Operational in-season rice area estimation through Earth observation data in Nepal - working paper
Description
In an effort to adopt emerging technologies in food security assessment through a codevelopment approach, the Government of Nepal’s Ministry of Agriculture and Livestock Development (MoALD) and the International Centre for Integrated Mountain Development’s (ICIMOD) SERVIR-HKH Initiative undertook a pilot study in Chitwan District in 2019 to jointly develop methods for satellite remote sensing and machine learning-based in-season crop assessment. MoALD experts and relevant stakeholders thoroughly reviewed the approach before the honourable minister approved it for formal use in the national-level assessment for 2020 and onwards.
For wider adoption of the advanced data science methods established in the pilot study, we customised the technology by developing a digital suite of software, including GeoFairy (a mobile app to facilitate field data collection by field extension professionals at the district level) and RiceMapEngine (a simplified platform for machine learning-based crop classification to facilitate crop area map production by MoALD’s GIS Section).
In the current federal governance structure of Nepal, high-quality crop maps and yield estimates will not only bridge information needs among the federal and subnational institutions but also provide a means for consistent cross-country crop status assessments and communication.
Files
HimalDoc2023_WP_CropMappingNepal.pdf
Files
(11.4 MB)
Name | Size | Download all |
---|---|---|
md5:fb0421670355362546a78bc8474f6e0a
|
11.4 MB | Preview Download |
Additional details
Identifiers
- DOI
- 10.53055/ICIMOD.1017
- ISBN
- 978-92-9115-742-6
ICIMOD publication type
- ICIMOD publication type
- Technical publication
Regional member countries
- RMC
- Nepal
Others
- Special note
- servir
Legacy Data
- Legacy numeric recid
- 36268