A View of Artificial Neural Network Models in Different Application Areas

Neural network is a web of million numbers of inter-connected neurons which executes parallel processing. An Artificial neural network is a nonlinear mapping structure; an information processing pattern is stimulated by the approach as biological nervous system (brain) process the information. It is...

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Main Authors: ArulRaj Kumaravel, Karthikeyan Muthu, Narmatha Deenadayalan
Format: Article
Language:English
Published: EDP Sciences 2021-01-01
Series:E3S Web of Conferences
Subjects:
Online Access:https://www.e3s-conferences.org/articles/e3sconf/pdf/2021/63/e3sconf_icpeam2020_03001.pdf
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spelling doaj-496d5af56e8e406996c7bffc6c6cf88a2021-07-07T11:44:07ZengEDP SciencesE3S Web of Conferences2267-12422021-01-012870300110.1051/e3sconf/202128703001e3sconf_icpeam2020_03001A View of Artificial Neural Network Models in Different Application AreasArulRaj Kumaravel0Karthikeyan Muthu1Narmatha Deenadayalan2Department of Mechanical Engineering, Einstein College of EngineeringDepartment of Mechanical Engineering, Raja Rajeshwari College of EngineeringDepartment of Electronics and Communication Engineering, Einstein College of EngineeringNeural network is a web of million numbers of inter-connected neurons which executes parallel processing. An Artificial neural network is a nonlinear mapping structure; an information processing pattern is stimulated by the approach as biological nervous system (brain) process the information. It is used as a powerful tool for modeling the data in the application domains where incomplete understanding of the data relationship to be solved with the readily available trained data. The basic element for this processing pattern is the structure of the data which is the collection of densely interconnected neurons to elucidate the problems. A prominent part of these network is their adaptive nature to “learn by example” just like human substitutes “programming” in resolving the problems. Through learning process, neural net is designed for data classification and prediction where statistical techniques and regression model have been employed. This report is an overview of artificial neural networks in different application areas and it also illustrate the architecture structure formed for the applications. It also provides information about the training algorithm used for certain application.https://www.e3s-conferences.org/articles/e3sconf/pdf/2021/63/e3sconf_icpeam2020_03001.pdfartificial neural network and applicationsdata classification and prediction
collection DOAJ
language English
format Article
sources DOAJ
author ArulRaj Kumaravel
Karthikeyan Muthu
Narmatha Deenadayalan
spellingShingle ArulRaj Kumaravel
Karthikeyan Muthu
Narmatha Deenadayalan
A View of Artificial Neural Network Models in Different Application Areas
E3S Web of Conferences
artificial neural network and applications
data classification and prediction
author_facet ArulRaj Kumaravel
Karthikeyan Muthu
Narmatha Deenadayalan
author_sort ArulRaj Kumaravel
title A View of Artificial Neural Network Models in Different Application Areas
title_short A View of Artificial Neural Network Models in Different Application Areas
title_full A View of Artificial Neural Network Models in Different Application Areas
title_fullStr A View of Artificial Neural Network Models in Different Application Areas
title_full_unstemmed A View of Artificial Neural Network Models in Different Application Areas
title_sort view of artificial neural network models in different application areas
publisher EDP Sciences
series E3S Web of Conferences
issn 2267-1242
publishDate 2021-01-01
description Neural network is a web of million numbers of inter-connected neurons which executes parallel processing. An Artificial neural network is a nonlinear mapping structure; an information processing pattern is stimulated by the approach as biological nervous system (brain) process the information. It is used as a powerful tool for modeling the data in the application domains where incomplete understanding of the data relationship to be solved with the readily available trained data. The basic element for this processing pattern is the structure of the data which is the collection of densely interconnected neurons to elucidate the problems. A prominent part of these network is their adaptive nature to “learn by example” just like human substitutes “programming” in resolving the problems. Through learning process, neural net is designed for data classification and prediction where statistical techniques and regression model have been employed. This report is an overview of artificial neural networks in different application areas and it also illustrate the architecture structure formed for the applications. It also provides information about the training algorithm used for certain application.
topic artificial neural network and applications
data classification and prediction
url https://www.e3s-conferences.org/articles/e3sconf/pdf/2021/63/e3sconf_icpeam2020_03001.pdf
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