基于独立分量分析的快速数字调制识别方法

Xu Yi-qiong, G. Lindong, Wang Bo
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引用次数: 4

摘要

提出了一种有效的基于独立分量分析(ICA)的调制特征提取方法,用于数字调制识别。在调制识别中,重要的信息可能包含在采样点之间的高阶关系中。ICA对数据中的高阶统计量非常敏感,能够发现不一定的正交基,因此比传统的时频域特征能更好地识别和重构高维通信信号数据。ICA算法耗时长,有时难以收敛。因此,本文提出了一种改进的FastICA算法,该算法在一次迭代中只需要计算一次雅可比矩阵,就能达到FastICA的相应效果。在获得所有独立分量后,引入遗传算法选择最优独立分量。实验结果表明,改进的FastICA算法收敛速度快,遗传算法优化了识别性能。基于ICA的特征提取方法是数字调制识别的一种创新方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast Independent Component Analysis Based Digital Modulation Recognition Method
This paper proposes an efficient Independent Component Analysis (ICA) based modulation feature extraction method applied in digital modulation identification. In modulation identification, important information may be contained in the high-order relationship among sampling points. ICA is sensitive to high-order statistic in the data and finds not-necessarily orthogonal bases, so it may better identify and reconstruct high-dimensional communication signal data than traditional time and frequency domain features. ICA algorithms are time-consuming and sometimes converge difficultly. So a modified FastICA algorithm is developed in this paper, which only need to computer Jacobian Matrix once time in one iteration and achieves the correspondent effect of FastICA. After obtaining all independent components, a genetic algorithm is introduced to select optimal independent components (ICs). The experiment results show that modified FastICA algorithm fast convergence speed and genetic algorithm optimize recognition performance. ICA based features extraction method is innovative and promising for digital modulation identification.
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