English

Consistency Analysis for Massively Inconsistent Datasets in Bound-to-Bound Data Collaboration

Optimization and Control 2019-04-02 v3 Computational Engineering, Finance, and Science

Abstract

Bound-to-Bound Data Collaboration (B2BDC) provides a natural framework for addressing both forward and inverse uncertainty quantification problems. In this approach, QOI (quantity of interest) models are constrained by related experimental observations with interval uncertainty. A collection of such models and observations is termed a dataset and carves out a feasible region in the parameter space. If a dataset has a nonempty feasible set, it is said to be consistent. In real-world applications, it is often the case that collections of experiments and observations are inconsistent. Revealing the source of this inconsistency, i.e., identifying which models and/or observations are problematic, is essential before a dataset can be used for prediction. To address this issue, we introduce a constraint relaxation-based approach, entitled the vector consistency measure, for investigating datasets with numerous sources of inconsistency. The benefits of this vector consistency measure over a previous method of consistency analysis are demonstrated in two realistic gas combustion examples.

Keywords

Cite

@article{arxiv.1701.04695,
  title  = {Consistency Analysis for Massively Inconsistent Datasets in Bound-to-Bound Data Collaboration},
  author = {Arun Hegde and Wenyu Li and James Oreluk and Andrew Packard and Michael Frenklach},
  journal= {arXiv preprint arXiv:1701.04695},
  year   = {2019}
}

Comments

31 pages, published in SIAM/ASA Journal on Uncertainty Quantification

R2 v1 2026-06-22T17:52:13.441Z