Global Sensitivity Analysis Techniques for Probabilistic Ground Water Modeling
Article first published online: 31 JUL 2009
DOI: 10.1111/j.1745-6584.2009.00604.x
Copyright © 2009 The Author(s). Journal compilation © 2009 National Ground Water Association
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How to Cite
Mishra, S., Deeds, N. and Ruskauff, G. (2009), Global Sensitivity Analysis Techniques for Probabilistic Ground Water Modeling. Ground Water, 47: 727–744. doi: 10.1111/j.1745-6584.2009.00604.x
Publication History
- Issue published online: 31 AUG 2009
- Article first published online: 31 JUL 2009
- Received September 2008, accepted June 2009.
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Abstract
Global sensitivity analysis techniques are better suited for analyzing input-output relationships over the full range of parameter variations and model outcomes, as opposed to local sensitivity analysis carried out around a reference point. This article describes three such techniques: (1) stepwise rank regression analysis for building input-output models to identify key contributors to output variance, (2) mutual information (entropy) analysis for determining the strength of nonmonotonic patterns of input-output association, and (3) classification tree analysis for determining what variables or combinations are responsible for driving model output into extreme categories. These techniques are best applied in conjunction with Monte Carlo simulation-based probabilistic analyses. Two examples are presented to demonstrate the applicability of these methods. The usefulness of global sensitivity techniques is examined vis-a-vis local sensitivity analysis methods, and recommendations are provided for their applications in ground water modeling practice.

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