大规模MIMO的深度学习:挑战和未来前景

Vandana Bhatia, M. Tripathy, P. Ranjan
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引用次数: 6

摘要

当今的无线网络结构复杂、规模庞大,并且具有动态的容量需求。需求的增加导致了管理和监控网络组件的麻烦。因此,需要智能数据驱动的设计和方法,以便对第五代(5G)移动系统进行改革,以实现自组织能力。因此,在过去的十年中,数学模型被设计和适应于调制解调器。本文全面概述了基于深度学习的大规模MIMO系统模型的新兴研究。在大多数工作中,深度学习模型被用于重新设计传统的通信系统。它可能涉及信道编码、解码、检测、识别、天线选择、调制等。用基于深度学习的自动编码器、卷积神经网络等全新架构取代通信系统将是一件有趣的事情。这些基于深度学习的模型显示出有希望的性能增强,但有一些限制,可以有效地用于大规模MIMO。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning for massive MIMO: Challenges and Future prospects
The wireless networks today are complex, massive and have dynamic capacity demands. Increase in demand resulted into trouble in managing and monitoring the network components. Thus, intelligent data-driven designs and approaches are required so that the 5th generation (5G) of mobile systems can be reformed for enabling self-organizing capabilities. Thus, in the last decade, mathematical models are designed and adapted among modems. This paper presents a comprehensive outline of the emerging research on deep learning-based models for massive MIMO systems. In most of the work, Deep learning models are used for redesigning the conventional communication system. It may involve channel encoding, decoding, detection, recognition, antenna selection, modulation, etc. It will be interesting to comprehend that replacement of the communication system with a profoundly new architecture such as deep learning based autoencoder, convolutional neural network, etc. These Deep learning-based models show promising performance enhancements with a few limitations and can be efficiently used with massive MIMO.
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