Visualization of Global Sensitivity Analysis Results Based on a Combination of Linearly Dependent and Independent Directions
Author(s) -
Misty Davies,
Karen Gundy-Burlet
Publication year - 2010
Publication title -
aiaa infotech @ aerospace
Language(s) - English
Resource type - Conference proceedings
DOI - 10.2514/6.2010-3387
Subject(s) - visualization , sensitivity (control systems) , data visualization , computer science , data mining , engineering , electronic engineering
A useful technique for the validation and verification of complex flight systems is Monte Carlo Filtering -- a global sensitivity analysis that tries to find the inputs and ranges that are most likely to lead to a subset of the outputs. A thorough exploration of the parameter space for complex integrated systems may require thousands of experiments and hundreds of controlled and measured variables. Tools for analyzing this space often have limitations caused by the numerical problems associated with high dimensionality and caused by the assumption of independence of all of the dimensions. To combat both of these limitations, we propose a technique that uses a combination of the original variables with the derived variables obtained during a principal component analysis.
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