Digital Modulation Classification Based On BAT Swarm Optimization and Random Forest

Batool Sultan, Taha Hasan
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Abstract

The applications of digitally modulated signals are still in progress and expansion. Automatic Modulation Identification (AMI) is important to classify the digitally modulated signals ..To get better results of the system suggested optimization the features to discard weak or irrelevant features in the system and keep only strong relevant features .In this work, present hybrid intelligent system for the recognition related to the digitally modulated signals where used . The proposed (AMI) had been built to classify ten most popular schemes of digitally modulated signals, namely (2ASK, , 2PSK, 4PSK, 8PSK, 8QAM,16QAM ,32QAM, 64 QAM, 128QAM, and 256QAM), with the signal to noise ratio ranging from (-2 to 13) dB. High-order cumulants (HOCs) as well as high-order moments (HOMs) were utilized. .In this thesis used , Bat Swarm Optimization (BA).The Random Forest ( RF) classifier was introduced for the first time in this work. Simulation results of the System proposed , under additive white Gaussian noise channel, show that .While algorithm ( BA Swarm Optimization ) for the modulated signals we obtained a classification accuracy of around 92% for the SNR between (-2....12 ) dB.
基于BAT群优化和随机森林的数字调制分类
数字调制信号的应用仍在不断发展和扩展。自动调制识别(AMI)是对数字调制信号进行分类的重要手段。为了获得更好的识别效果,提出了对特征进行优化,舍弃系统中较弱或不相关的特征,只保留较强的相关特征。所提出的(AMI)对10种最流行的数字调制信号方案(2ASK、2PSK、4PSK、8PSK、8QAM、16QAM、32QAM、64 QAM、128QAM和256QAM)进行了分类,信噪比范围为(-2 ~ 13)dB。利用高阶累积量(hoc)和高阶矩(HOMs),在本文中使用了蝙蝠群优化(BA)。本文首次引入随机森林分类器。仿真结果表明,在加性高斯白噪声信道下,采用BA群优化算法对调制信号进行分类,信噪比在(-2....之间,分类准确率达到92%左右12) dB。
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