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SURROGATE PREPOSTERIOR ANALYSES FOR PREDICTING AND ENHANCING IDENTIFIABILITY IN MODEL CALIBRATION

机译:用于模型校准的预测和增强可识别性的替代品前分析

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摘要

In physics-based engineering modeling and uncertainty quantification, distinguishing the effects of two main sources of uncertainty - calibration parameter uncertainty and model discrepancy - is challenging. Previous research has shown that identifiability, which is quantified by the posterior covariance of the calibration parameters, can sometimes be improved by experimentally measuring multiple responses of the system that share a mutual dependence on a common set of calibration parameters. In this paper, we address the issue of how to select the most appropriate subset of responses to measure experimentally, to best enhance identifiability. We use a preposterior analysis approach that, prior to conducting physical experiments but after conducting computer simulations, can predict the degree of identifiability that will result using different subsets of responses to measure experimentally. It predicts identifiability via the preposterior covariance from a modular Bayesian Monte Carlo analysis of a multi-response spatial random process (SRP) model. Furthermore, to handle the computational challenge in preposterior analysis, we propose a surrogate preposterior analysis based on Fisher information of the calibration parameters. The proposed methods are applied to a simply supported beam example to select two out of six responses to best improve identifiability. The estimated preposterior covariance is compared to the actual posterior covariance to demonstrate the effectiveness of the methods.
机译:在基于物理的工程建模和不确定性量化中,区分不确定性的两个主要来源(校准参数不确定性和模型差异)的影响具有挑战性。先前的研究表明,通过校准参数的后协方差量化的可识别性,有时可以通过实验测量系统的多个响应来提高,这些响应共享对一组公共的校准参数的相互依赖性。在本文中,我们解决了如何选择最合适的响应子集进行实验测量以最大程度地增强可识别性的问题。我们使用后验分析方法,该方法在进行物理实验之前但在进行计算机模拟之后,可以预测使用不同的响应子集进行实验测量将导致的可识别程度。它通过多响应空间随机过程(SRP)模型的模块化贝叶斯蒙特卡洛分析,通过前后协方差预测可识别性。此外,为了处理后验分析中的计算难题,我们提出了基于校正参数的Fisher信息的替代性后验分析。所提出的方法应用于简单支持的波束示例,以从六个响应中选择两个以最大程度地提高可识别性。将估计的后验协方差与实际后验协方差进行比较,以证明该方法的有效性。

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