深度学习在无线通信中的作用

Wei Yu, Foad Sohrabi, Tao Jiang
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引用次数: 13

摘要

传统的通信系统设计一直是基于先建立通信信道的数学模型,然后根据该模型对系统进行设计和优化的范式。现代机器学习技术的出现,特别是深度神经网络的出现,为数据驱动的系统设计和优化提供了机会。本文从可重构智能表面的优化、多用户波束成形的分布式信道估计和反馈以及毫米波初始校准的主动传感等方面举例说明,绕过显式信道建模的数据驱动设计通常可以发现通信系统设计和优化问题的优秀解决方案,否则计算上难以解决。我们表明,通过使用大量通道样本对深度神经网络进行端到端训练,与传统的基于模型的方法解决优化问题相比,基于机器学习的方法可以潜在地提供显着的系统级改进。机器学习技术成功应用的关键是选择合适的神经网络架构来匹配潜在的问题结构。
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Role of Deep Learning in Wireless Communications
Traditional communication system design has always been based on the paradigm of first establishing a mathematical model of the communication channel, then designing and optimizing the system according to the model. The advent of modern machine learning techniques, specifically deep neural networks, has opened up opportunities for data-driven system design and optimization. This article draws examples from the optimization of reconfigurable intelligent surface, distributed channel estimation and feedback for multiuser beamforming, and active sensing for millimeter wave initial alignment to illustrate that a data-driven design that bypasses explicit channel modeling can often discover excellent solutions to communication system design and optimization problems that are otherwise computationally difficult to solve. We show that by performing an end-to-end training of a deep neural network using a large number of channel samples, a machine learning-based approach can potentially provide significantly system-level improvements as compared to the traditional model-based approach for solving optimization problems. The key to the successful applications of machine learning techniques are in choosing the appropriate neural network architecture to match the underlying problem structure.
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