Efficient Structural Design of a Prefab Concrete Connection by Using Artificial Neural Networks
In the built environment, one of the main concerns during the design stage is the selection of adequate structural materials and elements. A rational and sensible design of both materials and elements results not only in economic benefits and computing time reduction, but also in minimizing the envi...
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doaj-aa43d9d24e134caa8fa3693e92dcf83e2020-11-25T03:57:21ZengMDPI AGSustainability2071-10502020-10-01128226822610.3390/su12198226Efficient Structural Design of a Prefab Concrete Connection by Using Artificial Neural NetworksJorge Navarro-Rubio0Paloma Pineda1Roberto Navarro-Rubio2NR Proyectos—Engineering and Architectural Consulting, Calle Constantino nº 49 1º I, 04700 Almería, SpainDepartment of Building Structures and Geotechnical Engineering, Universidad de Sevilla, Avda, Reina Mercedes, 2, 41012 Seville, SpainNR Proyectos—Engineering and Architectural Consulting, Calle Constantino nº 49 1º I, 04700 Almería, SpainIn the built environment, one of the main concerns during the design stage is the selection of adequate structural materials and elements. A rational and sensible design of both materials and elements results not only in economic benefits and computing time reduction, but also in minimizing the environmental impact. Nowadays, Artificial Neural Networks (ANNs) are showing their potential as design tools. In this research, ANNs are used in order to foster the implementation of efficient tools to be used during the early stages of structural design. The proposed networks are applied to a dry precast concrete connection, which has been modelled by means of the Finite Element Method (FEM). The parameters are: strength of concrete and screws, diameter of screws, plate thickness, and the posttensioning load. The ANN input data are the parameters and nodal stresses obtained from the FEM models. A multilayer perceptron combined with a backpropagation algorithm is used in the ANN architecture, and a hyperbolic tangent function is applied as an activation function. Comparing the obtained predicted stresses to those of the FEM analyses, the difference is less than 9.16%. Those results validate their use as an efficient structural design tool. The main advantage of the proposed ANNs is that they can be easily and effectively adapted to different connection parameters. In addition, their use could be applied both in precast or cast in situ concrete connection design.https://www.mdpi.com/2071-1050/12/19/8226efficient structural designartificial neural networksdry precast concrete connectionartificial intelligencesustainable built environment |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Jorge Navarro-Rubio Paloma Pineda Roberto Navarro-Rubio |
spellingShingle |
Jorge Navarro-Rubio Paloma Pineda Roberto Navarro-Rubio Efficient Structural Design of a Prefab Concrete Connection by Using Artificial Neural Networks Sustainability efficient structural design artificial neural networks dry precast concrete connection artificial intelligence sustainable built environment |
author_facet |
Jorge Navarro-Rubio Paloma Pineda Roberto Navarro-Rubio |
author_sort |
Jorge Navarro-Rubio |
title |
Efficient Structural Design of a Prefab Concrete Connection by Using Artificial Neural Networks |
title_short |
Efficient Structural Design of a Prefab Concrete Connection by Using Artificial Neural Networks |
title_full |
Efficient Structural Design of a Prefab Concrete Connection by Using Artificial Neural Networks |
title_fullStr |
Efficient Structural Design of a Prefab Concrete Connection by Using Artificial Neural Networks |
title_full_unstemmed |
Efficient Structural Design of a Prefab Concrete Connection by Using Artificial Neural Networks |
title_sort |
efficient structural design of a prefab concrete connection by using artificial neural networks |
publisher |
MDPI AG |
series |
Sustainability |
issn |
2071-1050 |
publishDate |
2020-10-01 |
description |
In the built environment, one of the main concerns during the design stage is the selection of adequate structural materials and elements. A rational and sensible design of both materials and elements results not only in economic benefits and computing time reduction, but also in minimizing the environmental impact. Nowadays, Artificial Neural Networks (ANNs) are showing their potential as design tools. In this research, ANNs are used in order to foster the implementation of efficient tools to be used during the early stages of structural design. The proposed networks are applied to a dry precast concrete connection, which has been modelled by means of the Finite Element Method (FEM). The parameters are: strength of concrete and screws, diameter of screws, plate thickness, and the posttensioning load. The ANN input data are the parameters and nodal stresses obtained from the FEM models. A multilayer perceptron combined with a backpropagation algorithm is used in the ANN architecture, and a hyperbolic tangent function is applied as an activation function. Comparing the obtained predicted stresses to those of the FEM analyses, the difference is less than 9.16%. Those results validate their use as an efficient structural design tool. The main advantage of the proposed ANNs is that they can be easily and effectively adapted to different connection parameters. In addition, their use could be applied both in precast or cast in situ concrete connection design. |
topic |
efficient structural design artificial neural networks dry precast concrete connection artificial intelligence sustainable built environment |
url |
https://www.mdpi.com/2071-1050/12/19/8226 |
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