many communication engineering problems. Inspired by this, we propose and train a deep neural network (DNN) called DL-SCMA to learn to decode SCMA modulated signals corrupted by additive white Gaussian noise (AWGN). An autoencoder called AE-SCMA is established and trained to generate optimal SCMA codewords and reconstruct original bits. Furthermore, by manipulating the mapping vectors, an autoencoder is able to generalize SCMA, thus a dense code multiple access (DCMA) scheme is proposed. Simulations show that the DNN SCMA decoder significantly outperforms the conventional message passing algorithm (MPA) in terms of bit error rate (BER), symbol error rate (SER) and computational complexity, and AE-SCMA also demonstrates better performances via constructing better SCMA codebooks. The performance of deep learning aided DCMA is superior to the SCMA. (C) 2019 Elsevier B.V. All rights reserved.
机译:稀疏码多址(SCMA)已经成为旨在支持5G通信网络的高频谱效率和普遍接入要求的非正交多址(NOMA)方案之一。传统的SCMA方法在设计低复杂度高精度解码算法和构建最佳码本方面面临挑战。幸运的是,最近受到关注的深度学习技术在解决许多通信工程问题方面具有巨大潜力。受此启发,我们提出并训练了一个称为DL-SCMA的深度神经网络(DNN),以学习解码受加性高斯白噪声(AWGN)破坏的SCMA调制信号。建立并训练了一种称为AE-SCMA的自动编码器,以生成最佳的SCMA码字并重建原始位。此外,通过操纵映射向量,自动编码器能够概括SCMA,因此提出了密码多址(DCMA)方案。仿真表明,DNN SCMA解码器在误码率(BER),符号误码率(SER)和计算复杂度方面显着优于常规消息传递算法(MPA),并且AE-SCMA还通过构造更好的SCMA码本而表现出更好的性能。 。深度学习辅助DCMA的性能优于SCMA。 (C)2019 Elsevier B.V.保留所有权利。

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