A rotating hydroponics for lettuce cultivation with fuzzy-based adaptive speed control using computer vision-based spectral phenotypes

In the coming years, the world population is expected to go as high as 9.8 billion in 2050, according to the United Nations organization. This phenomenon leads to the increasing requirement for food supply and space. To address these issues, experts see indoor urban hydroponic farming as a solution...

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Main Author: Aquino, Heinrick L.
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Language:English
Published: Animo Repository 2022
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Online Access:https://animorepository.dlsu.edu.ph/etdm_ece/22
https://animorepository.dlsu.edu.ph/context/etdm_ece/article/1022/viewcontent/A_Rotating_Hydroponics4_for_Lettuce_Cultivation_With_Fuzzy_Based_A__1__Redacted.pdf
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spelling oai:animorepository.dlsu.edu.ph:etdm_ece-10222023-01-31T01:52:04Z A rotating hydroponics for lettuce cultivation with fuzzy-based adaptive speed control using computer vision-based spectral phenotypes Aquino, Heinrick L. In the coming years, the world population is expected to go as high as 9.8 billion in 2050, according to the United Nations organization. This phenomenon leads to the increasing requirement for food supply and space. To address these issues, experts see indoor urban hydroponic farming as a solution to meet the demand. Various studies about the applications and yield of different hydroponic configurations, such as the Nutrient Film Technique (NFT), are available; however, experiments about the potential of rotating hydroponics are still minimal. The health of leafy vegetables, such as Lactuca sativa, is commonly determined through inspection of their appearance. Hence, early detection of any manifestation of diseases on lettuce leaves could prevent the further destruction of the yield. In this research study, computational intelligence models were utilized in the development of lettuce health classification through extracted spectral features of lettuce. This computer vision-based and non-invasive method of assessing healthy and chlorotic leaves, or the yellowing and white discoloration on leaves caused by drought or lack of light, eradicates the manual, labor-intensive, and subjective assessment of lettuce health. The classification result was then used in adjusting the adaptive rotation of the growery through fuzzy logic. This is responsible for the fertigation or the absorption of the water-nutrient mixture appropriate for cultivar's needs; hence experiments to know lettuce growth under different rotation speeds were conducted. The system is operated through sensors in control for data acquisition, microcontroller, and actuators. Data logging was done wirelessly and can be monitored via a cloud-based website. The computational models were trained using the 533 cultivar images collected in the initial cultivation and evaluated for their accuracy. System performance was evaluated by its average fresh weight yield with adaptive rotation. The results of this work showed that L*,a*,b* spectral features and SVM model is most suitable in this application of lettuce health classification, with SVM having 100% accuracy and the fastest machine learning model with 36.66 seconds inference time. The 0.75 rpm to 2 rpm growery speed provided good lettuce growth, and it was observed that greater rpm means greater lettuce growth performance due to more nutrient absorption opportunity. However, as speed increases, the percentage increase in growth decreases. Hence, energy-wise, faster speeds than 2 rpm will not be practical anymore. Compared to rotating hydroponics without rotation, the experiment with adaptive rotation recorded an increased 39.61% of average fresh weight yield. In addition, the system fresh weight yield is 12.92% and 44.12% higher than the recorded yield in other NFT and rotating hydroponics studies. Index Terms—rotating hydroponics, lettuce, computer vision, machine learning 2022-11-22T08:00:00Z text application/pdf https://animorepository.dlsu.edu.ph/etdm_ece/22 https://animorepository.dlsu.edu.ph/context/etdm_ece/article/1022/viewcontent/A_Rotating_Hydroponics4_for_Lettuce_Cultivation_With_Fuzzy_Based_A__1__Redacted.pdf Electronics And Communications Engineering Master's Theses English Animo Repository Hydroponics Lettuce—Health Lettuce—Growing media Computer vision Electrical and Computer Engineering
institution De La Salle University
building De La Salle University Library
continent Asia
country Philippines
Philippines
content_provider De La Salle University Library
collection DLSU Institutional Repository
language English
topic Hydroponics
Lettuce—Health
Lettuce—Growing media
Computer vision
Electrical and Computer Engineering
spellingShingle Hydroponics
Lettuce—Health
Lettuce—Growing media
Computer vision
Electrical and Computer Engineering
Aquino, Heinrick L.
A rotating hydroponics for lettuce cultivation with fuzzy-based adaptive speed control using computer vision-based spectral phenotypes
description In the coming years, the world population is expected to go as high as 9.8 billion in 2050, according to the United Nations organization. This phenomenon leads to the increasing requirement for food supply and space. To address these issues, experts see indoor urban hydroponic farming as a solution to meet the demand. Various studies about the applications and yield of different hydroponic configurations, such as the Nutrient Film Technique (NFT), are available; however, experiments about the potential of rotating hydroponics are still minimal. The health of leafy vegetables, such as Lactuca sativa, is commonly determined through inspection of their appearance. Hence, early detection of any manifestation of diseases on lettuce leaves could prevent the further destruction of the yield. In this research study, computational intelligence models were utilized in the development of lettuce health classification through extracted spectral features of lettuce. This computer vision-based and non-invasive method of assessing healthy and chlorotic leaves, or the yellowing and white discoloration on leaves caused by drought or lack of light, eradicates the manual, labor-intensive, and subjective assessment of lettuce health. The classification result was then used in adjusting the adaptive rotation of the growery through fuzzy logic. This is responsible for the fertigation or the absorption of the water-nutrient mixture appropriate for cultivar's needs; hence experiments to know lettuce growth under different rotation speeds were conducted. The system is operated through sensors in control for data acquisition, microcontroller, and actuators. Data logging was done wirelessly and can be monitored via a cloud-based website. The computational models were trained using the 533 cultivar images collected in the initial cultivation and evaluated for their accuracy. System performance was evaluated by its average fresh weight yield with adaptive rotation. The results of this work showed that L*,a*,b* spectral features and SVM model is most suitable in this application of lettuce health classification, with SVM having 100% accuracy and the fastest machine learning model with 36.66 seconds inference time. The 0.75 rpm to 2 rpm growery speed provided good lettuce growth, and it was observed that greater rpm means greater lettuce growth performance due to more nutrient absorption opportunity. However, as speed increases, the percentage increase in growth decreases. Hence, energy-wise, faster speeds than 2 rpm will not be practical anymore. Compared to rotating hydroponics without rotation, the experiment with adaptive rotation recorded an increased 39.61% of average fresh weight yield. In addition, the system fresh weight yield is 12.92% and 44.12% higher than the recorded yield in other NFT and rotating hydroponics studies. Index Terms—rotating hydroponics, lettuce, computer vision, machine learning
format text
author Aquino, Heinrick L.
author_facet Aquino, Heinrick L.
author_sort Aquino, Heinrick L.
title A rotating hydroponics for lettuce cultivation with fuzzy-based adaptive speed control using computer vision-based spectral phenotypes
title_short A rotating hydroponics for lettuce cultivation with fuzzy-based adaptive speed control using computer vision-based spectral phenotypes
title_full A rotating hydroponics for lettuce cultivation with fuzzy-based adaptive speed control using computer vision-based spectral phenotypes
title_fullStr A rotating hydroponics for lettuce cultivation with fuzzy-based adaptive speed control using computer vision-based spectral phenotypes
title_full_unstemmed A rotating hydroponics for lettuce cultivation with fuzzy-based adaptive speed control using computer vision-based spectral phenotypes
title_sort rotating hydroponics for lettuce cultivation with fuzzy-based adaptive speed control using computer vision-based spectral phenotypes
publisher Animo Repository
publishDate 2022
url https://animorepository.dlsu.edu.ph/etdm_ece/22
https://animorepository.dlsu.edu.ph/context/etdm_ece/article/1022/viewcontent/A_Rotating_Hydroponics4_for_Lettuce_Cultivation_With_Fuzzy_Based_A__1__Redacted.pdf
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