Sequential Bayesian optimal experimental design for structural reliability analysis
Autor: | Christian Agrell, Kristina Rognlien Dahl |
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Rok vydání: | 2020 |
Předmět: |
Statistics and Probability
FOS: Computer and information sciences 0209 industrial biotechnology Mathematical optimization Computer science Bayesian probability 02 engineering and technology Function (mathematics) Residual 01 natural sciences Measure (mathematics) Statistics - Computation Theoretical Computer Science Methodology (stat.ME) 010104 statistics & probability 020901 industrial engineering & automation Computational Theory and Mathematics Unscented transform 0101 mathematics Statistics Probability and Uncertainty Uncertainty quantification Random variable Importance sampling Statistics - Methodology Computation (stat.CO) |
ISSN: | 0960-3174 |
DOI: | 10.48550/arxiv.2007.00402 |
Popis: | Structural reliability analysis is concerned with estimation of the probability of a critical event taking place, described by $P(g(\textbf{X}) \leq 0)$ for some $n$-dimensional random variable $\textbf{X}$ and some real-valued function $g$. In many applications the function $g$ is practically unknown, as function evaluation involves time consuming numerical simulation or some other form of experiment that is expensive to perform. The problem we address in this paper is how to optimally design experiments, in a Bayesian decision theoretic fashion, when the goal is to estimate the probability $P(g(\textbf{X}) \leq 0)$ using a minimal amount of resources. As opposed to existing methods that have been proposed for this purpose, we consider a general structural reliability model given in hierarchical form. We therefore introduce a general formulation of the experimental design problem, where we distinguish between the uncertainty related to the random variable $\textbf{X}$ and any additional epistemic uncertainty that we want to reduce through experimentation. The effectiveness of a design strategy is evaluated through a measure of residual uncertainty, and efficient approximation of this quantity is crucial if we want to apply algorithms that search for an optimal strategy. The method we propose is based on importance sampling combined with the unscented transform for epistemic uncertainty propagation. We implement this for the myopic (one-step look ahead) alternative, and demonstrate the effectiveness through a series of numerical experiments. Comment: 27 pages, 13 figures |
Databáze: | OpenAIRE |
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