Sensitivity Analysis of strength models using~Bayesian Adaptive Splines~

ORAL

Abstract

Through sensitivity analysis we study how variability of the output of a strength model can be apportioned to different sources of uncertainty in the model input. Determining these relationships has become a first step in the use of strength models that precedes their calibration to experimental data. We discuss the Bayesian approach to multivariate adaptive regression splines (BMARS) as an emulator of a strength model for the purpose of sensitivity analysis without Monte Carlo error. We show that the BMARS formulation is well suited for functional output like stress-strain curves and we extend the global sensitivity indices to functional outputs.

*LLNL-ABS-725240. This work is performed under the auspices of the U.S. Department of Energy by Lawrence Livermore National Laboratory under Contract DE-AC52-07NA27344.

Authors

  • Kathleen Schmidt

    • Lawrence Livermore Natl Lab
  • Jason Bernstein

    • Lawrence Livermore Natl Lab
  • Nathan Barton

    • Lawrence Livermore National Laboratory
    • Lawrence Livermore Natl Lab
  • Jeff Forando

    • Lawrence Livermore Natl Lab
  • Ana Kupresanin

    • Lawrence Livermore Natl Lab