首页> 外文期刊>Forest Products Journal >Predicting wood quality of green logs by resonance vibration and stress wave in plantation-grown Populus x euramericana.
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Predicting wood quality of green logs by resonance vibration and stress wave in plantation-grown Populus x euramericana.

机译:利用人工种植的杨 x 美洲的共振振动和应力波预测绿色原木的木材质量。

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摘要

A cost-effective estimation of wood quality of hardwood green logs is needed. The purposes of this study were to investigate and compare two nondestructive acoustic methods to predict the wood quality of green logs from a poplar I-72 (Populus x euramericana cv. I-72/58 "San Martino") plantation. After log measurements, small clear wood specimens were cut and air dried to 12 percent moisture content. The static bending modulus of elasticity (MOE) of small clear wood specimens was about 15 and 20 percent greater than the dynamic MOE of green logs based on resonance vibration (Efr) and stress wave (Esw). However, good correlations (R) between Efr and Esw of logs and bending MOE of 0.806 and 0.848 (P<0.001), respectively, were observed. Significant correlations were also found between the Efr and Esw of logs and the modulus of rupture and compressive strength parallel to grain ( sigma c) of small clear wood specimens (P<0.001). The results indicate that both acoustic techniques were effective predictors of wood quality, although the stress wave method was found to be more accurate and reliable than the resonance vibration method. The longitudinal changes of strength properties with tree height could be tracked by these two methods.
机译:需要对硬木原木的木材质量进行经济有效的估算。这项研究的目的是调查和比较两种非破坏性声学方法,以预测杨木I-72(杨xi> euramericana cv。I- 72/58“圣马蒂诺”种植园。进行原木测量后,将小的透明木材样品切开并风干至12%的水分含量。基于共振振动( E fr ),小净木试样的静态弯曲弹性模量(MOE)比绿色原木的动态MOE分别大15%和20%。和应力波( E sw )。但是,日志的 E fr 和 E sw 之间具有良好的相关性( R )弯曲MOE分别为0.806和0.848( P <0.001)。还发现原木的 E fr 和 E sw 与断裂模量和抗压强度之间存在显着的相关性。平行于小的透明木材标本( P <0.001)的纹理(sigma c )。结果表明,虽然发现了应力波方法比共振振动方法更准确和可靠,但两种声学技术都是木材质量的有效预测指标。这两种方法都可以跟踪强度特性随树高的纵向变化。

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