基于支持向量机的多特征基带调制分类

William Damario Lukito, Farras Eldy Rashad, Effrina Yanti Hamid
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引用次数: 1

摘要

本研究讨论了以调制分类为目的的机器学习的实现。为了验证这一概念,我们选择了6种调制类型,即BPSK、QPSK、8-PSK、16-QAM、BFSK和8-PAM。本研究中使用的机器学习算法是支持向量机(SVM),使用MATLAB的分类学习器实现。使用ADALM-PLUTO SDR生成数据集,并在基带频率范围内进行处理。对于SVM算法的输入预测因子,本研究提出了基于小波变换的、基于谱的、基于高阶统计的多分类特征。SVM算法在未进行任何优化的情况下,得到准确率为91.4%的分类规则模型。
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Multi Features-based Baseband Modulation Classification using Support Vector Machine
This research discusses the implementation of machine learning for modulation classification purpose. In order to proof the concept, 6 types of modulation have been selected, i.e., BPSK, QPSK, 8-PSK, 16-QAM, BFSK, and 8-PAM. Machine learning algorithm that was used in this research is support vector machine (SVM) and implemented using MATLAB’s classification learner. Data sets were generated using an ADALM-PLUTO SDR, and processed at baseband frequency range. Regarding the input predictors to the SVM algorithm, this research proposes multi classification features, such as wavelet transform-based, spectral-based, and higher-order statistical-based features. SVM algorithm obtained a classification-rule model with 91.4% of accuracy without any optimization applied.
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