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A sequential sparse polynomial chaos expansion using Voronoi exploration and local linear approximation exploitation for slope reliability analysis

机译:使用voronoi探索和局部线性近似开采坡度可靠性分析的顺序稀疏多项式混沌扩展

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Polynomial chaos expansions (PCEs) have been extensively used to perform reliability analyses of slopes. The accuracy of a PCE metamodel is highly dependent on the experimental design samples, which are commonly selected according to their uniformity. However, the method of uniform sampling fails to put additional weight on the regions with high nonlinearity, in which more samples are required to give a good approximation. To address this issue, the Voronoi-based exploration and the local linear approximation-based exploitation (Voronoi-LOLA) are combined to determine experimental design samples for PCE constructions. A sequential sampling scheme that employs the sparse polynomial chaos expansion (SPCE) output information is further proposed to choose the most informative samples, which are crucial for building a PCE. This method not only improves computational efficiency but also enhances the accuracy of the PCE metamodel. The performance of the proposed Voronoi-LOLA-SPCE method is illustrated with four representative examples, and the results show that the proposed Voronoi-LOLA-SPCE is an effective and accurate method for slope reliability assessment.
机译:多项式混沌扩展(PCE)已广泛用于执行斜坡的可靠性分析。 PCE元模型的准确性高度依赖于实验设计样本,其通常根据其均匀性选择。然而,均匀采样的方法不能在具有高非线性的区域上放置额外的重量,其中需要更多的样品来提供良好的近似。为了解决这个问题,组合基于Voronoi的探索和基于局部线性近似的剥削(Voronoi-lola)以确定PCE结构的实验设计样本。进一步提出采用稀疏多项式混沌扩展(SPCE)输出信息的顺序采样方案来选择最具信息性的样本,这对于构建PCE至关重要。该方法不仅提高了计算效率,还提高了PCE元模型的准确性。提出的Voronoi-LOLA-SPCE方法的性能被四种代表性实施例说明,结果表明,拟议的VORONOI-LOLA-SPCE是一种有效准确的坡度可靠性评估方法。

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