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Estimation of the axial behaviour of masonry walls based on Artificial Neural Networks

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2013

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Elsevier
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Garzón-Roca, Julio, et al. «Estimation of the Axial Behaviour of Masonry Walls Based on Artificial Neural Networks». Computers & Structures, vol. 125, septiembre de 2013, pp. 145-52. https://doi.org/10.1016/j.compstruc.2013.05.006.

Abstract

Estimating the load-bearing capacity of brick masonry walls is a fundamental aspect of the design or retrofitting of this type of structures. This paper presents a new ANN-based proposal as an alternative to the different existing methods. The proposal takes into account load eccentricity, wall slenderness ratio and stiffness and masonry tensile strength, and is validated by a comparison with the Eurocode 6 and other formulations as well as three other experimental studies. The proposal closely agrees with the experimental results and is less conservative than Eurocode 6 and therefore more likely to provide the optimum design for masonry walls.

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