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Improving spatial synchronization between X-ray and near-infrared spectra information to predict wood density profiles

机译:提高X射线和近红外光谱信息之间的空间同步,以预测木材密度分布

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摘要

Wood density is one of the most important physical properties of the wood, used in improvement programs for wood quality of major timber species. Traditional core sampling of standing trees has been widely used to assess wood density profiles at high spatial resolution by X-ray microdensitometry methods, but alternative methods to predict wood properties quality are also needed. Near-infrared (NIR) spectroscopy, a non-destructive technique, is being increasingly used for wood property assessment and has already been demonstrated to be able to predict wood density. However, the estimation of wood density profiles by NIR has not yet been extensively studied, and improved models using spectra information (NIR) and X-ray data need to be developed. To this end, partial least square regression (PLS-R) models for predicting wood density were developed at a 1.4 mm spatial resolution onPinus pinasterwood cores, with an improved spatial synchronization along the tangential and radial directions of the strip, between X-ray data and NIR spectra. The validation of the best model showed a high coefficient of determination (0.95), low error (0.026) and no outlier. Compression wood samples were not detected as outliers and were correctly predicted by the model. However, pith spectra were detected as outliers and its predicted values were overestimated by 33% due to unusual spectra suggesting a diverse chemical composition. The results suggest that NIR-PLS models obtained can be used for screening maritime pine wood density profiles along the radii at 1.4 mm spatial resolution.
机译:木质密度是木材最重要的物理性质之一,用于改进主要木材种类的木材质量方案。常设树木的传统核心采样已被广泛用于通过X射线微量折叠方法在高空间分辨率下评估木质密度分布,但还需要预测木质性质的替代方法。近红外(NIR)光谱,非破坏性技术越来越多地用于木质物质评估,并且已经证明能够预测木质密度。然而,NIR的木质密度谱估计尚未广泛研究了使用光谱信息(NIR)和X射线数据的改进模型。为此,以1.4 mm空间分辨率Onpinus Pinasterwoom核心开发了用于预测木质密度的局部最小二乘回归(PLS-R)模型,其沿着X射线数据之间的条带的切向和径向改善空间同步和nir spectra。最佳模型的验证显示出高度的确定系数(0.95),低误差(0.026),没有异常值。压缩木样品未被检测为异常值,并通过模型正确预测。然而,由于异常的光谱表明多样化化学成分,因此检测到髓光谱作为异常值,其预测值被33%估计。结果表明,获得的NIR-PLS模型可用于沿着半径的空间分辨率沿半径筛选海洋松木密度谱。

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  • 来源
    《Wood Science and Technology》 |2020年第5期|1151-1164|共14页
  • 作者单位

    Univ Lisbon Ctr Estudos Florestais Inst Super Agron P-1349017 Lisbon Portugal;

    Forest & Wood Technol Res Ctr CETEMAS Carbayin S-N Siero 33936 Asturias Spain|Univ Huelva Dept Ciencias Agroforestales Escuela Tecn Super Ingn Palos De La Frontera 21819 Spain;

    Univ Lisbon Ctr Estudos Florestais Inst Super Agron P-1349017 Lisbon Portugal;

    Forest & Wood Technol Res Ctr CETEMAS Carbayin S-N Siero 33936 Asturias Spain;

    Natl Inst Agr & Food Res & Technol INIA Forest Res Ctr CIFOR Dept Forest Ecol & Genet Ctra Coruna Km 7-5 Madrid 28040 Spain;

    Univ Lisbon Ctr Estudos Florestais Inst Super Agron P-1349017 Lisbon Portugal;

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