journal article

Estimating local agricultural GDP across the world

by Yating Ru,
Brian Blankespoor,
Ulrike Wood-Sichra,
Timothy S. Thomas,
Liangzhi You and
Erwin Kalvelagen
Open Access | CC BY-4.0
Citation
Ru, Yating; Blankespoor, Brian; Wood-Sichra, Ulrike; Thomas, Timothy S.; You, Liangzhi; and Kalvelagen, Erwin. 2023. Estimating local agricultural GDP across the world. Earth System Science Data 15(3): 1357–1387. https://doi.org/10.5194/essd-15-1357-2023

Economic statistics are frequently produced at an administrative level such as the sub-national division. However, these measures may lack sufficient local variation in the economic activities to analyze local economic development patterns and the exposure to natural hazards. Agriculture GDP is a critical indicator for measurement of the primary sector, on which more than 2.5 billion people depend on their livelihoods that provide a key source of income for the entire household (FAO, 2021). Through a data fusion method based on cross-entropy optimization, this paper disaggregates national and subnational administrative statistics of Agricultural GDP into a global gridded dataset at approximately 10 x 10 kilometers using satellite-derived indicators of the components that make up agricultural GDP, namely crop, livestock, fishery, hunting and timber production. The paper estimates the exposure of areas with at least one extreme drought during 2000 to 2009 to agricultural GDP is an estimated US$432 billion of agricultural GDP circa 2010, where nearly 1.2 billion people live. The data are available on the World Bank Development Data Hub (DOI: http://doi.org/10.57966/0j71-8d56; IFPRI and World Bank, 2022).