TY - JOUR
T1 - LandScan HD
T2 - a high-resolution gridded ambient population methodology for the world
AU - Tuccillo, Joseph V.
AU - Moehl, Jessica
AU - Adams, Daniel
AU - Cunningham, Angela R.
AU - Urban, Marie
AU - Walters, Sarah
AU - Woody, Carson
AU - Reith, Andrew
AU - Kaufman, Jason
AU - Epting, Justin
AU - Gonzales, Jack
AU - Dias, Philipe Ambrozio
AU - Clark, Cecilia
AU - Yang, Hsuihan Lexie
AU - Stewart, Robert
AU - Lunga, Dalton
AU - Weber, Eric
AU - Bhaduri, Budhendra
N1 - Publisher Copyright:
© The Author(s) 2025.
PY - 2025/12
Y1 - 2025/12
N2 - Unwarned population distributions accounting for routine human activities are needed to address many global human security challenges, including disasters, conflict, and infrastructure demand. LandScan High Definition (LSHD) supports this need through gridded ambient population estimates that measure average human presence between daytime and nighttime at a high spatial resolution of 3 arcseconds (approximately 90 m). Although LSHD has traditionally been produced on a country-specific basis, advances in global foundational data and computational resources now enable scaling its methodology to the world. Combining aspects of top-down and bottom-up gridded population methods, LSHD allocates subnational population totals from authoritative statistics to built-up areas based on occupancy estimates for multiple facility types (e.g., residential, commercial) and then reaggregates these estimates to a global population grid. We scale this approach by organizing the LSHD data stack into a 1° resolution tileset of vector analytic features, enabling an efficient and repeatable workflow for all countries worldwide. Examining the Philippines as an output of the global LSHD baseline dataset, we contrast unwarned and residential (WorldPop) population distributions by (1) exploring a practical application of flood risk assessment and (2) evaluating their congruence with outcomes of collective human activities (subnational CO2 emissions). Finally, we discuss plans to address current LSHD limitations through data/modeling and uncertainty quantification improvements and provide outlook for workflow automation and extending the model to social, demographic and economic population characteristics.
AB - Unwarned population distributions accounting for routine human activities are needed to address many global human security challenges, including disasters, conflict, and infrastructure demand. LandScan High Definition (LSHD) supports this need through gridded ambient population estimates that measure average human presence between daytime and nighttime at a high spatial resolution of 3 arcseconds (approximately 90 m). Although LSHD has traditionally been produced on a country-specific basis, advances in global foundational data and computational resources now enable scaling its methodology to the world. Combining aspects of top-down and bottom-up gridded population methods, LSHD allocates subnational population totals from authoritative statistics to built-up areas based on occupancy estimates for multiple facility types (e.g., residential, commercial) and then reaggregates these estimates to a global population grid. We scale this approach by organizing the LSHD data stack into a 1° resolution tileset of vector analytic features, enabling an efficient and repeatable workflow for all countries worldwide. Examining the Philippines as an output of the global LSHD baseline dataset, we contrast unwarned and residential (WorldPop) population distributions by (1) exploring a practical application of flood risk assessment and (2) evaluating their congruence with outcomes of collective human activities (subnational CO2 emissions). Finally, we discuss plans to address current LSHD limitations through data/modeling and uncertainty quantification improvements and provide outlook for workflow automation and extending the model to social, demographic and economic population characteristics.
KW - Building morphology
KW - Building occupancy
KW - Data fusion
KW - Population distribution
UR - https://www.scopus.com/pages/publications/105022748912
U2 - 10.1007/s11111-025-00514-6
DO - 10.1007/s11111-025-00514-6
M3 - Article
AN - SCOPUS:105022748912
SN - 0199-0039
VL - 47
JO - Population and Environment
JF - Population and Environment
IS - 4
M1 - 42
ER -