Shenyang Agricultural University, Shenyang, China.
Chinese Academy of Forestry, Beijing, China.
PeerJ. 2023 Jan 31;11:e14755. doi: 10.7717/peerj.14755. eCollection 2023.
Wood quality is an important indicator for modern sawmills. Internal wood characteristics can be derived from their correlations with external appearances. In this study, we developed linear regression models to predict knot size from surface features of Mongolian oak () using data collected from 53 trees. For this, manual measurements and X-ray computed tomography scanning technology was respectively used to obtain internal and external features of 1,297 knots. Our results showed that Mongolian oak knots were generally concentrated in the middle part of oak stems, with fewer knots observed at the top and base. The parameters of knot and scar showed significant correlations ( < 0.01), where length and diameter of the corresponding external scar increase with increasing the length and diameter of a knot. The corresponding external scar can be used as an effective indicator to predict the internal value of oak logs. The accuracy of our constructed model is more than 95% when assessed against independent test samples. These models thus can be applied to improve the practical production of oak timber and reduce commercial loss caused by knots. These additional data can improve the estimation of the influence of knots on wood quality and provide a theoretical foundation for investigating the characteristics of hardwood knots.
木材质量是现代锯木厂的一个重要指标。木材的内部特征可以通过与其外部特征的相关性来推断。在这项研究中,我们使用 53 棵树的数据,建立了线性回归模型,以预测蒙古栎()节子的大小与其表面特征之间的关系。为此,我们分别使用手工测量和 X 射线计算机断层扫描技术来获取 1297 个节子的内部和外部特征。结果表明,蒙古栎节子通常集中在栎木茎的中部,顶部和底部的节子较少。节子和伤疤的参数之间存在显著相关性(<0.01),相应的外部伤疤的长度和直径随节子的长度和直径的增加而增加。相应的外部伤疤可以作为预测栎木原木内部值的有效指标。在对独立测试样本进行评估时,我们构建的模型的准确率超过 95%。因此,这些模型可用于提高栎木木材的实际生产效率,减少因节子造成的商业损失。这些附加数据可以改进对节子对木材质量影响的估计,并为研究硬木节子的特征提供理论基础。