Generalized Stratified Sampling for Efficient Reliability Assessment of Structures Against Natural Hazards
Srinivasan Arunachalam, Seymour M.J. Spence

TL;DR
This paper introduces a generalized stratified sampling method for more efficient reliability assessment of structures under natural hazards, enabling better failure probability estimation in complex, high-dimensional problems.
Contribution
It proposes a two-phase sampling scheme with Markov Chain Monte Carlo and optimal stratification, allowing flexible stratification variables and improved efficiency in reliability analysis.
Findings
Enhanced efficiency in failure probability estimation
Effective handling of high-dimensional reliability problems
Demonstrated applicability to wind and seismic response analysis
Abstract
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 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…
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Taxonomy
TopicsProbabilistic and Robust Engineering Design · Wind and Air Flow Studies · Infrastructure Maintenance and Monitoring
