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Local maximum-entropy based surrogate model and its application to structural reliability analysis

机译:基于局部最大熵的代理模型及其在结构可靠性分析中的应用

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摘要

A novel surrogate model based on the Local Maximum-Entropy (LME) approximation is proposed in this paper. By varying the degrees of locality, the LME-based surrogate model is constructed according to the local behavior of the response function at the prediction points. The proposed method combines the advantages of both local and global approximation schemes. The robustness and effectiveness of the model are systematically investigated by comparing with the conventional surrogate models (such as Polynomial regression, Radial basis function, and Kriging model) in three types of test problems. In addition, the performance of the LME-based surrogate model is evaluated by an industry case of turbine disk reliability analysis (TDRA) involving random geometric parameters. In TDRA, two LME-based surrogate models are built including a 1 (s t) surrogate model employed in the sensitivity analysis to determine the key random variables and a 2 (n d) surrogate model utilized in Monte-Carlo Simulations (MCS) to predict the Low Cycle Fatigue (LCF) life of turbine disks. Finally, a model-based Uncertainty Quantification (UQ) analysis is performed to rigorously quantify the uncertainties of the physical system and fidelity of surrogate model predictions simultaneously. Results show that the LME-based surrogate model can achieve a desirable level of accuracy and robustness with reduced number of sample points, which indicates the proposed method possess the potential for approximating highly nonlinear limit state functions and applicable for structural reliability analysis.
机译:本文提出了一种基于局部最大熵(LME)近似的新型代理模型。通过改变局部度,基于LME的代理模型根据预测点处的响应函数的局部行为来构造。所提出的方法结合了本地和全局近似方案的优点。通过在三种类型的测试问题中与传统的代理模型(如多项式回归,径向基函数和克里格化模型)进行比较,系统地研究了模型的鲁棒性和有效性。此外,基于LME的代理模型的性能由涉及随机几何参数的涡轮盘可靠性分析(TDRA)的行业案例来评估。在TDRA中,构建了两个基于LME的代理模型,包括在灵敏度分析中使用的1(ST)代理模型,以确定Monte-Carlo模拟(MCS)中使用的关键随机变量和2(ND)代理模型来预测涡轮机磁盘的低循环疲劳(LCF)寿命。最后,执行基于模型的不确定性量化(UQ)分析以同时严格量化物理系统的不确定性和替代模型预测的保真度。结果表明,基于LME的代理模型可以实现所需的精度和鲁棒性,具有减少数量的采样点,这表明所提出的方法具有近似高度非线性限制状态功能的可能性,并且适用于结构可靠性分析。

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