This paper revisits the ordered statistics decoding (OSD). It provides a comprehensive analysis of the OSD algorithm by characterizing the statistical properties, evolution and the distribution of the Hamming distance and weighted Hamming distance from codeword estimates to the received sequence in the reprocessing stages of the OSD algorithm. We prove that the Hamming distance and weighted Hamming distance distributions can be characterized as mixture models capturing the decoding error probability and code weight enumerator. Simulation and numerical results show that our proposed statistical approaches can accurately describe the distance distributions. Based on these distributions and with the aim to reduce the decoding complexity, several techniques, including stopping rules and discarding rules, are proposed, and their decoding error performance and complexity are accordingly analyzed. Simulation results for decoding various eBCH codes demonstrate that the proposed techniques can significantly reduce the decoding complexity with a negligible loss in the decoding error performance.
翻译:本文回顾了订购的统计数据解码(OSD) 。 它提供了对 OSD 算法的全面分析,通过描述统计属性、演变和分布,说明从 OSD 算法的编码估计到后处理阶段后处理阶段的接收序列的哈姆明距离和加权哈姆明距离的加权距离。 我们证明, Hamming 距离和加权哈姆明距离分布可被定性为混合模型,捕捉解解码错误概率和代码重量计算器。 模拟和数字结果显示,我们提议的统计方法可以准确描述距离分布。 根据这些分布,并为了减少解码复杂性,提出了几种技术,包括停止规则和抛弃规则,并据此分析了其解码错误的性能和复杂性。 解码各种eBCH 代码的模拟结果表明,拟议的技术可以大大减少解码复杂性,在解码错误性操作中损失微不足道。