3/2011 - 3 |
Fault Tolerant Neural Network for ECG Signal Classification SystemsMERAH, M. , OUAMRI, A. , NAIT-ALI, A. , KECHE, M. |
Extra paper information in |
Click to see author's profile in SCOPUS, IEEE Xplore, Web of Science |
Download PDF (1,855 KB) | Citation | Downloads: 1,667 | Views: 5,365 |
Author keywords
fault tolerant, artificial neural networks, hybrid backpropagation algorithms, medical diagnosis
References keywords
neural(19), networks(13), network(5), learning(5), fault(5), systems(4), algorithms(4)
Blue keywords are present in both the references section and the paper title.
About this article
Date of Publication: 2011-08-31
Volume 11, Issue 3, Year 2011, On page(s): 17 - 24
ISSN: 1582-7445, e-ISSN: 1844-7600
Digital Object Identifier: 10.4316/AECE.2011.03003
Web of Science Accession Number: 000296186700003
SCOPUS ID: 80055082608
Abstract
The aim of this paper is to apply a new robust hardware Artificial Neural Network (ANN) for ECG classification systems. This ANN includes a penalization criterion which makes the performances in terms of robustness. Specifically, in this method, the ANN weights are normalized using the auto-prune method. Simulations performed on the MIT - BIH ECG signals, have shown that significant robustness improvements are obtained regarding potential hardware artificial neuron failures. Moreover, we show that the proposed design achieves better generalization performances, compared to the standard back-propagation algorithm. |
References | | | Cited By «-- Click to see who has cited this paper |
[1] I. Splawski, J. Shen, K.W. Timothy, G.M. Vincent, M.H. Lehmann, MT. Keating, "Genomic structure of three long QT syndrome genes," Kvlqt, Herg, and Kcne1. Genomics, No. 50, pp. 86-97, 1998, [CrossRef] [Web of Science Times Cited 197] [SCOPUS Times Cited 225] [2] C. J. James, C. W. Hesse, "Independent component analysis for biomedical signals," Physiol Meas, No. 26, Pp.15-39, 2005, [CrossRef] [Web of Science Times Cited 312] [SCOPUS Times Cited 399] [3] C. Chui, K. Mehrotra, K. M. Chilukuri, R. Sanjay, "Modifying Training Algorithms for Improved Fault Tolerance," IEEE International Conference on Neural Networks, Florida, pp. 333-338, 1994, [CrossRef] [4] A. Hyvarinen, E. Oja, "Independent component analysis: algorithms and applications," Neural Network, No. 13, pp. 411-430, 2000, [CrossRef] [Web of Science Times Cited 5863] [SCOPUS Times Cited 7146] [5] T. Y. Kwok, D. Y. Yeung, "Constructive Algorithms for Structure Learning in Feedforward Neural Networks for Regression Problems," IEEE Trans. Neural Networks, Vol. 8, No. 3, pp. 630-645, May 1997, [CrossRef] [Web of Science Times Cited 349] [SCOPUS Times Cited 417] [6] F. L. Luo, "Applied Neural Networks for Signal Processing," Cambridge Univ. Press, Cambridge, Mass., 1999. [7] C. Campbell, "Constructive learning techniques for designing neural network systems," In CT Leondes, editor, Neural Network Systems Technologies and Applications. Academic Press, 1997. [8] M. L. Nasir, R.I. John, S.C. Bennett, "Selecting the neural network topology for student modelling of prediction of corporate bankruptcy, " Campus-Wide Information Systems, Vol. 18, No. 1, pp. 13 - 22, 2001, [CrossRef] [SCOPUS Times Cited 4] [9] F. BLAYO, "Reseaux de neurones artificiels du laboratoire au marche industriel," SAMOS (Statistiques Appliquees et Modelisation Stochastiques), Universite Paris1, Pantheon Sorbonne 1998. [10] S. John, C. L. Andrew , "Prediction error of a fault tolerant neural network," Neurocomputing, Vol. 72, No.3, pp. 653-658, December 2008, [CrossRef] [Web of Science Times Cited 5] [SCOPUS Times Cited 6] [11] C. S. Lin, I. C. Wu, "Maximizing Fault Tolerance in Multilayer Neural Networks", IEEE International Conference on Neural Networks, Florida, pp. 419-424 , 1994, [CrossRef] [12] T. Kurita, H. Asoh, S. Umeyama, A. Hosomi, "A structural Learning by Adding Independant Noises to Hidden Units", IEEE International Conference in Neural Networks, Florida, pp. 275-278, 1994, [CrossRef] [13] A. S . Weigend, D.E. Rumelhart, A.B. Huberman, "Generalization by Weight-Elimination applied to Currency Exchange Rate Prediction," IEEE International Conference on Neural Networks, Vol. 1, pp. 837-841, 1991, [CrossRef] [14] D. G. Jeong, S.Y. Lee, "Merging back-propagation and Hebbian learning rules for robust classifications," Neural Networks, Vol. 9, pp. 1213-1222, 1996, [CrossRef] [Web of Science Times Cited 30] [SCOPUS Times Cited 33] [15] W. Finnoff, F. Hergert" Improving model selection by non convergent methods, " Neural Networks, Vol. 6, pp. 771-783, 1993, [CrossRef] [Web of Science Times Cited 146] [SCOPUS Times Cited 156] [16] A. Korgh, J.A. Hertz, "A simple weight decay can improve generalization," Advances in neural information processing systems, San Mateo, CA, Morgan Kaumann, Vol. 4, pp. 950 - 957, 1992. [17] Y. LE Cun, JS. Denker, S.A. Solla, "Optimal brain damage," Adv. In Neural Info. Proc. Sys, Morgan Kaufmann, Vol. 2, pp. 598-605, 1990. [18] B. E. Segee, M.J. Carter, "Fault tolerance of pruned multilayer networks," Digest IJCNN, Vol. 2, pp. 447 - 452, 1991, [CrossRef] [19] L. Prechelt, "Connection pruning with static and adaptive pruning schedules," Fakultät für Informatik, Universität Karlsruhe, Germany, 8 Nov. 1995, [CrossRef] [Web of Science Times Cited 24] [SCOPUS Times Cited 28] [20] N. C. Hammadi, I. Hideo, "A Leaning Algorithm for Fault Tolerant Feedforward Neural Networks," Chiba Univesity, Chiba-shi, Japan, pp. 263, 1996. [21] M. Merah, B. Nacredine "Algorithme de retro-propagation du gradient avec Penalisation des poids R.P.G.P. » CNIE, USTO, 15-16 December 2002. [22] S. Y. Jeong, S. Y. Lee, "Adaptive learning algorithms to incorporate additional functional constraints into neural networks," Neurocomputing, Vol. 35, pp. 73-90, 2000, [CrossRef] [Web of Science Times Cited 23] [SCOPUS Times Cited 27] [23] M. Merah, A. Ouamri, "Analyse et traitements de l'ECG pour la conception d'une base d'apprentissage d'un R.N.A," The 3rd International Summer School on Signal Processing and its Applications, Jijel, Algeria, pp. 08-12, July 2006. Web of Science® Citations for all references: 6,949 TCR SCOPUS® Citations for all references: 8,441 TCR Web of Science® Average Citations per reference: 290 ACR SCOPUS® Average Citations per reference: 352 ACR TCR = Total Citations for References / ACR = Average Citations per Reference We introduced in 2010 - for the first time in scientific publishing, the term "References Weight", as a quantitative indication of the quality ... Read more Citations for references updated on 2024-12-20 17:01 in 110 seconds. Note1: Web of Science® is a registered trademark of Clarivate Analytics. Note2: SCOPUS® is a registered trademark of Elsevier B.V. Disclaimer: All queries to the respective databases were made by using the DOI record of every reference (where available). Due to technical problems beyond our control, the information is not always accurate. Please use the CrossRef link to visit the respective publisher site. |
Faculty of Electrical Engineering and Computer Science
Stefan cel Mare University of Suceava, Romania
All rights reserved: Advances in Electrical and Computer Engineering is a registered trademark of the Stefan cel Mare University of Suceava. No part of this publication may be reproduced, stored in a retrieval system, photocopied, recorded or archived, without the written permission from the Editor. When authors submit their papers for publication, they agree that the copyright for their article be transferred to the Faculty of Electrical Engineering and Computer Science, Stefan cel Mare University of Suceava, Romania, if and only if the articles are accepted for publication. The copyright covers the exclusive rights to reproduce and distribute the article, including reprints and translations.
Permission for other use: The copyright owner's consent does not extend to copying for general distribution, for promotion, for creating new works, or for resale. Specific written permission must be obtained from the Editor for such copying. Direct linking to files hosted on this website is strictly prohibited.
Disclaimer: Whilst every effort is made by the publishers and editorial board to see that no inaccurate or misleading data, opinions or statements appear in this journal, they wish to make it clear that all information and opinions formulated in the articles, as well as linguistic accuracy, are the sole responsibility of the author.