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Estimating Failure Probability with Neural Operator Hybrid Approach

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arxiv 2304.11894 v2 pith:HPBMQD3F submitted 2023-04-24 stat.CO

Estimating Failure Probability with Neural Operator Hybrid Approach

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keywords failurehybridmethodprobabilityapproachcomplexfunctionlimit
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Evaluating failure probability for complex engineering systems is a computationally intensive task. While the Monte Carlo method is easy to implement, it converges slowly and, hence, requires numerous repeated simulations of a complex system to generate sufficient samples. To improve the efficiency, methods based on surrogate models are proposed to approximate the limit state function. In this work, we reframe the approximation of the limit state function as an operator learning problem and utilize the DeepONet framework with a hybrid approach to estimate the failure probability. The numerical results show that our proposed method outperforms the prior neural hybrid method.

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