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Ripeness Prediction of Postharvest Kiwifruit Using a MOS E-Nose Combined with Chemometrics

机译:MOS电子鼻结合化学计量学对收获后猕猴桃的成熟度预测

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摘要

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.
机译:收获后的奇异果会持续成熟一段时间,直到达到最佳的“进食成熟”阶段。在不损害水果的情况下,很难通过常规方法确定采后猕猴桃的成熟度。在这项研究中,使用带有10个金属氧化物半导体(MOS)气体传感器的电子鼻(E-nose)来预测采后猕猴桃的成熟度。通过线性判别分析(LDA),采用三种不同的特征提取方法(最大/最小值,差值和70 s值)区分不同成熟时间的奇异果,结果表明70 s值方法具有最佳的特征提取能力。区分猕猴桃在不同成熟阶段的性能,获得100%的原始准确率和99.4%的交叉验证准确率。采用偏最小二乘回归(PLSR),支持向量机(SVM)和随机森林(RF)来建立总体成熟度,可溶性固形物含量(SSC)和硬度的预测模型。回归结果表明,与PLSR和SVM相比,RF算法对猕猴桃采后猕猴桃成熟度指标的预测效果最好,这说明E-鼻数据与整体成熟度有较高的相关性(训练:R 2 = 0.9928;测试:R 2 = 0.9928),SSC(培训:R 2 = 0.9749;测试:R 2 = 0.9143)和硬度(训练:R 2 = 0.9814;测试:R 2 = 0.9290)。这项研究表明,电子鼻可能是通过香气挥发物预测采后猕猴桃成熟度的综合方法。

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