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首页> 外文期刊>IEEE Transactions on Communications >Capacity-Approaching Polar Codes With Long Codewords and Successive Cancellation Decoding Based on Improved Gaussian Approximation
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Capacity-Approaching Polar Codes With Long Codewords and Successive Cancellation Decoding Based on Improved Gaussian Approximation

机译:基于改进的高斯近似的高码字和连续取消解码的容量接近的极性代码

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摘要

This paper focuses on an improved Gaussian approximation (GA) based construction of polar codes with successive cancellation (SC) decoding over an additive white Gaussian noise (AWGN) channel. Arikan proved that polar codes with low-complexity SC decoding can approach the channel capacity of an arbitrary symmetric binary-input discrete memoryless channel, provided that the code length is chosen large enough. Nevertheless, how to construct such codes over an AWGN channel with low computational effort has been an open problem. Compared to density evolution, the GA is known as a low complexity yet powerful technique that traces the evolution of the mean log likelihood ratio (LLR) value by iterating a nonlinear function. Therefore, its high-precision numerical evaluation is critical as the code length increases. In this work, by analyzing the asymptotic behavior of this nonlinear function, we propose an improved GA approach that makes an accurate trace of mean LLR evolution feasible. With this improved GA, through numerical analysis and simulations with code lengths up to N=2(18), we explicitly demonstrate that various code-rate polar codes with long codeword and capacity approaching behavior can be easily designed.
机译:本文侧重于基于高斯近似(GA)基于高斯近似(GA)的极性代码的结构,其在添加白色高斯噪声(AWGN)通道上进行了连续消除(SC)解码。 Arikan证明,具有低复杂性SC解码的极性代码可以接近任意对称二进制输入离散记忆信道的信道容量,只要代码长度足够大。尽管如此,如何在具有低计算工作的AWGN频道上构建这样的代码一直是一个公开问题。与密度进化相比,GA被称为低复杂性且强大的技术,其通过迭代非线性函数来追踪平均日志似然比(LLR)值的演变。因此,它的高精度数值评估随着代码长度的增加而言是关键的。在这项工作中,通过分析这种非线性函数的渐近行为,我们提出了一种改进的GA方法,这使得具有可行的平均LLR进化的准确迹线。通过这种改进的GA,通过数值分析和模拟,代码长度高达n = 2(18),我们明确证明了可以轻松地设计具有长码字和容量接近行为的各种码率极性代码。

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