用循环累积量对同信道通信信号进行分类

C. Spooner
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引用次数: 107

摘要

传统的信号分类方法,包括相位和频率直方图、模量测量和功率谱测量,在信噪比足够低或存在干扰信号时失效。这些方法都失败了,因为干扰信号和噪声对分类特征的测量值有很大的贡献,从而模糊了感兴趣的信号对测量的贡献。在某些情况下,这种情况下所需的分类特征的信号选择性可以由基于感兴趣的信号和干扰的循环平稳性的特征来提供。提出并分析了一套基于周期累积量的信号分类特征,给出了基于模拟数据的分类实验结果。仿真结果表明,通过测量和处理所提出的特征,可以成功地对多个频谱重叠信号进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of co-channel communication signals using cyclic cumulants
Traditional methods of signal classification, including phase and frequency histograms, modulus measurements, and power-spectrum measurements, fail when the signal-to-noise ratio is sufficiently low or when there are interfering signals present. These methods fail because the interfering signals and noise contribute substantially to the measured values of the classification features, thereby obscuring the contribution to the measurement from the signal of interest. The required signal selectivity of classification features for this situation can, in some instances be provided by features based on the cyclostationarity of both the signal of interest and the interferers. A set of cyclic-cumulant-based features for signal classification is proposed and analyzed, and results of classification experiments using simulated data are presented. The simulation results reveal that each of a number of spectrally overlapping signals can be successfully classified by measuring and processing the proposed features.
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