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基于电子鼻的快速检测和识别霉变苹果技术。

Electronic Nose-Based Technique for Rapid Detection and Recognition of Moldy Apples.

机构信息

Beijing Research Center for Agricultural Standards and Testing, Beijing Academy of Agriculture and Forestry Science, Beijing 100097, China.

Risk Assessment Lab for Agro-products (Beijing), Ministry of Agriculture, Beijing 100097, China.

出版信息

Sensors (Basel). 2019 Mar 29;19(7):1526. doi: 10.3390/s19071526.

Abstract

In this study, the PEN3 electronic nose was used to detect and recognize fresh and moldy apples inoculated with and , taking Golden Delicious apples as the model subject. Firstly, the apples were divided into two groups: individual apple inoculated only with/without different molds (Group A) and mixed apples of inoculated apples with fresh apples (Group B). Then, the characteristic gas sensors of the PEN3 electronic nose that were most closely correlated with the flavor information of the moldy apples were optimized and determined to simplify the analysis process and improve the accuracy of the results. Four pattern recognition methods, including linear discriminant analysis (LDA), backpropagation neural network (BPNN), support vector machines (SVM), and radial basis function neural network (RBFNN), were applied to analyze the data obtained from the characteristic sensors, aiming at establishing the prediction model of the flavor information and fresh/moldy apples. The results showed that only the gas sensors of W1S, W2S, W5S, W1W, and W2W in the PEN3 electronic nose exhibited a strong signal response to the flavor information, indicating most were closely correlated with the characteristic flavor of apples and thus the data obtained from these characteristic sensors were used for modeling. The results of the four pattern recognition methods showed that BPNN had the best prediction performance for the training and testing sets for both Groups A and B, with prediction accuracies of 96.3% and 90.0% (Group A), 77.7% and 72.0% (Group B), respectively. Therefore, we demonstrate that the PEN3 electronic nose not only effectively detects and recognizes fresh and moldy apples, but also can distinguish apples inoculated with different molds.

摘要

在本研究中,采用 PEN3 电子鼻检测和识别接种 和 的新鲜和霉变苹果,以金冠苹果为模型。首先,将苹果分为两组:单独接种/不接种不同霉菌的单个苹果(组 A)和接种苹果与新鲜苹果混合的苹果(组 B)。然后,优化和确定与霉变苹果风味信息最密切相关的 PEN3 电子鼻特征气体传感器,以简化分析过程,提高结果的准确性。应用了四种模式识别方法,包括线性判别分析(LDA)、反向传播神经网络(BPNN)、支持向量机(SVM)和径向基函数神经网络(RBFNN),对特征传感器获得的数据进行分析,旨在建立风味信息和新鲜/霉变苹果的预测模型。结果表明,PEN3 电子鼻中仅 W1S、W2S、W5S、W1W 和 W2W 气体传感器对风味信息表现出强烈的信号响应,表明与苹果特征风味密切相关,因此使用这些特征传感器获得的数据进行建模。四种模式识别方法的结果表明,BPNN 对组 A 和 B 的训练集和测试集都具有最佳的预测性能,预测准确率分别为 96.3%和 90.0%(组 A),77.7%和 72.0%(组 B)。因此,我们证明 PEN3 电子鼻不仅可以有效检测和识别新鲜和霉变苹果,还可以区分接种不同霉菌的苹果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f176/6479952/4be8e2a10a08/sensors-19-01526-g001.jpg

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