Developing Digital Twins for Earth Systems: Purpose, Requisites, and Benefits
Yuhan Rao, Rob Redmon, Kirstine Dale, Sue E. Haupt, Aaron Hopkinson,, Ann Bostrom, Sid Boukabara, Thomas Geenen, David M. Hall, Benjamin D. Smith,, Dev Niyogi, V. Ramaswamy, Eric A. Kihn

TL;DR
This paper discusses the development and potential of digital twins for Earth systems, emphasizing their role in addressing societal challenges through collaborative, interoperable, and trust-oriented approaches.
Contribution
It defines the foundational features of DT4ES and provides practical recommendations for fostering an ecosystem of interoperable digital twins for Earth systems.
Findings
Defined core features of DT4ES
Outlined community-driven development strategies
Recommended collaborative approaches for interoperability
Abstract
The accelerated change in our planet due to human activities has led to grand societal challenges including health crises, intensified extreme weather events, food security, environmental injustice, etc. Digital twin systems combined with emerging technologies such as artificial intelligence and edge computing provide opportunities to support planning and decision-making to address these challenges. Digital twins for Earth systems (DT4ESs) are defined as the digital representation of the complex integrated Earth system including both natural processes and human activities. They have the potential to enable a diverse range of users to explore what-if scenarios across spatial and temporal scales to improve our understanding, prediction, mitigation, and adaptation to grand societal challenges. The 4th NOAA AI Workshop convened around 100 members who are developing or interested in…
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Taxonomy
TopicsDigital Transformation in Industry · Big Data and Business Intelligence · Scientific Computing and Data Management
