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Enhanced near infrared spectral data to improve prediction accuracy in determining quality parameters of intact mango

机译:增强型近红外光谱数据可提高确定完整芒果质量参数的预测准确性

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摘要

Presented manuscript aimed to describes enhanced near infrared spectral dataset used to improve prediction performances of near infrared models in determining quality parameters of intact mango fruits. The two mentioned quality parameters are total acidity (TA) and vitamin C which corresponds to main inner attributes of fruits. Near infrared (NIR) spectra data were acquired and recorded as absorbance spectral data in wavelength range from 1000 to 2500 nm. These data were then enhanced by means of several algorithms like multiplicative scatter correction (MSC), baseline linear correction (BLC) and combination of them (MSC+BLC). Prediction models, used to determine TA and vitamin C were established using most common approach: partial least square regression (PLS) based on raw and enhanced spectral data respectively. Prediction performances can be evaluated based on prediction accuracy and robustness, by looking statistical indicators presented as coefficient of determination (R ) and correlation (r), root mean square error (RMSE) and residual predictive deviation (RPD). Enhanced NIR spectral dataset can be employed as a rapid, effective and non-destructive method to determine inner quality parameters of intact fruits.
机译:提出的手稿旨在描述增强的近红外光谱数据集,用于改善确定完整芒果果实质量参数的近红外模型的预测性能。提到的两个质量参数是总酸度(TA)和维生素C,它们对应于水果的主要内部属性。采集近红外(NIR)光谱数据,并将其记录为1000至2500 nm波长范围内的吸收光谱数据。然后,通过多种算法(例如乘法散射校正(MSC),基线线性校正(BLC)和它们的组合(MSC + BLC))来增强这些数据。使用最常见的方法建立了用于确定TA和维生素C的预测模型:分别基于原始光谱数据和增强光谱数据的偏最小二乘回归(PLS)。可以通过查看统计指标(基于确定系数(R)和相关系数(r),均方根误差(RMSE)和残差预测偏差(RPD))来基于预测准确性和鲁棒性来评估预测性能。增强的NIR光谱数据集可以用作确定完整水果内部质量参数的快速,有效且无损的方法。

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