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Adaptive Surrogate Modeling for Response Surface Approximations with Application to Bayesian Inference

机译:响应曲面近似的自适应代理建模及其在贝叶斯推理中的应用

摘要

The need for surrogate models and adaptive methods can be best appreciated if one is interested in parameter estimation using a Bayesian calibration procedure for validation purposes. We extend here our latest work on error decomposition and adaptive refinement for response surfaces to the development of surrogate models that can be substituted for the full models to estimate the parameters of Reynolds-averaged Navier-Stokes models. The error estimates and adaptive schemes are driven here by a quantity of interest and are thus based on the approximation of an adjoint problem. We will focus in particular to the accurate estimation of evidences to facilitate model selection. The methodology will be illustrated on the Spalart-Allmaras RANS model for turbulence simulation.
机译:如果对使用贝叶斯校准程序进行验证的参数估计感兴趣,可以最好地了解替代模型和自适应方法的需求。我们在这里将响应面的错误分解和自适应细化的最新工作扩展到代理模型的开发,该模型可以代替完整模型来估计雷诺平均Navier-Stokes模型的参数。误差估计和自适应方案在此由感兴趣的数量来驱动,因此基于伴随问题的近似。我们将特别专注于准确估计证据以促进模型选择。该方法将在Spalart-Allmaras RANS模型中进行湍流模拟。

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  • 作者

    Prudhomme Serge;

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  • 年度 2015
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