基于构建主成分-多元线性回归- bp算法的近红外定量分析

Y. Shao, Yong He, Jingyuan Mao
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引用次数: 1

摘要

近红外反射光谱技术(NIRS)是一种快速、方便的无损检测技术,可以测量多种物质的质量和成分属性。本文评价了近红外反射光谱法测定杨梅汁pH值的能力。收集了76份果汁样品的光谱,数据用吸光度,反射率倒数的对数(log 1/R)表示。利用小波变换对吸光度数据进行压缩。建立了杨梅汁酸度预测的三个模型。主成分分析-多元线性回归-反向传播预测模型(PCA-MLR-BP)优于PCA-BP和MLR-BP预测模型(r=0.934, RMSEP=0.263)
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantitative Analysis Using NIR by Building Principal Component- Multiple Linear Regression-BP Algorithm
Near infrared reflectance spectroscopy (NIRS) appears to be a rapid and convenient non-destructive technique that can measure the quality and compositional attributes of many substances. This paper assesses the ability of NIR reflectance spectroscopy to estimate the pH values of bayberry juice. Spectra were collected from 76 juice samples and data was expressed as absorbance, the logarithm of the reciprocal of reflectance (log 1/R). The absorbance data was subsequently compressed using wavelet transformation. Three models to predict the acidity in bayberry juice were constructed. A prediction model based on principle component analysis-multiple linear regression-back propagation (PCA-MLR-BP) was found to be superior (r=0.934, RMSEP=0.263) to models based on PCA-BP and MLR-BP
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