An Enhanced Wavelet Neural Network Model For Epileptic Seizure Detection And Prediction

Epilepsi merupakan suatu penyakit neurologi yang sangat lazim dan ditakuti orang ramai. Banyak kajian telah dibuat untuk membangunkan pengelas automatik yang dapat memberikan ketepatan yang lebih tinggi. Pengelas automatik ini dapat membantu doktor dalam mengenali pelbagai segmen isyarat electroe...

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Main Author: Lai , Kee Huong
Format: Thesis
Language:English
Published: 2016
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Online Access:http://eprints.usm.my/31881/1/LAI_KEE_HUONG_24%28NN%29.pdf
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spelling my-usm-ep.318812019-04-12T05:25:23Z An Enhanced Wavelet Neural Network Model For Epileptic Seizure Detection And Prediction 2016-03 Lai , Kee Huong QA1 Mathematics (General) Epilepsi merupakan suatu penyakit neurologi yang sangat lazim dan ditakuti orang ramai. Banyak kajian telah dibuat untuk membangunkan pengelas automatik yang dapat memberikan ketepatan yang lebih tinggi. Pengelas automatik ini dapat membantu doktor dalam mengenali pelbagai segmen isyarat electroencephalography (EEG) yang berbeza. Dalam kerja penyelidikan ini, suatu model rangkaian neural wavelet (RNW) telah dicadangkan bagi tujuan pengesanan dan ramalan serangan epilepsi. Arkitektur dan kon�gurasi RNW dapat ditambah baik menggunakan pendekatan metaheuristik. Khususnya, algoritma carian harmoni (CH) digunakan dan diterapkan dalam proses pembelajaran RNW. Tesis ini mengandungi tiga sumbangan utama. Pertama, algoritma CH digunakan dalam proses pemilihan �tur. Firstly, the HS algorithm is used in the feature selection stage. The HS algorithm, which is originally used for optimization problems involving real numbers, is modi�ed and employed in the task of feature selection, which involves binary values. Epilepsy is a very common and much-feared neurological disorder. Much research has been done in developing better automated classi�ers with higher accuracy that can help clinicians identify the di�erent segments of electroencephalography (EEG) signals. In this research work, an enhanced wavelet neural network (WNN) model is proposed for the purpose of epileptic seizure detection and prediction. The architecture and con�guration of WNNs can be further enhanced using metaheuristic strategies. Speci�cally, the harmony search (HS) algorithm is employed and incorporated in the learning of WNNs. The contribution of this thesis is threefold. Firstly, the HS algorithm is used in the feature selection stage. The HS algorithm, which is originally used for optimization problems involving real numbers, is modi�ed and employed in the task of feature selection, which involves binary values. 2016-03 Thesis http://eprints.usm.my/31881/ http://eprints.usm.my/31881/1/LAI_KEE_HUONG_24%28NN%29.pdf application/pdf en public phd doctoral Universiti Sains Malaysia Pusat Pengajian Sains Matematik (School of Mathematical Sciences)
institution Universiti Sains Malaysia
collection USM Institutional Repository
language English
topic QA1 Mathematics (General)
spellingShingle QA1 Mathematics (General)
Lai , Kee Huong
An Enhanced Wavelet Neural Network Model For Epileptic Seizure Detection And Prediction
description Epilepsi merupakan suatu penyakit neurologi yang sangat lazim dan ditakuti orang ramai. Banyak kajian telah dibuat untuk membangunkan pengelas automatik yang dapat memberikan ketepatan yang lebih tinggi. Pengelas automatik ini dapat membantu doktor dalam mengenali pelbagai segmen isyarat electroencephalography (EEG) yang berbeza. Dalam kerja penyelidikan ini, suatu model rangkaian neural wavelet (RNW) telah dicadangkan bagi tujuan pengesanan dan ramalan serangan epilepsi. Arkitektur dan kon�gurasi RNW dapat ditambah baik menggunakan pendekatan metaheuristik. Khususnya, algoritma carian harmoni (CH) digunakan dan diterapkan dalam proses pembelajaran RNW. Tesis ini mengandungi tiga sumbangan utama. Pertama, algoritma CH digunakan dalam proses pemilihan �tur. Firstly, the HS algorithm is used in the feature selection stage. The HS algorithm, which is originally used for optimization problems involving real numbers, is modi�ed and employed in the task of feature selection, which involves binary values. Epilepsy is a very common and much-feared neurological disorder. Much research has been done in developing better automated classi�ers with higher accuracy that can help clinicians identify the di�erent segments of electroencephalography (EEG) signals. In this research work, an enhanced wavelet neural network (WNN) model is proposed for the purpose of epileptic seizure detection and prediction. The architecture and con�guration of WNNs can be further enhanced using metaheuristic strategies. Speci�cally, the harmony search (HS) algorithm is employed and incorporated in the learning of WNNs. The contribution of this thesis is threefold. Firstly, the HS algorithm is used in the feature selection stage. The HS algorithm, which is originally used for optimization problems involving real numbers, is modi�ed and employed in the task of feature selection, which involves binary values.
format Thesis
qualification_name Doctor of Philosophy (PhD.)
qualification_level Doctorate
author Lai , Kee Huong
author_facet Lai , Kee Huong
author_sort Lai , Kee Huong
title An Enhanced Wavelet Neural Network Model For Epileptic Seizure Detection And Prediction
title_short An Enhanced Wavelet Neural Network Model For Epileptic Seizure Detection And Prediction
title_full An Enhanced Wavelet Neural Network Model For Epileptic Seizure Detection And Prediction
title_fullStr An Enhanced Wavelet Neural Network Model For Epileptic Seizure Detection And Prediction
title_full_unstemmed An Enhanced Wavelet Neural Network Model For Epileptic Seizure Detection And Prediction
title_sort enhanced wavelet neural network model for epileptic seizure detection and prediction
granting_institution Universiti Sains Malaysia
granting_department Pusat Pengajian Sains Matematik (School of Mathematical Sciences)
publishDate 2016
url http://eprints.usm.my/31881/1/LAI_KEE_HUONG_24%28NN%29.pdf
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