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Bayesian sensitivity analysis of bifurcating nonlinear models

机译:分岔非线性模型的贝叶斯灵敏度分析

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Sensitivity analysis allows one to investigate how changes in input parameters to a system affect the output. When computational expense is a concern, metamodels such as Gaussian processes can offer considerable computational savings over Monte Carlo methods, albeit at the expense of introducing a data modelling problem. In particular, Gaussian processes assume a smooth, non-bifurcating response surface. This work highlights a recent extension to Gaussian processes which uses a decision tree to partition the input space into homogeneous regions, and then fits separate Gaussian processes to each region. In this way, bifurcations can be modelled at region boundaries and different regions can have different covariance properties. To test this method, both the treed and standard methods were applied to the bifurcating response of a Duffing oscillator and a bifurcating FE model of a heart valve. It was found that the treed Gaussian process provides a practical way of performing uncertainty and sensitivity analysis on large, potentially-bifurcating models, which cannot be dealt with by using a single GP, although an open problem remains how to manage bifurcation boundaries that are not parallel to coordinate axes.
机译:灵敏度分析使您可以研究系统输入参数的变化如何影响输出。当需要考虑计算费用时,尽管以引入数据建模问题为代价,但诸如高斯过程之类的元模型可以提供比蒙特卡洛方法可观的计算节省。特别是,高斯过程假设一个平滑的,无分支的响应面。这项工作重点介绍了对高斯过程的最新扩展,它使用决策树将输入空间划分为同质区域,然后将独立的高斯过程拟合到每个区域。以此方式,可以在区域边界处对分叉建模,并且不同的区域可以具有不同的协方差性质。为了测试此方法,将树形方法和标准方法都应用于Duffing振荡器的分叉响应和心脏瓣膜的分叉FE模型。发现树状高斯过程提供了一种在大型,可能分叉的模型上执行不确定性和灵敏度分析的实用方法,尽管使用开放的问题仍然是如何管理非分叉边界的开放问题,但是使用单个GP无法解决该问题。平行于坐标轴。

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