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ESC: an efficient error-based stopping criterion for kriging-based reliability analysis methods

机译:ESC:基于克里格的可靠性分析方法的基于有效的基于错误的停止标准

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摘要

The ever-increasing complexity of numerical models and associated computational demands have challenged classical reliability analysis methods. Surrogate model-based reliability analysis techniques, and in particular those using kriging meta-model, have gained considerable attention recently for their ability to achieve high accuracy and computational efficiency. However, existing stopping criteria, which are used to terminate the training of surrogate models, do not directly relate to the error in estimated failure probabilities. This limitation can lead to high computational demands because of unnecessary calls to costly performance functions (e.g., involving finite element models) or potentially inaccurate estimates of failure probability due to premature termination of the training process. Here, we propose the error-based stopping criterion (ESC) to address these limitations. First, it is shown that the total number of wrong sign estimation of the performance function for candidate design samples by kriging, S, follows a Poisson binomial distribution. This finding is subsequently used to estimate the lower and upper bounds of S for a given confidence level for sets of candidate design samples classified by kriging as safe and unsafe. An upper bound of error of the estimated failure probability is subsequently derived according to the probabilistic properties of Poisson binomial distribution. The proposed upper bound is implemented in the kriging-based reliability analysis method as the stopping criterion. The efficiency and robustness of ESC are investigated here using five benchmark reliability analysis problems. Results indicate that the proposed method achieves the set accuracy target and substantially reduces the computational demand, in some cases by over 50%.
机译:数值模型和相关的计算需求的不断增长的复杂性具有挑战的经典可靠性分析方法。基于代理模型的可靠性分析技术,特别是使用Kriging Meta-Model的可靠性分析技术最近获得了相当大的关注,以实现高精度和计算效率的能力。但是,用于终止替代模型训练的现有停止标准,与估计的失败概率的误差没有直接相关。由于对昂贵的性能功能(例如,涉及有限元模型)或由于培训过程的过早终止,不必要地呼叫昂贵的性能函数(例如,涉及有限元模型)或可能不准确概率的估计,这种限制可能导致高计算需求。在这里,我们提出了基于错误的停止标准(ESC)来解决这些限制。首先,显示通过Kriging,S的候选设计样本的性能函数的错误符号估计总数遵循泊松二项分布。随后,该发现用于估计用于给定席位的S的较低和上限,用于克里格定为安全和不安全地分类的候选设计样本。随后根据泊松二项分布的概率性质来衍生估计失效概率的误差的上限。所提出的上限在基于Kriging的可靠性分析方法中实现为停止标准。这里使用五个基准可靠性分析问题研究了ESC的效率和稳健性。结果表明,该方法实现了设定的精度目标并大大降低了计算需求,在某些情况下以上超过50%。

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