Guangtao Lu, Zhiwei Zhou, Longyun Wu, Yangtao Wang, Tao Wang, Dandan Yang
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The comparative analysis of the simulated signal clearly shows that only the proposed method can successfully separate the damage-related and reference signals. To verify the VMD-SE method, damage detection of two different types of damage on aluminum and composite fiber-reinforced polymer (CFRP) plates is conducted by using this new approach. The experimental results demonstrate that the parameters of VMD affect greatly its decomposition performance, and the best parameters are selected. The results also indicate that the normalized spectral entropy monotonically increases when the diameter of the through-hole or the length of the scratch increases. In addition, the correlation coefficients of the fitting lines of the plates are larger than 0.998. The experimental results of aluminum specimens demonstrate that the damage’s location has an influence on the normalized spectral entropy. At last, based on the linear relationship, the severity of damage in the fourth specimen is identified. The identification results demonstrate that the relative error of the aluminum and CFRP plates is less than 7.34%, which indicates that this new algorithm by fusing VMD and spectral entropy can detect the damage size in thin plates accurately and efficiently.","PeriodicalId":515545,"journal":{"name":"Structural Health Monitoring","volume":"4 9","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-04-06","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Damage detection of thin plates by fusing variational mode decomposition and spectral entropy\",\"authors\":\"Guangtao Lu, Zhiwei Zhou, Longyun Wu, Yangtao Wang, Tao Wang, Dandan Yang\",\"doi\":\"10.1177/14759217241239989\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"This paper presents a new approach for damage detection in thin plates by fusing variational mode decomposition and spectral entropy (VMD-SE). In this method, after the received signal is decomposed into some intrinsic mode functions (IMFs) by variational mode decomposition (VMD), the spectral entropy ratio of the first and last IMFs is calculated for optimizing the VMD’s parameters and improving its decomposition performance. Moreover, the cross-correlation coefficient between the decomposed IMFs and the reference signal is computed to separate the desired IMF, which contains more damage information. Finally, the spectral entropy of the obtained IMF is calculated as an indicator for assessing the damage’s severity. The comparative analysis of the simulated signal clearly shows that only the proposed method can successfully separate the damage-related and reference signals. To verify the VMD-SE method, damage detection of two different types of damage on aluminum and composite fiber-reinforced polymer (CFRP) plates is conducted by using this new approach. The experimental results demonstrate that the parameters of VMD affect greatly its decomposition performance, and the best parameters are selected. The results also indicate that the normalized spectral entropy monotonically increases when the diameter of the through-hole or the length of the scratch increases. In addition, the correlation coefficients of the fitting lines of the plates are larger than 0.998. The experimental results of aluminum specimens demonstrate that the damage’s location has an influence on the normalized spectral entropy. At last, based on the linear relationship, the severity of damage in the fourth specimen is identified. 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引用次数: 0
摘要
本文提出了一种融合变模分解和频谱熵(VMD-SE)的薄板损伤检测新方法。在该方法中,接收信号经变模分解(VMD)分解为若干本征模态函数(IMF)后,计算首尾两个 IMF 的谱熵比,以优化 VMD 的参数,提高其分解性能。此外,计算分解后的 IMF 与参考信号之间的交叉相关系数,以分离出所需的 IMF,其中包含更多的损坏信息。最后,计算得到的 IMF 的频谱熵,作为评估损坏严重程度的指标。对模拟信号的对比分析清楚地表明,只有建议的方法才能成功分离出与损伤相关的信号和参考信号。为了验证 VMD-SE 方法,使用这种新方法对铝板和复合纤维增强聚合物(CFRP)板上两种不同类型的损伤进行了损伤检测。实验结果表明,VMD 的参数对其分解性能影响很大,并选出了最佳参数。结果还表明,当通孔直径或划痕长度增加时,归一化光谱熵单调增加。此外,板材拟合线的相关系数均大于 0.998。铝试样的实验结果表明,损伤位置对归一化光谱熵有影响。最后,根据线性关系,对第四个试样的损伤严重程度进行了鉴定。识别结果表明,铝板和 CFRP 板的相对误差小于 7.34%,这表明这种融合了 VMD 和光谱熵的新算法能够准确有效地检测薄板的损伤大小。
Damage detection of thin plates by fusing variational mode decomposition and spectral entropy
This paper presents a new approach for damage detection in thin plates by fusing variational mode decomposition and spectral entropy (VMD-SE). In this method, after the received signal is decomposed into some intrinsic mode functions (IMFs) by variational mode decomposition (VMD), the spectral entropy ratio of the first and last IMFs is calculated for optimizing the VMD’s parameters and improving its decomposition performance. Moreover, the cross-correlation coefficient between the decomposed IMFs and the reference signal is computed to separate the desired IMF, which contains more damage information. Finally, the spectral entropy of the obtained IMF is calculated as an indicator for assessing the damage’s severity. The comparative analysis of the simulated signal clearly shows that only the proposed method can successfully separate the damage-related and reference signals. To verify the VMD-SE method, damage detection of two different types of damage on aluminum and composite fiber-reinforced polymer (CFRP) plates is conducted by using this new approach. The experimental results demonstrate that the parameters of VMD affect greatly its decomposition performance, and the best parameters are selected. The results also indicate that the normalized spectral entropy monotonically increases when the diameter of the through-hole or the length of the scratch increases. In addition, the correlation coefficients of the fitting lines of the plates are larger than 0.998. The experimental results of aluminum specimens demonstrate that the damage’s location has an influence on the normalized spectral entropy. At last, based on the linear relationship, the severity of damage in the fourth specimen is identified. The identification results demonstrate that the relative error of the aluminum and CFRP plates is less than 7.34%, which indicates that this new algorithm by fusing VMD and spectral entropy can detect the damage size in thin plates accurately and efficiently.