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