Uncertainty propagation method for high-dimensional black-box problems via Bayesian deep neural network

被引:0
作者
Jing Fei Liu
Chao Jiang
Jing Zheng
机构
[1] Hunan University,State Key Laboratory of Advanced Design and Manufacturing for Vehicle Body, School of Mechanical and Vehicle Engineering
来源
Structural and Multidisciplinary Optimization | 2022年 / 65卷
关键词
High-dimensional uncertainty propagation; Bayesian deep neural network; Probability density function-based sampling; Multimodal distribution; Black-box problems;
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摘要
A high-dimensional uncertainty propagation (UP) method is proposed in this paper, solving UP problems directly in the high-dimensional space. Firstly, a probability density function-based sampling (PDFS) method is developed to generate input samples, which can locate the area determined by the spatial distribution characteristics of input variables efficiently. High-quality training data can thus be obtained by computing the system response of objective black-box problem at those input samples. Secondly, Bayesian deep neural network (BDNN) is trained on the training data to construct surrogate model for objective black-box problem. Thirdly, Monte Carlo sampling is implemented on the trained BDNN to compute the statistical samples of system response. Finally, Gaussian mixture model is utilized to fit the probability density function (PDF) of system response based on the statistical samples. Moreover, because PDFS can generate samples according to the PDF of input variables, it is also suitable for problems involving multimodal distributions. Several numerical examples are utilized to validate the effectiveness of proposed method.
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