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Analysis of LDPC convolutional codes derived from LDPC block codes.

机译:分析从LDPC块代码派生的LDPC卷积代码。

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摘要

LDPC convolutional codes have been shown to be capable of achieving the same capacity-approaching performance as LDPC block codes with iterative message passing decoding. In this dissertation, we present several methods of deriving families of time-varying and time-invariant LDPC convolutional codes from LDPC block codes. We demonstrate that the derived LDPC convolutional codes significantly outperform the underlying LDPC block codes, and we investigate the reasons for these "convolutional gains".;It is well known that cycles in the Tanner graph representation of a sparse code affect the iterative decoding algorithm, with short cycles generally pushing its performance further away from optimum. Hence it is common practice to design codes that do not contain short cycles, so as to obtain independent messages in at least the initial iterations of the decoding process. We show that the derived LDPC convolutional codes have better graph-cycle properties than their block code counterparts. In particular, we show that the unwrapping process that is used to derive LDPC convolutional codes from LDPC block codes can "break" some cycles of the underlying LDPC block code, but cannot create any shorter cycles. We prove that any cycle in an LDPC convolutional code always maps to a cycle of the same or smaller length in the underlying LDPC block code.;Minimum distance is an important code design parameter when the channel quality is high, since codewords that are minimum distance apart are the most likely to cause errors with ML or near-ML decoding. In this case, the minimum distance determines the so-called error floor behavior in the performance curve corresponding to high channel signal-to-noise ratios. Thus studying the minimum distance properties of a code family gives insight into its error floor behavior. We use asymptotic methods to calculate a lower bound on the free distance of several ensembles of asymptotically good LDPC convolutional codes derived from protograph-based LDPC block codes. Further, we show that the free distance to constraint length ratio of the LDPC convolutional codes exceeds the minimum distance to block length ratio of the corresponding LDPC block codes.;Message-passing iterative decoders for LDPC block codes are known to be subject to decoding failures due to so-called pseudo-codewords. These failures can cause the large signal-to-noise ratio performance of message-passing iterative decoding to be worse than that predicted by the maximum-likelihood decoding union bound. We address the pseudo-codeword problem from the convolutional code perspective. In particular, we show that the minimum pseudo-weight of an LDPC convolutional code is at least as large as the minimum pseudo-weight of an underlying LDPC block code. This result, which parallels a well-known relationship between the minimum Hamming weight of convolutional codes and the minimum Hamming weight of their quasi-cyclic counterparts, is due to the fact that every pseudo-codeword in the LDPC convolutional code induces a pseudo-codeword in the LDPC block code with pseudo-weight no larger than that of the convolutional pseudo-codeword. More generally, we demonstrate a difference in the weight spectra of LDPC block and convolutional codes that leads to improved performance at low-to-moderate signal-to-noise ratios for the convolutional codes, a conclusion supported by simulation results.
机译:已经证明,LDPC卷积码能够通过迭代消息通过解码实现与LDPC块码相同的容量逼近性能。本文提出了几种从LDPC分组码中推导时变和时不变的LDPC卷积码族的方法。我们证明了派生的LDPC卷积码明显优于基本的LDPC块码,并研究了这些“卷积增益”的原因。众所周知,稀疏码的Tanner图表示中的周期会影响迭代解码算法,周期短通常会使其性能进一步偏离最佳状态。因此,通常的做法是设计不包含短周期的代码,以便至少在解码过程的初始迭代中获得独立的消息。我们证明,所导出的LDPC卷积码具有比其块码对应物更好的图循环特性。尤其是,我们显示了用于从LDPC块代码派生LDPC卷积代码的解包过程可以“破坏”基础LDPC块代码的某些周期,但不能创建任何更短的周期。我们证明了LDPC卷积码中的任何周期总是映射到底层LDPC块码中相同或较小长度的周期。;当信道质量较高时,最小距离是重要的代码设计参数,因为码字是最小距离除了最有可能在ML或近ML解码中引起错误的地方。在这种情况下,最小距离决定了性能曲线中与高通道信噪比相对应的所谓错误本底行为。因此,研究代码族的最小距离属性可以深入了解其错误基底行为。我们使用渐近方法来计算从基于原型的LDPC块代码派生的几组渐近良好LDPC卷积代码的自由距离的下限。此外,我们表明LDPC卷积码的自由距离与约束长度之比超过了相应LDPC块码的最小距离与块长之比。;已知LDPC块码的消息传递迭代解码器容易遭受解码失败由于所谓的伪码字。这些失败可能导致消息传递迭代解码的大信噪比性能比最大似然解码联合边界所预测的性能差。我们从卷积码的角度解决伪码字问题。特别地,我们表明LDPC卷积码的最小伪权重至少与底层LDPC分组码的最小伪权重一样大。该结果与卷积码的最小汉明权重及其准循环对应物的最小汉明权重之间的众所周知的关系相似,这是由于以下事实:LDPC卷积码中的每个伪码字都会诱发伪码字伪权重不大于卷积伪码字的LDPC分组码中的比特。更笼统地说,我们证明了LDPC块和卷积码的权重频谱有所不同,这导致卷积码在中低信噪比下的性能得到了改善,这一结论得到了仿真结果的支持。

著录项

  • 作者

    Pusane, Ali Emre.;

  • 作者单位

    University of Notre Dame.;

  • 授予单位 University of Notre Dame.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 158 p.
  • 总页数 158
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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