English

Embedded Model Error Representation for Bayesian Model Calibration

Computation 2024-03-28 v2 Computational Physics Data Analysis, Statistics and Probability Methodology

Abstract

Model error estimation remains one of the key challenges in uncertainty quantification and predictive science. For computational models of complex physical systems, model error, also known as structural error or model inadequacy, is often the largest contributor to the overall predictive uncertainty. This work builds on a recently developed framework of embedded, internal model correction, in order to represent and quantify structural errors, together with model parameters, within a Bayesian inference context. We focus specifically on a Polynomial Chaos representation with additive modification of existing model parameters, enabling a non-intrusive procedure for efficient approximate likelihood construction, model error estimation, and disambiguation of model and data errors' contributions to predictive uncertainty. The framework is demonstrated on several synthetic examples, as well as on a chemical ignition problem.

Keywords

Cite

@article{arxiv.1801.06768,
  title  = {Embedded Model Error Representation for Bayesian Model Calibration},
  author = {Khachik Sargsyan and Xun Huan and Habib N. Najm},
  journal= {arXiv preprint arXiv:1801.06768},
  year   = {2024}
}

Comments

Preprint 34 pages, 13 figures; v1 submitted on January 19, 2018; v2 submitted on February 5, 2019. v2 changes: addition of various clarifications and references, and minor language edits