Probabilistic Framework for Uncertainty Propagation With Both Probabilistic and Interval Variables

Author:

Zaman Kais1,McDonald Mark1,Mahadevan Sankaran1

Affiliation:

1. Department of Civil and Environmental Engineering, Vanderbilt University, Nashville, TN 37235

Abstract

This paper develops and illustrates a probabilistic approach for uncertainty representation and propagation in system analysis, when the information on the uncertain input variables and/or their distribution parameters may be available as either probability distributions or simply intervals (single or multiple). A unique aggregation technique is used to combine multiple interval data and to compute rigorous bounds on the system response cumulative distribution function. The uncertainty described by interval data is represented through a flexible family of probability distributions. Conversion of interval data to a probabilistic format enables the use of computationally efficient methods for probabilistic uncertainty propagation. Two methods are explored for the implementation of the proposed approach, based on (1) sampling and (2) optimization. The sampling-based strategy is more expensive and tends to underestimate the output bounds. The optimization-based methodology improves both aspects. The proposed methods are used to develop new solutions to challenge problems posed by the Sandia epistemic uncertainty workshop (Oberkampf et al., 2004, “Challenge Problems: Uncertainty in System Response Given Uncertain Parameters,” Reliab. Eng. Syst. Saf., 85, pp. 11–19). Results for the challenge problems are compared with earlier solutions.

Publisher

ASME International

Subject

Computer Graphics and Computer-Aided Design,Computer Science Applications,Mechanical Engineering,Mechanics of Materials

Reference45 articles.

1. Ferson, S., Kreinovich, V., Hajagos, J., Oberkampf, W., and Ginzburg, L., 2007, “Experimental Uncertainty Estimation and Statistics for Data Having Interval Uncertainty,” Sandia National Laboratories Technical Report No. SAND2007-0939, Albuquerque, NM.

2. Reliability Based Design With Mixture of Random and Interval Variables;Du;ASME J. Mech. Des.

3. Hyman, J. M. , 1982, “FORSIG: An Extension of FORTRAN With Significance Arithmetic,” Los Alamos National Laboratory Report No. LA-9448-MS, Los Alamos, NM. See also the website http://math.lanl.gov/ams/report2000/significancearithmetic.html

4. Probabilistic Arithmetic I: Numerical Methods for Calculating Convolutions and Dependency Bounds;Williamson;Int. J. Approx. Reason.

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