Models to estimate longitudinal compressive strength of Brazilian hardwood based on apparent density

Author:

Lahr Francisco Antonio Rocco1,Arroyo Felipe Nascimento2,Rodrigues Edson Fernando Castanheira2,Almeida João Paulo Boff2,Aquino Vinicius Borges de Moura3,Wolenski Anderson Renato Vobornik4,dos Santos Herrison Ferreira5,Ferraz André Luiz Nonato6,Chahud Eduardo7,Molina Júlio Cesar8,Pinheiro Roberto Vasconcelos6,Christoforo André Luis2

Affiliation:

1. University of São Paulo

2. Federal University of São Carlos

3. Federal University of the South and Southeast of Pará

4. Federal Institute of Santa Catarina

5. Federal Institute of Science and Technology of Rondônia

6. State University of Mato Grosso

7. Federal University of Minas Gerais

8. Paulista State University

Abstract

As wood is an orthotropic and natural material, there are several properties required for its use in civil construction. The apparent density has been used to estimate physical and mechanical properties of wood, as it is easy to determine experimentally, unlike other determinations, which involve the use of equipment available only in large research centers. Using the Brazilian standard ABNT NBR 7190 and linear and non-linear regression models, this research aimed to evaluate their accuracy in estimating the compressive strength parallel to the fibers (fc0) as well as their characteristic value (fc0,k). This study considered 72 tropical wood species from native forests that were divided into the 4 strength classes of this standard. For the set formed by all species, the linear polynomial model was the best fit, resulting in a determination coefficient of just over 70%.

Publisher

BioResources

Subject

Waste Management and Disposal,Bioengineering,Environmental Engineering

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