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Self-adaptive sampling for sequential surrogate modeling of time-consuming finite element analysis

机译:自适应采样用于费时有限元分析的顺序代理建模

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This study presents a new approach of surrogate modeling for time-consuming fmite element analysis. A surrogate model is widely used to reduce the computational cost under an iterative computational analysis. Although a variety of the methods have been widely investigated, there are still difficulties in surrogate modeling from a practical point of view: (1) How to derive optimal design of experiments (i.e., the number of training samples and their locations); and (2) diagnostics of the surrogate model. To overcome these difficulties, we propose a sequential surrogate modeling based on Gaussian process model (GPM) with self -adaptive sampling. The proposed approach not only enables further sampling to make GPM more accurate, but also evaluates the model adequacy within a sequential framework. The applicability of the proposed approach is first demonstrated by using mathematical test functions. Then, it is applied as a substitute of the iterative fmite element analysis to Monte Carlo simulation for a response uncertainty analysis under correlated input uncertainties. In all numerical studies, it is successful to build GPM automatically with the minimal user intervention. The proposed approach can be customized for the various response surfaces and help a less experienced user save his/her efforts.
机译:这项研究提出了一种新的替代模型,用于费时的有限元分析。代理模型被广泛用于减少迭代计算分析下的计算成本。尽管已经对各种方法进行了广泛的研究,但是从实际的角度来看,在替代建模方面仍然存在困难:(1)如何获得实验的最佳设计(即训练样本的数量及其位置); (2)替代模型的诊断。为了克服这些困难,我们提出了基于高斯过程模型(GPM)和自适应采样的顺序替代模型。所提出的方法不仅能够使GPM更准确地进行进一步采样,而且可以在顺序框架内评估模型的适当性。首先通过使用数学测试函数来证明所提出的方法的适用性。然后,将其作为迭代有限元分析的替代方法,用于蒙特卡洛模拟,用于相关输入不确定性下的响应不确定性分析。在所有数值研究中,以最少的用户干预自动构建GPM都是成功的。可以针对各种响应面定制建议的方法,并帮助经验不足的用户节省他/她的工作量。

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