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首页> 外文期刊>Journal of near infrared spectroscopy >Influence of spectral acquisition technique and wood anisotropy on the statistics of predictive near infrared–based models for wood density
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Influence of spectral acquisition technique and wood anisotropy on the statistics of predictive near infrared–based models for wood density

机译:光谱采集技术和木材各向异性对木质密度预测近红外模型的统计影响

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Wood density is an important criterion for material classification, as it is directly related to quality of wood for structural use. Several studies have shown promising results for the estimation of wood density by near infrared spectroscopy. However, the optimal conditions for spectral acquisition need to be investigated in order to develop predictive models and to understand how anisotropy and surface roughness affect the statistics of predictive partial least square regression models. The aim of this study was to evaluate how the spectral acquisition technique, wood surface, and the surface quality influence the ability of partial least square–based models to estimate wood density. Near infrared spectra were recorded using an integrating sphere and fiber-optic probe on the tangential, radial, and transverse surfaces machined by circular and band saws in 278 wood specimens of six-year-old Eucalyptus hybrids. The basic density values determined by the conventional method were then correlated with near infrared spectra acquired using an integrating sphere and fiber-optic probe on the wood surfaces by means of partial least square regressions. The most promising models for predicting wood density were generated from near infrared spectra obtained from the transverse surface machined by the bandsaw, via an integrating sphere ( r p 2 = 0 . 87 , RMSEP?=?23?kg m~(?3)and RPD ?=?3.0) as well as for the optic fiber ( r p 2 = 0 . 78 , RMSEP?=?35?kg m~(?3)and RPD ?=?2.1). Surface quality affected the spectral information and robustness of predictive models with a rougher surface, caused by band sawing, showing better results.
机译:木质密度是材料分类的重要标准,因为它与木材质量直接相关,用于结构用途。几项研究表明,通过近红外光谱估计木材密度的有希望的结果。然而,需要研究频谱采集的最佳条件,以便开发预测模型,并了解各向异性和表面粗糙度如何影响预测部分最小二乘回归模型的统计数据。本研究的目的是评估光谱采集技术,木材表面和表面质量如何影响基于部分最小二乘的模型来估计木质密度的能力。在278岁的桉树杂交种中的278个木材标本中使用圆形和带锯上加工的切向,径向和横向表面上的积分球和光纤探针记录近红外光谱。然后通过局部最小二乘回归与木表面上使用积分球和光纤探针获取的近红外光谱来相关的基本密度值。通过集成球(RP 2 = 0. 87,RMSEP(RMSEP)从带状锯条加工的横向表面获得的近红外光谱产生最有前途的模型RPD?=?3.0)以及光纤(RP 2 = 0. 78,RMSEP?35?kg m〜(?3)和RPD?=?2.1)。表面质量影响预测模型的光谱信息和鲁棒性,具有粗糙的表面,引起带锯引起的,显示出更好的结果。

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