Accurate estimation of crop water consumption and irrigation in the Yellow River Basin (YRB) is vital for water management and food security. Existing forward-logic methods (e.g., crop hydrological modeling method) fail to fully simulate key processes, leading to simulation biases. In contrast, the reverse-logic remote sensing inversion method covers full processes but is plagued by mixed-pixel effects. These limitations lead to a lack of spatially detailed and accurate datasets. Leveraging expanded field experiment data and multi-source high-spatial-resolution yield data, this study achieved the extension of reverse-logic Crop Water Production Functions (CWPFs) from field to basin scale. Integrating CWPFs with the soil water balance principle, we developed the 1-km resolution dataset of water consumption and irrigation for three major grain crops (wheat, maize, soybean) in the YRB (2000-2020). Validations at both the field and prefecture levels confirmed the CWPFs' reliability and the dataset's accuracy. Superior in spatial detail and accuracy, this dataset provides a robust basis for optimizing water resource allocation and safeguarding the water-food synergy in the YRB.
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Zheng Wang
Beijing Normal University
Changxiu Cheng
Beijing Normal University
Kaixuan Dai
Beijing Normal University
Scientific Data
Beijing Normal University
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Wang et al. (Tue,) studied this question.
synapsesocial.com/papers/69d893c96c1944d70ce04d16 — DOI: https://doi.org/10.1038/s41597-026-07194-3