改进Max-Log-MAP turbo译码算法,优化比例因子

R. Krishnamoorthy, N. Pradeep
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引用次数: 1

摘要

Max-Log-MAP是一种软输入软输出(SISO)算法,它确定通过网格的最可能路径的概率,因此与Log-MAP算法相比,它提供了次优的性能。利用适当的缩放因子(SF)对两个解码器之间交换的外部信息进行缩放是一种简单而有效的改进MLMAP算法性能的方法。改进的Max-Log-MAP (M-MLMAP)算法通过为内部解码器S2固定一个任意的SF和为外部解码器S1固定一个优化的SF来实现。本文介绍了改进的Max-Log-MAP译码算法的性能,该算法通过减少可靠性值的过估计来实现低误码率。并提出了SF与Eb/N0之间的数学关系。数值结果表明,M-MLMAP算法在加性高斯白噪声(AWGN)和瑞利衰落信道下提高了turbo译码性能。在瑞利衰落信道中,M-MLMAP算法在BER为2×10-5时比MLMAP算法增益0.75dB。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modified Max-Log-MAP turbo decoding algorithm using optimized scaling factor
The Max-Log-MAP is a Soft Input Soft Output (SISO) algorithm, which determines the probability of most likely path through the trellis and hence it gives sub optimal performance compared to Log-MAP algorithm. A simple but effective technique to improve the performance of Max-Log-MAP (MLMAP) algorithm is to scale the extrinsic information exchanged between two decoders using appropriate Scaling Factor (SF). Modified Max-Log-MAP (M-MLMAP) algorithm is achieved by fixing an arbitrary SF for inner decoder S2 and an optimized SF for the outer decoder S1. This paper presents the performance of the Modified Max-Log-MAP decoding algorithm by reducing the over estimation of reliability values to achieve low Bit Error Rate (BER). Appropriate mathematical relationship between SF and Eb/N0 is also proposed. The numerical results show that M-MLMAP algorithm improved the performance of turbo decoding over Additive White Gaussian Noise (AWGN) and Rayleigh fading channels. The proposed M-MLMAP algorithm showed a gain of 0.75dB over MLMAP algorithm at BER of 2×10-5 for Rayleigh fading channel.
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