Uncertainty quantification metrics with varying statistical information in model calibration and validation
Uncertainty quantification metrics with varying statistical information in model calibration and validation
Test-analysis comparison metrics are mathematical functions that provide a quantitative measure of the agreement (or lack thereof) between numerical predictions and experimental measurements. While calibrating and validating models, the choice of a metric can significantly influence the outcome, yet the published research discussing the role of metrics, in particular, varying levels of statistical information the metrics can contain, has been limited. This paper calibrates and validates the model predictions using alternative metrics formulated based on three types of distancebased criteria: 1) Euclidian distance (i.e., the absolute geometric distance between two points), 2) Mahalanobis distance (i.e., the weighted distance that considers the correlations of two point clouds), and 3) Bhattacharyya distance (i.e., the statistical distance between two point clouds considering their probabilistic distributions). A comparative study is presented in the first case study, where the influence of various metrics, and the varying levels of statistical information they contain, on the predictions of the calibrated models is evaluated. In the second case study, an integrated application of the distance metrics is demonstrated through a cross-validation process with regard to the measurement variability.
3570-3583
Bi, Sifeng
93deb24b-fda1-4b18-927b-6225976d8d3f
Prabhu, Saurabh
8ba73428-9110-4215-ac42-5306c3f1ab20
Cogan, Scott
54b55b2c-27f8-4460-ac0c-565442551917
Atamturktur, Sez
d2c8d064-4d00-4598-b061-f875b51ff2b2
Bi, Sifeng
93deb24b-fda1-4b18-927b-6225976d8d3f
Prabhu, Saurabh
8ba73428-9110-4215-ac42-5306c3f1ab20
Cogan, Scott
54b55b2c-27f8-4460-ac0c-565442551917
Atamturktur, Sez
d2c8d064-4d00-4598-b061-f875b51ff2b2
Bi, Sifeng, Prabhu, Saurabh, Cogan, Scott and Atamturktur, Sez
(2017)
Uncertainty quantification metrics with varying statistical information in model calibration and validation.
AIAA Journal, 55 (10), .
(doi:10.2514/1.J055733).
Abstract
Test-analysis comparison metrics are mathematical functions that provide a quantitative measure of the agreement (or lack thereof) between numerical predictions and experimental measurements. While calibrating and validating models, the choice of a metric can significantly influence the outcome, yet the published research discussing the role of metrics, in particular, varying levels of statistical information the metrics can contain, has been limited. This paper calibrates and validates the model predictions using alternative metrics formulated based on three types of distancebased criteria: 1) Euclidian distance (i.e., the absolute geometric distance between two points), 2) Mahalanobis distance (i.e., the weighted distance that considers the correlations of two point clouds), and 3) Bhattacharyya distance (i.e., the statistical distance between two point clouds considering their probabilistic distributions). A comparative study is presented in the first case study, where the influence of various metrics, and the varying levels of statistical information they contain, on the predictions of the calibrated models is evaluated. In the second case study, an integrated application of the distance metrics is demonstrated through a cross-validation process with regard to the measurement variability.
Text
Prepint - AIAA J 2016-10
More information
Accepted/In Press date: 11 April 2017
e-pub ahead of print date: 4 July 2017
Additional Information:
Publisher Copyright:
© Copyright 2017 by S. Bi, S. Prabhu, S. Cogan, and S. Atamturktur.
Identifiers
Local EPrints ID: 490440
URI: http://eprints.soton.ac.uk/id/eprint/490440
ISSN: 0001-1452
PURE UUID: 24dc8491-6f78-450a-9148-0a949e402ca1
Catalogue record
Date deposited: 28 May 2024 16:43
Last modified: 01 Jun 2024 02:09
Export record
Altmetrics
Contributors
Author:
Sifeng Bi
Author:
Saurabh Prabhu
Author:
Scott Cogan
Author:
Sez Atamturktur
Download statistics
Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.
View more statistics