Estimating shear properties of walnut wood: a combined experimental and theoretical approach
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Date
2017-12
Publication Type
Journal Article
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yes
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Abstract
In this study, several theoretical models to numerically estimate shear properties of orthotropic materials are introduced. These approaches are based on the combination of Hankinson’s empirically derived formula with other empirical and analytical calculations. Next to shear moduli, which are estimated from the elastic moduli and Poisson’s ratios, shear strengths are also estimated from the in-axis strengths. The models are validated by mechanical tests on walnut wood (Juglans regia L.), for which a sufficient data set can be found in literature. The Arcan test is used to estimate the shear moduli, while the shear block test is used to estimate the shear strengths. The results show that the model, which is based on a combined use of Hankinson’s formula and tensor rotation, gives the best estimation of shear moduli as evaluated by the minimum differences to the experimentally obtained results. For the shear strengths, a combination of Hankinson’s formula and Norris’ failure criterion shows the best agreement in comparison to the experimental data. The theoretical calculations may be used for a time efficient estimation of shear modulus and strength in comparison to the very time-consuming experimental estimation.
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published
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Journal / series
Volume
50 (6)
Pages / Article No.
248
Publisher
Springer
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Software
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Subject
Approximation methods for orthotropic shear property; Hankinson’s formula; Shear moduli; Shear strengths; Walnut wood (Juglans regia L.)
Organisational unit
03917 - Burgert, Ingo / Burgert, Ingo
Notes
It was possible to publish this article open access thanks to a Swiss National Licence with the publisher.