Published April 28, 2026 | Version 1.0.1
Poster Open

Enriching Weather Index Metadata for Agricultural Decision Support: Standardized Quality, Uncertainty, and Data-Fitness-for-Purpose Assessment (DFFP)

Description

Agricultural decision support - from weather index insurance to yield-gap analysis - depends on geodata whose quality and fitness for purpose can be assessed transparently. In practice, however, quality information is scattered across documentation, pixel-level uncertainty remains unquantified, and fitness-for-purpose reasoning is left to individual users without structured guidance. We demonstrate a workflow that addresses all three gaps by enriching weather index metadata as machine-actionable FAIR Digital Objects. Two independent uncertainty sources - the PHASE interpolation error and the E-OBS ensemble spread - are propagated through the processing chain into per-pixel 1σ bands co-delivered with every annual product. Three metadata components are embedded into RO-Crate 1.2 containers published on Zenodo: (1) ISO 19157-1 accuracy metrics per crop, phase, and year; (2) spatial uncertainty layers enabling reliability assessment against user-defined thresholds; and (3) a fitness-for-purpose application matrix, LLM-extracted from published studies, documenting validated use contexts and limitations. Together, these components enable users to ask: "Where are these data sufficiently accurate and validated for my specific decision context?"

Notes (English)

Changes compared to version 1.0.0: Exchange of JSON-LD to RO-CRATE in the box related to doi:10.5281/zenodo.19571847

Files

20260428-Poster-HMCconference-Moeller.pdf

Files (901.3 kB)

Name Size Download all
md5:c3872199c3837e7babf06b3c34a22092
901.3 kB Preview Download

Additional details

Funding

Deutsche Forschungsgemeinschaft
FAIRe Dateninfrastruktur für die Agrosystemforschung 501899475