Discrimination of Seismic Signals Using Artificial Neural Networks
Commenced in January 2007
Frequency: Monthly
Edition: International
Paper Count: 32799
Discrimination of Seismic Signals Using Artificial Neural Networks

Authors: Mohammed Benbrahim, Adil Daoudi, Khalid Benjelloun, Aomar Ibenbrahim

Abstract:

The automatic discrimination of seismic signals is an important practical goal for earth-science observatories due to the large amount of information that they receive continuously. An essential discrimination task is to allocate the incoming signal to a group associated with the kind of physical phenomena producing it. In this paper, two classes of seismic signals recorded routinely in geophysical laboratory of the National Center for Scientific and Technical Research in Morocco are considered. They correspond to signals associated to local earthquakes and chemical explosions. The approach adopted for the development of an automatic discrimination system is a modular system composed by three blocs: 1) Representation, 2) Dimensionality reduction and 3) Classification. The originality of our work consists in the use of a new wavelet called "modified Mexican hat wavelet" in the representation stage. For the dimensionality reduction, we propose a new algorithm based on the random projection and the principal component analysis.

Keywords: Seismic signals, Wavelets, Dimensionality reduction, Artificial neural networks, Classification.

Digital Object Identifier (DOI): doi.org/10.5281/zenodo.1075000

Procedia APA BibTeX Chicago EndNote Harvard JSON MLA RIS XML ISO 690 PDF Downloads 1584

References:


[1] C. Chiaruttini, V. Roberto and F. Saitta, "Artificial intelligences in seismic signal interpretation" Geophys. J. Int, 98, pp. 223-232, 1989.
[2] M. Allameh Zadeh and P. Nassery, "Application of quadratic neural networks to seismic signal classification" Phys. Earth. Planetary Interiors, 113, pp. 103-110, 1999.
[3] E. Del Pezzo, A. Esposito, F. Giudicepietro, M. Marinaro, M. Martini and S. Scarpetta, "Discrimination of earthquakes and underwater explosions using neural networks" Bull. Seism. Soc. Am, 93, pp. 215-223, 2003.
[4] F. Hlawasch and G. F. Boudreaux-Bartels, "Linear and quadratic timefrequency signal representations" IEEE Sig. Proc. Mag, 9, pp. 21-67, 1992.
[5] A. Papandreou-Suppappola, F. Hlawasch and G. Boudreaux-Bartels, "Quadratic time-frequency representations with scale covariance and generalized time-shift covariance: a unified framework for the affine, hyperbolic and power classes" Digital signal Processing, 8, pp.3-48, 1998.
[6] L. Cohen, "Generalized phase-space distribution functions" J. Math. Phys, 7, pp. 781-786, 1966.
[7] L. Cohen, "Time-frequency analysis" Prentice Hall, 1995.
[8] O. Rioul and P. Flandrin, "Time-scale energy distributions : a general class extending wavelet transforms" IEEE Trans on Signal Processing, 40, pp. 1746-1757, 1992.
[9] P. Flandrin, "Temps-fréquence", Academic Press, 1998.
[10] F. Hlawasch, A. F. Papandreou-Suppappola and G. Boudreaux-Bartels, "The power classes of quadratic time-frequency representations : a generalization of the hyperbolic and affine classes" In 27th Asilomar Conf on Signals, Systems and computers, Pacific Grove, CA, 1265-1270, 1993.
[11] F. Hlawasch, A. F. Papandreou-Suppappola and G. Boudreaux-Bartels, "The hyperbolic class of quadratic time-frequency representations. Part II: Subclasses, intersection with affine and power classes, regularity unitarity" IEEE Trans on Signal Processing, 45, pp. 303-315, 1997.
[12] A. Papandreou-Suppappola, F. Hlawasch and G. Boudreaux-Bartels, "Power class time-frequency representations : interference geometry, smoothing and implementation" In IEEE Symposium on Time-Frequency and Time-Scale Analysis, Paris, pp.193-196, 1996.
[13] I. Daubechies, "Ten lectures on wavelets", SIAM, Philadelphia, Pa, 1992.
[14] C. Torrence and G. P. Compo, "A practical guide to wavelet analysis" Bull. Amer. Meteor. Soc, 79, pp. 61-78, 1998.
[15] M. Benbrahim, K. Benjelloun and A. Ibenbrahim, "Discrimination des signaux sismiques par réseaux de neurones artificiels" In Proc of 3èmes journées nationales sur les systèmes intelligents: théorie et applications, Rabat, Morocco, pp. 62-66; 2004.
[16] R. Bellman, "Adaptive control processes: A guided tour" Princeton University Press, Princeton, 1961.
[17] W.B. Johnson and J. Lindenstrauss, "Extensions of Lipshitz mapping into Hilbert space" In Conference in modern analysis and probability, volume 26 of Contemporary Mathematics, Amer. Math. Soc, pp. 189-206, 1984.
[18] I. T. Jolliffe, "Principal component analysis", Springer-Verlag, 1986.
[19] J. E. Jackson, "A user's guide to principal components", John Wiley, New York, 1991.