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Digital twins: dynamic model-data fusion for ecology

  • Koen de Koning
  • , Jeroen Broekhuijsen
  • , Ingolf Kühn
  • , Otso Ovaskainen
  • , Franziska Taubert
  • , Dag Endresen*
  • , Dmitry Schigel
  • , Volker Grimm
  • *Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

Abstract

Digital twins (DTs) are an emerging phenomenon in the public and private sectors as a new tool to monitor and understand systems and processes. DTs have the potential to change the status quo in ecology as part of its digital transformation. However, it is important to avoid misguided developments by managing expectations about DTs. We stress that DTs are not just big models of everything, containing big data and machine learning. Rather, the strength of DTs is in combining data, models, and domain knowledge, and their continuous alignment with the real world. We suggest that researchers and stakeholders exercise caution in DT development, keeping in mind that many of the strengths and challenges of computational modelling in ecology also apply to DTs.

Original languageEnglish
Pages (from-to)916-926
JournalTrends in Ecology and Evolution
Volume38
Issue number10
Early online date18 May 2023
DOIs
Publication statusPublished - Oct 2023

Keywords

  • biodiversity conservation
  • digital conservation
  • digital twins
  • evidence-based conservation
  • model-data integration
  • real-time monitoring

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