基于星座形状的认知无线电网络中线性调制信号的调制分类

M. Zamanian, A. Tadaion, M. T. Sadeghi
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引用次数: 14

摘要

在本文中,我们打算用接收信号的星座形状作为特征对认知无线电网络中的线性数字调制进行分类。在我们的方法中,我们对基带符号进行聚类来识别星座,并通过一些验证方法对结果进行评估。在聚类方面,采用最简单、最快的聚类方法K-Means和模糊超体积(Fuzzy Hyper Volume, FHV)作为验证模糊C-Means聚类方法的一个众所周知的、简单、快速的指标。所提出的方法是完全无监督的,即使在缓慢变化的平坦瑞利衰落信道中,也可以在不知道信噪比、载波相位和时序偏移等参数的情况下执行任务。使用这对快速准确的方法索引,并引入一种新的思想来改进K-Means初始值,大大提高了K-Means聚类的精度,减少了K-Means聚类所需的迭代次数,保证了上述算法的高性能和低计算复杂度。仿真结果表明,对于大多数实际的线性调制方案,在AWGN存在下,该算法在信噪比大于10dB时都能进行正确的分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modulation classification of linearly modulated signals in a cognitive radio network using constellation shape
In this paper we intend to classify linear digital modulations in a cognitive radio network using constellation shape of the received signal as a feature. In our method, we perform the clustering of the base-band symbols to recognize the constellation and evaluate the result by some validation method. For clustering, K-Means, one of the simplest and fastest clustering methods, and the Fuzzy Hyper Volume (FHV), a well-known, simple and fast index for validating fuzzy C-Means clustering method, are employed. The presented approach is fully unsuper-vised and performs its task despite the slowly-varying flat Rayleigh fading channel and without the knowledge of the parameters such as SNR, carrier phase and timing offset. Using this fast and accurate pair of method-index and introducing a novel idea for refining K-Means initial values that considerably increases accuracy and decreases the number of iterations required for K-Means clustering, guarantees high performance and low computational complexity of the aforementioned algorithm. It is shown via simulations that the algorithm performs correct classification when the SNR is over 10dB for most practical linear modulation schemes under the presence of AWGN.
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