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Modified Bayesian Kriging for noisy response problems and Bayesian confidence-based reliability-based design optimization.

机译:针对嘈杂的响应问题的改进贝叶斯克里金法和基于贝叶斯信任度的基于可靠性的设计优化。

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摘要

The objective of this study is to develop a new modified Bayesian Kriging (MBKG) surrogate modeling method that can be used to carry out confidence-based reliability-based design optimization (RBDO) for problems in which simulation analyses are inherently noisy and standard Kriging approaches fail. The formulation of the MBKG surrogate modeling method is presented, and the full conditional distributions of the unknown MBKG parameters are derived and coded into a Gibbs sampling algorithm. Using the coded Gibbs sampling algorithm, Markov chain Monte Carlo is used to fit the MBKG surrogate model.;A sequential sampling method that uses the posterior credible sets for inserting new design of experiment (DoE) sample points is proposed. The sequential sampling method is developed in such a way that the new DoE sample points added will provide the maximum amount of information possible to the MBKG surrogate model, making it an efficient and effective way to reduce the number of DoE sample points needed. Therefore, it improves the posterior distribution of the probability of failure efficiently.;Finally, a confidence-based RBDO method using the posterior distribution of the probability of failure is developed. The confidence-based RBDO method is developed so that the uncertainty of the MBKG surrogate model is included in the optimization process.;A 2-D mathematical example was used to demonstrate fitting the MBKG surrogate model and the developed sequential sampling method that uses the posterior credible sets for inserting new DoE. A detailed study on how the posterior distribution of the probability of failure changes as new DoE are added using the developed sequential sampling method is presented. Confidence-based RBDO is carried out using the same 2-D mathematical example. Three different noise levels are used for the example to compare how the MBKG surrogate modeling method, the sequential sampling method, and the confidence-based RBDO method behave for different amounts of noise in the response. A comparison of the optimization results for the three different noise levels for the same 2-D mathematical example is presented.;A 3-D multibody dynamics (MBD) engineering block-car example is presented. The example is used to demonstrate using the developed methods to carry out confidence-based RBDO for an engineering problem that contains noise in the response. The MBD simulations for this example were done using the commercially available MBD software package RecurDyn. Deterministic design optimization (DDO) was first done using the MBKG surrogate model to obtain the mean response values, which then were used with standard Kriging methods to obtain the sensitivity of the responses. Confidence-based RBDO was then carried out using the DDO solution as the initial design point.
机译:这项研究的目的是开发一种新的改进的贝叶斯克里格(MBKG)替代建模方法,该方法可用于对模拟分析固有的噪声和标准克里格方法进行基于信任度的基于可靠性的设计优化(RBDO)。失败。提出了MBKG代理建模方法的公式,并导出了未知MBKG参数的全部条件分布,并将其编码为Gibbs采样算法。通过编码的吉布斯采样算法,使用马尔可夫链蒙特卡罗拟合MBKG替代模型。提出了一种使用后可信集插入实验新设计点(DoE)的顺序采样方法。顺序采样方法的开发方式是,添加的新的DoE采样点将为MBKG替代模型提供尽可能多的信息,从而成为减少所需DoE采样点数量的有效途径。因此,它有效地改善了故障概率的后验分布。最后,开发了一种使用故障概率的后验分布的基于置信度的RBDO方法。发展了基于置信度的RBDO方法,从而将MBKG替代模型的不确定性包括在优化过程中。;使用二维数学示例演示了MBKG替代模型的拟合,并开发了使用后验的顺序采样方法用于插入新DoE的可靠设备。详细介绍了如何使用发达的顺序采样方法添加新的DoE时,失效概率的后验分布。基于置信度的RBDO使用相同的2D数学示例进行。示例中使用了三种不同的噪声水平,以比较MBKG代理建模方法,顺序采样方法和基于置信度的RBDO方法在响应中不同噪声量下的表现。给出了相同2D数学示例中三种不同噪声水平的优化结果的比较。给出了3D多体动力学(MBD)工程块车示例。该示例用于说明如何使用开发的方法对响应中包含噪声的工程问题执行基于置信度的RBDO。使用可商购的MBD软件包RecurDyn完成本示例的MBD模拟。首先使用MBKG替代模型完成确定性设计优化(DDO),以获取平均响应值,然后将其与标准Kriging方法一起使用以获得响应的敏感性。然后,以DDO解决方案为初始设计点,进行了基于置信度的RBDO。

著录项

  • 作者

    Gaul, Nicholas John.;

  • 作者单位

    The University of Iowa.;

  • 授予单位 The University of Iowa.;
  • 学科 Engineering Mechanical.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 155 p.
  • 总页数 155
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:53:22

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