Applications of Electronic Nose Coupled with Statistical and Intelligent Pattern Recognition Techniques for Monitoring Tea Quality: A Review
Abstract
:1. Introduction
2. E-Nose Instrumentation
2.1. Sample Handling System
2.2. Detection System
2.3. Data Processing System
3. Pattern Recognition Algorithms for E-Nose
3.1. Statistical Pattern Recognition Methods
3.1.1. Linear Discriminant Analysis (LDA)
3.1.2. Principal Component Analysis (PCA)
3.1.3. Multinomial Logistic Regression (MultiLR)
3.1.4. Partial Least Squares Discriminant Analysis (PLS-DA)
3.1.5. Partial Least Squares Regression (PLSR)
3.1.6. Hierarchical Cluster Analysis (HCA)
3.2. Intelligent Pattern Recognition Methods
3.2.1. K-Nearest Neighbor (KNN)
3.2.2. Artificial Neural Network (ANN)
3.2.3. Convolutional Neural Network (CNN)
3.2.4. Decision Trees (DT) and Random Forest (RF)
3.2.5. Support Vector Machine (SVM)
4. Applications of E-Nose in Tea Quality Evaluation
5. Challenges and Future Perspectives
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Sensor Type | Description | Reference |
---|---|---|
Metal Oxide Semiconductor (MOS) Sensors | MOS sensors are the most widely used sensors in the beverage and food industries. These detect the target volatile gas molecules via oxidation–reduction reactions between the gas molecules and the chemisorbed oxygen species on their sensing material surfaces. These types of sensors offer the advantages of high sensitivity towards hydrogen and unsaturated hydrocarbons or solvent vapors containing hydrogen atoms, stability over time, fast response, and ease of use. The main disadvantage is the requirement to operate at a high temperature (150–400 °C), which leads to considerable energy usage. | [13,21] |
Conducting Polymer (CP) Sensors | CP sensors are the second most widely used gas sensors in the food industry after MOS sensors. Their working principle is based on the changes in electrical resistance due to the adsorption of volatile gases on the sensing surface. These offer high sensitivity to detect volatile gas molecules, fast response times, and less energy consumption. The main disadvantage is their high susceptibility to environmental humidity. | [13,22] |
Surface Acoustic Wave (SAW) Sensors | SAW sensors are utilized in the food industry for the rapid detection of spoilage and pathogens in food. These types of sensors use acoustic (mechanical) waves that are transmitted through the sensing surface on the sorption of volatile molecules. As a result, changes in velocity or amplitude occur. These types of sensors offer high sensitivity, fast response, and good precision. However, they have poor signal-to-noise ratios and are affected by humidity. | [13,22,23] |
Metal Oxide Semiconductor Field Effect Transistors (MOSFETs) | MOSFETs have been utilized in a variety of food-related analyses, such as food cooking, production of juice, and fermentation. Any reaction of volatile gas molecules changes the insulator properties or metal gate, which alters the electrical properties of the MOSFET sensors, resulting in a change in the drain current. High sensitivity, low susceptibility to humidity, and small sensor size are the advantages of MOSFETs. However, they require environmental control, show baseline drift, and have low sensitivity to carbon dioxide and ammonia. | [12,22,24] |
Electrochemical (EC) Sensors | EC sensors work on the principle of interaction between the volatile gaseous molecules of interest and the sensing materials that generate the electrical signals. In other words, EC sensors work on the amperometry principle, which generates current signals that are related to analyte concentration by Faraday’s law and the laws of mass transport. These sensors require low power consumption and are resistant to changes in relative humidity. However, they do offer a limitation of cross-sensitivity to some of the volatile compounds in the samples. | [22,25,26] |
Optical Sensors | Optical sensors are based on the measurement of light modulation characteristics, such as changes in wavelength, color, and light absorbance, upon interaction with gaseous molecules. The advantages include high signal-to-noise ratios and less power consumption. Contrarily, these sensors offer less adaptability to the environment and lower accuracy levels for long-distance measurements. | [14,22,27] |
Colorimetric Sensors | Calorimetric sensors are used in the meat industry to monitor the freshness and spoilage of meat. The detection principle of these sensors is based on color change and absorbance upon interactions between the volatile gaseous molecules and chromogenic materials. These are highly specific to oxidized volatile compounds and give rapid response. However, they require a high operating temperature and provide sensitivity only to oxygen-containing volatile compounds. | [22,28] |
Fluorescence Sensors | Fluorescence sensors are employed for detection of food contaminants. These sensors are based on the detection of fluorescent light emissions from the target gaseous molecules at a lower wavelength. | [22,29] |
Sensor Number | Target Gas |
---|---|
S1 | Aromatic compounds |
S2 | Nitrogen oxides |
S3 | Ammonia |
S4 | Hydrogen |
S5 | Alkenes, less polar compounds, and aromatic compounds |
S6 | Methane broad range |
S7 | Sulphur compounds |
S8 | Alcohols and partially aromatic compounds |
S9 | Sulphur organic compounds and aromatic compounds |
S10 | High concentrations |
S. No. | Tea Variety | Purpose of Analysis | E-Nose Configuration | Pattern Recognition Methods | References |
---|---|---|---|---|---|
1 | Chaoqing Green Tea | To differentiate green teas according to its quality | E-nose system (developed by Agricultural Product Processing and Storage Laboratory, Jiangsu University, Zhenjiang, China) with 8 TGS gas sensors (Figaro Co., Ltd., Osaka, Japan) | PCA, SVM, KNN, and ANN | [9] |
2 | Longjing Tea | To detect tea aroma for tea quality identification | PEN3 (Airsense Analytics, Schwerin, Germany) with 10 MOS sensors | PCA, KNN, SVM and MLR | [38] |
3 | Longjing Tea | To develop a multi-level fusion framework for enhancing tea quality prediction accuracy | Fox 4000 (Alpha M.O.S., Co., Toulouse, France) with 18 MOS sensors | K(LDA), KNN | [8] |
4 | Xihu-Longjing Tea | To classify the grades of tea based on the feature fusion method | Fox 4000 (Alpha MOS Company, Toulouse, France) with 18 MOS sensors | K(PCA), K(LDA), KNN | [55] |
5 | Chinese Chrysanthemum Tea | To differentiate the aroma profiles of teas from different geographical origins | GC Flash E-nose (Alpha M.O.S. Heracles, Toulouse, France) | PCA | [5] |
6 | Pu-erh Tea | To perform classification of two types of teas based on the volatile components | Fox-3000 (Alpha MOS, Toulouse, France) with 12 MOS sensors | PCA | [56] |
7 | Green and Dark Tea | To assess the quality of tea grades | PEN3 (Airsense Analytics GmbH, Schwerin, Germany) with 10 gas sensors | PCA, LDA | [7] |
8 | Black Tea | To investigate in situ discrimination of the quality of tea samples | Lab-made E-nose with 8 MOS sensors (Figaro Engineering Inc., Osaka, Japan) | PCA, LDA, QDA, SVM-linear, SVM-radial | [10] |
9 | Xinyang Maojian Tea | To evaluate the different tastes of tea samples | PEN3 (Win Muster Airsense Analytics Inc., Schwerin, Germany) with 10 MOS sensors | MLR, PLSR, BPNN | [57] |
10 | Black Tea, Yellow Tea, and Green Tea | To evaluate polyphenols of cross-category teas | PEN3 (Win Muster Air-sense Analytics Inc., Schwerin, Germany) with 10 MOS sensors | RF, Grid-SVR, XGBoost | [3] |
11 | Pu-erh Tea | To discriminate between the aroma components of teas from varying storage years | PEN3 (Airsense, Schwerin, Germany) with 10 MOS sensors | LDA, PCA | [58] |
12 | Herbal Tea | To investigate bio-inspired flavor evaluation of teas from different types and brands | PEN3 (Win Muster Airsense Analytics Inc., Schwerin, Germany) with 10 MOS sensors | LDA, SVM, KNN, and PNN | [18] |
13 | Pu’er Tea | To devise a rapid method for determining the type, blended as well as mixed ratios of tea | PEN 3 (Airsense Inc., Schwerin, Germany) with 10 MOS sensors | LDA, CNN, PLSR | [59] |
14 | Green Tea | To evaluate the quality grades of different teas | PEN3 (Airsense Analytics GmbH, Schwerin, Germany) with 10 MOS sensors | PCA, LDA, RF, SVM, PLSR, KRR, SVR, MBPNN | [60] |
15 | Jasmine Tea | To examine the differences in aroma characteristics in different tea grades | ISENSO (Shanghai Ongshen Intelligent Technology Co., Ltd., Shanghai, China) with 10 MOS sensors | PCA, HCA | [61] |
16 | Xihu Longjing Tea | To detect teas from different geographical indications | PEN3 (Airsense Analytics GmbH, Schwerin, Germany) with 10 MOS sensors | PCA, SVM, RF, XGBoost, LightGBM, TrLightGBM, BPNN | [62] |
17 | Congou Black Tea | To investigate the aroma characteristics of tea during the variable-temperature final firing | Heracles II ultra-fast gas phase E-nose (Alpha M.O.S., Toulouse, France) | PLS-DA | [63] |
18 | Longjing Tea | To determine the different quality grades of green teas | PEN2 (Airsense Company, Schwerin, Germany) with 10 MOS sensors | PCA, DFA, PLSR | [64] |
19 | Pu-erh Tea | To rapidly characterize the volatile compounds in tea | Heracles II gas phase E-nose (Alpha M.O.S., Toulouse, France) | OPLS-DA | [65] |
20 | Longjing tea | To determine the tea quality of different grades | PEN3 (Airsense Corporation, Schwerin, Germany), with 10 MOS sensors | PCA, MDS, LDA, LR, SVM | [1] |
21 | Mulberry Tea | To develop a rapid and non-destructive method for visualizing the volatile profiles of different leaf tea samples of various grades | Fox 4000 (Alpha M.O.S., Toulouse, France) with 18 MOS sensors | PCA, LDA | [66] |
22 | Green Tea | To propose a multi-technology fusion system based on E-nose to evaluate pesticide residues in tea | Fox 4000 (ALPHA MOS, Toulouse, France) with 18 MOS sensors | PLS, SVM, ANN | [67] |
23 | Fuyun 6 and Jinguanyin Black Tea | To investigate the aroma differences of tea produced from two different tea cultivars | E-nose (Shanghai Ongshen Intelligent Technology Co., Ltd., Shanghai, China) with 10 sensors | LDA, PCA, HCA, OPLS-DA | [68] |
24 | Green Tea | To investigate the changes in volatile profiles of tea using different drying processes | Heracles II gas phase E-nose (Alpha M.O.S., Toulouse, France) | PLS-DA, PCA | [69] |
25 | Dianhong Black Tea | To investigate the quality of tea infusions | Heracles II fast GC-E-Nose (Alpha M.O.S., Toulouse, France) | PLS-DA, FDA | [70] |
26 | Oolong Tea | To discriminate between the smell of tea leaves during various stages of manufacturing process | E-nose with 12 MOS sensors (Figaro USA, Inc., Arlington Heights, IL, USA and Nissha FIS, Inc., Osaka, Japan) | LDA | [71] |
27 | Shucheng Xiaolanhua Tea | To enhance the performance of tea quality detection | PEN3 (Airsense Analytics, Schwerin, Germany) with 10 MOS sensors | K(PCA), KECA, SVM | [72] |
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Kaushal, S.; Nayi, P.; Rahadian, D.; Chen, H.-H. Applications of Electronic Nose Coupled with Statistical and Intelligent Pattern Recognition Techniques for Monitoring Tea Quality: A Review. Agriculture 2022, 12, 1359. https://doi.org/10.3390/agriculture12091359
Kaushal S, Nayi P, Rahadian D, Chen H-H. Applications of Electronic Nose Coupled with Statistical and Intelligent Pattern Recognition Techniques for Monitoring Tea Quality: A Review. Agriculture. 2022; 12(9):1359. https://doi.org/10.3390/agriculture12091359
Chicago/Turabian StyleKaushal, Sushant, Pratik Nayi, Didit Rahadian, and Ho-Hsien Chen. 2022. "Applications of Electronic Nose Coupled with Statistical and Intelligent Pattern Recognition Techniques for Monitoring Tea Quality: A Review" Agriculture 12, no. 9: 1359. https://doi.org/10.3390/agriculture12091359
APA StyleKaushal, S., Nayi, P., Rahadian, D., & Chen, H. -H. (2022). Applications of Electronic Nose Coupled with Statistical and Intelligent Pattern Recognition Techniques for Monitoring Tea Quality: A Review. Agriculture, 12(9), 1359. https://doi.org/10.3390/agriculture12091359