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Modified GMDH-NN algorithm and its application for global sensitivity analysis

机译:改进的GMDH-NN算法及其在全局敏感性分析中的应用

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Abstract Global sensitivity analysis (GSA) is a very useful tool to evaluate the influence of input variables in the whole distribution range. Sobol' method is the most commonly used among variance-based methods, which are efficient and popular GSA techniques. High dimensional model representation (HDMR) is a popular way to compute Sobol' indices, however, its drawbacks cannot be ignored. We show that modified GMDH-NN algorithm can calculate coefficients of metamodel efficiently, so this paper aims at combining it with HDMR and proposes GMDH-HDMR method. The new method shows higher precision and faster convergent rate. Several numerical and engineering examples are used to confirm its advantages. Highlights ? The GMDH-NN is improved to construct the explicit polynomial model of optimal complexity by self-organization. ? The paper aims at combining improved GMDH-NN with HDMR expansions and using it to compute Sobol' indices directly. ? The method can be applied in uniform, normal and exponential distribution by using suitable orthogonal polynomials. ? Engineering examples, e.g., electronic circuit models can be solved by the presented method. ]]>
机译:<![cdata [ Abstract 全局敏感性分析(GSA)是一个非常有用的工具,可以评估输入变量在整个分配范围内的影响。 Sobol'方法是基于方差的方法中最常用的方法,其是有效和流行的GSA技术。高维模型表示(HDMR)是计算Sobol'指数的流行方式,但是,无法忽略其缺点。我们表明修改的GMDH-NN算法可以有效地计算元模型的系数,因此本文旨在将其与HDMR合并并提出GMDH-HDMR方法。新方法显示了更高的精度和更快的会聚速率。几个数值和工程例子用于确认其优点。 突出显示 改进了GMDH-Nn,以构建自组织的最佳复杂性的显式多项式模型。 纸张旨在将改进的Gmdh-Nn与HDMR扩展结合并使用它直接计算Sobol'指数。 方法可以应用使用合适的正交多项式均匀,正常和指数分布。 工程示例,例如,电子电路模型可以通过呈现的方法解决。 ]]>

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