MIMO Transceiver Design via Majorization Theory

IF 2 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
D. Palomar, Yi Jiang
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引用次数: 311

Abstract

Multiple-input multiple-output (MIMO) channels provide an abstract and unified representation of different physical communication systems, ranging from multi-antenna wireless channels to wireless digital subscriber line systems. They have the key property that several data streams can be simultaneously established. In general, the design of communication systems for MIMO channels is quite involved (if one can assume the use of sufficiently long and good codes, then the problem formulation simplifies drastically). The first difficulty lies on how to measure the global performance of such systems given the tradeoff on the performance among the different data streams. Once the problem formulation is defined, the resulting mathematical problem is typically too complicated to be optimally solved as it is a matrix-valued nonconvex optimization problem. This design problem has been studied for the past three decades (the first papers dating back to the 1970s) motivated initially by cable systems and more recently by wireless multi-antenna systems. The approach was to choose a specific global measure of performance and then to design the system accordingly, either optimally or suboptimally, depending on the difficulty of the problem. This text presents an up-to-date unified mathematical framework for the design of point-to-point MIMO transceivers with channel state information at both sides of the link according to an arbitrary cost function as a measure of the system performance. In addition, the framework embraces the design of systems with given individual performance on the data streams. Majorization theory is the underlying mathematical theory on which the framework hinges. It allows the transformation of the originally complicated matrix-valued nonconvex problem into a simple scalar problem. In particular, the additive majorization relation plays a key role in the design of linear MIMO transceivers (i.e., a linear precoder at the transmitter and a linear equalizer at the receiver), whereas the multiplicative majorization relation is the basis for nonlinear decision-feedback MIMO transceivers (i.e., a linear precoder at the transmitter and a decision-feedback equalizer at the receiver).
基于最大化理论的MIMO收发器设计
多输入多输出(MIMO)信道提供了不同物理通信系统的抽象和统一表示,范围从多天线无线信道到无线数字用户线路系统。它们的关键特性是可以同时建立多个数据流。一般来说,MIMO信道通信系统的设计是相当复杂的(如果可以假设使用足够长的和好的代码,那么问题的表述就会大大简化)。第一个困难在于如何在给定不同数据流之间的性能权衡的情况下衡量此类系统的全局性能。一旦定义了问题的形式,所得到的数学问题通常过于复杂而无法最优解决,因为它是一个矩阵值非凸优化问题。这个设计问题已经研究了三十年(第一批论文可以追溯到20世纪70年代),最初是由有线系统引起的,最近是由无线多天线系统引起的。方法是选择一个特定的全局性能度量,然后根据问题的难度相应地设计系统,要么是最优的,要么是次优的。本文提出了一个最新的统一数学框架,用于设计点对点MIMO收发器,链路两侧的信道状态信息根据任意成本函数作为系统性能的度量。此外,该框架还支持在数据流上设计具有特定性能的系统。多数化理论是框架所依赖的基础数学理论。它允许将原本复杂的矩阵值非凸问题转化为简单的标量问题。特别是,加性多数化关系在线性MIMO收发器(即发射机的线性预编码器和接收机的线性均衡器)的设计中起着关键作用,而乘性多数化关系是非线性决策反馈MIMO收发器(即发射机的线性预编码器和接收机的决策反馈均衡器)的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Foundations and Trends in Communications and Information Theory
Foundations and Trends in Communications and Information Theory COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
7.90
自引率
0.00%
发文量
6
期刊介绍: Foundations and Trends® in Communications and Information Theory publishes survey and tutorial articles in the following topics: - Coded modulation - Coding theory and practice - Communication complexity - Communication system design - Cryptology and data security - Data compression - Data networks - Demodulation and Equalization - Denoising - Detection and estimation - Information theory and statistics - Information theory and computer science - Joint source/channel coding - Modulation and signal design - Multiuser detection - Multiuser information theory
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