Global sorghum production dataset for temperate to subtropical regions at subnational scale over 2000–2020Zendo

Sorghum is a crop of growing interest due to its heat tolerance compared to other crops and better adaptation to future hot and dry summers. The establishment of a global dataset for sorghum yields over the past two decades can support the development of sustainable agricultural practices in the fac...

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Bibliographic Details
Published in:Data in Brief
Main Authors: Mohsen Davoudkhani, Nicolas Guilpart, David Makowski, Nicolas Viovy, Philippe Ciais, Ronny Lauerwald
Format: Article
Language:English
Published: Elsevier 2025-10-01
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Online Access:http://www.sciencedirect.com/science/article/pii/S2352340925006596
Description
Summary:Sorghum is a crop of growing interest due to its heat tolerance compared to other crops and better adaptation to future hot and dry summers. The establishment of a global dataset for sorghum yields over the past two decades can support the development of sustainable agricultural practices in the face of climate change. For the first time, this study aimed to establish a global dataset for grain sorghum yields from 2000 to 2020 for temperate to subtropical regions. Data was collected from national databases of eight countries including France, Italy, Spain, Argentina, Mexico, USA, China, and Australia, covering 85 % of the total sorghum production of the world’s temperate to subtropical regions in this period. We collected data from publicly accessible national databases, with data recorded at various administrative levels: county level for USA and Argentina, municipal level for Mexico, NUTS3 level for European countries, provincial level for China, and Natural Resource Management Regions for Australia. The dataset comprises 27,222 data points of grain sorghum yield, harvested area, and production values, each obtained for one specific year and averaged over a specific administrative unit at the subnational scale. The dataset is structured by country and includes raw and processed files, along with geospatial boundaries of administrative units. The dataset can be used to develop crop models, machine learning algorithms, and statistical models for predicting sorghum yields under different climate scenarios. The dataset is also suitable for climate impact assessments, land-use studies, and policy planning in support of climate-resilient agriculture.
ISSN:2352-3409