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Classification and characterization of thermally modified timber using visible and near-infrared spectroscopy and artificial neural networks: a comparative study on the performance of different NDE methods and ANNs

机译:使用可见和近红外光谱法和人工神经网络对热改性木材进行分类和表征:不同NDE方法和人工神经网络性能的比较研究

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Visible and near-infrared (VIS-NIR) spectroscopy was used for classifying and predicting the properties of thermally modified Western hemlock wood. The specimens were treated at 170 degrees C, 212 degrees C, and 230 degrees C. The dimensional reduction was performed using linear discriminant analysis, and the resulted dataset was used for wood classification using the support vector machines and the linear vector quantization neural network. The VIS-NIR dataset was also used to predict the wood moisture content, swelling coefficient, water absorption, density, dynamic modulus of elasticity, and hardness. The "adaptive neuro-fuzzy inference system" (ANFIS), "Group Method of Data Handling" (GMDH), and "multilayer perceptron" (MLP) neural networks were employed for predicting the wood properties. It was shown that regardless of the type of the neural network, NIR dataset provided a robust model with 100% classification accuracy, which can be implemented in industrial scale for in-line timber quality control. The results indicated that the ANFIS and GMDH neural network showed higher performance than the MLP model for predicting the wood properties. While the VIS-NIR data resulted in a promising accuracy for predicting the wood moisture content and dimensional stability parameters, it did not seem suitable for the prediction of wood density and its mechanical properties. The performance of the VIS-NIR spectroscopy method for classification and characterization of heat-treated timber was compared with that obtained using the color measurement and the stress wave method detected by the acoustic emission sensor.
机译:可见和近红外(VIS-NIR)光谱用于分类和预测热改性西方铁杉木材的性能。标本分别在170摄氏度,212摄氏度和230摄氏度下进行处理。使用线性判别分析进行降维,并使用支持向量机和线性向量量化神经网络将所得数据集用于木材分类。 VIS-NIR数据集还用于预测木材的含水量,溶胀系数,吸水率,密度,动态弹性模量和硬度。使用“自适应神经模糊推理系统”(ANFIS),“数据处理的分组方法”(GMDH)和“多层感知器”(MLP)神经网络来预测木材特性。结果表明,无论神经网络的类型如何,NIR数据集都提供了一个具有100%分类准确度的鲁棒模型,可以在工业规模上实现在线木材质量控制。结果表明,ANFIS和GMDH神经网络在预测木材特性方面比MLP模型具有更高的性能。尽管VIS-NIR数据在预测木材含水量和尺寸稳定性参数方面具有令人鼓舞的准确性,但它似乎不适合预测木材密度及其机械性能。将VIS-NIR光谱法对热处理木材进行分类和表征的性能与通过声发射传感器检测到的颜色测量和应力波法获得的性能进行了比较。

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