4.7 Article

Reliability analysis of discrete-state performance functions via adaptive sequential sampling with detection of failure surfaces

出版社

ELSEVIER SCIENCE SA
DOI: 10.1016/j.cma.2022.115606

关键词

Categorical limit state function; criterion for experimental design extension; Failure surface refinement; Nearest neighbor surrogate model; Importance sampling; Global sensitivity

资金

  1. Ministry of Education, Youth and Sports of the Czech Republic
  2. Czech Science Foundation
  3. [LTAUSA19058]
  4. [GC19-06684J]

向作者/读者索取更多资源

The paper presents a new method for estimating the rare event probability for computational models that only return categorical information. The method uses a distance-based surrogate model and performs sequential adaptive selection of points for evaluation and improvement. The method allows for estimation of failure probability and selection of the best candidate for further model evaluation.
The paper presents a new efficient and robust method for rare event probability estimation for computational models of an engineering product or a process returning categorical information only, for example, either success or failure. For such models, most of the methods designed for the estimation of failure probability, which use the numerical value of the outcome to compute gradients or to estimate the proximity to the failure surface, cannot be applied. Even if the performance function provides more than just binary output, the state of the system may be a non-smooth or even a discontinuous function defined in the domain of continuous input variables. This often happens because the mathematical model features non-smooth components or discontinuities (e.g., in the constitutive laws), bifurcations, or even domains in which no reasonable model response is obtained. In these cases, the classical gradient-based methods usually fail. We propose a simple yet efficient algorithm, which performs a sequential adaptive selection of points from the input domain of random variables to extend and refine a simple distance-based surrogate model. Two different tasks can be accomplished at any stage of sequential sampling: (i) estimation of the failure probability, and (ii) selection of the best possible candidate for the subsequent model evaluation if further improvement is necessary. The proposed criterion for selecting the next point for model evaluation maximizes the expected probability classified by using the candidate. Therefore, the perfect balance between global exploration and local exploitation is maintained automatically. If there are more rare events such as failure modes, the method can be generalized to estimate the probabilities of all these event types. Moreover, when the numerical value of model evaluation can be used to build a smooth surrogate, the algorithm can accommodate this information to increase the accuracy of the estimated probabilities. Lastly, we define a new simple yet general geometrical measure of the global sensitivity of the rare-event probability to individual variables, which is obtained as a by-product of the proposed refinement algorithm.(c) 2022 Elsevier B.V. All rights reserved.

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