Excellent Performance of DFE Based on IT2SNFS in Time-Varying Channels

Yao-Jen Chang, C. Ho
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引用次数: 1

Abstract

In this paper, we incorporate an interval type-2 self-organizing neural fuzzy system (IT2SNFS) into decision feedback equalizer (DFE) for time-varying channels. By exploiting the structure and parameter learning algorithms of the IT2SNFS, the proposed DFE is able to obtain the improved performance without the estimation of the channel order. Moreover, the IT2SNFS can set conditions on the increase demand of the fuzzy rules and hence the DFE results in little hardware complexity. We show in simulations that the IT2SNFS-based DFE performs much better than the traditional DFE methods in time-varying channels.
基于IT2SNFS的时变信道DFE性能优异
本文将区间2型自组织神经模糊系统(IT2SNFS)引入时变信道的决策反馈均衡器(DFE)中。通过利用IT2SNFS的结构和参数学习算法,该DFE在不估计信道阶数的情况下获得了更好的性能。此外,IT2SNFS可以对模糊规则的增加需求设置条件,因此DFE的硬件复杂度很小。仿真结果表明,在时变信道中,基于it2snfs的DFE方法比传统的DFE方法具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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