Deep learning-driven predictive modelling for optimizing stingless beekeeping yields / Noor Hafizah Khairul Anuar ... [et al.]

Environmental factors like temperature, solar irradiance, and rain may influence the health and productivity of stingless bees. This paper aims to investigate the best approaches applied in meliponiculture to predict beehive health and products based on environmental variables and bee activity data....

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Main Authors: Khairul Anuar, Noor Hafizah, Md Yunus, Mohd Amri, Baharudin, Muhammad Ariff, Ibrahim, Sallehuddin, Sahlan, Shafishuhaza
Format: Article
Language:English
Published: UiTM Cawangan Perlis 2024
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Online Access:https://ir.uitm.edu.my/id/eprint/103721/1/103721.pdf
https://ir.uitm.edu.my/id/eprint/103721/
https://jcrinn.com/index.php/jcrinn
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Institution: Universiti Teknologi Mara
Language: English
id my.uitm.ir.103721
record_format eprints
spelling my.uitm.ir.1037212024-10-18T09:37:33Z https://ir.uitm.edu.my/id/eprint/103721/ Deep learning-driven predictive modelling for optimizing stingless beekeeping yields / Noor Hafizah Khairul Anuar ... [et al.] jcrinn Khairul Anuar, Noor Hafizah Md Yunus, Mohd Amri Baharudin, Muhammad Ariff Ibrahim, Sallehuddin Sahlan, Shafishuhaza Machine learning Environmental factors like temperature, solar irradiance, and rain may influence the health and productivity of stingless bees. This paper aims to investigate the best approaches applied in meliponiculture to predict beehive health and products based on environmental variables and bee activity data. The data on temperature, humidity, rain, beehive weight, and bee activity traffic utilized in this project were monitored in real-time and saved on the Google Spreadsheet platform. The dataset extracted from the6th of January 2024 to the 5th of February 2024, at a 15-minute time interval comprising a total of 2577 data points was analyzed using various deep learning approaches for best RMSE performance. A single-layer LSTM model with 50 units produced the best RMSE performance of 0.039, representing that the beehive weight was accurately predicted. This predictive capability can help farmers determine the optimum harvesting time based on weight forecasts, ensuring maximum yield and quality. Additionally, by providing early warnings of unwanted conditions such as swarming or potential attacks, this method significantly enhances the ability of beekeepers to take proactive measures to protect their colonies, safeguarding both bee populations and the livelihoods of farmers. UiTM Cawangan Perlis 2024-09 Article PeerReviewed text en https://ir.uitm.edu.my/id/eprint/103721/1/103721.pdf Deep learning-driven predictive modelling for optimizing stingless beekeeping yields / Noor Hafizah Khairul Anuar ... [et al.]. (2024) Journal of Computing Research and Innovation (JCRINN) <https://ir.uitm.edu.my/view/publication/Journal_of_Computing_Research_and_Innovation_=28JCRINN=29/>, 9 (2): 20. pp. 244-252. ISSN 2600-8793 https://jcrinn.com/index.php/jcrinn
institution Universiti Teknologi Mara
building Tun Abdul Razak Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Mara
content_source UiTM Institutional Repository
url_provider http://ir.uitm.edu.my/
language English
topic Machine learning
spellingShingle Machine learning
Khairul Anuar, Noor Hafizah
Md Yunus, Mohd Amri
Baharudin, Muhammad Ariff
Ibrahim, Sallehuddin
Sahlan, Shafishuhaza
Deep learning-driven predictive modelling for optimizing stingless beekeeping yields / Noor Hafizah Khairul Anuar ... [et al.]
description Environmental factors like temperature, solar irradiance, and rain may influence the health and productivity of stingless bees. This paper aims to investigate the best approaches applied in meliponiculture to predict beehive health and products based on environmental variables and bee activity data. The data on temperature, humidity, rain, beehive weight, and bee activity traffic utilized in this project were monitored in real-time and saved on the Google Spreadsheet platform. The dataset extracted from the6th of January 2024 to the 5th of February 2024, at a 15-minute time interval comprising a total of 2577 data points was analyzed using various deep learning approaches for best RMSE performance. A single-layer LSTM model with 50 units produced the best RMSE performance of 0.039, representing that the beehive weight was accurately predicted. This predictive capability can help farmers determine the optimum harvesting time based on weight forecasts, ensuring maximum yield and quality. Additionally, by providing early warnings of unwanted conditions such as swarming or potential attacks, this method significantly enhances the ability of beekeepers to take proactive measures to protect their colonies, safeguarding both bee populations and the livelihoods of farmers.
format Article
author Khairul Anuar, Noor Hafizah
Md Yunus, Mohd Amri
Baharudin, Muhammad Ariff
Ibrahim, Sallehuddin
Sahlan, Shafishuhaza
author_facet Khairul Anuar, Noor Hafizah
Md Yunus, Mohd Amri
Baharudin, Muhammad Ariff
Ibrahim, Sallehuddin
Sahlan, Shafishuhaza
author_sort Khairul Anuar, Noor Hafizah
title Deep learning-driven predictive modelling for optimizing stingless beekeeping yields / Noor Hafizah Khairul Anuar ... [et al.]
title_short Deep learning-driven predictive modelling for optimizing stingless beekeeping yields / Noor Hafizah Khairul Anuar ... [et al.]
title_full Deep learning-driven predictive modelling for optimizing stingless beekeeping yields / Noor Hafizah Khairul Anuar ... [et al.]
title_fullStr Deep learning-driven predictive modelling for optimizing stingless beekeeping yields / Noor Hafizah Khairul Anuar ... [et al.]
title_full_unstemmed Deep learning-driven predictive modelling for optimizing stingless beekeeping yields / Noor Hafizah Khairul Anuar ... [et al.]
title_sort deep learning-driven predictive modelling for optimizing stingless beekeeping yields / noor hafizah khairul anuar ... [et al.]
publisher UiTM Cawangan Perlis
publishDate 2024
url https://ir.uitm.edu.my/id/eprint/103721/1/103721.pdf
https://ir.uitm.edu.my/id/eprint/103721/
https://jcrinn.com/index.php/jcrinn
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