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Variance-based sensitivity analysis for models with correlated inputs and its state dependent parameter solution

机译:基于方案的相关输入模型的敏感性分析及其状态依赖参数解决方案

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摘要

Sensitivity analysis is indispensable to structural design and optimization. This paper focuses on sensitivity analysis for models with correlated inputs. To explore the contributions of correlated inputs to the uncertainty in a model output, the universal expressions of the variance contributions of the correlated inputs are first derived in the paper based on the high dimensional model representation (HDMR) of the model function. Then by analyzing the composition of these variance contributions, the variance contributions by an individual correlated input to the model output are further decomposed into independent contribution by the individual input itself, independent contribution by interaction between the individual input and the others, contribution purely by correlation between the individual input and the others, and contribution by interaction associated with correlation between the individual input and the others. The general expressions of these components are also derived. Based on the characteristics of these general expressions, a universal framework for estimating the various variance contributions of the correlated inputs is developed by taking the efficient state dependent parameter (SDP) method as an illustration. Numerical and engineering tests show that this decomposition of the variance contributions of the correlated inputs can provide useful information for exploring the sources of the output uncertainty and identifying the structure of the model function for the complicated models with correlated inputs. The efficiency and accuracy of the SDP-based method for estimating the various variance contributions of the correlated inputs are also demonstrated by the examples.
机译:敏感性分析是结构设计和优化不可或缺的。本文重点介绍了具有相关输入的模型的灵敏度分析。为了探讨模型输出中的相关输入对不确定性的相关输入的贡献,基于模型函数的高维模型表示(HDMR),首先在纸张中派生相关输入的差异贡献的通用表达式。然后,通过分析这些方差贡献的组成,各个相关输入对模型输出的各个相关输入的方差贡献进一步分解成各个投入本身的独立贡献,通过各个输入与其他的相互作用,纯粹通过相关贡献来贡献在各个输入与其他输入之间,以及通过与各个输入与其他输入之间的相关性的交互的贡献。这些组件的一般表达也是衍生的。基于这些总体表达式的特征,通过将有效的状态相关参数(SDP)方法作为图示,开发了用于估计相关输入的各种方差贡献的通用框架。数值和工程测试表明,该相关输入的方差贡献的分解可以提供用于探索输出不确定性的源的有用信息,并识别具有相关输入的复杂模型的模型功能的结构。实施例还证明了基于SDP的基于SDP的方法的效率和准确性。

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