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Near infrared calibration models for the estimation of wood density in Pinus taeda using repeated sample measurements

机译:近红外校准模型,用于通过重复样品测量来估算阔叶松木材密度

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Near infrared (NIR) diffuse reflectance was used for the estimation of air-dry density and basic density in wood radial strip samples obtained at breast height (1.4m) from 60 Pinus taeda trees established in three progeny tests in the south-eastern United States. NIR calibration models were fitted using raw spectra and pre-processed spectra with second derivative, multiplicative scatter correction and orthogonal signal correction. Successful calibrations were obtained for both wood properties using data collected in consecutive 10 mm sections from the samples. Data pre-processing did not result in model improvements compared to the models fitted using raw data. The effects of using repeated measures were evaluated by incorporating serial correlation into the partial least squares regression algorithm. The empirical autocorrelation of the normalised residuals showed that serial dependence among residuals was successfully removed by using an autoregressive correlation structure of second order. However, because the initial dependence among observations was not strong, the predictions were similar using the modified algorithm to those obtained with the traditional approach. These results indicate that the use of repeated measurements does not represent a serious problem for the development of NIR calibration models for the prediction of wood properties using radial samples measured in 10 mm sections and that the specification of the correlation structure may not be required when the models are used only for predictive purposes.
机译:使用近红外(NIR)漫反射率估算了美国东南部的三个子代试验中建立的60棵松树的胸径(1.4m)处木材放射状样品的气干密度和基本密度。 。使用原始光谱和经过预处理的具有二阶导数,乘性散射校正和正交信号校正的光谱对NIR校准模型进行拟合。使用从样品中连续10毫米截面收集的数据,成功获得了两种木材性能的标定值。与使用原始数据拟合的模型相比,数据预处理不会导致模型改进。通过将序列相关性合并到偏最小二乘回归算法中来评估使用重复测量的效果。归一化残差的经验自相关表明,使用二阶自回归相关结构可以成功消除残差之间的序列依赖性。但是,由于观测值之间的初始相关性不强,因此使用改进的算法进行的预测与使用传统方法获得的预测相似。这些结果表明,使用重复测量对使用10毫米截面中测得的径向样本预测木材性能的NIR校准模型的开发并不构成严重问题,并且在使用NIR校准模型时可能不需要相关结构的规格。模型仅用于预测目的。

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