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Deep Multi-Task Learning for Cooperative NOMA: System Design and Principles

机译:合作NOMA的深度多任务学习:系统设计与原则

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摘要

Envisioned as a promising component of the future wireless Internet-of-Things (IoT) networks, the non-orthogonal multiple access (NOMA) technique can support massive connectivity with a significantly increased spectral efficiency. Cooperative NOMA is able to further improve the communication reliability of users under poor channel conditions. However, the conventional system design suffers from several inherent limitations and is not optimized from the bit error rate (BER) perspective. In this article, we develop a novel deep cooperative NOMA scheme, drawing upon the recent advances in deep learning (DL). We develop a novel hybrid-cascaded deep neural network (DNN) architecture such that the entire system can be optimized in a holistic manner. On this basis, we construct multiple loss functions to quantify the BER performance and propose a novel multi-task oriented two-stage training method to solve the end-to-end training problem in a self-supervised manner. The learning mechanism of each DNN module is then analyzed based on information theory, offering insights into the explainable DNN architecture and its corresponding training method. We also adapt the proposed scheme to handle the power allocation (PA) mismatch between training and inference and incorporate it with channel coding to combat signal deterioration. Simulation results verify its advantages over orthogonal multiple access (OMA) and the conventional cooperative NOMA scheme in various scenarios.
机译:设想作为未来无线互联网(物联网)网络的有前途的组成部分,非正交多次访问(NOMA)技术可以通过显着提高的频谱效率支持大量连接。合作NOMA能够在不良信道条件下进一步提高用户的通信可靠性。然而,传统的系统设计存在若干固有限制,并且没有从误码率(BER)透视中优化。在本文中,我们开发了一种新的深层合作诺马来组织,借鉴了最近的深度学习(DL)的进步。我们开发一种新型混合级联的深神经网络(DNN)架构,使得整个系统可以以整体方式优化。在此基础上,我们构建多项损失函数来量化BER性能,并提出一种新的多任务导向的两级训练方法,以自我监督方式解决端到端的训练问题。然后基于信息理论分析每个DNN模块的学习机制,提供进入可解释的DNN架构及其相应的训练方法的见解。我们还调整所提出的方案来处理训练和推理之间的功率分配(PA)不匹配,并将其与信道编码合并以对抗信号劣化。仿真结果验证其优于正交多次访问(OMA)和各种场景中的传统协作NOMA方案。

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