Machine learning techniques for reference evapotranspiration and rice irrigation requirements prediction: a case study of Kerian irrigation scheme, Malaysia
Key Points
Irrigation requirements for rice crops are effectively predicted using machine learning techniques, enhancing water management.
Evapotranspiration rates were accurately modeled, improving our understanding of crop water needs in the Kerian irrigation scheme.
The study applies advanced machine learning methods to analyze large datasets from the region, providing actionable insights.
The findings support optimized irrigation practices, highlighting the importance of technological integration in agriculture.
Machine learning techniques for reference evapotranspiration and rice irrigation requirements prediction: a case study of Kerian irrigation scheme, Malaysia | Synapse