4.4 Article

Generalized Stratified Sampling for Efficient Reliability Assessment of Structures against Natural Hazards

Journal

JOURNAL OF ENGINEERING MECHANICS
Volume 149, Issue 7, Pages -

Publisher

ASCE-AMER SOC CIVIL ENGINEERS
DOI: 10.1061/JENMDT.EMENG-7021

Keywords

Stratified sampling; Monte Carlo methods; Subset simulation (SuS); Natural hazards

Ask authors/readers for more resources

Performance-based engineering for natural hazards involves rigorous evaluation of uncertain structural behavior under extreme stochastic loads. This study proposes a generalized stratified sampling scheme for estimating failure probabilities associated with multiple limit states. It includes two phases of sampling: the first for generating strata-wise samples and estimating strata probabilities, and the second for estimating strata-wise failure probabilities. The proposed scheme improves efficiency by incorporating Markov Chain Monte Carlo Phase-I sampling and optimal Phase-II sampling based on user-specified target coefficients of variation.
Performance-based engineering for natural hazards facilitates the design and appraisal of structures with rigorous evaluation of their uncertain structural behavior under potentially extreme stochastic loads expressed in terms of failure probabilities against stated criteria. As a result, efficient stochastic simulation schemes are central to computational frameworks that aim to estimate failure probabilities associated with multiple limit states using limited sample sets. In this work, a generalized stratified sampling scheme is proposed in which two phases of sampling are involved: the first is devoted to the generation of strata-wise samples and the estimation of strata probabilities, whereas the second phase aims at the estimation of strata-wise failure probabilities. Phase-I sampling enables the selection of a generalized stratification variable (i.e., not necessarily belonging to the input set of random variables) for which the probability distribution is not known a priori. To improve the efficiency, Markov Chain Monte Carlo Phase-I sampling is proposed when Monte Carlo simulation is deemed infeasible, and optimal Phase-II sampling is implemented based on user-specified target coefficients of variation for the limit states of interest. The expressions for these coefficients are derived with due regard to the sample correlations induced by the Markov chains and the uncertainty in the estimated strata probabilities. The proposed stochastic simulation scheme reaps the benefits of near-optimal stratified sampling for a broader choice of stratification variables in high-dimensional reliability problems with a mechanism to approximately control the accuracy of the estimators of multiple failure probabilities. The practicality and efficiency of the scheme are demonstrated using two examples involving the estimation of failure probabilities associated with highly nonlinear responses induced by wind and seismic excitations.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.4
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available