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Separation of closely spaced modes by combining complex envelope displacement analysis with method of generating intrinsic mode functions through filtering algorithm based on wavelet packet decomposition 被引量:3

Separation of closely spaced modes by combining complex envelope displacement analysis with method of generating intrinsic mode functions through filtering algorithm based on wavelet packet decomposition
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摘要 One of the important issues in the system identification and the spectrum analysis is the frequency resolution, i.e., the capability of distinguishing between two or more closely spaced frequency components. In the modal identification by the empirical mode decomposition (EMD) method, because of the separating capability of the method, it is still a challenge to consistently and reliably identify the parameters of structures of which modes are not well separated. A new method is introduced to generate the intrin- sic mode functions (IMFs) through the filtering algorithm based on the wavelet packet decomposition (GIFWPD). In this paper, it is demonstrated that the CIFWPD method alone has a good capability of separating close modes, even under the severe condition beyond the critical frequency ratio limit which makes it impossible to separate two closely spaced harmonics by the EMD method. However, the GIFWPD-only based method is impelled to use a very fine sampling frequency with consequent prohibitive computational costs. Therefore, in order to decrease the computational load by reducing the amount of samples and improve the effectiveness of separation by increasing the frequency ratio, the present paper uses a combination of the complex envelope displacement analysis (CEDA) and the GIFWPD method. For the validation, two examples from the previous works are taken to show the results obtained by the GIFWPD-only based method and by combining the CEDA with the GIFWPD method. One of the important issues in the system identification and the spectrum analysis is the frequency resolution, i.e., the capability of distinguishing between two or more closely spaced frequency components. In the modal identification by the empirical mode decomposition (EMD) method, because of the separating capability of the method, it is still a challenge to consistently and reliably identify the parameters of structures of which modes are not well separated. A new method is introduced to generate the intrin- sic mode functions (IMFs) through the filtering algorithm based on the wavelet packet decomposition (GIFWPD). In this paper, it is demonstrated that the CIFWPD method alone has a good capability of separating close modes, even under the severe condition beyond the critical frequency ratio limit which makes it impossible to separate two closely spaced harmonics by the EMD method. However, the GIFWPD-only based method is impelled to use a very fine sampling frequency with consequent prohibitive computational costs. Therefore, in order to decrease the computational load by reducing the amount of samples and improve the effectiveness of separation by increasing the frequency ratio, the present paper uses a combination of the complex envelope displacement analysis (CEDA) and the GIFWPD method. For the validation, two examples from the previous works are taken to show the results obtained by the GIFWPD-only based method and by combining the CEDA with the GIFWPD method.
出处 《Applied Mathematics and Mechanics(English Edition)》 SCIE EI 2013年第7期801-810,共10页 应用数学和力学(英文版)
基金 supported by the State Key Program of National Natural Science of China (No. 11232009) the Shanghai Leading Academic Discipline Project (No. S30106)
关键词 empirical mode decomposition (EMD) wavelet packet decomposition com- plex envelope displacement analysis (CEDA) closely spaced modes modal identification empirical mode decomposition (EMD) wavelet packet decomposition com- plex envelope displacement analysis (CEDA) closely spaced modes modal identification
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  • 1Segawa, R., Yamamoto, S., Sone, A., Masuda, A.: Cumulative damage estimation using wavelet transform of structural response. In: Proceedings of 12th World Conference on Earthquake Engineering. Auckland, New Zealand, January 30-February 4, pp. 1212-1220 (2000).
  • 2Yua, K.E, Yea, J.Y., Zoua, J.X., Yang, B.Y., Yang, H.: Missile flutter experiment and data analysis using wavelet transform. J. Sound Vib. 269, 899-912 (2004).
  • 3Le, T.E, Argoul, E: Continuous wavelet transform for modal identification using free decay response. J. Sound Vib. 277, 73- 100 (2004).
  • 4Shen, E, Zheng, M., Shi, D.E, Xu, E: Using the cross-correlation technique to extract modal parameters on response-only data. J. Sound Vib. 259(5), 1163-1179 (2003).
  • 5Yana, B.E, Miyamotoa, A., Bruhwiler, E.: Wavelet transform-based modal parameter identification considering uncertainty. J. Sound Vib. 291(1-2), 285-301 (2006).
  • 6Chakrabortya, A., Basua, B., Mitrab, M.: Identification of modal parameters of a mdof system by modified L-P wavelet packets. J. Sound Vib. 295, 827-837 (2006).
  • 7Sone, A., Yamamoto, S., Masuda, A.: Detection of inelastic excursions in hysteretic systems for cumulative damage estimation using wavelet transform of response time histories. In: Proceedings of 12th World Conference on Earthquake Engineering. Auckland, New Zealand, January 30-February 4, pp. 1220-1228 (2000).
  • 8Qina, S.R., Zhong, Y.M.: A new envelope algorithm of Hilbert- Huang Transform. Mech. Syst. Signal Process. 20, 1941-1952 (2006).
  • 9Penga, Z.K., Tsea, RW., Chu, EL.: A comparison study of improved Hilbert-Huang transform and wavelet transform: Application to fault diagnosis for rolling bearing. Mech. Syst. Signal Process. 19, 974-988 (2005).
  • 10Huang, N.E., Wu, M.L., Qu, W.D., Steven, R.L., Samuel, S.E: Applications of Hilbert-Huang transform to non-stationary finan- cial time series analysis. Appl. Stoch. Models Bus. Ind. 19, 245- 268 (2003).

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