Abstract

The acidity of green plum has an important influence on the fruit’s deep processing. Traditional physical and chemical analysis methods for green plum acidity detection are destructive, time-consuming, and unable to achieve online detection. In response, a rapid and non-destructive detection method based on hyperspectral imaging technology was studied in this paper. Research on prediction performance comparisons between supervised learning methods and unsupervised learning methods is currently popular. To further improve the accuracy of component prediction, a new hyperspectral imaging system was developed, and the kernel principle component analysis—linear discriminant analysis—extreme gradient boosting algorithm (KPCA-LDA-XGB) model was proposed to predict the acidity of green plum. The KPCA-LDA-XGB model is a supervised learning model combined with the extreme gradient boosting algorithm (XGBoost), kernel principal component analysis (KPCA), and linear discriminant analysis (LDA). The experimental results proved that the KPCA-LDA-XGB model offers good acidity predictions for green plum, with a correlation coefficient (R) of 0.829 and a root mean squared error (RMSE) of 0.107 for the prediction set. Compared with the basic XGBoost model, the KPCA-LDA-XGB model showed a 79.4% increase in R and a 31.2% decrease in RMSE. The use of linear, radial basis function (RBF), and polynomial (Poly) kernel functions were also compared and analyzed in this paper to further optimize the KPCA-LDA-XGB model.

Highlights

  • Green plum contains a variety of natural acids, such as citric acid, which is indispensable for human metabolism

  • Compared with kernel principal component analysis (KPCA)(RBF)-linear discriminant analysis (LDA)-XGB and KPCA(Poly)-LDA-XGB, the RP of the model were improved by 3.0% and 1.8%, respectively, and the root mean squared error in prediction set (RMSEP) was increased by 4.5% and 0.9%, respectively

  • 31.2%, 17.4%, and 12.5%, respectively. These results show that the KPCA-LDA-XGB model offers good performance for predicting green plum acidity

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Summary

Introduction

Green plum contains a variety of natural acids, such as citric acid, which is indispensable for human metabolism. Green plum is a rare alkaline fruit that contains threonine and other amino acids and flavonoids, which are extremely beneficial to the normal progress of protein composition and metabolic functions for the human body and have obvious preventive and curative effects on widespread cardiovascular, urinary, and digestive diseases. When measuring the acidity of green plums by physical and chemical tests, the electrode potential method is often used. This method is destructive, random, subjective, and has low detection efficiency, meaning that this method cannot meet the requirements for the detection and classification of raw fruits. This article uses green plum as its research object to study a rapid, non-destructive detection method for the internal acidity of green plum based on hyperspectral imaging technology

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