|
1. P. Barthelemy, J. Bertolotti, and D. S. Wiersma, “A Levy flight for light,” Nature, vol. 453, no. 7194, pp. 495-498, 2008
|
|
2. R. Bates, O. Blyuss, and A. Zaikin, "Stochastic resonance in an intracellular genetic perceptron," Physical Review E, (online since March 26 2014) (DOI 10.1103/PhysRevE.89.032716)
|
|
3. R. Benzit, A. Sutera, and A. Vulpiani, “The mechanism of stochastic resonance,” Journal of Physics A: Mathematical and General, vol. 8, no. 7, pp. 62-67, 1981
|
|
4. K. Chi, J. Kang, K. Wu, and X. Wang, “Bayesian Parameter Estimation of Weibull Mixtures Using Cuckoo Search,” in 8-th International Conference on Intelligent Networking and Collaborative Systems, pp. 411-414, Ostrava, Czech Republic, September 2016
|
|
5. M. Dorigo, M. Birattari, and T. Stutzle, “Ant colony optimization,” IEEE Computational Intelligence Magazine, vol. 1, no. 4, pp. 28-39, 2006
|
|
6. F. Duan, and B. Xu, “PARAMETER-INDUCED STOCHASTIC RESONANCE AND BASEBAND BINARY PAM SIGNALS TRANSMISSION OVER AN AWGN CHANNEL,” International Journal of Bifurcation and Chaos, vol. 13, no. 2, pp. 411-425, 2003
|
|
7. L. Gammaitoni, P. H?nggi, P. Jung, and F. Marchesoni, “Stochastic resonance,” Review of Modern Physics, vol. 70, no. 1, pp. 223-287, 1998
|
|
8. D. E. Goldberg, and J. H. Holland, “Genetic Algorithms and Machine Learning,” Machine Learning, vol. 3, no. 2-3, pp. 95-99, 1988
|
|
9. D. He, X. Wang, S. Li, J. Lin, and M. Zhao, “Identification of multiple faults in rotating machinery based on minimum entropy deconvolution combined with spectral kurtosis,” Mechanical Systems and Signal Processing, vol. 81, pp. 235-249, 2016
|
|
10. Q. He, J. Wang, Y. Liu, D. Dai, and F. Kong, “Multiscale noise tuning of stochastic resonance for enhanced fault diagnosis in rotating machines,” Mechanical Systems & Signal Processing, vol. 28, no. 2, pp. 443-457, 2012
|
|
11. N. Hu, M. Chen, G. Qin, L. Xia, Z. Pan, and Z. Feng, “Extended stochastic resonance (SR) and its applications in weak mechanical signal processing,” Frontiers of Mechanical Engineering in China, vol. 4, no. 4, pp. 450-461, 2009
|
|
12. Y. Lei, D. Han, J. Lin, and Z. He, “Planetary gearbox fault diagnosis using an adaptive stochastic resonance method,” Mechanical Systems & Signal Processing, vol. 38, no. 1, pp. 113-124, 2013
|
|
13. Y. Lei, Z. Qiao, X. Xu, J. Lin, and S. Niu, “An underdamped stochastic resonance method with stable-state matching for incipient fault diagnosis of rolling element bearings,” Mechanical Systems & Signal Processing, vol. 94, pp. 148-164, 2017
|
|
14. Y. G. Leng, Y. S. Leng, T. Y. Wang, and Y. Guo, “Numerical analysis and engineering application of large parameter stochastic resonance,” Journal of Sound & Vibration, vol. 292, no. 3-5, pp. 788-801, 2006
|
|
15. J. Li, X. Chen, and Z. He, “Adaptive stochastic resonance method for impact signal detection based on sliding window,” Mechanical Systems & Signal Processing, vol. 36, no. 2, pp. 240-255, 2013
|
|
16. M. Lin, and Y. M. Huang, “Modulation and demodulation for detecting weak periodic signal of stochastic resonance,” Acta Physica Sinica, vol. 55, no. 7, pp. 3277-3283, 2006
|
|
17. J. J. Liu, Y. G. Leng, Z. H. Lai, and D. Tan, "Stochastic resonance based on frequency information exchange," Acta Physica Sinica, (online since November 20 2016) (DOI 10.7498/aps.65.220501)
|
|
18. S. Lu, Q. He, H. Zhang, and F. Kong, “Rotating machine fault diagnosis through enhanced stochastic resonance by full-wave signal construction,” Mechanical Systems & Signal Processing, no. 85, pp. 82-97, 2016
|
|
19. S. ?ukasik, and S. ?ak, “Firefly Algorithm for Continuous Constrained Optimization Tasks,” in International Conference on Computational Collective Intelligence, pp. 97-106, Wroclaw, Poland, October 2009
|
|
20. M. Malik, F. Ahsan, and S. Mohsin, “Adaptive image denoising using cuckoo algorithm,” soft computing, vol. 20, no. 3, pp. 925-938, 2016
|
|
21. B. Mcnamara, and K. Wiesenfeld, “Theory of stochastic resonance,” Physical Review A, vol. 39, no. 9, pp. 4854-4869, 1989
|
|
22. M. K. Naik, and R. Panda, “A novel adaptive cuckoo search algorithm for intrinsic discriminant analysis based face recognition,” Applied Soft Computing, vol. 38, pp. 661-675, 2016
|
|
23. A. Ouaarab, B. Ahiod, and X. Yang, “Discrete cuckoo search algorithm for the travelling salesman problem,” Neural Computing and Applications, vol. 24, pp. 1659-1669, 2014
|
|
24. R. Poli, J. Kennedy, and T. Blackwell, “Particle swarm optimization An overview,” Swarm Intelligence, vol. 1, no. 1, pp. 33-57, 2007
|
|
25. A. S. Raj, and N. Murali, “Morlet Wavelet UDWT Denoising and EMD based Bearing Fault Diagnosis,” Electronics, vol. 17, no. 1, pp. 1-8, 2013
|
|
26. R. B. Randall, and J. Antoni, “Rolling element bearing diagnostics—A tutorial,” Mechanical Systems and Signal Processing, vol. 25, no. 2, pp. 485-520, 2011
|
|
27. N. Sawalhi, R. B. Randall, and H. Endo, “The enhancement of fault detection and diagnosis in rolling element bearings using minimum entropy deconvolution combined with spectral kurtosis,” Mechanical Systems & Signal Processing, vol. 21, no. 6, pp. 2616-2633, 2007
|
|
28. P. Shi, X. Ding, and D. Han, “Study on multi-frequency weak signal detection method based on stochastic resonance tuning by multi-scale noise,” Measurement, vol. 47, pp. 540-546, 2014
|
|
29. J. Tan, X. Chen, J. Wang, H. Chen, H. Cao, Y. Zi, and Z. He, “Study of frequency-shifted and re-scaling stochastic resonance and its application to fault diagnosis,” Mechanical Systems and Signal Processing, vol. 23, no. 3, pp. 811-822, 2009
|
|
30. J. Wang, Q. He, and F. Kong, “Adaptive Multiscale Noise Tuning Stochastic Resonance for Health Diagnosis of Rolling Element Bearings,” IEEE Transactions on Instrumentation & Measurement, vol. 64, no. 2, pp. 564-577, 2015
|
|
31. X. Yang, “Nature-Inspired Metaheuristic Algorithms Second Edition,” Luniver Press, London, 2010
|
|
32. X. Yang, and S. Deb, “Cuckoo Search via Lévy flights,” in World Congress on Nature and Biologically Inspired Computing, pp. 210-214, Coimbatore, India, December 2009
|
|
33. X. Yang, and S. Deb, “Multiobjective cuckoo search for design optimization,” Computers & Operations Research, vol. 40, no. 6, pp. 1616-1624, 2013
|
|
34. Y. Yang, Z. P. Jiang, B. Xu, and D. W. Repperger, “An investigation of two-dimensional parameter-induced stochastic resonance and applications in nonlinear image processing,” Journal of Physics A, vol. 42, no. 14, pp. 145207, 2009
|
|
35. X. Zhang, N. Q. Hu, Z. Cheng, and L. Hu, “Enhanced Detection of Rolling Element Bearing Fault Based on Stochastic Resonance,” Chinese Journal of Mechanical Engineering, vol. 25, no. 6, pp. 1287-1297, 2012
|
|
36. X. Zhang, J. Kang, J. Zhao, and H. Teng, “Rolling element bearings fault diagnosis based on correlated kurtosis kurtogram,” Journal of Vibroengineering, vol. 17, no. 6, pp. 3023-3034, 2015
|
|
37. X. Zhang, J. Kang, L. Xiao, J. Zhao, and H. Teng, “A New Improved Kurtogram and Its Application to Bearing Fault Diagnosis,” Shock & Vibration, vol. 2015, pp. 1-22, 2015
|
|
38. X. H. Zhang, J. S. Kang, L. S. Hao, L. Y. Cai, and J. M. Zhao, “Bearing fault diagnosis and degradation analysis based on improved empirical mode decomposition and maximum correlated kurtosis deconvolution,” Journal of Vibroengineering, vol. 17, no. 1, pp. 243-260, 2015
|
|
39. Z. H. Zhang, D. Wang, T. Y. Wang, J. Z. Lin, and Y. X. Jiang, “Self-adaptive step-changed stochastic resonance using particle swarm optimization,” Journal of Vibration & Shock, vol. 32, no. 19, pp. 125-130, 2013
|