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Advanced Precoding and Detection Techniques for Large MIMO Systems.

机译:大型MIMO系统的高级预编码和检测技术。

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摘要

Multiple-input multiple-output (MIMO) transmission has been at the core of wireless communication research for the past two decades. Driven by the explosive increase of data demand, the development of MIMO systems has entered a large-scale realm where there are dozens of or even more than a hundred antennas and users. The large number of antennas can significantly boost the system throughput and robustness against noise. However, the physical realization of such a large MIMO system can be very complicated and expensive. On the one hand, optimal signal processing algorithms usually have complexities that increase rapidly in the numbers of antennas and users. On the other hand, large number of antennas means increased hardware overheads, such as those of power amplifiers and D/A converters. This thesis considers efficient precoding and detection algorithms that can reduce implementation complexity and cost. Specifically, the thesis consists of the following three parts:;In the first part, we consider a fundamental problem in MIMO communication, namely MIMO detection. The traditional lattice decoding methods, as well as its efficient approximations by lattice reduction aided (LRA) methods, relax the symbol bounds in detection and thus suffer from performance loss. We propose a systematic adaptive regularization approach to lattice decoding to alleviate the adverse effect of symbol bound relaxation, which is based on the study of a Lagrangian dual relaxation (LDR) of the optimal maximum-likelihood (ML) detector. We find an intriguing relationship between lattice decoding and ML, which was not reported in the previous literature. Simulation results show that the proposed LDR approach can significantly outperform existing lattice decoding and LRA methods.;In the second part, we consider the vector perturbation approach which is a promising technique to achieve near-sum capacity and allows simple user processing in the multiuser multiple-input single-output (MISO) downlink scenario. However, the conventional vector perturbation designs can have very high per-antenna powers, which causes significant difficulty to power amplifier implementations. To tackle this problem, we propose a vector perturbation design with per-antenna power constraints (VP-PAPC). The resulting optimization problem is an integer program which requires a computationally demanding enumeration process. Lagrangian dual relaxation is used to transform the VP-PAPC problem into standard integer least square problems which may have efficient approximations. Simulation results show that the proposed method can effectively reduce the power back-off caused by high per-antenna power in conventional vector perturbation.;In the last part, we consider constant envelope (CE) precoding in the single-user MISO downlink scenario. CE precoding is recently proposed as a mean to utilize cheap but power-efficient power amplifiers in very large MIMO systems. We provide complete solutions to some fundamental signal processing issues in CE precoding which were only partially solved in the previous literature. In addition, we enhance CE precoding with antenna subset selection for transmit optimization and implementation cost reduction. Simulation results reveal that the proposed method only exhibits moderate power loss compared to non-CE beamforming but have the advantages of CE transmission and fewer active transmitting antennas. II.
机译:在过去的二十年中,多输入多输出(MIMO)传输一直是无线通信研究的核心。在数据需求爆炸性增长的推动下,MIMO系统的发展已进入大规模领域,那里有数十甚至上百个天线和用户。大量天线可以显着提高系统吞吐量和抗噪声能力。然而,这种大型MIMO系统的物理实现可能非常复杂且昂贵。一方面,最佳信号处理算法通常具有复杂性,天线和用户数量迅速增加。另一方面,大量天线意味着硬件开销的增加,例如功率放大器和D / A转换器的开销。本文考虑了可以降低实现复杂度和成本的有效预编码和检测算法。具体来说,本文包括以下三个部分:第一部分,我们考虑了MIMO通信中的一个基本问题,即MIMO检测。传统的点阵解码方法,以及通过点阵减少辅助(LRA)方法进行的有效逼近,会放宽检测中的符号边界,从而导致性能损失。我们提出了一种系统的自适应正则化方法来进行晶格解码,以减轻符号边界松弛的不利影响,该方法基于对最佳最大似然(ML)检测器的拉格朗日对偶松弛(LDR)的研究。我们发现晶格解码和ML之间有一个有趣的关系,这在以前的文献中没有报道。仿真结果表明,所提出的LDR方法可以明显优于现有的点阵解码和LRA方法。第二部分,我们考虑矢量扰动方法,它是一种有希望的技术,可以实现近和容量,并允许在多用户多用户中进行简单的用户处理。输入单输出(MISO)下行链路方案。但是,常规的矢量扰动设计可能具有很高的每天线功率,这给功率放大器的实现带来了很大的困难。为了解决这个问题,我们提出了一种具有每个天线功率约束(VP-PAPC)的矢量扰动设计。由此产生的优化问题是一个整数程序,它需要一个计算量大的枚举过程。拉格朗日对偶弛豫用于将VP-PAPC问题转换为可能具有有效逼近的标准整数最小二乘问题。仿真结果表明,该方法可以有效地减少传统矢量扰动中高天线功率引起的功率回退。近年来,CE预编码被提议为在超大型MIMO系统中利用廉价但省电的功率放大器的一种手段。我们为CE预编码中的一些基本信号处理问题提供了完整的解决方案,而在以前的文献中仅部分解决了这些问题。此外,我们通过选择天线子集来增强CE预编码,以优化发射和降低实施成本。仿真结果表明,与非CE波束成形相比,该方法仅表现出适度的功率损耗,但具有CE传输和有源发射天线少的优点。二。

著录项

  • 作者

    Pan, Jiaxian.;

  • 作者单位

    The Chinese University of Hong Kong (Hong Kong).;

  • 授予单位 The Chinese University of Hong Kong (Hong Kong).;
  • 学科 Electrical engineering.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 165 p.
  • 总页数 165
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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