类涡轮OVXDM的快速收敛admm惩罚算法

Peng Lin, Yafeng Wang, Daoben Li
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引用次数: 1

摘要

重叠x域复用(OVXDM)编码是近年来提出的一种在低信噪比条件下利用加权数据的移位和重叠实现超高频谱效率的编码方法。然而,OVXDM的解码复杂度随着频谱效率的增长呈指数增长,解码性能受到限制。本文首先结合turbo和OVXDM编码的优点,提出了一种新的类turbo (TL) OVXDM编码结构(TL-OVXDM)。然后提出了一种改进的带惩罚项的乘法器交替方向法(ADMM-penalized)算法,该算法只需几次迭代即可实现鲁棒的译码性能,并通过更快的收敛速度显著降低译码过程的计算复杂度。仿真结果表明,采用Log-BCJR译码算法的TL-OVXDM可以优于OVXDM误码概率的上界。当TL-OVXDM的重叠率较高时,采用admm补偿的译码算法加快了收敛速度,在较低的计算复杂度下实现了较好的误码率性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast Converging ADMM-Penalized Algorithm for Turbo-Like OVXDM
Overlapped x domain multiplexing (OVXDM) encoding is recently proposed with ultra-high spectral efficiency by the shift and overlap of weighted data under low signal-to-noise ratio (SNR). However, the decoding performance of OVXDM is restricted by the exponential increase of decoding complexity with the growth of the spectral efficiency. In this paper, we first propose a novel type of turbo-like (TL) structure of OVXDM encoding (TL-OVXDM) combining the advantages of turbo and OVXDM encoding. Then a modified alternating direction method of multipliers with a penalty term (ADMM-penalized) algorithm is proposed, which can achieve robust decoding performance in only a few iterations and significantly reduce the computational complexity of the decoding process through a faster convergence. Simulation results demonstrate that TL-OVXDM with Log-BCJR decoding algorithm can outperform the upper bound of OVXDM bit error probability. And when overlapping fold is relatively high in TL-OVXDM, the proposed ADMM-penalized decoding algorithm quickens the convergence speed and achieves robust performance in bit error rate (BER) with low computational complexity.
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