Artificial neural networks to estimate the physical-mechanical properties of amazon second cutting cycle wood
Author
Marques dos Reis Reis, Pamella Carolline
Lopes de Souza, Agostinho
Pequeno Reis, Leonardo
Ladeira Carvalho, Ana Márcia Macedo
Mazzei, Lucas
Julienne Sousa Rêgo, Lyvia
Garcia Leite, Helio
Abstract
Timber from the second cutting cycle may make up the majority of future crop volumetric. However, there are few studies of the physical and mechanical properties of this timber, which are important to support the consolidation of new species. This study aimed to use Artificial Neural Networks to estimate the physical and mechanical properties of wood from the Amazon, based on basic density. The properties were: shrinkage (tangential, radial and volumetric), static bending, parallel and perpendicular to the fiber compression, parallel and transverse to the fibers, Janka hardness, traction, splitting and shear. The estimate followed the tendency of the data observed for the tangential, radial and volumetric shrinkage. The network estimated the mechanical properties with significant accuracy. Distribution of errors, static bending, parallel compression and perpendicular to the fiber compression also showed significant accuracy. Artificial Neural Networks can be used to estimate the physical and mechanical properties of wood from Amazon species.