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Prediction of wood density independently of moisture conditions using near infrared spectroscopy

机译:使用近红外光谱法预测木材密度与湿度条件无关

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Near infrared (NIR) spectra obtained from 100 Japanese larch (Larix kaempferi) wood samples containing various amounts of moisture were used to examine the effect of moisture conditions on the accuracy of predicting wood density. Partial least squares regression (PLS-R) analysis was performed to predict wood density under air dry (DEN_ar), water impregnated (DEN_wi) and oven dry (DEN_ov) conditions. The NIR spectra varied with the moisture conditions of the wood, where the characteristic absorbance bands in the vicinity of 7320 cm~(-1) (1366 nm), 7160 cm~(-1) (1400 nm) and 7000 cm~(-1) (1428 nm) were related to cellulose and water. The spectral differences between high- and low-density samples varied depending on the moisture conditions; high-density samples showed low absorbance values at 7160 cm~(-1) when wet and showed high absorbance values at 7320 cm~(-1) and 7000 cm~(-1) when dry. DEN_ar, DEN_wi and DEN_ov could be predicted using spectra collected from the corresponding moisture conditions [coefficient of determination (R~2) = 0.79-0.89; standard error of prediction (SEP) = 24-26 kg m~(-3)]. Prediction of DEN_ar and DEN_ov could also be achieved using spectra collected from various moisture conditions (R~2=0.86-0.87, SEP= 22 kg m~(-3)). The loadings from PLS-R analysis indicated that the absorption bands in the vicinity of 7320 cm~(-1), 7160 cm~(-1) and 7000 cm~(-1) played an important role in predicting wood density. NIR spectroscopy has the potential to predict wood density independently of the moisture content of the sample.
机译:从100个含有各种水分的日本落叶松(Larix kaempferi)木材样品中获得的近红外(NIR)光谱用于检验水分条件对预测木材密度准确性的影响。进行偏最小二乘回归(PLS-R)分析以预测风干(DEN_ar),水浸(DEN_wi)和烘箱干燥(DEN_ov)条件下的木材密度。 NIR光谱随木材的水分条件而变化,在7320 cm〜(-1)(1366 nm),7160 cm〜(-1)(1400 nm)和7000 cm〜(- 1)(1428 nm)与纤维素和水有关。高密度和低密度样品之间的光谱差异取决于湿度条件。高密度样品在潮湿时在7160 cm〜(-1)处显示较低的吸光度,在干燥时在7320 cm〜(-1)和7000 cm〜(-1)处显示高的吸光度。 DEN_ar,DEN_wi和DEN_ov可以使用从相应湿度条件下收集的光谱进行预测[测定系数(R〜2)= 0.79-0.89;预测标准误差(SEP)= 24-26 kg m〜(-3)]。 DEN_ar和DEN_ov的预测也可以使用从各种湿度条件(R〜2 = 0.86-0.87,SEP = 22 kg m〜(-3))收集的光谱来实现。 PLS-R分析的载荷表明,在7320 cm〜(-1),7160 cm〜(-1)和7000 cm〜(-1)附近的吸收带在预测木材密度中起重要作用。近红外光谱技术有可能独立于样品的水分含量预测木材密度。

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