Ali Ahmed K, Erçelebi Ergun
Department of Electrical and Electronics Engineering, University of Gaziantep, 27310 Gaziantep, Turkey; Department of Electrical Engineering, University of Mustansiriyah, Baghdad, Iraq.
Department of Electrical and Electronics Engineering, University of Gaziantep, 27310 Gaziantep, Turkey.
ISA Trans. 2020 Jul;102:173-192. doi: 10.1016/j.isatra.2020.03.002. Epub 2020 Mar 5.
In this paper, we present a unique modulation classification method that is based on determining an attractive relation between higher-order cumulants (HOCs) using a decision tree-classifier to improve the extracted features employed for the recognition of modulation schemes, such as phase shift keying (PSK) and quadrature amplitude modulation (QAM). A threshold algorithm is applied to the proposed classifier, which consists of sub-classifiers, each comprising a single feature, and each being capable of distinguishing the modulation types individually. In this work, a high-accuracy classifier system is utilized to recognize modulation schemes, such as QAM (16, 32, 64, 128, and 256) and (2, 4, and 8) PSK at a low signal-to-noise ratio (SNR). In this study, 1000 signals are studied for each SNR of -5 dB to 30 dB. The most prominent results of the classifier decisions range from 88% to 100% with regard to distinguishing the same types of PSK and QAM. In the long run, the proposed classifier module will be advantageous in terms of accuracy and computational complexity relative to the other classifiers in the literature. The results demonstrate that the proposed algorithm has a significantly better classification accuracy in comparison with the previously proposed ones.
在本文中,我们提出了一种独特的调制分类方法,该方法基于使用决策树分类器确定高阶累积量(HOC)之间的吸引关系,以改进用于识别调制方案(如相移键控(PSK)和正交幅度调制(QAM))的提取特征。一种阈值算法应用于所提出的分类器,该分类器由子分类器组成,每个子分类器包含单个特征,并且每个都能够单独区分调制类型。在这项工作中,利用高精度分类器系统在低信噪比(SNR)下识别调制方案,如QAM(16、32、64、128和256)以及(2、4和8)PSK。在本研究中,针对从-5 dB到30 dB的每个SNR对1000个信号进行了研究。分类器决策的最显著结果在区分相同类型的PSK和QAM方面范围从88%到100%。从长远来看,相对于文献中的其他分类器,所提出的分类器模块在准确性和计算复杂度方面将具有优势。结果表明,与先前提出的算法相比,所提出的算法具有显著更好的分类准确性。