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Neural network and principal component regression in non-destructive soluble solids content assessment: a comparison

机译:无损可溶性固形物含量评估中的神经网络和主成分回归:比较

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摘要

Visible and near infrared spectroscopy is a non-destructive, green, and rapid technology that can be utilized to estimate the components of interest without conditioning it, as compared with classical analytical methods. The objective of this paper is to compare the performance of artificial neural network (ANN) (a nonlinear model) and principal component regression (PCR) (a linear model) based on visible and shortwave near infrared (VIS-SWNIR) (400–1000 nm) spectra in the non-destructive soluble solids content measurement of an apple. First, we used multiplicative scattering correction to pre-process the spectral data. Second, PCR was applied to estimate the optimal number of input variables. Third, the input variables with an optimal amount were used as the inputs of both multiple linear regression and ANN models. The initial weights and the number of hidden neurons were adjusted to optimize the performance of ANN. Findings suggest that the predictive performance of ANN with two hidden neurons outperforms that of PCR.
机译:可见光和近红外光谱是一种无损,绿色,快速的技术,与传统的分析方法相比,无需进行预处理即可用于估算目标组分。本文的目的是比较基于可见光和短波近红外(VIS-SWNIR)(400-1000)的人工神经网络(ANN)(非线性模型)和主成分回归(PCR)(线性模型)的性能苹果的非破坏性可溶性固形物含量测量中的光谱)。首先,我们使用乘法散射校正对光谱数据进行预处理。其次,应用PCR估计输入变量的最佳数量。第三,将具有最佳数量的输入变量用作多元线性回归和ANN模型的输入。调整初始权重和隐藏神经元的数量以优化ANN的性能。研究结果表明,具有两个隐藏神经元的ANN的预测性能优于PCR。

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