基于混合遗传算法的几何特征均衡器

Renxiang Zhu, Lenan Wu, Ruo Shu
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引用次数: 4

摘要

本文提出了一种采用最小误码率原理的非线性几何特征均衡器,用于滤波通信中与期望信号频带重叠的噪声和干扰,并提出了一种新的混合遗传算法,即混合遗传算法-随机梯度算法,用于训练均衡模型。考虑到噪声和干扰具有不同的随机特性,采用基于最小误码率原理的神经网络恢复所需信息。仿真结果表明,当扩展二进制相移键控信号受到高斯白噪声和相对较强的调幅调频干扰信号的混合污染时,匹配滤波器或线性均衡器的性能迅速退化,而几何特征均衡器的误码率很低。此外,混合遗传算法的性能优于随机梯度算法。
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Geometric Feature Equalizers Based on Hybrid Genetic Algorithm
A nonlinear geometric feature equalizer adopting minimum bit error rate principle is proposed in this paper for the filtering of noise and interference whose frequency band overlaps with the desired signal in communications, and a novel hybrid genetic algorithm, namely hybrid genetic algorithm-stochastic gradient, is also proposed for training the equalization model. Considering that the noise and the interference have different stochastic character, the desired information is recovered by neural network based on minimum bit error rate principle. Simulation results show that when extended binary phase shifting keying signal is contaminated by the mix of white Gaussian noise and relatively strong interference signals of amplitude modulation and frequency modulation, the performance of matched filter or linear equalizer degenerates rapidly, but geometric feature equalizer provides very low bit error rate. Furthermore, performance of hybrid genetic algorithm is superior to that of stochastic gradient.
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