Machine Learning Approaches for Predicting Seismic, Acoustic and Atmospheric Data

Machine Learning Approaches for Predicting Seismic, Acoustic and Atmospheric Data

Fields Institute via YouTube Direct link

Fraction of Data (FAC2)

15 of 23

15 of 23

Fraction of Data (FAC2)

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Machine Learning Approaches for Predicting Seismic, Acoustic and Atmospheric Data

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  1. 1 Machine Learning Approaches for Atmospheric and Material Fracture Applications and their Uncertainty Quantification
  2. 2 My background
  3. 3 Why Machine Learning (ML) Approaches?
  4. 4 Why Uncertainty Quantification (UQ) in ML?
  5. 5 Outline for this presentation
  6. 6 Problem of Interest and Motivation
  7. 7 Description of the Data
  8. 8 Overview of K-Nearest Neighbors Approach
  9. 9 KNN Graphical Examples
  10. 10 Our Enhanced KNN-based Approach
  11. 11 The KNN-based Prediction
  12. 12 Performance Metrics Options the number of neighbors used
  13. 13 Figure of Merit in the Space (FMS)
  14. 14 Normalized Root Mean Squared Error (NRMSE)
  15. 15 Fraction of Data (FAC2)
  16. 16 Fractional Bias
  17. 17 Coefficient of Determination, Slope and Intercept
  18. 18 Summary: KNN Approach
  19. 19 Summary: Performance Metrics
  20. 20 Uncertainty Bounds for Multivariate Machine Learning Predictions on High-Strain Brittle Fracture [1]
  21. 21 Multivariate Neural Networks Model
  22. 22 Heteroscedastic Training Loss Function
  23. 23 Multivariate Heteroscedastic Approach

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