An artificial neural network (ANN) implementation for the estimation of masonry compressive strength is presented. A heterogeneous sample is considered, including brick or stone elements, with cementitious or non-cementitious mortar. A multi-layer network was designed with sigmoidal neurons trained using a back-propagation algorithm. An object-oriented Java software program was developed in order to perform the training and the testing processes of the network, using real test data. The mean sum of square errors (SSE) was used as a global performance indicator of the network. The results obtained using the ANN were numerically compared with both real test data and with the results of empirical formulations. The comparisons showed that the ANN approach produced lower SSE than the considered formulations, with good performance on both heterogeneous masonry samples and different masonry systems. The presented approach could be particularly useful when little information is available, avoiding the need for invasive on-site tests and performing only laboratory tests on the brick (or stone) and the mortar. The ANN was able to predict the compressive masonry strength with a very small error, despite the heterogeneity of the considered sample.
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September 2020
Research Article|
March 22 2019
Artificial neural network implementation for masonry compressive strength estimation Available to Purchase
Stefano Carozza, PhD;
Stefano Carozza, PhD
Structural Engineer, SC Engineering and Software Solutions, San Marco Evangelista (CE), Italy (corresponding author: s.carozza.ing@gmail.com)
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Maddalena Cimmino, PhD
Maddalena Cimmino, PhD
Researcher, Construction Technologies Institute, National Research Council, Naples, Italy
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Publisher: Emerald Publishing
Received:
May 14 2018
Accepted:
January 24 2019
Online ISSN: 1751-7702
Print ISSN: 0965-0911
ICE Publishing: All rights reserved
2019
Proceedings of the Institution of Civil Engineers - Structures and Buildings (2020) 173 (9): 635–645.
Article history
Received:
May 14 2018
Accepted:
January 24 2019
Citation
Carozza S, Cimmino M (2020), "Artificial neural network implementation for masonry compressive strength estimation". Proceedings of the Institution of Civil Engineers - Structures and Buildings, Vol. 173 No. 9 pp. 635–645, doi: https://doi.org/10.1680/jstbu.18.00089
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