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首页> 外文期刊>International Journal for Numerical Methods in Engineering >Probabilistic learning for modeling and quantifying model-form uncertainties in nonlinear computational mechanics
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Probabilistic learning for modeling and quantifying model-form uncertainties in nonlinear computational mechanics

机译:非线性计算力学模型和量化模型形式不确定性的概率学习

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摘要

Recently, a novel nonparametric probabilistic method for modeling and quantifying model-form uncertainties in nonlinear computational mechanics was proposed. Its potential was demonstrated through several uncertainty quantification (UQ) applications in vibration analysis and nonlinear computational structural dynamics. This method, which relies on projection-based model order reduction to achieve computational feasibility, exhibits a vector-valued hyperparameter in the probability model of the random reduced-order basis and associated stochastic projection-based reduced-order model. It identifies this hyperparameter by formulating a statistical inverse problem, grounded in target quantities of interest, and solving the corresponding nonconvex optimization problem. For many practical applications, however, this identification approach is computationally intensive. For this reason, this paper presents a faster predictor-corrector approach for determining the appropriate value of the vector-valued hyperparameter that is based on a probabilistic learning on manifolds. It also demonstrates the computational advantages of this alternative identification approach through the UQ of two three-dimensional nonlinear structural dynamics problems associated with two different configurations of a microelectromechanical systems device.
机译:最近,提出了一种用于在非线性计算力学中建模和量化模型形式的不确定性的新型非参数概率方法。通过振动分析和非线性计算结构动态的几种不确定量化(UQ)应用来证明其潜力。该方法依赖于基于投影的模型顺序降低以实现计算可行性,在随机减少阶基础的概率模型和基于相关随机投影的缩小阶模型的概率模型中展示了矢量值的超顺。它通过制定统计逆问题,在目标数量的兴趣下接地,解决相应的非凸化优化问题来识别这个超级参数。然而,对于许多实际应用,这种识别方法是计算密集的。因此,本文介绍了一种更快的预测校正器方法,用于确定基于歧管上的概率学习的矢量值超参数的适当值。它还通过与微机电系统装置的两种不同配置相关联的两个三维非线性结构动力学问题来展示该替代识别方法的计算优势。

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