A Performance Analysis of Hybrid-DSE-MMA Adaptive Equalization Algorithm based on Adaptive Modulus and Adaptive Stepsize

Seung-Gag Lim
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Abstract

This paper relates with the Hybrid-DSE-MMA (Hybrid-Dithered Signed Error-MMA) that is possible to improving the equalization performance by using the adaptive modulus and adaptive stepsize in DSE-MMA adaptive equalizer. The DSE-MMA possible to improve the robustness performance to external noise of SE-MMA by using the sign after adding the dither signal for get the error signal in order to update the tap coefficient. But it has a drawback of performance degradation in convergence speed and residual isi by using the fixed modulus and fixed stepsize. In this paper, it was confirmed that this equalization performance degradation was improved by applying the adaptive modulus and stepsize in DSE-MMA propotional to the output power of equalizer by computer simulation. In order to compare the improved equalization performance to currently DSE-MMA, the recovered signal constellation that is the output of the equalizer, residual isi, Maximum Distortion, MSE and the SER were used as a performance index. As a result of computer simulation, the Hybrid-DSE-MMA improve the equalization performance in every index, but gives slower convergence speed compared to DSE-MMA.
基于自适应模量和自适应步长的Hybrid-DSE-MMA自适应均衡算法性能分析
本文讨论了在DSE-MMA自适应均衡器中使用自适应模量和自适应步长来提高均衡性能的Hybrid-DSE-MMA (hybrid - dired Signed Error-MMA)。利用加入抖动信号后的符号来获取误差信号以更新抽头系数,可以提高SE-MMA对外部噪声的鲁棒性。但由于采用固定模量和固定步长,存在收敛速度和残差性能下降的缺点。本文通过计算机仿真,证实了将DSE-MMA比例中的自适应模量和步长应用于均衡器的输出功率,可以改善均衡器的性能退化。为了将改进后的均衡性能与目前的DSE-MMA进行比较,将均衡器输出的恢复信号星座、剩余isi、最大失真、MSE和SER作为性能指标。计算机仿真结果表明,Hybrid-DSE-MMA在各指标上均提高了均衡性能,但收敛速度较DSE-MMA慢。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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