IoT-Based Irrigation System Using Machine Learning for Precision Shallot Farming

Despite the massive production of shallots in Enrekang Regency, South Sulawesi Province, Indonesia, the cultivation method is still very conventional. Shallot cultivation is very challenging because it requires precision irrigation and pest prevention. In this research, we proposed a smart irrigatio...

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Bibliographic Details
Published inJurnal RESTI (Rekayasa Sistem dan Teknologi Informasi) (Online) Vol. 8; no. 2; pp. 216 - 222
Main Authors Rafrin, Mardhiyyah, Muh. Agus, Putri Ayu Maharani
Format Journal Article
LanguageEnglish
Published Ikatan Ahli Informatika Indonesia 20.04.2024
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Summary:Despite the massive production of shallots in Enrekang Regency, South Sulawesi Province, Indonesia, the cultivation method is still very conventional. Shallot cultivation is very challenging because it requires precision irrigation and pest prevention. In this research, we proposed a smart irrigation system to help farmers manage irrigation with more efficient water usage without hampering their pest prevention. The system outcomes were three options: 1) no water needed, 2) water is required and is efficient for watering and 3) water is required but it is not efficient for watering. We used Wireless Sensor Networks and IoT to collect yield parameters, designed a firebase database, and developed a mobile application and a web service embedded with a machine learning application. All applications interacted by using the Representational State Transfer Application Programming Interface. The proposed system architecture successfully gathered cropland data and distributed them to all applications within the system. Furthermore, we analyzed four supervised learning algorithms (decision trees, random forest, gradient boosting, and K-Nearest neighbor), and the random forest was deployed in the web service because it outperformed other algorithms with an accuracy of 94% and AUC Score of 0.90.
ISSN:2580-0760
2580-0760
DOI:10.29207/resti.v8i2.5579