结合高光谱成像和神经网络方法测定整个波特酒葡萄果实中的糖含量

Véronique M. Gomes, A. Fernandes, A. Mendes-Faia, P. Melo-Pinto
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引用次数: 12

摘要

提出了结合机器学习算法的高光谱成像测量整个葡萄浆果糖含量的潜力,作为开发广义和灵活框架的起点,以估计酿酒葡萄浆果的酒精度参数。在这种情况下,为了评估所使用的机器学习过程的泛化能力,使用不同的训练数据训练两个神经网络,以比较每个神经网络在使用相同数据集测试时的性能。每个样品使用6个完整的葡萄浆果,在308 ~ 1028 nm的反射率模式下绘制高光谱光谱。在两个不同的神经网络中使用前馈多人感知器从光谱中估计糖含量,每个神经网络使用来自不同年份(2012年和2013年)的数据集进行训练;对两个神经网络的验证采用n-fold交叉验证,使用的测试集来自2013年。测试集显示,2012年训练数据神经网络的R2为0.906,RMSE为1.165°Brix; 2013年训练数据神经网络的R2为0.959,RMSE为1.026°Brix。得到的结果表明,两种神经网络都呈现出良好的结果,并且2012年的训练数据神经网络与另一种神经网络相比表现出良好的性能,这表明该方法是鲁棒的,因为可以获得多年的泛化(无需进一步训练)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Determination of sugar content in whole Port Wine grape berries combining hyperspectral imaging with neural networks methodologies
The potential of hyperspectral imaging combined with machine learning algorithms to measure sugar content of whole grape berries is presented, as a starting point for developing generalized and flexible frameworks to estimate enological parameters in wine grape berries. In this context, to evaluate the generalization ability of the used machine learning procedure, two neural networks were trained with different training data to compare the performance of each one when tested with the same data set. Six whole grape berries were used for each sample to draw the hyperspectral spectrum in reflectance mode between 308 and 1028 nm. The sugar content was estimated from the spectra using feedforward multiplayer perceptrons in two different neural networks trained each one with a data set from a different year (2012 & 2013); the validation for both neural networks was done by n-fold cross-validation, and the test set used was from 2013. The test set revealed R2 values of 0.906 and RMSE of 1.165 °Brix for the neural network trained with 2012 data and R2 of 0.959 and RMSE of 1.026 °Brix for the 2013 training data neural network. The results obtained indicate that both neural networks present good results and that the 2012 training data neural network exhibits a good performance when compared with the other NN, suggesting that the approach is robust since a generalization (without further training) over years may be obtainable.
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