Near infrared spectroscopy for assessing mechanical properties of Castanea sativa wood samples
Articolo
Data di Pubblicazione:
2019
Abstract:
Near infrared spectroscopy (NIR) is a technique widely used
for the prediction of different chemical-physical features of
wood. In this study, the technique was used to assess its potential
to predict the mechanical characteristics of wood. Castanea sativa
samples of three different European provenances were collected
and laboratory tests were performed to assess the mechanical
properties of wood samples. Modulus of elasticity (MOE),
load-deflection curve and modulus of rupture (MOR) were calculated
by using INSTRON machine with three points bending
strength with elastic modulus, while density (D) was calculated
according to the current standard. Samples were then analysed
by means of NIR spectroscopy. The raw spectra were pre-processed
and regression models were developed. Variables selection
techniques were used to improve the model performance. In
detail, MOE regression model returned an error of 696.01 MPa
(R2=0.78). Instead, MOR and D prediction models must be further
investigated on a wider number of samples considering the
high variability in physical characteristics of chestnut wood. The
results demonstrated the possibility to use NIR technique for the
prediction of the mechanical properties of wood providing useful
indications in evaluation-screening processes. Indeed, the presence
of the principal wood compounds (cellulose, hemicellulose
and lignin) and their influence in the characterisation of mechanical
stress reactions were confirmed.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
Modulus of elasticity; partial least square regression; variables selection; chemometrics; chestnut wood
Elenco autori:
Brunetti, Michele; Nocetti, Michela
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