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Neural networks for transmission over nonlinear MIMO channels .

机译:非线性MIMO信道上传输的神经网络。

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摘要

Multiple-Input Multiple-Output (MIMO) systems have gained an enormous amount of attention as one of the most promising research areas in wireless communications. However, while MIMO systems have been extensively explored over the past decade, few schemes acknowledge the nonlinearity caused by the use of high power amplifiers (HPAs) in the communication chain. When HPAs operate near their saturation points, nonlinear distortions are introduced in the transmitted signals, and the resulting MIMO channel will be nonlinear. The nonlinear distortion is further exacerbated by the fading caused by the propagation channel.;In the first part of the thesis, we follow a previous work on modeling and identification of nonlinear MIMO channels, where it has been shown that a proposed block-oriented NN scheme allows not only good identification of the overall MIMO input-output transfer function but also good characterization of each component of the system. The proposed scheme employs an ordinary gradient descent based algorithm to update the NN weights during the learning process and it assumes only real-valued inputs. In this thesis, natural gradient (NG) descent is used for training the NN. Moreover, we derive an improved variation of the previously proposed NN scheme to avoid the input type restriction and allow for complex modulated inputs as well. We also investigate the scheme tracking capabilities of time-varying nonlinear MIMO channels. Simulation results show that NG descent learning significantly outperforms the ordinary gradient descent in terms of convergence speed, mean squared error (MSE) performance, and nonlinearity approximation. Moreover, the NG descent based NN provides better tracking capabilities than the previously proposed NN.;The second part of the thesis focuses on signal detection. We propose a receiver that employs the neural network channel estimator (NNCE) proposed in part one, and uses the Zero-Forcing Vertical Bell Laboratories Layered Space-Time (ZF V-BLAST) detection algorithm to retrieve the transmitted signals. Computer simulations show that in slow time-varying environments the performance of our receiver is close to the ideal V-BLAST receiver in which the channel is perfectly known. We also present a NN based linearization technique for HPAs, which takes advantage of the channel information provided by the NNCE. Such linearization technique can be used for adaptive data predistortion at the transmitter side or adaptive nonlinear equalization at the receiver side. Simulation results show that, when higher modulation schemes (>16-QAM ) are used, the nonlinear distortion caused by the use of HPAs is greatly minimized by our proposed NN predistorter and the performance of the communication system is significantly improved.;The goal of this thesis is: (1) to use neural networks (NNs) to model and identify nonlinear MIMO channels; and (2) to employ the proposed NN model in designing efficient detection techniques for these types of MIMO channels.
机译:作为无线通信中最有前途的研究领域之一,多输入多输出(MIMO)系统已经引起了广泛的关注。然而,尽管在过去的十年中对MIMO系统进行了广泛的探索,但很少有方案承认在通信链中使用高功率放大器(HPA)引起的非线性。当HPA在其饱和点附近工作时,非线性失真会被引入到发射信号中,并且由此产生的MIMO信道将是非线性的。传播信道导致的衰落进一步加剧了非线性失真。在本文的第一部分,我们遵循了先前关于非线性MIMO信道建模和识别的工作,结果表明,提出的面向块的NN该方案不仅可以很好地识别整个MIMO输入输出传递函数,而且还可以很好地表征系统的每个组件。所提出的方案采用基于普通梯度下降的算法在学习过程中更新NN权重,并且仅采用实值输入。本文采用自然梯度下降法训练神经网络。此外,我们推导了先前提出的NN方案的改进变体,从而避免了输入类型限制,并且还允许复杂的调制输入。我们还研究了时变非线性MIMO信道的方案跟踪能力。仿真结果表明,NG下降学习在收敛速度,均方误差(MSE)性能和非线性逼近方面均明显优于常规梯度下降。此外,基于NG下降的神经网络比以前提出的神经网络具有更好的跟踪能力。本文的第二部分着重于信号检测。我们提出了一种接收机,该接收机采用了在第一部分中提出的神经网络信道估计器(NNCE),并使用零强迫垂直贝尔实验室分层时空(ZF V-BLAST)检测算法来检索发送的信号。计算机仿真表明,在时变缓慢的环境中,我们的接收机的性能接近理想的V-BLAST接收机,在该接收机中,通道是众所周知的。我们还提出了一种基于HPA的基于NN的线性化技术,该技术利用了NNCE提供的信道信息。这种线性化技术可以用于发送器侧的自适应数据预失真或接收器侧的自适应非线性均衡。仿真结果表明,当使用较高的调制方案(> 16-QAM)时,我们提出的NN预失真器极大地减小了使用HPA引起的非线性失真,并显着改善了通信系统的性能。本文的主要工作是:(1)利用神经网络(NNs)对非线性MIMO信道进行建模和识别。 (2)在设计针对这些类型的MIMO信道的有效检测技术时,采用建议的NN模型。

著录项

  • 作者

    Al-Hinai, Al Mukhtar.;

  • 作者单位

    Queen's University (Canada).;

  • 授予单位 Queen's University (Canada).;
  • 学科 Engineering Electronics and Electrical.
  • 学位 M.Sc.(Eng)
  • 年度 2007
  • 页码 124 p.
  • 总页数 124
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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