Applying Earth Observation Technologies to Economic Consequence Modeling: A Case Study of COVID-19 in Los Angeles County, California

Prager, Fynnwin; Mendoza, Marina T.; Huyck, Charles K.; Rose, Adam; Amyx, Paul; Yetman, Gregory; Tiampo, Kristy F.

Earth observation (EO) technologies, such as very high-resolution optical satellite data available from Maxar, can enhance economic consequence modeling of disasters by capturing the fine-grained and real-time behavioral responses of businesses and the public. We investigated this unique approach to economic consequence modeling to determine whether crowd-sourced interpretations of EO data can be used to illuminate key economic behavioral responses that could be used for computable general equilibrium modeling of supply chain repercussions and resilience effects.

We applied our methodology to the COVID-19 pandemic experience in Los Angeles County, California as a case study. We also proposed a dynamic adjustment approach to account for the changing character of EO through longer-term disasters in the economic modeling context. We found that despite limitations, EO data can increase sectoral and temporal resolution, which leads to significant differences from other data sources in terms of direct and total impact results. The findings from this analytical approach have important implications for economic consequence modeling of disasters, as well as providing useful information to policymakers and emergency managers, whose goal is to reduce disaster costs and to improve economic resilience.

Files

  • thumnail for 13753_2024_Article_543.pdf 13753_2024_Article_543.pdf application/pdf 285 KB Download File

Also Published In

Title
Springer Nature Singapore
DOI
https://doi.org/10.1007/s13753-024-00543-z

More About This Work

Published Here
October 9, 2024

Notes

Computable general equilibrium models, COVID-19, Disaster economic impacts, Earth observation, Economic consequence analysis, Los Angeles County