Wavelet Transform-principal component analysis in electromagnetic attack

Hong-xin Zhang, Gan Han, Jing Li
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引用次数: 1

Abstract

In the attack of the encryption algorithm ARCFOUR(RC4), new method of machine learning based on Wavelet Transform(WT) and Principal Component Analysis(PCA)is proposed. WT is used to reconstruct the new signals to extract information from the original signals effectively. Components in low and high frequency and reconstructed signals are made by WT. In order to analyze the impact of the signals on the success rate of prediction, four kinds of signals are adapted respectively for dimensionality reduction, which contains initial signals, reconstructed signals, and the signals in low and high frequency. By the classification of Support Vector Machine (SVM), the results show that the effect of the reconstructed signals is the best one. The reconstructed signals reduce the noise influence. In the range of 500 dimensions, the classification effect of the reconstructed signals is obviously better than others. As the dimension increases, the effect becomes small. The effect of signals in low frequency is more effective than that of the original in most of dimensions. The classification success rate is still high with fewer dimensions. In the four kinds of signals, the effect of the signals in high frequency is the worst. The results show that WT combined with PCA is a good method to handle with classification.
电磁攻击中的小波变换-主成分分析
针对加密算法ARCFOUR(RC4)的攻击,提出了一种基于小波变换和主成分分析的机器学习新方法。利用小波变换对新信号进行重构,有效地从原始信号中提取信息。采用小波变换对低频、高频信号和重构信号进行分量处理,为了分析信号对预测成功率的影响,分别采用四种信号进行降维处理,分别包含初始信号、重构信号和低频、高频信号。通过支持向量机(SVM)的分类,结果表明重构后的信号效果最好。重构后的信号减小了噪声的影响。在500维范围内,重构信号的分类效果明显优于其他信号。随着尺寸的增大,影响变小。低频信号的影响在大多数维度上都比原始信号的影响更有效。在维数较少的情况下,分类成功率仍然很高。在这四种信号中,高频信号的影响是最差的。结果表明,小波变换与主成分分析相结合是一种很好的分类处理方法。
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