Improved Empirical Mode Decomposition Algorithm of Processing Complex Signal for IoT Application

Article English OPEN
Xianzhao Yang; Gengguo Cheng; Huikang Liu;
(2015)

Hilbert-Huang transform is widely used in signal analysis. However, due to its inadequacy in estimating both the maximum and the minimum values of the signals at both ends of the border, traditional HHT is easy to produce boundary error in empirical mode decomposition (... View more
  • References (28)
    28 references, page 1 of 3

    Chu, P. C., Fan, C., Huang, N.. Derivative-optimized empirical mode decomposition for the Hilbert-HUAng transform. Journal of Computational and Applied Mathematics. 2014; 259: 57-64

    Vong, C. M., Wong, P. K., Wong, K. I.. Simultaneous-fault detection based on qualitative symptom descriptions for automotive engine diagnosis. Applied Soft Computing. 2014; 22: 238-248

    Zheng, J., Cheng, J., Yang, Y., Luo, S.. A rolling bearing fault diagnosis method based on multi-scale fuzzy entropy and variable predictive model-based class discrimination. Mechanism and Machine Theory. 2014; 78: 187-200

    Talhaoui, H., Menacer, A., Kessal, A., Kechida, R.. Fast Fourier and discrete wavelet transforms applied to sensorless vector control induction motor for rotor bar faults diagnosis. ISA Transactions. 2014; 53 (5): 1639-1649

    Tanaka, K.. Error control of a numerical formula for the Fourier transform by Ooura's continuous Euler transform and fractional FFT. Journal of Computational and Applied Mathematics. 2014; 266: 73-86

    Li, N., Zhou, R., Hu, Q., Liu, X.. Mechanical fault diagnosis based on redundant second generation wavelet packet transform, neighborhood rough set and support vector machine. Mechanical Systems and Signal Processing. 2012; 28: 608-621

    Jena, D. P., Sahoo, S., Panigrahi, S. N.. Gear fault diagnosis using active noise cancellation and adaptive wavelet transform. Measurement. 2014; 47 (1): 356-372

    Wu, Y., Sun, Y., Zhan, L., Ji, Y.. Low mismatch key agreement based on wavelet-transform trend and fuzzy vault in body area network. International Journal of Distributed Sensor Networks. 2013; 2013-16

    Shen, W.-C., Chen, Y.-H., Wu, A.-Y.. Low-complexity sinusoidal-assisted EMD (SAEMD) algorithms for solving mode-mixing problems in HHT. Digital Signal Processing. 2014; 24: 170-186

    Xiong, T., Bao, Y., Hu, Z.. Does restraining end effect matter in EMD-based modeling framework for time series prediction? Some experimental evidences. Neurocomputing. 2014; 123: 174-184

  • Metrics
Share - Bookmark