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A comparative study of nonlinear Markov chain models for conditional simulation of multinomial classes from regular samples

机译:非线性马尔可夫链模型对规则样本进行多项式条件模拟的比较研究

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Simulating fields of categorical geospatial variables from samples is crucial for many purposes, such as spatial uncertainty assessment of natural resources distributions. However, effectively simulating complex categorical variables (i.e., multinomial classes) is difficult because of their nonlinearity and complex interclass relationships. The existing pure Markov chain approach for simulating multinomial classes has an apparent deficiency-underestimation of small classes, which largely impacts the usefulness of the approach. The Markov chain random field (MCRF) theory recently proposed supports theoretically sound multi-dimensional Markov chain models. This paper conducts a comparative study between a MCRF model and the previous Markov chain model for simulating multinomial classes to demonstrate that the MCRF model effectively solves the small-class underestimation problem. Simulated results show that the MCRF model fairly produces all classes, generates simulated patterns imitative of the original, and effectively reproduces input transiograms in realizations. Occurrence probability maps are estimated to visualize the spatial uncertainty associated with each class and the optimal prediction map. It is concluded that the MCRF model provides a practically efficient estimator for simulating multinomial classes from grid samples.
机译:对于许多目的,例如对自然资源分布的空间不确定性评估,模拟来自样本的分类地理空间变量的字段至关重要。然而,由于它们的非线性和复杂的类间关系,有效地模拟复杂的分类变量(即多项式类)是困难的。现有的用于模拟多项式类的纯马尔可夫链方法具有明显的低估小类的缺点,这在很大程度上影响了该方法的实用性。最近提出的马尔可夫链随机场(MCRF)理论支持理论上合理的多维马尔可夫链模型。本文对用于模拟多项式类的MCRF模型与以前的马尔可夫链模型进行了比较研究,以证明MCRF模型有效地解决了小类低估问题。仿真结果表明,MCRF模型公平地产生了所有类别,生成了模仿原始模型的模拟模式,并有效地再现了实现中的输入transiograms。估计发生概率图以可视化与每个类别和最佳预测图相关的空间不确定性。结论是,MCRF模型为从网格样本模拟多项式类提供了一种实用的估计器。

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