Transfer learning in near infrared spectroscopy for stingless bee honey quality prediction across different months

Near infrared spectroscopy (NIRS) coupled with machine learning has demonstrated its capability as an efficient secondary measurement method in various applications. However, a NIRS predictive model might be unable to maintain its accuracy when it is applied to samples that were acquired from diff...

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Main Authors: Suarin, Nur Aisyah Syafinaz, Chia, Kim Seng, Mohamad Fuzi, Siti Fatimah Zaharah
Format: Article
Language:en
Published: Elsevier 2024
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Online Access:http://eprints.uthm.edu.my/12065/1/J17662_1ab9681b5721b5a73029efc28412fc33.pdf
http://eprints.uthm.edu.my/12065/
https://doi.org/10.1016/j.knosys.2024.111817
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author Suarin, Nur Aisyah Syafinaz
Chia, Kim Seng
Mohamad Fuzi, Siti Fatimah Zaharah
author_facet Suarin, Nur Aisyah Syafinaz
Chia, Kim Seng
Mohamad Fuzi, Siti Fatimah Zaharah
author_sort Suarin, Nur Aisyah Syafinaz
building UTHM Library
collection Institutional Repository
content_provider Universiti Tun Hussein Onn Malaysia
content_source UTHM Institutional Repository
continent Asia
country Malaysia
description Near infrared spectroscopy (NIRS) coupled with machine learning has demonstrated its capability as an efficient secondary measurement method in various applications. However, a NIRS predictive model might be unable to maintain its accuracy when it is applied to samples that were acquired from different periods. Particularly, the qualities of stingless bee honey are affected by various uncontrolled factors, e.g. ecosystem, origins, and weather. Since it is unrealistic to have a NIRS dataset that can represent unforeseen future changes, an algorithm that can adapt existing data for new samples is worth to be investigated. Thus, this study aims to evaluate the feasibility of homogenous transfer learning approaches to overcome data constraints in developing NIRS predictive models of stingless bee honey qualities across different months. First, the near infrared transmittance spectra were acquired across honey samples prior to their respective conventional quality measurements in four different analysis months. Then, data from different analysis months were used as source and target datasets. Next, joint distri bution adaptation based partial least square (JDA-PLS) and transfer component analysis based PLS (TCA-PLS) were implemented to establish NIRS predictive models of moisture, hydroxymethylfurfural (HMF), and glucose quality. Results show that the proposed TCA-PLS outperformed JDA-PLS and PLS by achieving the lowest RMSEP of 3.401 % and 0.804 mg/kg in predicting the moisture and glucose of stingless bee honey, respectively, across different months. Lastly, finding shows that both JDA and TCA were inefficacy when the label distributions of the calibration and validation datasets were similar.
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spelling my.uthm.eprints-120652025-04-24T03:05:01Z http://eprints.uthm.edu.my/12065/ Transfer learning in near infrared spectroscopy for stingless bee honey quality prediction across different months Suarin, Nur Aisyah Syafinaz Chia, Kim Seng Mohamad Fuzi, Siti Fatimah Zaharah TP Chemical technology Near infrared spectroscopy (NIRS) coupled with machine learning has demonstrated its capability as an efficient secondary measurement method in various applications. However, a NIRS predictive model might be unable to maintain its accuracy when it is applied to samples that were acquired from different periods. Particularly, the qualities of stingless bee honey are affected by various uncontrolled factors, e.g. ecosystem, origins, and weather. Since it is unrealistic to have a NIRS dataset that can represent unforeseen future changes, an algorithm that can adapt existing data for new samples is worth to be investigated. Thus, this study aims to evaluate the feasibility of homogenous transfer learning approaches to overcome data constraints in developing NIRS predictive models of stingless bee honey qualities across different months. First, the near infrared transmittance spectra were acquired across honey samples prior to their respective conventional quality measurements in four different analysis months. Then, data from different analysis months were used as source and target datasets. Next, joint distri bution adaptation based partial least square (JDA-PLS) and transfer component analysis based PLS (TCA-PLS) were implemented to establish NIRS predictive models of moisture, hydroxymethylfurfural (HMF), and glucose quality. Results show that the proposed TCA-PLS outperformed JDA-PLS and PLS by achieving the lowest RMSEP of 3.401 % and 0.804 mg/kg in predicting the moisture and glucose of stingless bee honey, respectively, across different months. Lastly, finding shows that both JDA and TCA were inefficacy when the label distributions of the calibration and validation datasets were similar. Elsevier 2024 Article PeerReviewed text en http://eprints.uthm.edu.my/12065/1/J17662_1ab9681b5721b5a73029efc28412fc33.pdf Suarin, Nur Aisyah Syafinaz and Chia, Kim Seng and Mohamad Fuzi, Siti Fatimah Zaharah (2024) Transfer learning in near infrared spectroscopy for stingless bee honey quality prediction across different months. Knowledge-Based Systems, 295. pp. 1-14. https://doi.org/10.1016/j.knosys.2024.111817
spellingShingle TP Chemical technology
Suarin, Nur Aisyah Syafinaz
Chia, Kim Seng
Mohamad Fuzi, Siti Fatimah Zaharah
Transfer learning in near infrared spectroscopy for stingless bee honey quality prediction across different months
title Transfer learning in near infrared spectroscopy for stingless bee honey quality prediction across different months
title_full Transfer learning in near infrared spectroscopy for stingless bee honey quality prediction across different months
title_fullStr Transfer learning in near infrared spectroscopy for stingless bee honey quality prediction across different months
title_full_unstemmed Transfer learning in near infrared spectroscopy for stingless bee honey quality prediction across different months
title_short Transfer learning in near infrared spectroscopy for stingless bee honey quality prediction across different months
title_sort transfer learning in near infrared spectroscopy for stingless bee honey quality prediction across different months
topic TP Chemical technology
url http://eprints.uthm.edu.my/12065/1/J17662_1ab9681b5721b5a73029efc28412fc33.pdf
http://eprints.uthm.edu.my/12065/
https://doi.org/10.1016/j.knosys.2024.111817
url_provider http://eprints.uthm.edu.my/