首页> 外文期刊>Environmental and ecological statistics >A single-chain-based multidimensional Markov chain model for subsurface characterization
【24h】

A single-chain-based multidimensional Markov chain model for subsurface characterization

机译:用于地下表征的基于单链的多维马尔可夫链模型

获取原文
获取原文并翻译 | 示例
           

摘要

Multidimensional Markov chain models in geosciences were often built on multiple chains, one in each direction, and assumed these 1-D chains to be independent of each other. Thus, unwanted transitions (i.e., transitions of multiple chains to the same location with unequal states) inevitably occur and have to be excluded in estimating the states at unobserved locations. This consequently may result in unreliable estimates, such as underestimation of small classes (i.e., classes with smaller than average areas) in simulated realizations. This paper presents a single-chain-based multidimensional Markov chain model for estimation (i.e., prediction and conditional stochastic simulation) of spatial distribution of subsurface formations with borehole data. The model assumes that a single Markov chain moves in a lattice space, interacting with its nearest known neighbors through different transition probability rules in different cardinal directions. The conditional probability distribution of the Markov chain at the location to be estimated is formulated in an explicit form by following the Bayes' Theorem and the conditional independence of sparse data in cardinal directions. Since no unwanted transitions are involved, the model can estimate all classes fairly. Transiogram models (i.e., 1-D continuous Markov transition probability diagrams) are used to provide transition probability input with needed lags to generalize the model. Therefore, conditional simulation can be conducted directly and efficiently. The model provides an alternative for heterogeneity characterization of subsurface formations.
机译:地球科学中的多维马尔可夫链模型通常建立在多个链上,每个方向一个,并假设这些一维链彼此独立。因此,不可避免地发生不希望的转变(即,多条链到具有不相等状态的相同位置的转变),并且在估计未观察到的位置处的状态时必须将其排除在外。因此,这可能导致不可靠的估计,例如在模拟实现中低估小类(即面积小于平均面积的类)。本文提出了一种基于单链的多维马尔可夫链模型,用于估计具有钻孔数据的地下地层的空间分布(即预测和条件随机模拟)。该模型假设单个马尔可夫链在晶格空间中移动,并通过不同的基数方向上的不同跃迁概率规则与其最近的已知邻居进行交互。通过遵循贝叶斯定理和基本方向上稀疏数据的条件独立性,以显式形式表示要估计位置处的马尔可夫链的条件概率分布。由于不涉及不需要的过渡,因此该模型可以公平地估计所有类。 Transiogram模型(即一维连续Markov转移概率图)用于提供具有所需滞后的转移概率输入,以概括该模型。因此,可以直接有效地进行条件模拟。该模型为地下地层的非均质性表征提供了替代方法。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号