Abstract

Postharvest kiwifruit continues to ripen for a period until it reaches the optimal “eating ripe” stage. Without damaging the fruit, it is very difficult to identify the ripeness of postharvest kiwifruit by conventional means. In this study, an electronic nose (E-nose) with 10 metal oxide semiconductor (MOS) gas sensors was used to predict the ripeness of postharvest kiwifruit. Three different feature extraction methods (the max/min values, the difference values and the 70th s values) were employed to discriminate kiwifruit at different ripening times by linear discriminant analysis (LDA), and results showed that the 70th s values method had the best performance in discriminating kiwifruit at different ripening stages, obtaining a 100% original accuracy rate and a 99.4% cross-validation accuracy rate. Partial least squares regression (PLSR), support vector machine (SVM) and random forest (RF) were employed to build prediction models for overall ripeness, soluble solids content (SSC) and firmness. The regression results showed that the RF algorithm had the best performance in predicting the ripeness indexes of postharvest kiwifruit compared with PLSR and SVM, which illustrated that the E-nose data had high correlations with overall ripeness (training: R2 = 0.9928; testing: R2 = 0.9928), SSC (training: R2 = 0.9749; testing: R2 = 0.9143) and firmness (training: R2 = 0.9814; testing: R2 = 0.9290). This study demonstrated that E-nose could be a comprehensive approach to predict the ripeness of postharvest kiwifruit through aroma volatiles.

Highlights

  • Kiwifruit is one of the most valuable fruits because it is native to China and popular around the world

  • The regression results showed that the random forest (RF) algorithm had the best performance in predicting the ripeness indexes of postharvest kiwifruit compared with Partial least squares regression (PLSR) and support vector machine (SVM), which illustrated that the E-nose data had high correlations with overall ripeness, solids content (SSC) and firmness

  • The results showed a good correlation between E-nose data and overall ripeness (R2 = 0.9341 in the training set, R2 = 0.9430 in the testing set) but the performance of the PLSR model was unsatisfying in predicting SSC (R2 was only about 0.8 in training and testing sets) and firmness (R2 = 0.8848 in the training set, R2 = 0.9014 in the testing set)

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Summary

Introduction

Kiwifruit is one of the most valuable fruits because it is native to China and popular around the world. It is usually harvested when it is considered mature, but not yet edible for consumers. It is very difficult to identify the ripeness of postharvest kiwifruit during ripening just by the external features, such as size, shape and color. Previous studies conducted on consumer acceptance have showed that the eating ripeness of kiwifruit is essentially correlated to the internal quality, which mainly refers to the soluble solids content (SSC) and firmness [1,2]. Visible and near infrared spectroscopy (Vis/NIRS) is regarded as a fast and nondestructive technique, which have been used to predict the SSC and firmness of kiwifruit [4,5]

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