Massive MIMO

Haijian Sun, Chris T. K. Ng, Yiming Huo, R. Hu, Ning Wang, Chi-Ming Chen, K. Vasudevan, Jin Yang, Webert Montlouis, D. Ayanda, K. Mishra, Kürşat Tekbıyık, N. Hussain, H. K. Sahoo, Yang Miao
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Abstract

The use of a large number of antenna elements, known as Massive MIMO, is seen as a key enabling technology in the 5G and Beyond wireless ecosystem. The intelligent use of a multitude of antenna elements unleashes unprecedented flexibility and control on the physical channel of the wireless medium. Through Massive MIMO and other techniques, it is envisioned that the 5G and beyond wireless system will be able to support high throughput, high reliability (low bit-error-rate (BER)), high energy efficiency, low latency, and an Internet-scale number of connected devices. Massive MIMO and related technologies will be deployed in the mid-band (sub 6 GHz) for coverage, all the way to mmWave bands to support large channel bandwidths. It is envisioned that Massive MIMO will be deployed in different environments: Frequency Division Duplex (FDD), (Time Division Duplex (TDD), indoor/outdoor, small cell, macro cell, and other heterogeneous networks (HetNet) configurations. Accurate and useful channel estimation remains a challenge in the efficient adoption of Massive MIMO techniques, and different performance-complexity tradeoffs may be supported by different Massive MIMO architectures such as digital, analog, and/or digital/analog hybrid. Carrier frequency offset (CFO), which arises due to the relative motion between the transmitter and receiver, is another important topic. Recently, maximum likelihood (ML) methods of CFO estimation have been proposed, that achieve very low root mean square (RMS) estimation errors, with a large scope for parallel processing and well suited for application with turbo codes. Massive MIMO opens up a whole new dimension of parameters where the wireless applications or other network layers may control or influence the operation and performance of the physical wireless channel. To fully reap the benefits of such flexibility, the latest advances in artificial intelligence (AI) and machine learning (ML) techniques will be leveraged to monitor and optimize the Massive MIMO sub-system. As such, a cross-layer open interface can facilitate exposing the programmability of Massive MIMO through techniques such as network slicing (NS) and network function virtualization (NFV). Finally, security needs to be integrated into the design of the system so the new functionality and performance of Massive MIMO can be utilized in a reliable manner.
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被称为大规模MIMO的大量天线元件的使用被视为5G及超越无线生态系统中的关键使能技术。大量天线元件的智能使用释放了无线介质物理信道上前所未有的灵活性和控制力。通过大规模MIMO和其他技术,预计5G及以后的无线系统将能够支持高吞吐量、高可靠性(低误码率(BER))、高能效、低延迟和互联网规模的连接设备数量。大规模MIMO和相关技术将部署在中频(6ghz以下),覆盖范围一直到毫米波频段,以支持大信道带宽。预计大规模MIMO将部署在不同的环境中:频分双工(FDD)、时分双工(TDD)、室内/室外、小蜂窝、宏蜂窝和其他异构网络(HetNet)配置。在大规模MIMO技术的有效应用中,准确和有用的信道估计仍然是一个挑战,不同的大规模MIMO架构(如数字、模拟和/或数字/模拟混合)可能支持不同的性能复杂性权衡。载波频偏(CFO)是由于发射机和接收机之间的相对运动而产生的,是另一个重要的课题。近年来,人们提出了极大似然(ML)的CFO估计方法,该方法的均方根(RMS)估计误差非常小,具有较大的并行处理范围,非常适合turbo码的应用。大规模MIMO开辟了一个全新的参数维度,无线应用程序或其他网络层可以控制或影响物理无线信道的操作和性能。为了充分利用这种灵活性的好处,将利用人工智能(AI)和机器学习(ML)技术的最新进展来监控和优化Massive MIMO子系统。因此,跨层开放接口可以通过网络切片(NS)和网络功能虚拟化(NFV)等技术促进大规模MIMO的可编程性。最后,需要将安全性集成到系统设计中,以便可靠地利用大规模MIMO的新功能和性能。
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