M. Kutas and S. A. Hillyard, Reading senseless sentences: brain potentials reflect semantic incongruity, Science, vol.207, pp.203-205, 1980.

N. Mountaj, R. E. Yagoubi, M. Himmi, F. L. Ghazal, M. Besson et al., Vowelling and semantic priming effects in Arabic, International Journal of Psychophysiology, vol.95, issue.1, pp.46-55, 2015.

. Giuseppinalnuso, Wavelet-ICA methodology for efficient artifact removal form Electroencephalographic recordings, International Joint Conference on Neural Networks, 2007.

D. Kang and L. Zhizeng, A Method of Denoising Multi-channel EEG Signals Fast Based on PCA and DEBSS Algorithm, Computer Science and Electronics Engineering (ICCSEE), vol.3, pp.23-25, 2012.

A. Correa, E. Laciar, H. D. Patiño, and H. D. Valentinuzzi, Artifact removal from EEG signals using adaptive filters, p.16

, Argentine Bioengineering Congress and the 5th Conference of Clinical Engineering, 2007.

G. Kaushik, H. Sinha, and L. Dewan, Biomedical signals Analysis by Dwt Signal Denoising with Neural Networks, International Journal of Recent Trends in Electrical & Electronics Engg, 2013.

M. Balamareeswaran and D. Ebenezer, «Denoising of EEG signals using Discrete Wavelet Transform based Scalar Quantization, Biomedical & Pharmacology Journal, vol.8, issue.1, pp.399-406, 2015.

R. Princy, P. Thamarai, and B. Karthik, Denoising EEG signal wavelet transform" IJARCET, Vols. 1 sur 21, vol.3, 2015.

H. Jasper, The ten-twenty electrode system of the International Federation, Electroenceph. clin. Neurophysiol, vol.10, pp.371-375, 1958.

N. Fathima and K. Umarani, Reduction of Noise in EEG Signal using Faraday's Cage and Wavelets Transform: A comparative Study, International Journal of Engineering Science and Computing, 2016.

S. P. Suhas and K. P. , Quality advancement of EEG by wavelet denoising for biomedical analysis, International Conference on Communication, Information & Computing Technology (ICCICT, 2012.

P. Addison, The Illustrated Wavelet Transform Handbook: Introductory Theory and Applications in Science, Engineering, Medicine and Finance, 2002.

H. Li, H. Hu, T. Kobayashi, T. Saga, and N. Taniguchi, Wavelet Multi-Resolution Analysis of Dual-plane Stereoscopic PIV Measurement Results in a Lobed Jet, 4th International Symposium on Particle Image Velocimetry, 2001.

A. Drissi, E. Maliani, M. El-hassouni, Y. Berthoumieu, and D. , multi-model approach for multi component texture classification, ICISP'12 Proceedings of the 5th international conference on Image and Signal Processing, pp.36-44, 2012.

M. Aminghafari, N. Cheze, and J. Poggi, Multivariate denoising using wavelets and principal component analysis, Computational Statistics & Data Analysis, vol.50, pp.2381-2398, 2006.
URL : https://hal.archives-ouvertes.fr/hal-01633702

M. Vetterli, Wavelets and Filter Banks: Theory and Design, 1990.

I. Daubechies, Ten lectures on wavelets" SIAM, CBMS-NSF, 1992.

S. Mallat, A wavelet tour of signal processing, 1999.

M. S. Chavan, N. Mastorakis, M. N. Chavan, and M. Gaikwad, Implementation of symlet wavelets to removal of gaussian additive noise from speech signal" Recent Researches in Communications, Automation, Astronomy and Nuclear Physics

Z. G. Kar?ila?tirmasi, Comparison of wavelet families for mental task classification, The Journal Of Neurobehavioral Sciences, vol.3, p.112, 2016.

A. Sundar, A Comprehensive Assessment of the Performance of Modern Algorithms for Enhancement of Digital Volume Pulse Signals, International Journal of Pharma Medicine and Biological Sciences, vol.5, p.11, 2016.

A. Dixit and S. Majumdar, Comparative analysis of coiflet and daubechies wavelets using global threshold for image de-noising, International Journal of Advances in Engineering & Technology, 2013.

P. Khatwani and A. Tiwari, Removal of Noise from EEG Signals Using Cascaded Filter -Wavelet Transforms Method, International Journal of Advanced Researche in Electrical, vol.12, 2014.

C. Yongjian, Neural Network Based EEG Denoising, chez 30th annual International IEEE EMBS Conference Vancouver, 2008.

. Lanlanyu, EEG De-Noising Based on Wavelet Transformation, 3rd International Conference, pp.11-13, 2009.

J. Raz, L. Dickerson, and B. Turetsky, A wavelet packet model of evoked potentials, Brain and Language, 1999.

T. Kalayci, O. Ozdamar, and N. Erdol, The use of wavelet transform as a preprocessor for the neural network detection of EEG spikes, Proceedings of the IEEE Southeastcon, vol.94, pp.1-3, 1994.

S. Schiff, J. Heller, S. L. Weinstein, and J. Milton, Wavelet transforms and surrogatedata for electroencephalographic spike and seizure detection, Optical Engineering, vol.33, pp.2162-2169, 1994.

Z. W. Tang and N. Ishii, The recognition system with two channels at different resolu-tion for detecting spike in Human's EEG, IEICE Transactions on Information and Sys-tems, issue.3, pp.377-387, 1993.

T. Kristjansson and J. Hershey, High Resolution Signal Reconstruction, 2003.

F. R. Drissi, Traitement Numérique du Potentiel Evoqué Visuel par la Méthode des Ondelettes : Application au cas de la Sclérose en Plaques » in International Wavelets Conference "Wavelets and Multiscale Methods, 1998.

R. M. Drissi, Wavelet Transform analysis of Visual Evoked Potentials: Some preliminary results" ITBM-RBM, pp.22-91, 2000.

F. R. Drissi, Analyse du Potentiel Evoqué Visuel par la Méthode des ondelettes: Application au PEV Masqué par l'EEG,» in International Wavelets Conférence "Wavelets and Multiscale, 1998.

R. M. Rao and A. S. Bopardikar, Wavelet Transforms, 1998.

S. J. Schiff, Resolving time-series structure with a controlled wavelet transform, Optical Engineering, issue.11, pp.2492-2495

M. Uzunoglu and M. S. Alam, Dynamic modeling, design, and simulation of a combined PEM fuel cell and ultracapacitor system for stand-alone residential applications, IEEE Trans. Ener. Conv, vol.21, issue.3, pp.767-775, 2006.

, Conference Papers

S. Mumtaz and L. Khan, Performance of Grid-Integrated Photovoltaic/Fuel Cell/ Electrolyzer/Battery Hybrid Power System, 2nd International Conference on Power Generation Systems and Renewable Energy Technologies, 2015.

H. Lihua, Analysis of Fuel Cell Generation System Application, 2005.

X. Li, Principles of Fuel Cells, 2006.

M. H. Nehrir and C. Wang, Modeling and Control of Fuel Cells: Distributed Generation Applications, 2009.