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Toward the next generation of earthquake source models by accounting for model prediction error

Toward the next generation of earthquake source models by accounting for model prediction error. Zacharie Duputel Seismo Lab, GPS division, Caltech. Acknowledgements: Piyush Agram, Mark Simons, Sarah Minson, James Beck,

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Toward the next generation of earthquake source models by accounting for model prediction error

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  1. Toward the next generation of earthquake source models by accounting for model prediction error • Zacharie Duputel • Seismo Lab, GPS division, Caltech Acknowledgements: Piyush Agram, Mark Simons, Sarah Minson, James Beck, Pablo Ampuero, Romain Jolivet, Bryan Riel, Michael Aivasis, Hailiang Zhang.

  2. Project : Toward the next generation of source models including realistic statistics of uncertainties SIV initiative • Modeling ingredients • Data: • Field observations • Seismology • Geodesy • ... • Theory: • Source geometry • Earth model • ... • Sources of uncertainty • Observational uncertainty: • Instrumental noise • Ambient seismic noise • Prediction uncertainty: • Fault geometry • Earth model • A posteriori distribution Izmit earthquake (1999) Slip, m Depth, km Slip, m Depth, km Single model Slip, m Depth, km Ensemble of models 2

  3. A reliable stochastic model for the prediction uncertainty The forward problem • posterior distribution: Exact theory Stochastic (non-deterministic) theory p(d|m) = δ(d - g( ,m)) p(d|m) = N(d | g( ,m), Cp) Calculation of Cp based on the physics of the problem: A perturbation approach Covariance matrix describing uncertainty in the Earth model parameters Partial derivatives w.r.t. the elastic parameters (sensitivity kernel) 3

  4. Prediction uncertainty due to the earth model 1000 stochastic realizations Covariance Cμ Cp

  5. Toy model 1: Infinite strike-slip fault μ1 - Data generated for a layered half-space (dobs) - 5mm uncorrelated observational noise (→Cd) - GFs for an homogeneous half-space (→Cp) - CATMIP bayesian sampler (Minson et al., GJI 2013): μ2 Synthetic Data + Noise shallow fault + Layered half-space Inversion: Homogeneous half-space Slip, m Slip, m ? μ1 0.9H 0.9H H H μ2 Depth / H Depth / H μ2 μ2/μ1 =1.4 2H 2H

  6. Toy model 1: Infinite strike-slip fault Posterior Mean Model Input (target) model

  7. Why a smaller misfit does not necessarily indicate a better solution No Cp (overfitting) Cp Included (larger residuals) Depth / H Depth / H Slip, m Slip, m Displacement, m Displacement, m Distance from fault / H Distance from fault / H

  8. Toy Model 2: Static Finite-fault modeling Input (target) model • Finite strike-slip fault • Top of the fault at 0 km • South-dipping = 80° • Data for a layered half-space Slip, m Dist. along Dip, km Dist. along Strike, km Earth model Data Horizontal Disp., m Vertical Disp., m North, km Depth, km Shear modulus, GPa East, km 8

  9. Toy Model 2: Static Finite-fault modeling Input (target) model • Finite strike-slip fault • 65 patches, 2 slip components • 5mm uncorrelated noise(→Cd) • GFs for an homogeneous half- space (→Cp) Slip, m Dist. along Dip, km Dist. along Strike, km Earth model Data Horizontal Disp., m Vertical Disp., m North, km Depth, km Model for Data Model for GFs Shear modulus, GPa East, km 9

  10. Toy Model 2: Static Finite-fault modeling Input (target) model - 65 patches average • Finite strike-slip fault • 65 patches, 2 slip components • 5mm uncorrelated noise(→Cd) • GFs for an homogeneous half- space (→Cp) Slip, m Dist. along Dip, km Dist. along Strike, km Earth model Posterior mean model, No Cp Slip, m Dist. along Dip, km Dist. along Strike, km Depth, km Posterior mean model, including Cp Uncertainty on the shear modulus Slip, m Dist. along Dip, km Dist. along Strike, km Shear modulus, GPa 10

  11. Conclusion and Perspectives • Improving source modeling by accounting for realistic uncertainties • 2 sources of uncertainty • Observational error • Modeling uncertainty • Importance of incorporating realistic covariance components • More realistic uncertainty estimations • Improvement of the solution itself • Accounting for lateral variations • Improving kinematic source models

  12. Application to actual data: Mw 7.7 Balochistan earthquake Jolivet et al., submitted to BSSA AGU Late breaking session on Tuesday

  13. Toy Model 2: Static Finite-fault modeling Posterior mean model, including Cp • Finite strike-slip fault • 65 patches, 2 slip components • 5mm uncorrelated noise(→Cd) • GFs for an homogeneous half- space (→Cp) Slip, m Dist. along Dip, km Dist. along Strike, km Earth model Covariance with respect to xr CpEast(xr), m2 x 104 Depth, km North, km Uncertainty on the shear modulus xr Shear modulus, GPa East, km 13

  14. Toy Model 2: Static Finite-fault modeling Posterior mean model, including Cp • Finite strike-slip fault • 65 patches, 2 slip components • 5mm uncorrelated noise(→Cd) • GFs for an homogeneous half- space (→Cp) Slip, m Dist. along Dip, km Dist. along Strike, km Earth model Covariance with respect to xr CpEast(xr), m2 x 104 Depth, km North, km xr Log(μi / μi+1) East, km 14

  15. Toy model 1: prior: U(-0.5,20) Posterior Mean Model Input (target) model

  16. Toy model 1: prior: U(0,20) Posterior Mean Model Input (target) model

  17. Toy model including a slip step

  18. Toy model including a slip step

  19. Evolution of m at each beta step

  20. Evolution of Cp at each beta step

  21. Covariance Cμ 1000 realizations

  22. Covariance Cp 1000 realizations

  23. On the importance of Prediction uncertainty • Observational error: • Measurements dobs : single realization of a stochastic variable d* which can be described by a probability density p(d*|d) = N(d*|d, Cd) • Prediction uncertainty: whereΩ = [ μT , φT ]T • Ωtrue is not known and we work with an approximation • The prediction uncertainty: • scales with the with the magnitude of m • can be described by p(d|m) = N(d | g( ,m), Cp) • A posteriori distribution: • In the Gaussian case, the solution of the problem is given by: Measurements Displacement field Earth model Source geometry Prior information Prediction errors Measurement errors D: Prediction space

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