2014
DOI: 10.1080/07373937.2013.846911
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Application of Near-Infrared Spectroscopy for Evaluation of Drying Stress on Lumber Surface: A Comparison of Artificial Neural Networks and Partial Least Squares Regression

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Cited by 23 publications
(16 citation statements)
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“…Artificial neural networks are increasingly being used for modeling in the field of wood science. For instance, in the field of wood drying, Avramidis (2006) [13] predicted the drying rate of wood based on neural network construction model; Zhang Dongyan (2008) [14] constructed a neural network model for predicting wood MC during conventional drying;İlhan Ceylan (2008) [15] used neural network models to study wood drying characteristics; Watanabe (2013Watanabe ( , 2014 [16,17] employed artificial neural network model to predict the final moisture content of Sugi (Cryptomeria japonica) during drying and evaluate the drying stress on the wood surface. Ozsahin (2017) [18] utilized artificial neural networks to successfully predict the equilibrium moisture content and specific gravity of heat-treated wood.…”
Section: Introductionmentioning
confidence: 99%
“…Artificial neural networks are increasingly being used for modeling in the field of wood science. For instance, in the field of wood drying, Avramidis (2006) [13] predicted the drying rate of wood based on neural network construction model; Zhang Dongyan (2008) [14] constructed a neural network model for predicting wood MC during conventional drying;İlhan Ceylan (2008) [15] used neural network models to study wood drying characteristics; Watanabe (2013Watanabe ( , 2014 [16,17] employed artificial neural network model to predict the final moisture content of Sugi (Cryptomeria japonica) during drying and evaluate the drying stress on the wood surface. Ozsahin (2017) [18] utilized artificial neural networks to successfully predict the equilibrium moisture content and specific gravity of heat-treated wood.…”
Section: Introductionmentioning
confidence: 99%
“…Tiryaki and Aydin (2014) predicted the compression strength parallel to grain of heat-treated woods indicated that ANN modeling provided high predictive precision, and the R 2 for the testing set was obtained as 0,997%. Watanabe et al (2014) investigated the drying stress at the surface of lumber during drying using near-infrared spectroscopy combined with ANN models.…”
Section: Introductionmentioning
confidence: 99%
“…However, artificial neural network (ANN) is powerful tool to deal with the nonlinear and multiple processing systems (Ding et al, 2017). As artificial neural networks possess excellent ability of high learning and identifying, it can carry out complicated non-linear relationships between the input and output of a system with an appropriate choice of free parameters or weight easily (Watanabe et al, 2014). In the last decade, the ANN has already been successfully applied to chemistry (Cristea et al, 2003;Sun et al, 2011), food processing (Ding et al, 2016), microbiology (Ferrari et al, 2017), medicine (Amato et al, 2013), psychology (Levine, 2007) as well as various other fields.…”
Section: Introductionmentioning
confidence: 99%