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TinyML-Sensor for Shelf Life Estimation of Fresh Date Fruits

Fresh dates have a limited shelf life and are susceptible to spoilage, which can lead to economic losses for producers and suppliers. The problem of accurate shelf life estimation for fresh dates is essential for various stakeholders involved in the production, supply, and consumption of dates. Modi...

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Autores principales: Srinivasagan, Ramasamy, Mohammed, Maged, Alzahrani, Ali
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10457898/
https://www.ncbi.nlm.nih.gov/pubmed/37631618
http://dx.doi.org/10.3390/s23167081
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author Srinivasagan, Ramasamy
Mohammed, Maged
Alzahrani, Ali
author_facet Srinivasagan, Ramasamy
Mohammed, Maged
Alzahrani, Ali
author_sort Srinivasagan, Ramasamy
collection PubMed
description Fresh dates have a limited shelf life and are susceptible to spoilage, which can lead to economic losses for producers and suppliers. The problem of accurate shelf life estimation for fresh dates is essential for various stakeholders involved in the production, supply, and consumption of dates. Modified atmosphere packaging (MAP) is one of the essential methods that improves the quality and increases the shelf life of fresh dates by reducing the rate of ripening. Therefore, this study aims to apply fast and cost-effective non-destructive techniques based on machine learning (ML) to predict and estimate the shelf life of stored fresh date fruits under different conditions. Predicting and estimating the shelf life of stored date fruits is essential for scheduling them for consumption at the right time in the supply chain to benefit from the nutritional advantages of fresh dates. The study observed the physicochemical attributes of fresh date fruits, including moisture content, total soluble solids, sugar content, tannin content, pH, and firmness, during storage in a vacuum and MAP at 5 and 24 °C every 7 days to determine the shelf life using a non-destructive approach. TinyML-compatible regression models were employed to predict the stages of fruit development during the storage period. The decrease in the shelf life of the fruits begins when they transition from the Khalal stage to the Rutab stage, and the shelf life ends when they start to spoil or ripen to the Tamr stage. Low-cost Visible–Near–Infrared (VisNIR) spectral sensors (AS7265x—multi-spectral) were used to capture the internal physicochemical attributes of the fresh fruit. Regression models were employed for shelf life estimation. The findings indicated that vacuum and modified atmosphere packaging with 20% CO(2) and N balance efficiently increased the shelf life of the stored fresh fruit to 53 days and 44 days, respectively, when maintained at 5 °C. However, the shelf life decreased to 44 and 23 days when the vacuum and modified atmosphere packaging with 20% CO(2) and N balance were maintained at room temperature (24 °C). Edge Impulse supports the training and deployment of models on low-cost microcontrollers, which can be used to predict real-time estimations of the shelf life of fresh dates using TinyML sensors.
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spelling pubmed-104578982023-08-27 TinyML-Sensor for Shelf Life Estimation of Fresh Date Fruits Srinivasagan, Ramasamy Mohammed, Maged Alzahrani, Ali Sensors (Basel) Article Fresh dates have a limited shelf life and are susceptible to spoilage, which can lead to economic losses for producers and suppliers. The problem of accurate shelf life estimation for fresh dates is essential for various stakeholders involved in the production, supply, and consumption of dates. Modified atmosphere packaging (MAP) is one of the essential methods that improves the quality and increases the shelf life of fresh dates by reducing the rate of ripening. Therefore, this study aims to apply fast and cost-effective non-destructive techniques based on machine learning (ML) to predict and estimate the shelf life of stored fresh date fruits under different conditions. Predicting and estimating the shelf life of stored date fruits is essential for scheduling them for consumption at the right time in the supply chain to benefit from the nutritional advantages of fresh dates. The study observed the physicochemical attributes of fresh date fruits, including moisture content, total soluble solids, sugar content, tannin content, pH, and firmness, during storage in a vacuum and MAP at 5 and 24 °C every 7 days to determine the shelf life using a non-destructive approach. TinyML-compatible regression models were employed to predict the stages of fruit development during the storage period. The decrease in the shelf life of the fruits begins when they transition from the Khalal stage to the Rutab stage, and the shelf life ends when they start to spoil or ripen to the Tamr stage. Low-cost Visible–Near–Infrared (VisNIR) spectral sensors (AS7265x—multi-spectral) were used to capture the internal physicochemical attributes of the fresh fruit. Regression models were employed for shelf life estimation. The findings indicated that vacuum and modified atmosphere packaging with 20% CO(2) and N balance efficiently increased the shelf life of the stored fresh fruit to 53 days and 44 days, respectively, when maintained at 5 °C. However, the shelf life decreased to 44 and 23 days when the vacuum and modified atmosphere packaging with 20% CO(2) and N balance were maintained at room temperature (24 °C). Edge Impulse supports the training and deployment of models on low-cost microcontrollers, which can be used to predict real-time estimations of the shelf life of fresh dates using TinyML sensors. MDPI 2023-08-10 /pmc/articles/PMC10457898/ /pubmed/37631618 http://dx.doi.org/10.3390/s23167081 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Srinivasagan, Ramasamy
Mohammed, Maged
Alzahrani, Ali
TinyML-Sensor for Shelf Life Estimation of Fresh Date Fruits
title TinyML-Sensor for Shelf Life Estimation of Fresh Date Fruits
title_full TinyML-Sensor for Shelf Life Estimation of Fresh Date Fruits
title_fullStr TinyML-Sensor for Shelf Life Estimation of Fresh Date Fruits
title_full_unstemmed TinyML-Sensor for Shelf Life Estimation of Fresh Date Fruits
title_short TinyML-Sensor for Shelf Life Estimation of Fresh Date Fruits
title_sort tinyml-sensor for shelf life estimation of fresh date fruits
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10457898/
https://www.ncbi.nlm.nih.gov/pubmed/37631618
http://dx.doi.org/10.3390/s23167081
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