Ripeness Prediction of Postharvest Kiwifruit Using a MOS E-Nose Combined with Chemometrics
Abstract
:1. Introduction
2. Materials and Methods
2.1. Kiwifruit Samples
2.2. Electronic Nose Detection
2.3. Determination of SSC, Firmness and Overall Ripeness
2.4. Statistical Analysis of E-Nose Data
2.4.1. Different Feature Extraction Methods
2.4.2. Quantitative Regression Methods
2.4.3. Distribution of Data Sets and Assessment of Models
3. Results
3.1. Results of SSC, Firmness and Overall Ripeness Determination
3.2. Discrimination of Different Ripening Times of Kiwifruit Based on LDA
3.3. Quantitative Prediction of Overall Ripeness, SSC and Firmness
3.3.1. Regression Results Based on PLSR
3.3.2. Regression Results based on SVM
3.3.3. Regression Results Based on RF
4. Discussion
5. Conclusions
- The overall ripeness of postharvest kiwifruit was classified into three ripening stages (unripe, mid-ripe and eating ripe) based on the evaluation criteria. The average SSC and firmness of postharvest kiwifruit was 16.48% and 4.44 N, respectively, at the eating ripe stage.
- The LDA results based on three different feature extraction methods showed that the samples at different ripening times could be discriminated. The 70th s values method had the best performance in discriminating the samples with different overall ripeness with an original accuracy rate of 100% and a 99.4% cross-validation accuracy rate.
- The regression results based on different pattern recognition methods showed that the overall ripeness, SSC and firmness of postharvest kiwifruit could be well predicted. The RF algorithm had the best performance in predicting the three ripeness indexes with higher R2 and lower RMSE compared with PLSR and SVM.
Author Contributions
Funding
Conflicts of Interest
References
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Number | Name | Sensitive Substances | Reference |
---|---|---|---|
S1 | W1C | Aromatic compounds | Toluene, 10 ppm |
S2 | W5S | Very sensitive, broad range sensitivity, react on nitrogen oxides, very sensitive with negative signal | NO2, 1 ppm |
S3 | W3C | Ammonia, used as sensor for aromatic compounds | Propane, 1 ppm |
S4 | W6S | Mainly hydrogen, selectively, (breath gases) | H2, 100 ppb |
S5 | W5C | Alkanes, aromatic compounds, less polar compounds | Propane, 1 ppm |
S6 | W1S | Sensitive to methane (environment) ca. 10 ppm. Broad range, similar to No. 8 | CH3, 100 ppm |
S7 | W1W | Reacts on sulphur compounds, H2S 0.1 ppm. Otherwise sensitive to many terpenes and sulphur organic compounds, which are important for smell, limonene, pyrazine | H2S, 1 ppm |
S8 | W2S | Detects alcohol’s, partially aromatic compounds, broad range | CO, 100 ppm |
S9 | W2W | Aromatics compounds, sulphur organic compounds | H2S, 1 ppm |
S10 | W3S | Reacts on high concentrations >100 ppm, sometime very selective (methane) | CH3, 10CH3, 100 ppm |
Scale | 1 | 2 | 3 | 4 | 5 | ||
SSC (%) | <6 | 6–10 | 10–14 | 14–18 | >18 | ||
Firmness (N) | >15 | 10–15 | 5–10 | 1–5 | <1 | ||
Total scale | 2–5 | 6–8 | 9–10 | ||||
Overall ripeness | Unripe | Mid ripe | Eating ripe |
Ripening Day | day0 | day1 | day2 | day3 | day4 | day5 | day6 | day7 |
---|---|---|---|---|---|---|---|---|
SSC (%) | 5.12 (±0.97) | 7.51 (±1.18) | 8.92 (±1.26) | 11.36 (±1.23) | 14.12 (±0.66) | 14.46 (±1.32) | 16.13 (±1.03) | 16.82 (±1.14) |
Firmness (N) | 50.62 (±4.18) | 53.06 (±5.38) | 54.03 (±7.02) | 51.29 (±6.24) | 31.06 (±5.38) | 21.76 (±6.46) | 5.77 (±1.90) | 3.12 (±0.65) |
Overall Ripeness | Unripe | Mid Ripe | Eating Ripe |
---|---|---|---|
Quantity | 79 | 41 | 40 |
SSC (%) | 8.16 (±2.50) | 14.26 (±1.05) | 16.48 (±1.13) |
Firmness (N) | 52.30 (±5.88) | 26.95 (±8.20) | 4.44 (±1.94) |
Feature Extraction Methods | Ripening Day | Overall Ripeness | ||
---|---|---|---|---|
The Original Accuracy Rate (%) | The Cross-Validation Accuracy Rate (%) | The Original Accuracy Rate (%) | The Cross-Validation Accuracy Rate (%) | |
Max/Min values | 93.1 | 89.4 | 98.8 | 97.5 |
Difference values | 90.0 | 86.9 | 98.8 | 98.8 |
70th s values | 93.1 | 91.3 | 100.0 | 99.4 |
Algorithms | Ripeness Indexes | Training Set | Testing Set | ||
---|---|---|---|---|---|
R2 | RMSE | R2 | RMSE | ||
PLSR | Overall ripeness | 0.9341 | 0.2107 | 0.9430 | 0.2075 |
SSC | 0.7931 | 1.9649 | 0.8015 | 1.8969 | |
Firmness | 0.8848 | 7.1668 | 0.9014 | 7.1583 | |
SVM | Overall ripeness | 0.9921 | 0.0770 | 0.9790 | 0.1205 |
SSC | 0.9235 | 1.1590 | 0.8948 | 1.4041 | |
Firmness | 0.9390 | 5.1424 | 0.9128 | 6.3457 | |
RF | Overall ripeness | 0.9928 | 0.0684 | 0.9928 | 0.0722 |
SSC | 0.9749 | 0.6675 | 0.9143 | 1.1957 | |
Firmness | 0.9814 | 2.9343 | 0.9290 | 5.3901 |
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Du, D.; Wang, J.; Wang, B.; Zhu, L.; Hong, X. Ripeness Prediction of Postharvest Kiwifruit Using a MOS E-Nose Combined with Chemometrics. Sensors 2019, 19, 419. https://doi.org/10.3390/s19020419
Du D, Wang J, Wang B, Zhu L, Hong X. Ripeness Prediction of Postharvest Kiwifruit Using a MOS E-Nose Combined with Chemometrics. Sensors. 2019; 19(2):419. https://doi.org/10.3390/s19020419
Chicago/Turabian StyleDu, Dongdong, Jun Wang, Bo Wang, Luyi Zhu, and Xuezhen Hong. 2019. "Ripeness Prediction of Postharvest Kiwifruit Using a MOS E-Nose Combined with Chemometrics" Sensors 19, no. 2: 419. https://doi.org/10.3390/s19020419
APA StyleDu, D., Wang, J., Wang, B., Zhu, L., & Hong, X. (2019). Ripeness Prediction of Postharvest Kiwifruit Using a MOS E-Nose Combined with Chemometrics. Sensors, 19(2), 419. https://doi.org/10.3390/s19020419