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Fast online near infrared technique to predict modulus of elasticity and moisture content of sawn lumber

机译:快速在线近红外技术,以预测弹性和锯材水分含量的模量

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Wood products are required high degrees of structural performance and reliability in case of construction material. However, mechanical properties and moisture content of wood vary widely because of its highly anisotropic characteristics. Therefore, accurate nondestructive grading systems are desirable for wood industries. We developed a fast online grading apparatus for sawn lumber based on near-infrared (NIR) spectroscopy that utilizes a novel wavelength dispersive NIR spectrophotometer equipped with a diffraction grating linear sensor and high intensity lighting. This device makes it possible to acquire spectra from the entire surface of wood lumber running on a conveyor belt at a speed of 120 m/min. Predictive models for modulus of elasticity (MOE) and moisture content (MC) were developed from the NIR spectra with the aid of partial least squares regression (PLSR) analysis. The MOE and MC predictive models demonstrated sufficient levels of prediction accuracy for use on high speed conveyor belts. The developed device could be utilized for the online quality certification of sawn lumber in commercial sawmills.
机译:木制品在建筑材料的情况下需要高度的结构性能和可靠性。然而,由于其高度各向异性特性,木材的机械性能和水分含量变化很大。因此,对于木材工业来说,准确的非破坏性分级系统是可取的。我们开发了一种基于近红外(NIR)光谱的锯木材的快速在线分级设备,其利用配备有衍射光栅线性传感器和高强度照明的新型波长色散NIR分光光度计。该装置可以以120m / min的速度从输送带上运行的木材的整个表面获取光谱。借助于局部最小二乘回归(PLSR)分析,从NIR光谱开发出弹性模量(MOE)和水分含量(MC)的预测模型。 MOE和MC预测模型显示出足够的预测精度,用于高速输送带。开发的设备可用于商业锯木厂的锯材的在线质量认证。

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