首页> 外文期刊>International journal for uncertainty quantifications >UTILIZING ADJOINT-BASED ERROR ESTIMATES FOR SURROGATE MODELS TO ACCURATELY PREDICT PROBABILITIES OF EVENTS
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UTILIZING ADJOINT-BASED ERROR ESTIMATES FOR SURROGATE MODELS TO ACCURATELY PREDICT PROBABILITIES OF EVENTS

机译:使用替代模型的基于偶合的误差估计来准确预测事件的概率

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摘要

We develop a procedure to utilize error estimates for samples of a surrogate model to compute robust upper and lower bounds on estimates of probabilities of events. We show that these error estimates can also be used in an adaptive algorithm to simultaneously reduce the computational cost and increase the accuracy in estimating probabilities of events using computationally expensive high-fidelity models. Specifically, we introduce the notion of reliability of a sample of a surrogate model, and we prove that utilizing the surrogate model for the reliable samples and the high-fidelity model for the unreliable samples gives precisely the same estimate of the probability of the output event as would be obtained by evaluation of the original model for each sample. The adaptive algorithm uses the additional evaluations of the high-fidelity model for the unreliable samples to locally improve the surrogate model near the limit state, which significantly reduces the number of high-fidelity model evaluations as the limit state is resolved. Numerical results based on a recently developed adjoint-based approach for estimating the error in samples of a surrogate are provided to demonstrate (1) the robustness of the bounds on the probability of an event, and (2) that the adaptive enhancement algorithm provides a more accurate estimate of the probability of the QoI event than standard response surface approximation methods at a lower computational cost.
机译:我们开发了一种程序,可利用替代模型样本的误差估计来计算事件概率估计的稳健上限和下限。我们表明,这些误差估计也可以用于自适应算法中,以同时降低计算成本,并使用计算成本高的高保真模型提高估计事件概率的准确性。具体来说,我们引入了替代模型样本的可靠性概念,并证明了对可靠样本使用替代模型和对不可靠样本使用高保真模型可以得出输出事件发生概率的准确估计通过评估每个样品的原始模型获得。自适应算法将高保真模型的附加评估用于不可靠的样本,以在极限状态附近局部改进替代模型,这在解决极限状态时显着减少了高保真模型评估的数量。提供了基于最近开发的基于伴随的方法来估计代理样本中的误差的数值结果,以证明(1)事件概率边界的鲁棒性,以及(2)自适应增强算法提供了与标准响应面逼近方法相比,QoI事件概率的估算更加准确,且计算成本较低。

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