Data-Driven and Data-Assisted Modeling for Applications in Fluid Dynamics and Geophysics

Data-Driven and Data-Assisted Modeling for Applications in Fluid Dynamics and Geophysics

Kavli Institute for Theoretical Physics via YouTube Direct link

Datadriven ML models

4 of 29

4 of 29

Datadriven ML models

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Classroom Contents

Data-Driven and Data-Assisted Modeling for Applications in Fluid Dynamics and Geophysics

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  1. 1 Introduction
  2. 2 Modeling a fluid dynamical system
  3. 3 Outline
  4. 4 Datadriven ML models
  5. 5 Dynamics models
  6. 6 Predicting chaotic dynamical systems
  7. 7 High resolution forecasting
  8. 8 Results
  9. 9 Why Machine Learning
  10. 10 Dataassisted forecasting
  11. 11 Hybrid model
  12. 12 Computational cost
  13. 13 Machine learning
  14. 14 Fluid modeling vs image processing
  15. 15 Hybrid architecture
  16. 16 High resolution trajectory
  17. 17 Initial prototype
  18. 18 High resolution spectrum
  19. 19 RMS error curves
  20. 20 Visual results
  21. 21 Hybrid numerical weather prediction
  22. 22 Preprint
  23. 23 Conclusion
  24. 24 Questions
  25. 25 Technical questions
  26. 26 Real data assimilation
  27. 27 MLPD Hybrid
  28. 28 Amount of data
  29. 29 Multitime step optimization

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