OUSL Research Repository

PREDICTIVE ANALYTICS FOR RICE CANOPY MICROCLIMATE USING WEATHER FORECAST DATA AND BG-358 MONITORING

Show simple item record

dc.contributor.author Bandara, K. M. N. P.
dc.contributor.author Wickramasinghe, B. M. G. S. T. S. K.
dc.date.accessioned 2025-12-03T08:16:55Z
dc.date.available 2025-12-03T08:16:55Z
dc.date.issued 2025
dc.identifier.uri http://repository.ou.ac.lk/handle/94ousl/3826
dc.description.abstract Rice (Oryza sativa) is a primary food source for over half the global population, yet its yield is increasingly threatened by climate-induced microclimatic variations, particularly during sensitive growth stages like flowering. This study presents the development of a Machine Learning (ML)-based Early Warning System (EWS) designed to predict adverse canopy microclimate conditions, specifically temperature, humidity, and wind that influence rice yield and spikelet sterility. Utilizing high-resolution microclimatic data from the BG-358 rice canopy monitoring system, a locally developed IoT-based platform for real-time monitoring of microclimate, data were collected at 2-minute intervals from 2019 to 2024, resulting in a dataset of approximately 200,000 data points for two flowering seasons (each nearly 1 month) per year at RRDI Bathalagoda. These data, combined with NASA global forecast inputs, were split into 70% for training and 30% for testing, ensuring robust evaluation and reliable predictions to support proactive agricultural decision-making. The study employed Random Forest, Support Vector Machines, and Neural Networks to predict canopy temperature, relative humidity (RH), and wind conditions. After data pre-processing, including normalization and temporal feature engineering, models were evaluated using MAE, RMSE, and R² metrics. The Random Forest model demonstrated superior performance with an MAE of 0.78 °C, RMSE of 1.15 °C, and R² of 0.91 for temperature prediction. RH and wind predictions also showed high accuracy, with RH remaining above the 60% critical threshold in most cases, though wind forecasts, especially above the 20 km/h threshold, exhibited greater variability due to localized microclimatic conditions. Integrating real-time canopy data with weather forecasts enhanced prediction robustness, enabling heat-induced spikelet sterility anticipation up to 48 hours in advance with 85% reliability. The developed EWS incorporates real-time dashboards and automated alerts, demonstrating strong potential in mitigating climate-related rice yield losses and supporting sustainable agriculture. Future work will expand datasets across varieties and regions and foster collaboration with agricultural stakeholders for wider adoption and broader-scale yield forecasting to strengthen food security planning. en_US
dc.language.iso en en_US
dc.publisher The Open university of Sri Lanka en_US
dc.subject Rice canopy microclimate en_US
dc.subject machine learning prediction en_US
dc.subject predictive analytics en_US
dc.subject spikelet sterility forecasting en_US
dc.subject climate-smart agriculture en_US
dc.title PREDICTIVE ANALYTICS FOR RICE CANOPY MICROCLIMATE USING WEATHER FORECAST DATA AND BG-358 MONITORING en_US
dc.type Article en_US


Files in this item

This item appears in the following Collection(s)

Show simple item record

Search OUSL Research


Browse

My Account