Early Warning Potential of Banana Spoilage Based on 3D Fluorescence Data of Storage Room Gas

In order to realize the early warning of spoilage during banana storage, 3D fluorescence data of the storage room gas corresponding to two batches of bananas with different storage dates were collected. On the basis of scattering elimination and Savitzky-Golay (SG) smoothing treatment of these colle...

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Veröffentlicht in:Food and bioprocess technology 2021-10, Vol.14 (10), p.1946-1961
Hauptverfasser: Li, Mengli, Yin, Yong, Yu, Huichun, Yuan, Yunxia, Liu, Xueru
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container_end_page 1961
container_issue 10
container_start_page 1946
container_title Food and bioprocess technology
container_volume 14
creator Li, Mengli
Yin, Yong
Yu, Huichun
Yuan, Yunxia
Liu, Xueru
description In order to realize the early warning of spoilage during banana storage, 3D fluorescence data of the storage room gas corresponding to two batches of bananas with different storage dates were collected. On the basis of scattering elimination and Savitzky-Golay (SG) smoothing treatment of these collected fluorescence data, three methods, namely, contour maps, fluorescence regional integration (FRI), and systematic cluster analysis (SCA), were employed to define the benchmark of banana spoilage. Then, to eliminate the dimension influence between different physical and chemical indicators, principal component analysis (PCA) was used to fusion the physical and chemical data of different indicators, and the principal component was selected as fusion data. And then, according to least square regression (LSR), the feature wavelengths were selected for the two batches of test data, and the same and similar ones as the common feature wavelengths were also picked. Finally, a unified spoilage benchmark for the two batches of bananas was constructed by the common feature wavelengths. Based on their respective benchmarks and the unified benchmark, Mahalanobis distance (MD) was adopted to realize the early warning of banana spoilage with two batches. The research results show that the MD can realize early warning of banana spoilage during storage for different batches according to the unified benchmark. This shows that the determination methods of the spoilage benchmark and the early warning method during banana storage are effective.
doi_str_mv 10.1007/s11947-021-02691-2
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On the basis of scattering elimination and Savitzky-Golay (SG) smoothing treatment of these collected fluorescence data, three methods, namely, contour maps, fluorescence regional integration (FRI), and systematic cluster analysis (SCA), were employed to define the benchmark of banana spoilage. Then, to eliminate the dimension influence between different physical and chemical indicators, principal component analysis (PCA) was used to fusion the physical and chemical data of different indicators, and the principal component was selected as fusion data. And then, according to least square regression (LSR), the feature wavelengths were selected for the two batches of test data, and the same and similar ones as the common feature wavelengths were also picked. Finally, a unified spoilage benchmark for the two batches of bananas was constructed by the common feature wavelengths. Based on their respective benchmarks and the unified benchmark, Mahalanobis distance (MD) was adopted to realize the early warning of banana spoilage with two batches. The research results show that the MD can realize early warning of banana spoilage during storage for different batches according to the unified benchmark. 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On the basis of scattering elimination and Savitzky-Golay (SG) smoothing treatment of these collected fluorescence data, three methods, namely, contour maps, fluorescence regional integration (FRI), and systematic cluster analysis (SCA), were employed to define the benchmark of banana spoilage. Then, to eliminate the dimension influence between different physical and chemical indicators, principal component analysis (PCA) was used to fusion the physical and chemical data of different indicators, and the principal component was selected as fusion data. And then, according to least square regression (LSR), the feature wavelengths were selected for the two batches of test data, and the same and similar ones as the common feature wavelengths were also picked. Finally, a unified spoilage benchmark for the two batches of bananas was constructed by the common feature wavelengths. 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subjects Agriculture
Bananas
Benchmarks
Biotechnology
Chemical indicators
Chemistry
Chemistry and Materials Science
Chemistry/Food Science
Cluster analysis
Fluorescence
Food Science
Fruits
Original Research
Principal components analysis
Spoilage
Statistical analysis
Wavelengths
title Early Warning Potential of Banana Spoilage Based on 3D Fluorescence Data of Storage Room Gas
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