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Prediction of the mechanical properties of lumber by stress-wave velocity and Pilodyn penetration of 36-year-old Japanese larch trees

机译:利用36岁的日本落叶松树的应力波速度和Pilodyn穿透力预测木材的力学性能

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摘要

The objective of this study was to obtain basic knowledge for the prediction of the mechanical properties of Japanese larch lumber (Larix kaempferi) on the basis of tree properties, such as the stress-wave velocity (SWV) and Pilodyn penetration value (Py). The values of the correlation coefficient between the SWV of a standing tree and the dynamic Young’s modulus (DMOE) of logs, which were obtained at various heights, gradually decreased with an increase in the log sampling height, indicating that the SWV of a tree is affected by wood properties at the measuring position. A significant correlation between the SWV of trees and the average modulus of elasticity (MOE) of lumber was found (r =0.834). A significant negative correlation between the Py of a tree and the average modulus of rupture (MOR) of lumber was also found (r=-0.859). A high coefficient of determination for an obtained regression curve was found when both the SWV and Py of a tree were used for evaluating the average MOE or MOR of lumber. These results indicate that the average MOE and MOR of lumber can be predicted by using the SWV and Py of the Japanese larch tree.
机译:这项研究的目的是获得基于树木特性(如应力波速度(SWV)和皮利丁穿透值(Py))的日本落叶松木材(Larix kaempferi)力学性能预测的基础知识。在不同高度获得的立木的SWV与原木的动态杨氏模量(DMOE)之间的相关系数值随着原木采样高度的增加而逐渐减小,这表明树的SWV为在测量位置受木材性能的影响。发现树木的SWV与木材的平均弹性模量(MOE)之间存在显着相关性(r = 0.834)。还发现树木的Py与木材的平均断裂模量(MOR)之间存在显着的负相关(r = -0.859)。当将树木的SWV和Py都用于评估木材的平均MOE或MOR时,发现获得的回归曲线的测定系数很高。这些结果表明,可以通过使用日本落叶松的SWV和Py来预测木材的平均MOE和MOR。

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  • 来源
    《European Journal of Wood and Wood Products》 |2008年第4期|p.275-280|共6页
  • 作者

  • 作者单位
  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-18 00:13:37

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