NIR-based models for estimating selected physical and chemical wood properties from fast-growing plantations

IF 1.5 4区 农林科学 Q2 FORESTRY
B. Assis Loureiro, TG Arriel, FM Guedes Ramalho, P. Hein, PF Trugilho
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引用次数: 2

Abstract

As a faster, reliable, and low cost technique, applicable to large samplings, near infrared (NIR) spectroscopy technology has been widely applied for high-throughput phenotyping in forest breeding programmes. The aim of this study was to develop multivariate models for estimating the chemical and physical properties of juvenile wood based on NIR signatures of milled wood. Moreover, two approaches, namely, external validation by clone and by age, were tested to validate the model for estimating extractive content. NIR spectra of wood specimens taken from three clones of Eucalyptus urophylla (one to six years old) grown in southern Brazil were used to calibrate and validate models for predicting the wood basic density, total extractives, ash content, holocellulose content, syringyl to guaiacyl ratio (S/G) and elementary components of the wood. PLS-R models were validated by an independent set of wood specimens and presented promising statistics for the estimating wood density (R 2 p = 0.768), extractives (R 2 p = 0.912), ash (R 2 p = 0.936) and carbon (R 2 p = 0.697) contents from NIR signatures measured in the milled wood of young trees. Fur-thermore, NIR models for estimating the extractive content of wood were validated using the clones or ages left out of the training sets. Most models presented satisfactory statistics (R 2 > 90%) and could be applied to routine laboratory analyses or to select potential trees in Eucalyptus breeding programmes.
基于nir的速生人工林木材理化性质估算模型
近红外(NIR)光谱技术作为一种快速、可靠、低成本、适用于大样本的技术,已广泛应用于森林育种计划中的高通量表型分析。本研究的目的是建立基于铣削木材近红外特征的多变量模型来估计幼木的化学和物理性质。此外,还测试了两种方法,即通过克隆和年龄进行外部验证,以验证估计提取物含量的模型。利用巴西南部生长的三个尾叶桉无性系(1 ~ 6年树龄)木材样品的近红外光谱,对木材基本密度、总提取物、灰分含量、全新纤维素含量、丁香基与愈创木酰比(S/G)和木材基本成分的预测模型进行了校正和验证。利用一组独立的木材样本对PLS-R模型进行了验证,结果表明,从幼树碾磨木材的近红外特征中估计木材密度(R 2 p = 0.768)、提取物(R 2 p = 0.912)、灰分(R 2 p = 0.936)和碳(R 2 p = 0.697)含量具有良好的统计学意义。此外,用于估计木材提取物含量的近红外模型使用训练集之外的克隆或年龄进行了验证。大多数模型提供了令人满意的统计数据(R 2 - 0 90%),可用于常规实验室分析或桉树育种计划中选择潜在树种。
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来源期刊
CiteScore
3.30
自引率
0.00%
发文量
54
审稿时长
6 months
期刊介绍: The journal encompasses a broad range of research aspects concerning forest science: forest ecology, biodiversity/genetics and ecophysiology, silviculture, forest inventory and planning, forest protection and monitoring, forest harvesting, landscape ecology, forest history, wood technology.
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