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123574

Learning of Artificial Neural Networks by Genetic Algorithms.

Article

Last updated: 22 Jan 2023

Subjects

-

Tags

Electrical Engineering

Abstract

Learning and evolution are two fundamental forms of artificial intelligence. There has been a great interest in combining learning and evolution with artificial neural networks (ANNs) in recent years. The training problem for feed forward neural networks is a nonlinear parameter estimation that can be solved by a variety of optimization techniques. Many researches in the literature on neural networks has focused on variants of gradient descent. The training of neural networks using such techniques is known to be a slow process, with more sophisticated problems not always performing significantly better 
In this paper a new proposed algorithm to learn the neural networks is introduced. This algorithm implements the effectiveness of the genetic evolution techniques to adjust the weights values of the feed forward neural networks. Simulation examples of the proposed algorithm produce optimal or suboptimal solutions in a small computation times. 

DOI

10.21608/bfemu.2020.123574

Keywords

Artificial Neural Networks, Evolutionary computation, Genetic Algorithms, fitness function

Authors

First Name

Jamal Abdul Fatah

Last Name

Azzam

MiddleName

M.

Affiliation

Department of Electrical Engineering, Faculty of Engineering, Mansoura University, Mansoura, Egypt

Email

-

City

Mansoura

Orcid

-

Volume

35

Article Issue

1

Related Issue

17860

Issue Date

2010-03-01

Receive Date

2010-01-11

Publish Date

2020-11-17

Page Start

21

Page End

33

Print ISSN

1110-0923

Online ISSN

2735-4202

Link

https://bfemu.journals.ekb.eg/article_123574.html

Detail API

https://bfemu.journals.ekb.eg/service?article_code=123574

Order

7

Type

Research Studies

Type Code

1,205

Publication Type

Journal

Publication Title

MEJ. Mansoura Engineering Journal

Publication Link

https://bfemu.journals.ekb.eg/

MainTitle

-

Details

Type

Article

Created At

22 Jan 2023