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首页> 外文期刊>Journal of near infrared spectroscopy >Moisture measurement in timber utilising a multi-layer partial least squares calibration approach
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Moisture measurement in timber utilising a multi-layer partial least squares calibration approach

机译:利用多层偏最小二乘校准方法测量木材中的水分

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This paper describes the evaluation process of a calibration method, which utilises a structure of multiple layers of partial least squares (PLS) calibration models to obtain accurate constituent data. This method is hereafter referred to as multi-layer partial least squares (ML-PLS). In ML-PLS, the fundamental idea is that the PLS model prediction on one layer selects which PLS model to use on the next layer in the structure. The general rule for the structure is that the models should become more and more "local" from layer to layer. Thus, the method can be seen as a stepwise procedure that selects which local model to use for the measurement. The ML-PLS method was applied to the measurement of moisture content in timber using near infrared (NIR) spectroscopy. The spectra were collected from the surface of Norway spruce (Picea abies) wood samples. The samples were soaked in water and spectra collected as the samples dried. Initial calibration attempts showed that significant improvements in prediction accuracy could be obtained by using local models. Therefore, this became the subject of further investigations leading to the ML-PLS method. The highest accuracy obtained for moisture content with a global model, expressed as a root mean square error of prediction (RMSEP), was 2.11%. In comparison, by utilising the ML-PLS method, the RMSEP was reduced to 1.16%.
机译:本文介绍了一种校准方法的评估过程,该方法利用多层局部最小二乘(PLS)校准模型的结构来获取准确的组成数据。以下将该方法称为多层偏最小二乘(ML-PLS)。在ML-PLS中,基本思想是在一层上的PLS模型预测选择在结构的下一层上使用哪个PLS模型。结构的一般规则是,模型应该在层与层之间变得越来越“局部”。因此,该方法可以看作是选择要用于测量的本地模型的分步过程。 ML-PLS方法用于使用近红外(NIR)光谱法测量木材中的水分含量。光谱是从挪威云杉(Picea abies)木材样品的表面收集的。将样品浸泡在水中,并在样品干燥后收集光谱。初步的校准尝试表明,使用局部模型可以大大提高预测精度。因此,这成为导致ML-PLS方法的进一步研究的主题。用全局模型获得的水分含量的最高准确度表示为预测的均方根误差(RMSEP),为2.11%。相比之下,通过使用ML-PLS方法,RMSEP降低至1.16%。

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