吕勇, 徐金梧, 李友荣, 杨德斌. 基于局部投影和小波降噪的弱冲击特征信号的提取[J]. 工程科学学报, 2004, 26(3): 319-321. DOI: 10.13374/j.issn1001-053x.2004.03.024
引用本文: 吕勇, 徐金梧, 李友荣, 杨德斌. 基于局部投影和小波降噪的弱冲击特征信号的提取[J]. 工程科学学报, 2004, 26(3): 319-321. DOI: 10.13374/j.issn1001-053x.2004.03.024
LU Yong, XU Jinwu, LI Yourong, YANG Debin. Weak Feature Signals Identification Method Based on Local Projective and Wavelet Transform[J]. Chinese Journal of Engineering, 2004, 26(3): 319-321. DOI: 10.13374/j.issn1001-053x.2004.03.024
Citation: LU Yong, XU Jinwu, LI Yourong, YANG Debin. Weak Feature Signals Identification Method Based on Local Projective and Wavelet Transform[J]. Chinese Journal of Engineering, 2004, 26(3): 319-321. DOI: 10.13374/j.issn1001-053x.2004.03.024

基于局部投影和小波降噪的弱冲击特征信号的提取

Weak Feature Signals Identification Method Based on Local Projective and Wavelet Transform

  • 摘要: 综合局部投影算法及小波变换两者的优点,提出了基于局部投影和小波降噪的弱冲击信号的提取方法.实验结果表明,局部投影算法可以将背景信号和特征信号分解到不同的子空间上,小波降噪可以有效地用于包含尖峰或突变信号的降噪,结合局部投影和小波降噪的弱冲击信号的提取方法对于微弱特征信号的提取是非常有效的.

     

    Abstract: A weak feature signals identification method based on local projection and wavelet transform is introduced. Experiment indicates that the local projective algorithm can separate background signals and weak feature signals into different orthogonal sub-spaces. Wavelet transform is effective for noise reduction of sharp and break signals. The algorithm which combines the local projective and wavelet transform has an excellent effect on identifying weak feature signals in nonlinear time series.

     

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