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Separation of aleatory and epistemic uncertainty in probabilistic model validation

机译:概率模型验证中的偶然不确定性和认知不确定性的分离

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This paper investigates model validation under a variety of different data scenarios and clarifies how different validation metrics may be appropriate for different scenarios. In the presence of multiple uncertainty sources, model validation metrics that compare the distributions of model prediction and observation are considered. Both ensemble validation and point-by-point approaches are discussed, and it is shown how applying the model reliability metric point-by-point enables the separation of contributions from aleatory and epistemic uncertainty sources. After individual validation assessments are made at different input conditions, it may be desirable to obtain an overall measure of model validity across the entire domain. This paper proposes an integration approach that assigns weights to the validation results according to the relevance of each validation test condition to the overall intended use of the model in prediction. Since uncertainty propagation for probabilistic validation is often unaffordable for complex computational models, surrogate models are often used; this paper proposes an approach to account for the additional uncertainty introduced in validation by the uncertain fit of the surrogate model. The proposed methods are demonstrated with a microelectromechanical system (MEMS) example. (C) 2015 Elsevier Ltd. All rights reserved.
机译:本文研究了各种不同数据场景下的模型验证,并阐明了不同的验证指标如何适用于不同场景。在存在多个不确定性源的情况下,将考虑比较模型预测和观察分布的模型验证指标。讨论了集成验证和逐点方法,并显示了如何逐点应用模型可靠性度量来实现从不确定性和认知不确定性源中分离出贡献。在不同的输入条件下进行单独的验证评估后,可能需要获得整个域中模型有效性的整体度量。本文提出了一种集成方法,根据每种验证测试条件与模型在预测中的总体预期用途的相关性,为验证结果分配权重。由于对于复杂的计算模型来说,不确定性传播对于概率验证通常是买不起的,因此通常使用替代模型。本文提出了一种方法来解决由替代模型的不确定性拟合在验证中引入的其他不确定性。本文以微机电系统(MEMS)为例演示了所提出的方法。 (C)2015 Elsevier Ltd.保留所有权利。

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