A Guide to Uncertainty Quantification for Experimental Engine Research and Heat Release Analysis

Authors Abstract
Content
Performing an uncertainty analysis for complex measurement tasks, such as those found in engine research, presents unique challenges. Also, because of the excessive computational costs, modeling-based approaches, such as a Monte Carlo approach, may not be practical. This work provides a traditional statistical approach to uncertainty analysis that incorporates the uncertainty tree, which is a graphical tool for complex uncertainty analysis. Approaches to calculate the required sensitivities are discussed, including issues associated with numerical differentiation, numerical integration, and post-processing. Trimming of the uncertainty tree to remove insignificant contributions is discussed. The article concludes with a best practices guide in the Appendix to uncertainty propagation in experimental engine combustion post-processing, which includes suggested post-processing techniques and down-selected functional relationships for uncertainty propagation.
Meta TagsDetails
DOI
https://doi.org/10.4271/03-12-05-0033
Pages
18
Citation
Gainey, B., Longtin, J., and Lawler, B., "A Guide to Uncertainty Quantification for Experimental Engine Research and Heat Release Analysis," SAE Int. J. Engines 12(5):509-523, 2019, https://doi.org/10.4271/03-12-05-0033.
Additional Details
Publisher
Published
Aug 22, 2019
Product Code
03-12-05-0033
Content Type
Journal Article
Language
English