WAPlugin Team
We are an international team of scientists, engineers, and developers from Algeria, India, and Colombia, specializing in geospatial data and sustainable resource management. With a multidisciplinary team, we bring deep expertise in software development, remote sensing, and environmental applications. Our diverse backgrounds enable us to develop efficient, high-quality, and user-friendly geospatial tools.
Sessions
The FAO’s WaPOR database provides open-access data on evapotranspiration, biomass production, and water productivity, supporting sustainable water management in agriculture. However, its spatial resolution varies across levels: Level 3 data (20 m) is available only for selected irrigation schemes, while Level 1 (300 m) and Level 2 (100 m) cover broader regions but lack the detail needed for localized analysis. This limitation makes it challenging to assess water use at the field scale, particularly in areas where high-resolution data is not available.
In this presentation, we would like to demonstrate how QGIS can facilitate the downscaling of WaPOR data using machine learning techniques with high-resolution auxiliary datasets. By enhancing the spatial resolution of WaPOR data estimates, this approach provides a more detailed and accurate representation of water use across diverse landscapes. This capability is crucial for gaining a better overview of agricultural water consumption and improving irrigation management in regions beyond the predefined Level 3 coverage.
We also present our roadmap for integrating this downscaling methodology into WAPlugin, making it a user-friendly and reproducible tool within QGIS. By combining open-source GIS and data-driven techniques, this initiative strengthens the accessibility and usability of WaPOR data for researchers, water managers, and policymakers. Attendees will gain insights into the technical workflow, practical applications, and future development of WAPlugin’s new features.