Illustration of Sampling‐Based Methods for Uncertainty and Sensitivity Analysis
Top Cited Papers
- 1 June 2002
- journal article
- Published by Wiley in Risk Analysis
- Vol. 22 (3) , 591-622
- https://doi.org/10.1111/0272-4332.00041
Abstract
A sequence of linear, monotonic, and nonmonotonic test problems is used to illustrate sampling‐based uncertainty and sensitivity analysis procedures. Uncertainty results obtained with replicated random and Latin hypercube samples are compared, with the Latin hypercube samples tending to produce more stable results than the random samples. Sensitivity results obtained with the following procedures and/or measures are illustrated and compared: correlation coefficients (CCs), rank correlation coefficients (RCCs), common means (CMNs), common locations (CLs), common medians (CMDs), statistical independence (SI), standardized regression coefficients (SRCs), partial correlation coefficients (PCCs), standardized rank regression coefficients (SRRCs), partial rank correlation coefficients (PRCCs), stepwise regression analysis with raw and rank‐transformed data, and examination of scatter plots. The effectiveness of a given procedure and/or measure depends on the characteristics of the individual test problems, with (1) linear measures (i.e., CCs, PCCs, SRCs) performing well on the linear test problems, (2) measures based on rank transforms (i.e., RCCs, PRCCs, SRRCs) performing well on the monotonic test problems, and (3) measures predicated on searches for nonrandom patterns (i.e., CMNs, CLs, CMDs, SI) performing well on the nonmonotonic test problems.Keywords
This publication has 125 references indexed in Scilit:
- Uncertainty and sensitivity analysis in performance assessment for the Waste Isolation Pilot PlantComputer Physics Communications, 1999
- Analysis of variance designs for model outputComputer Physics Communications, 1999
- Sensitivity analysis in the context of uncertainty analysis for computationally intensive modelsComputer Physics Communications, 1999
- Efficient input—output model representationsComputer Physics Communications, 1999
- Evaluating prediction uncertainty in simulation modelsComputer Physics Communications, 1999
- A Quantitative Model-Independent Method for Global Sensitivity Analysis of Model OutputTechnometrics, 1999
- Uncertainty and sensitivity analysis techniques for use in performance assessment for radioactive waste disposalReliability Engineering & System Safety, 1993
- On expert judgements in safety analyses in the process industriesReliability Engineering & System Safety, 1989
- Response Surface Methodology: 1966–l988Technometrics, 1989
- The Use of the Rank Transform in RegressionTechnometrics, 1979