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A nonparametric approach for characterizing soil spatial variability based on cone penetration test data

机译:一种基于锥形渗透测试数据的土壤空间变异性的非参数方法

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Probabilistic site characterization usually requires a parametric model such as the Gaussian random field to begin. This paper proposes a nonparametric approach to characterizing soil spatial variability based on the maximum entropy method. The finite-dimensional distribution specifying a random field is decomposed into marginal distributions and vine-structured copulas. Then, the distribution is adaptively developed under the moment constraints, which are classified into two categories. The first category describes the uncertainty of the random quantity at an arbitrary point, while the second category defines the dependence between the random quantities at any two points. The marginal distribution and vine-structured copulas are developed under the two types of moment constraints, respectively, which are formulated as two optimization problems. The Akaike information criterion (AIC) is adopted for model selection, and the hypothesis test based on the probability integral transformation (PIT) is used to examine whether the spatial variability is modeled appropriately. Analysis results of a hypothetical case and several real soil profiles indicate that the nonparametric approach is feasible. The nonparametric models are comparable or superior to the parametric or Gaussian models, and no prior assumption is made on the distribution of the random field.
机译:概率站点表征通常需要参数模型,例如高斯随机字段开始。本文提出了一种基于最大熵方法来表征土壤空间可变性的非参数方法。指定随机场的有限尺寸分布被分解成边际分布和藤蔓结构。然后,在瞬间约束下自适应地开发分布,该限制分为两类。第一类别描述了任意点的随机量的不确定性,而第二类别定义了任何两点的随机量之间的依赖性。边缘分布和葡萄结构的Copulas分别在两种类型的时刻约束下开发,其制定为两种优化问题。采用Akaike信息标准(AIC)进行模型选择,并且基于概率积分变换(PIT)的假设测试用于检查空间可变性是否适当地建模。分析结果的假设案例和几种真实土谱表明非参数方法是可行的。非参数模型与参数或高斯模型相当或优于参数或高斯模型,并且在随机场的分布上没有先前的假设。

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