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Neural Networking of Infilled RC low-Rise Service Buildings

Article

Last updated: 13 Dec 2022

Subjects

-

Tags

Artificial Neural Networks
ANSYS
RC Frames
School buildings
Neural Networking of Infilled RC low-Rise Service Buildings
ICASGE'23

Abstract

Artificial neural networks (ANNs) are one of the most research areas that attracts the attention of experts of various scientific areas. Recent research activities regarding ANNs indicated that this method is a powerful tool to solve complicated problems in engineering fields. In this paper, ANNs were utilized to predict the lateral behavior of school buildings in Egypt. For this, reinforced concrete (RC) frames representing common school buildings with different characteristics were analyzed using nonlinear dynamic pushover analysis to obtain their capacity curves, failure loads and displacements. Parameters included number of stories, location and dimensions of the frames, distribution of masonry infill panels, and properties of concrete and reinforcement. Obtained data were used to train several ANN models with different topologies and learning algorithms. The most representative ANN was used to obtain more insight into the behavior of school building frames with different parameters.

Keywords

Artificial Neural Networks, ANSYS, RC Frames, School buildings

Authors

First Name

K.

Last Name

ABOU EL-FTOOH

Affiliation

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Orcid

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First Name

A.

Last Name

SELEEMAH

Affiliation

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Email

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City

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Orcid

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First Name

A.

Last Name

ATTA

Affiliation

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Email

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Orcid

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First Name

S.

Last Name

TAHER

Affiliation

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Email

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Volume

ICASGE2015

Issue Date

1 Jan 2015

Publish Date

29 May 2022

Link

https://icasge.conferences.ekb.eg/article_1391.html

Order

120

Publication Type

Conference

Publication Title

ICASGE'23

Publication Link

https://icasge.conferences.ekb.eg/

Details

Type

Article

Locale

en

Created At

13 Dec 2022