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Multivariate analysis of diverse data for improved geostatistical reservoir modeling.

机译:对各种数据进行多变量分析,以改进地统计储层建模。

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摘要

Improved numerical reservoir models are constructed when all available diverse data sources are accounted for to the maximum extent possible. Integrating various diverse data is not a simple problem because data show different precision and relevance to the primary variables being modeled, nonlinear relations and different qualities. Previous approaches rely on a strong Gaussian assumption or the combination of the source-specific probabilities that are individually calibrated from each data source.;The methodology is applied to several applications including: (1) integration of continuous data for a categorical attribute modeling, (2) integration of continuous and a discrete geologic map for categorical attribute modeling, (3) integration of continuous data for a continuous attribute modeling. Results are evaluated based on the defined criteria such as the fairness of the estimated probability or probability distribution and reasonable reproduction of input statistics.;This dissertation develops different approaches to integrate diverse earth science data. First approach is based on combining probability. Each of diverse data is calibrated to generate individual conditional probabilities, and they are combined by a combination model. Some existing models are reviewed and a combination model is proposed with a new weighting scheme. Weakness of the probability combination schemes (PCS) is addressed. Alternative to the PCS, this dissertation develops a multivariate analysis technique. The method models the multivariate distributions without a parametric distribution assumption and without ad-hoc probability combination procedures. The method accounts for nonlinear features and different types of the data. Once the multivariate distribution is modeled, the marginal distribution constraints are evaluated. A sequential iteration algorithm is proposed for the evaluation. The algorithm compares the extracted marginal distributions from the modeled multivariate distribution with the known marginal distributions and corrects the multivariate distribution. Ultimately, the corrected distribution satisfies all axioms of probability distribution functions as well as the complex features among the given data.
机译:当尽可能多地考虑所有可用的不同数据源时,便会构建改进的数值油藏模型。集成各种不同的数据不是一个简单的问题,因为数据显示出与要建模的主要变量不同的精度和相关性,非线性关系和不同的质量。先前的方法依赖于强大的高斯假设或从每个数据源单独校准的特定于源的概率的组合;该方法应用于多种应用程序,包括:(1)集成连续数据以进行分类属性建模,( 2)集成连续和离散地质图以进行分类属性建模,(3)集成连续数据以进行连续属性建模。根据确定的标准对结果进行评估,例如估计概率或概率分布的公平性以及输入统计数据的合理再现。;本论文开发了各种方法来集成各种地球科学数据。第一种方法是基于组合概率。每个不同的数据都经过校准以生成单独的条件概率,并通过组合模型进行组合。审查了一些现有模型,并提出了具有新加权方案的组合模型。解决了概率组合方案(PCS)的缺点。替代PCS,本文开发了一种多元分析技术。该方法在没有参数分布假设且没有临时概率组合过程的情况下对多元分布进行建模。该方法考虑了非线性特征和不同类型的数据。一旦对多元分布建模,就可以评估边际分布约束。提出了一种顺序迭代算法进行评估。该算法将从建模的多元分布中提取的边际分布与已知的边际分布进行比较,并校正多元分布。最终,校正后的分布满足概率分布函数的所有公理以及给定数据之间的复杂特征。

著录项

  • 作者

    Hong, Sahyun.;

  • 作者单位

    University of Alberta (Canada).;

  • 授予单位 University of Alberta (Canada).;
  • 学科 Engineering Geological.;Engineering Mining.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 201 p.
  • 总页数 201
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 老年病学;
  • 关键词

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