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Spectrum sensing and modulation classification for cognitive radios using cumulants based on fractional lower order statistics

机译:基于分数低阶统计量的累积量对认知无线电的频谱感知和调制分类

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Two key tasks in the development of cognitive radio networks in commercial and military applications are spectrum sensing and automatic modulation classification (AMC). These tasks become even more difficult when the cognitive radio receiver has no information about the channel or the modulation type. An integrated scheme which includes both these aspects is proposed in this paper. Spectrum sensing is done using cumulants derived from fractional lower order statistics. It is shown through simulations that the proposed sensing method has improved performance, especially in low SNR environments in Gaussian and non-Gaussian noise when compared with the conventional higher-order statistics (HOS) based method. The performance of the automatic modulation classifier is presented in the form of conditional probability of classification, probability of correct classification and confusion matrix under noisy and under fading conditions. Simulations in our previous work showed that the proposed method achieved better classification accuracy when compared to cumulant based AMC method in noise conditions that are highly impulsive than Gaussian. In this paper, simulations show significant improvement in the performance of AMC in the presence of AWGN and under multipath fading, for a known frequency band of interest when compared with the conventional AMC methods available.
机译:在商业和军事应用中发展认知无线电网络的两个关键任务是频谱感测和自动调制分类(AMC)。当认知无线电接收机没有关于信道或调制类型的信息时,这些任务变得更加困难。本文提出了一个包含这两个方面的集成方案。使用从分数低阶统计量得出的累积量完成频谱感测。通过仿真显示,与传统的基于高阶统计量(HOS)的方法相比,该方法具有更高的性能,特别是在高SNR和非高斯噪声的低SNR环境中。自动调制分类器的性能以有条件的分类概率,正确分类的概率以及在噪声和衰落条件下的混淆矩阵的形式表示。我们以前的工作中的仿真表明,与高斯噪声相比,在基于脉冲的噪声条件下,与基于累积量的AMC方法相比,该方法具有更好的分类精度。在本文中,仿真显示与已知的常规AMC方法相比,对于已知的感兴趣频段,在存在AWGN且在多径衰落下,AMC的性能有了显着提高。

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