info:eu-repo/semantics/article
Structural design of confined masonry buildings using artificial neural networks
Fecha
2020-09-30Registro en:
10.1109/CONIITI51147.2020.9240404
2020 Congreso Internacional de Innovacion y Tendencias en Ingenieria, CONIITI 2020 - Conference Proceedings
2-s2.0-85096593247
SCOPUS_ID:85096593247
0000 0001 2196 144X
Autor
Sicha Pillaca, Juan Carlos
Molina Ramirez, Alexander
Vasquez, Victor Arana
Institución
Resumen
The aim of this article is to use artificial neural networks (ANN) to perform the structural design of confined masonry buildings. ANN is easy to operate and allows to reduce the time and cost of seismic designs. To generate the artificial neural network, training models (traditional confined masonry designs) are used to identify the input and output parameters. From this, the final architecture and activation functions are defined for each layer of the ANN. Finally, ANN training is carried out using the backpropagation algorithm to obtain the matrix of weights and thresholds that allow the network to operate and provide preliminary structural designs with a 10% margin of error, with respect to the traditional design, in the dimensions and reinforcements of the structural elements.