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Bayesian-entropy gaussian process for constrained metamodeling

机译:贝叶斯 - 熵高斯的受约束元模型的过程

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摘要

A novel Bayesian-Entropy Gaussian Process (BEGP) is proposed for constrained metamodeling. Gaussian Process (GP) regression is a flexible and robust tool for surrogate modeling using observation data. For many engineering problems, available information other than observations may be known, such as physical constraints, boundary conditions, and empirical knowledge. Based on the Bayesian-Entropy (BE) principle, this paper introduces a novel framework for encoding extra information in addition to point data in constructing a GP regression model. The extra information is treated as constraints on the mean prediction of GP. The BE method can rigorously incorporate extra information as constraints into classical Bayesian framework. The constraint term is added into the posterior distribution of the hyperparameters when training the GP model. BEGP serves as an information fusion tool to enhance the extrapolation behavior of the GP model by incorporating additional knowledge about the problem. The proposed methodology is demonstrated on a numerical toy example and a structural analysis example highlighting the ability to smoothly connect two local GPs and incorporate boundary conditions as extra constraints. The BEGP shows the ability of incorporating physics constraints to enhance prediction and extrapolation behaviors. Finally, conclusions and future work are drawn based on the proposed study.
机译:提出了一种新颖的贝叶斯 - 熵高斯过程(BEGP),用于受约束的元解。高斯过程(GP)回归是使用观察数据代理建模的灵活且强大的工具。对于许多工程问题,可以知道除了观测之外的可用信息,例如物理限制,边界条件和经验知识。基于贝叶斯熵(BE)原则,本文介绍了一种用于编码额外信息的新框架,除了在构建GP回归模型时的数据。额外信息被视为对GP的平均预测的约束。 BE方法可以严格地将额外的信息作为古典贝叶斯框架的约束合并。在培训GP模型时,约束项将添加到Hyper参数的后部分布中。 BEGP用作信息融合工具,通过纳入关于问题的额外知识来增强GP模型的外推行为。在数值玩具示例中证明了所提出的方法,并且结构分析示例突出了平稳地连接两个本地GPS并将边界条件作为额外约束的能力。 BEGP显示了包含物理限制来增强预测和外推行为的能力。最后,基于拟议的研究绘制了结论和未来的工作。

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