非正交多址接收机和噪声信道中深度学习信号检测模型的改进

Q2 Social Sciences
Ali Hilal Ali, Raed S. H. AL-Musawi, K. Al-Majdi
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引用次数: 0

摘要

提出了一种增强的基于深度学习的非正交多址(NOMA)接收机,主要用于低信噪比信道。我们展示了训练深度学习(DL)的更好的数据集生成策略如何产生更好的泛化能力。然后,我们使用穷举搜索应用超参数调优来优化DL网络。使用LSTM (long - short - term memory) DL架构。结果显示,与最先进的方法(如最大似然、最小均方误差和连续接口取消)相比,该网络的符号错误率和信噪比性能优越,尽管该网络的复杂程度仅为文献中先前提出的深度学习网络的一半。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancements to the Deep Learning Signal Detection Model in Non-Orthogonal Multiple Access Receivers and Noisy Channels
This paper presents an enhanced deep learning-based Non-Orthogonal Multiple Access (NOMA) receiver that can mainly be used in low signal-to-noise channels. We show how a better dataset generation strategy for training Deep Learning (DL) could result in better generalization capabilities. Then, we apply hyperparameter tuning using exhaustive search to optimize the DL network. A Long-Short-Term-Memory (LSTM) DL architecture is used. The results show superior Symbol Error Rate vs Signal-to-Noise Ratio performance compared to the state-of-the-art methods such as Maximum Likelihood, Minimum Mean Square Error, and Successive Interface Cancellation, even though the network is only half as complex as previously proposed DL networks in the literature.  
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来源期刊
CiteScore
1.60
自引率
0.00%
发文量
37
期刊介绍: The Journal of Telecommunications and the Digital Economy (JTDE) is an international, open-access, high quality, peer reviewed journal, indexed by Scopus and Google Scholar, covering innovative research and practice in Telecommunications, Digital Economy and Applications. The mission of JTDE is to further through publication the objective of advancing learning, knowledge and research worldwide. The JTDE publishes peer reviewed papers that may take the following form: *Research Paper - a paper making an original contribution to engineering knowledge. *Special Interest Paper – a report on significant aspects of a major or notable project. *Review Paper for specialists – an overview of a relevant area intended for specialists in the field covered. *Review Paper for non-specialists – an overview of a relevant area suitable for a reader with an electrical/electronics background. *Public Policy Discussion - a paper that identifies or discusses public policy and includes investigation of legislation, regulation and what is happening around the world including best practice *Tutorial Paper – a paper that explains an important subject or clarifies the approach to an area of design or investigation. *Technical Note – a technical note or letter to the Editors that is not sufficiently developed or extensive in scope to constitute a full paper. *Industry Case Study - a paper that provides details of industry practices utilising a case study to provide an understanding of what is occurring and how the outcomes have been achieved. *Discussion – a contribution to discuss a published paper to which the original author''s response will be sought. Historical - a paper covering a historical topic related to telecommunications or the digital economy.
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