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A comparison of spatial prediction techniques using both hard and soft data.

机译:使用硬数据和软数据的空间预测技术的比较。

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摘要

The overall goal of this research, which is common to most spatial studies, is to predict a value of interest at an unsampled location based on measured values at nearby sampled locations. To accomplish this goal, ordinary kriging can be used to obtain the best linear unbiased predictor. However, there is often a large amount of variability surrounding the measurements of environmental variables, and traditional prediction methods, such as ordinary kriging, do not account for an attribute with more than one level of uncertainty. This dissertation addresses this limitation by introducing a new methodology called weighted kriging. This prediction technique accounts for measurements with significant variability, i.e., soft data, in addition to measurements with little or no variability, i.e., hard data.;To investigate the differences between weighted kriging and ordinary kriging, a simulation study was conducted. Validation statistics were used to evaluate and compare the prediction procedures, and it was found that weighted kriging yields more desirable results than traditional kriging methods. As a follow-up, the prediction procedures were compared using real data from a groundwater quality study.;Bayesian Maximum Entropy (BME) is then introduced as an alternative method to utilize soft data in prediction. Numerical implementation of this approach is possible with the Spatiotemporal Epistemic Knowledge Synthesis-Graphical User Interface (SEKS-GUI). Using this interface, two simulation studies were conducted to investigate the differences between BME and weighted kriging. In the first study, probabilistic soft data in the form of the Gaussian distribution were used. However, since proponents of the BME approach claim that it performs extremely well when the soft data are skewed, the second study used nonsymmetrical soft data generated using a triangular distribution. In both studies, the weighted kriging validation statistics were more desirable than those from BME.
机译:这项研究的总体目标与大多数空间研究一样,是根据附近采样点的测量值来预测未采样点的关注值。为了实现这一目标,可以使用普通克里金法来获得最佳的线性无偏预测器。但是,在环境变量的测量值周围经常存在大量可变性,而传统的预测方法(例如普通克里金法)并不能说明不确定性超过一个级别的属性。本文通过引入一种称为加权克里金法的新方法解决了这一局限性。该预测技术除了具有很少或没有可变性的测量即硬数据之外,还考虑了具有显着可变性的测量即软数据。为了研究加权克里金法和普通克里金法之间的差异,进行了模拟研究。验证统计数据用于评估和比较预测程序,并且发现加权克里金法比传统克里金法产生更理想的结果。作为后续措施,使用来自地下水质量研究的真实数据对预测程序进行了比较;然后,引入了贝叶斯最大熵(BME)作为在预测中利用软数据的替代方法。使用时空认知知识综合图形用户界面(SEKS-GUI)可以对该方法进行数值实施。使用该界面,进行了两个模拟研究,以研究BME和加权克里金法之间的差异。在第一项研究中,使用了高斯分布形式的概率软数据。但是,由于BME方法的支持者声称当软数据偏斜时BME的性能非常好,因此第二项研究使用了使用三角分布生成的非对称软数据。在这两项研究中,加权Briging验证统计数据比BME的统计数据更为可取。

著录项

  • 作者

    Liedtke Tesar, Megan Lynne.;

  • 作者单位

    The University of Nebraska - Lincoln.;

  • 授予单位 The University of Nebraska - Lincoln.;
  • 学科 Statistics.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 126 p.
  • 总页数 126
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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