Single-Minimum LDPC Decoding Offset Optimization Methods

Daniel B. Dermont, Jérémy Nadal, François Leduc-Primeau
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Abstract

Low-density parity-check codes are widely used in communication systems. To meet the high throughput and energy efficiency requirements of current and future systems, it is desirable to further simplify the decoder. Quantized min-sum (MS) decoders are of particular interest for their low implementation complexity, which can be further reduced by computing a single minimum (SM) during check node update, instead of two. However, this simplification can lead to poor decoding performance unless it is carefully incorporated. In this paper, we formalize a general optimization problem for SM decoding, and propose search heuristics to solve it. In addition, we provide density evolution (DE) equations for the first two decoding iterations that properly take into account the lack of extrinsic update rule, and show that this DE result can be used to obtain good solutions to the SM optimization problem with low computational complexity.
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单最小LDPC译码偏移优化方法
低密度奇偶校验码广泛应用于通信系统中。为了满足当前和未来系统的高吞吐量和能效要求,需要进一步简化解码器。量化最小和(MS)解码器因其较低的实现复杂性而特别令人感兴趣,通过在检查节点更新期间计算单个最小值(SM)而不是两个,可以进一步降低复杂度。然而,这种简化可能导致解码性能差,除非它被仔细地合并。在本文中,我们形式化了一个通用的SM解码优化问题,并提出了搜索启发式算法来解决这个问题。此外,我们还为前两次解码迭代提供了适当考虑到缺乏外在更新规则的密度演化方程,并表明该密度演化结果可用于获得计算复杂度较低的SM优化问题的较好解。
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