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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

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摘要

Parameter estimation for complex models using Bayesian inference is usually a very costly process as it requires a large number of solves of the forward problem. We show here how the construction of adaptive surrogate models using a posteriori error estimates for quantities of interest can significantly reduce the computational cost in problems of statistical inference. As surrogate models provide only approximations of the true solutions of the forward problem, it is nevertheless necessary to control these errors in order to construct an accurate reduced model with respect to the observables utilized in the identification of the model parameters. Effectiveness of the proposed approach is demonstrated on a numerical example dealing with the Spalart–Allmaras model for the simulation of turbulent channel flows. In particular, we illustrate how Bayesian model selection using the adapted surrogate model in place of solving the coupled nonlinear equations leads to the same quality of results while requiring fewer nonlinear PDE solves.
机译:使用贝叶斯推理对复杂模型进行参数估计通常是一个非常昂贵的过程,因为它需要大量解决前向问题。我们在这里展示了如何使用感兴趣量的后验误差估计来构建自适应替代模型,从而可以显着减少统计推断问题中的计算成本。由于替代模型仅提供正向问题的真实解的近似值,因此,有必要控制这些误差,以针对识别模型参数中使用的可观察对象构建准确的简化模型。一个数值示例证明了该方法的有效性,该数值示例处理了用于模拟湍流通道的Spalart-Allmaras模型。特别是,我们说明了使用自适应代理模型代替求解耦合的非线性方程式进行的贝叶斯模型选择如何导致相同的结果质量,同时需要更少的非线性PDE求解。

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