Covariance-free Bi-fidelity Control Variates Importance Sampling for Rare Event Reliability Analysis
Multifidelity modeling has been steadily gaining attention as a tool to address the problem of exorbitant model evaluation costs that makes the estimation of failure probabilities a significant computational challenge for complex real-world problems, particularly when failure is a rare event. To imp...
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Zusammenfassung: | Multifidelity modeling has been steadily gaining attention as a tool to
address the problem of exorbitant model evaluation costs that makes the
estimation of failure probabilities a significant computational challenge for
complex real-world problems, particularly when failure is a rare event. To
implement multifidelity modeling, estimators that efficiently combine
information from multiple models/sources are necessary. In past works, the
variance reduction techniques of Control Variates (CV) and Importance Sampling
(IS) have been leveraged for this task. In this paper, we present the CVIS
framework; a creative take on a coupled CV and IS estimator for bifidelity
reliability analysis. The framework addresses some of the practical challenges
of the CV method by using an estimator for the control variate mean and
side-stepping the need to estimate the covariance between the original
estimator and the control variate through a clever choice for the tuning
constant. The task of selecting an efficient IS distribution is also
considered, with a view towards maximally leveraging the bifidelity structure
and maintaining expressivity. Additionally, a diagnostic is provided that
indicates both the efficiency of the algorithm as well as the relative
predictive quality of the models utilized. Finally, the behavior and
performance of the framework is explored through analytical and numerical
examples. |
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DOI: | 10.48550/arxiv.2405.03834 |