GELF: A global error-based learning function for globally optimal adaptive reliability analysis

IF 5.7 1区 工程技术 Q1 ENGINEERING, CIVIL
Chi Zhang , Chaolin Song , Abdollah Shafieezadeh
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引用次数: 0

Abstract

Kriging has gained significant attention for reliability analysis primarily because of the analytical form of its uncertainty information, which facilitates adaptive training and establishing stopping criteria for the training process. Learning functions play a significant role in both selection of training points and stoppage of the training. For these functions, most existing learning functions evaluate candidate training points individually. However, lack of consideration for the global effects can lead to suboptimal training. In addition, the subjectivity of these stopping criteria may result in over or undertraining of surrogate models. To overcome these gaps, we propose Global Error-based Learning Function (GELF) for optimal refinement of Kriging surrogate models for the specific purpose of reliability analysis. Instead of prioritizing training points based on their uncertainty and proximity to the limit state like the existing learning functions, GELF for the first time directly and analytically associates the maximum error in the failure probability estimate to the global effect of choosing a candidate training point. This development subsequently facilitates an adaptive training scheme that minimizes the error in adaptive reliability estimation to the highest degree. For this purpose, GELF uses hypothetical future uncertainty information by treating the current construction of the surrogate model as a generative model. The proposed method is tested on three classic benchmark problems and one practical engineering problem. Results indicate that the proposed method has significantly better computational efficiency than the state-of-the-art methods while achieving high accuracy in all the numerical examples.

GELF:基于全局误差的学习函数,用于全局最优自适应可靠性分析
克里格法之所以在可靠性分析中备受关注,主要是因为其不确定性信息的分析形式有助于自适应训练和建立训练过程的停止标准。学习函数在选择训练点和停止训练方面都起着重要作用。对于这些函数,大多数现有的学习函数都是单独评估候选训练点。然而,如果不考虑全局效应,就会导致训练效果不理想。此外,这些停止标准的主观性可能会导致代用模型训练过度或训练不足。为了克服这些不足,我们提出了基于全局误差的学习函数 (GELF),用于对 Kriging 代理模型进行优化改进,以达到可靠性分析的特定目的。GELF 不像现有的学习函数那样,根据训练点的不确定性和与极限状态的接近程度来确定训练点的优先级,而是首次直接通过分析将故障概率估计的最大误差与选择候选训练点的全局影响联系起来。这一发展随后促进了自适应训练方案,使自适应可靠性估计中的误差最小化到最高程度。为此,GELF 将当前构建的代理模型视为生成模型,从而使用假设的未来不确定性信息。所提出的方法在三个经典基准问题和一个实际工程问题上进行了测试。结果表明,所提方法的计算效率明显优于最先进的方法,同时在所有数值示例中都达到了很高的精度。
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来源期刊
Structural Safety
Structural Safety 工程技术-工程:土木
CiteScore
11.30
自引率
8.60%
发文量
67
审稿时长
53 days
期刊介绍: Structural Safety is an international journal devoted to integrated risk assessment for a wide range of constructed facilities such as buildings, bridges, earth structures, offshore facilities, dams, lifelines and nuclear structural systems. Its purpose is to foster communication about risk and reliability among technical disciplines involved in design and construction, and to enhance the use of risk management in the constructed environment
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