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Efficient reliability analysis with a CDA-based dimension-reduction model and polynomial chaos expansion

机译:基于CDA的维度减少模型和多项式混沌扩展的高效可靠性分析

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摘要

Polynomial chaos expansion (PCE) is a versatile tool for building a meta-model in various engineering fields. Unfortunately, it is largely affected by the curse of dimensionality and its application for reliability analysis is usually hindered unless high truncated degrees are used. To alleviate this problem, this paper presents a new method based on contribution-degree analysis (CDA), an exact dimension-reduction model (DRM) and polynomial chaos expansion for efficient reliability analysis. First, the original performance function is decomposed as a summation of several component functions including one lowerdimensional interacting component function and several one-dimensional non-interacting component functions via a CDA-based DRM. Then, the full PCE or sparse PCE is employed to reconstruct the lower-dimensional interacting component function instead of the original complicated multi-dimensional performance function, whereas one-dimensional full PCEs are utilized for approximating the non-interacting component functions. In this way, we avoid building a PCE meta-model for the original multivariate performance function, thus the number of unknown coefficients is significantly reduced and the computational burden for reliability analysis is eased accordingly. Pertinent examples including both analytical performance functions and finite-element models are investigated, which demonstrates that the proposed method achieves a good trade-off of efficiency and accuracy for reliability analysis. (C) 2020 Elsevier B.V. All rights reserved.
机译:多项式混沌扩展(PCE)是一种用于在各种工程领域构建元模型的多功能工具。不幸的是,它主要受到维度诅咒的影响,除非使用高截短的程度,否则通常阻碍其可靠性分析的应用。为了缓解这个问题,本文提出了一种基于贡献度分析(CDA)的新方法,精确的尺寸减少模型(DRM)和多项式混沌扩展,用于有效可靠性分析。首先,原始性能函数被分解为若干组件函数的总和,包括一种通过CDA的DRM的一个降低的相互作用分量函数和几维非交互分量函数。然后,采用完整的PCE或稀疏PCE来重建低维相互作用分量函数而不是原始复杂的多维性能功能,而一维全面展示用于近似非交互分量功能。通过这种方式,我们避免为原始多变量性能函数构建PCE元模型,因此未知系数的数量显着降低,相应地减少了可靠性分析的计算负担。研究包括分析性能功能和有限元模型的相关示例,表明该方法实现了可靠性分析的效率和准确性的良好权衡。 (c)2020 Elsevier B.v.保留所有权利。

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