Citation
Ang, Yuhao and Shafri, Helmi Zulhaidi Mohd and Lee, Yang Ping and Bakar, Shahrul Azman and Lim, Hwee San and Abdullah, Rosni and Yusup, Yusri and Al-Habshi, Mohammed Mustafa
(2026)
Design and development of machine learning-based web application for oil palm yield prediction.
International Journal of Informatics and Communication Technology, 15 (1).
pp. 228-237.
ISSN 2252-8776; eISSN: 2722-2616
Abstract
The prediction of crop yields is influenced by various factors such as weather conditions, agronomic practices, and management strategies. Accurately predicting oil palm yield is crucial for sustainable production, as it plays a significant role in global food security. Challenges such as climate change and nutrient deficiencies have adversely affected yields, highlighting the necessity for a specialized web application tailored to the oil palm industry. This study presents a machine-learning-based web application that utilizes a deep learning model to estimate oil palm yields by integrating key parameters, including weather, agronomy, and satellite data. The application features a user-friendly interface and a dashboard for comparing predicted and actual yields, enhancing user engagement and facilitating collaboration among stakeholders. By deploying this tool on the cloud, plantation managers can make informed decisions early in the yield prediction process, ultimately improving plantation management and profitability. This web application is designed to provide valuable insights to stakeholders, contributing to effective decision-making in the oil palm sector.
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