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EMBEDDED MODEL ERROR REPRESENTATION FOR BAYESIAN MODEL CALIBRATION

机译:贝叶斯模型校准的嵌入式模型误差表示

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摘要

Model error estimation remains one of the key challenges in uncertainty quantification and predictive science. For computational models of complex physical systems, model error, also known as structural error or model inadequacy, is often the largest contributor to the overall predictive uncertainty. This work builds on a recently developed framework of embedded, internal model correction, in order to represent and quantify structural errors, together with model parameters, within a Bayesian inference context. We focus specifically on a polynomial chaos representation with additive modification of existing model parameters, enabling a nonintrusive procedure for efficient approximate likelihood construction, model error estimation, and disambiguation of model and data errors' contributions to predictive uncertainty. The framework is demonstrated on several synthetic examples, as well as on a chemical ignition problem.
机译:模型误差估计仍然是不确定性量化和预测科学中的主要挑战之一。对于复杂物理系统的计算模型,模型误差(也称为结构误差或模型不足)通常是导致整体预测不确定性的最大因素。这项工作以最近开发的嵌入式内部模型校正框架为基础,以便在贝叶斯推理上下文中表示和量化结构误差以及模型参数。我们特别关注于对现有模型参数进行累加修改的多项式混沌表示法,从而为有效的近似似然构建,模型误差估计以及模型和数据误差对预测不确定性贡献的消除提供了一种非侵入式过程。该框架在几个综合示例以及化学点火问题上得到了证明。

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