Smart agriculture: precision farming through sensor-based crop monitoring and control system

The escalation of the global population and the depletion of natural resources have propelled the evolution of smart agriculture and precision farming, underpinned by sensor-based crop monitoring and control systems, which are anticipated to revolutionize the agricultural sector. Notab...

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Main Authors: Mohamad Hakhrani, Asyful Azhim, Abdul Hamid, Syamsul Bahrin
格式: Article
語言:English
出版: Universiti Malaysia Pahang Al-Sultan Abdullah Publishing 2024
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在線閱讀:http://irep.iium.edu.my/119724/7/119724_Smart%20agriculture%20precision%20farming.pdf
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https://journal.ump.edu.my/mekatronika/article/view/10562/3430
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spelling my.iium.irep.1197242025-02-18T06:14:33Z http://irep.iium.edu.my/119724/ Smart agriculture: precision farming through sensor-based crop monitoring and control system Mohamad Hakhrani, Asyful Azhim Abdul Hamid, Syamsul Bahrin S Agriculture (General) S494.5.S86 Sustainable agriculture The escalation of the global population and the depletion of natural resources have propelled the evolution of smart agriculture and precision farming, underpinned by sensor-based crop monitoring and control systems, which are anticipated to revolutionize the agricultural sector. Notably, prevalent smart agriculture systems predominantly emphasize either IoT components for data monitoring and control or machine learning components for data analysis. Consequently, this project endeavours to develop a system that seamlessly integrates both IoT and machine learning components, culminating in an advanced system capable of real-time crop monitoring and growth prediction. Collaborating with the Urban Farming Farm under the auspices of the Kulliyyah of Economics and Management Science, an IoT system comprising soil moisture, temperature, and humidity sensors, alongside an actuator, is devised to facilitate data acquisition and required intervention specifically for Okra Fruit during the pre-harvesting stage. Subsequently, four distinct algorithms are trained with the collected dataset to ascertain the most optimal algorithm for predicting crop growth and harvesting time, resulting in the selection of the Random Forest Regression model, which attains the highest model score of 86%. Upon its integration into the comprehensive system for monitoring new data and predicting fruit growth, the model achieves an impressive 98% accuracy score. Future endeavours for this project aim to enhance its applicability and predictive capabilities through the incorporation of diverse datasets from various plant species, the expansion of crop predictions to encompass the entire growth cycle, the integration of additional sensors, and the enhancement of the system's scalability to cover larger areas. Universiti Malaysia Pahang Al-Sultan Abdullah Publishing 2024-10-05 Article PeerReviewed application/pdf en http://irep.iium.edu.my/119724/7/119724_Smart%20agriculture%20precision%20farming.pdf Mohamad Hakhrani, Asyful Azhim and Abdul Hamid, Syamsul Bahrin (2024) Smart agriculture: precision farming through sensor-based crop monitoring and control system. Journal of Mechatronics and Intelligent Manufacturing, 6 (2). pp. 52-65. E-ISSN 2637-0883 https://journal.ump.edu.my/mekatronika/article/view/10562/3430
institution Universiti Islam Antarabangsa Malaysia
building IIUM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider International Islamic University Malaysia
content_source IIUM Repository (IREP)
url_provider http://irep.iium.edu.my/
language English
topic S Agriculture (General)
S494.5.S86 Sustainable agriculture
spellingShingle S Agriculture (General)
S494.5.S86 Sustainable agriculture
Mohamad Hakhrani, Asyful Azhim
Abdul Hamid, Syamsul Bahrin
Smart agriculture: precision farming through sensor-based crop monitoring and control system
description The escalation of the global population and the depletion of natural resources have propelled the evolution of smart agriculture and precision farming, underpinned by sensor-based crop monitoring and control systems, which are anticipated to revolutionize the agricultural sector. Notably, prevalent smart agriculture systems predominantly emphasize either IoT components for data monitoring and control or machine learning components for data analysis. Consequently, this project endeavours to develop a system that seamlessly integrates both IoT and machine learning components, culminating in an advanced system capable of real-time crop monitoring and growth prediction. Collaborating with the Urban Farming Farm under the auspices of the Kulliyyah of Economics and Management Science, an IoT system comprising soil moisture, temperature, and humidity sensors, alongside an actuator, is devised to facilitate data acquisition and required intervention specifically for Okra Fruit during the pre-harvesting stage. Subsequently, four distinct algorithms are trained with the collected dataset to ascertain the most optimal algorithm for predicting crop growth and harvesting time, resulting in the selection of the Random Forest Regression model, which attains the highest model score of 86%. Upon its integration into the comprehensive system for monitoring new data and predicting fruit growth, the model achieves an impressive 98% accuracy score. Future endeavours for this project aim to enhance its applicability and predictive capabilities through the incorporation of diverse datasets from various plant species, the expansion of crop predictions to encompass the entire growth cycle, the integration of additional sensors, and the enhancement of the system's scalability to cover larger areas.
format Article
author Mohamad Hakhrani, Asyful Azhim
Abdul Hamid, Syamsul Bahrin
author_facet Mohamad Hakhrani, Asyful Azhim
Abdul Hamid, Syamsul Bahrin
author_sort Mohamad Hakhrani, Asyful Azhim
title Smart agriculture: precision farming through sensor-based crop monitoring and control system
title_short Smart agriculture: precision farming through sensor-based crop monitoring and control system
title_full Smart agriculture: precision farming through sensor-based crop monitoring and control system
title_fullStr Smart agriculture: precision farming through sensor-based crop monitoring and control system
title_full_unstemmed Smart agriculture: precision farming through sensor-based crop monitoring and control system
title_sort smart agriculture: precision farming through sensor-based crop monitoring and control system
publisher Universiti Malaysia Pahang Al-Sultan Abdullah Publishing
publishDate 2024
url http://irep.iium.edu.my/119724/7/119724_Smart%20agriculture%20precision%20farming.pdf
http://irep.iium.edu.my/119724/
https://journal.ump.edu.my/mekatronika/article/view/10562/3430
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score 13.251813