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Bring digital twins back to Earth

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posted on 2024-09-03, 09:20 authored by Andrea Saltelli, Gerd Gigerenzer, Mike Hulme, Konstantinos V Katsikopoulos, Lieke A Melsen, Glen P Peters, Roger Pielke, Simon Robertson, Andrew StirlingAndrew Stirling, Massimo Tavoni, Arnald Puy

We reflect on the development of digital twins of the Earth, which we associate with a reductionist view of nature as a machine. The projects of digital twins deviate from contemporary scientific paradigms in the treatment of complexity and uncertainty, and does not engage with critical and interpretative social sciences. We contest the utility of digital twins for addressing climate change issues and discuss societal risks associated with the concept, including the twins' potential to reinforce economicism and governance by numbers, emphasizing concerns about democratic accountability. We propose a more balanced alternative, advocating for independent institutions to develop diverse models, prioritize communication with simple heuristic‐based models, collect comprehensive data from various sources, including traditional knowledge, and shift focus away from physics‐centered variables to inform climate action. We argue that the advancement of digital twins should hinge on stringent controls, favoring a nuanced, interdisciplinary, and democratic approach that prioritizes societal well‐being over blind pursuit of computational sophistication.This article is categorized under: Climate Models and Modeling > Earth System Models Climate Models and Modeling > Knowledge Generation with Models Climate, History, Society, Culture > Disciplinary Perspectives

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  • Published

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  • Published version

Journal

WIREs Climate Change

ISSN

1757-7780

Publisher

Wiley

Department affiliated with

  • SPRU - Science Policy Research Unit Publications
  • Business and Management Publications

Institution

University of Sussex

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  • Yes

Peer reviewed?

  • Yes

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