基于线性混合模型的二维符号映射的多值信令评价与符号分类

Yosuke Iijima, Kazuharu Nakajima, Y. Yuminaka
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引用次数: 0

摘要

本研究提出了一种使用线性混合模型(LMM)和二维符号映射的多值数据传输评估方法。传输信号的二维地图可以在二维平面上可视化。LMM支持符号分布特征的数值建模。仿真结果表明,即使在眼图评估中没有眼孔径的情况下,利用遗传算法根据测量符号调整和确定LMM参数也可以量化接收端符号分布的特征。此外,与无监督学习一样,通过LMM提取多层接收符号的分布特征,可以使用LMM对未知接收符号进行聚类。因此,即使眼睛完全闭上,由于严重的符号间干扰(ISI),符号识别也是可能的。4级脉冲调幅传输仿真结果表明,即使眼睛完全闭上,也可以完全聚类并确定接收到的符号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation and Symbol Classification of Multi-Valued Signaling Using Two-Dimensional Symbol Mapping with Linear Mixture Model
This study presents an evaluation methodology using a linear mixture model (LMM) with 2-dimensional (2D) symbol mapping for multi-valued data transmission. A 2D map of the transmitted signal can be visualized on a 2D plane. The LMM enables numerical modeling of symbol distribution characteristics. Simulation results showed that the characteristics of the received end-symbol distribution can be quantified by adjusting and determining the LMM parameters from the measured symbols using a genetic algorithm, even in the absence of an eye aperture in the eye diagram evaluation. Additionally, by extracting features of the distribution of multilevel received symbols with the LMM, as in unsupervised learning, unknown received symbols can be clustered with the LMM. Therefore, symbol determination is possible even when the eye is completely closed owing to severe intersymbol interference (ISI). The results of the 4-level pulse amplitude modulation transmission simulation show that it is possible to completely cluster and determine the received symbols, even when the eye is completely closed.
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