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首页> 外文期刊>LWT-Food Science & Technology >Aging discrimination of French cheese types based on the optimization of an electronic nose using multivariate computational approaches combined with response surface method (RSM)
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Aging discrimination of French cheese types based on the optimization of an electronic nose using multivariate computational approaches combined with response surface method (RSM)

机译:基于使用多变量计算方法的电子鼻子优化与响应面法(RSM)的优化基于电子鼻子的优化的老化歧视

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摘要

This research was conducted to classify different types of cheeses using an electronic nose (e-nose). The experiments were accomplished in three storage periods such as on days 1, 7, and 14. To classify and analyze the output response of the sensors, artificial neural network (ANN), principal component analysis (PCA), linear discriminant analysis (LDA), support vector machine (SVM), partial least square (PLS), principal component regression (PCR) methods and response surface method (RSM) were used. Based on the results, on days 7 and 14 of storage, ANN classified all different cheese types with high accuracy. Additionally, using lodging plot, MQ3, TGS2610, and TGS2610 sensors had the widest use to discriminate among different cheese types. Moreover, the LDA method classified different cheese types with 93.52%, 96.7%, and 94.44% accuracy for the storage periods. The Nu-SVM function also attained the classification accuracy of 89.81% and 88.88% in validation and training datasets, respectively. Of the two PLS and PCR methods, PLS method achieved the highest accuracy for predicting the odor pattern among samples. Also, TGS880, MQ-3, and TGS2610 sensors were selected as optimized sensors for analysis by RSM. Consequently, e-nose coupled with multivariate methods and RSM showed satisfactory capability to recognize French cheese.
机译:进行该研究以使用电子鼻子(电子鼻子)对不同类型的奶酪进行分类。实验是在三个储存期间完成的,例如在第1,7和14天内的储存期内。为分类和分析传感器的输出响应,人工神经网络(ANN),主成分分析(PCA),线性判别分析(LDA) ,使用支持向量机(SVM),部分最小二乘(PLS),主成分回归(PCR)方法和响应表面方法(RSM)。基于结果,在储存时的第7天和第14天,ANN分类了所有不同的乳酪类型,高精度。另外,使用Lodging Plot,MQ3,TGS2610和TGS2610传感器具有最广泛的用途来区分不同的奶酪类型。此外,LDA方法分类为储存期93.52%,94.44%,精度为93.52%,94.44%。 Nu-S​​VM功能也分别在验证和培训数据集中达到了89.81%和88.88%的分类准确性。在两个PCL和PCR方法中,PLS方法实现了预测样品中的气味图案的最高精度。此外,TGS880,MQ-3和TGS2610传感器被选择为优化的传感器,用于通过RSM进行分析。因此,与多元方法和RSM耦合的电子鼻部表现出令人满意的能力来识别法国奶酪。

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