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Multi-model Bayesian analysis of data worth and optimization of sampling scheme design.

机译:数据价值的多模型贝叶斯分析和采样方案设计的优化。

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摘要

Groundwater is a major source of water supply, and aquifers form major storage reservoirs as well as water conveyance systems, worldwide. The viability of groundwater as a source of water to the world's population is threatened by over-exploitation and contamination. The rational management of water resource systems requires an understanding of their response to existing and planned schemes of exploitation, pollution prevention and/or remediation. Such understanding requires the collection of data to help characterize the system and monitor its response to existing and future stresses. It also requires incorporating such data in models of system makeup, water flow and contaminant transport. As the collection of subsurface characterization and monitoring data is costly, it is imperative that the design of corresponding data collection schemes is cost-effective. A major benefit of new data is its potential to help improve one's understanding of the system, in large part through a reduction in model predictive uncertainty and corresponding risk of failure. Traditionally, value-of-information or data-worth analyses have relied on a single conceptual-mathematical model of site hydrology with prescribed parameters. Yet there is a growing recognition that ignoring model and parameter uncertainties render model predictions prone to statistical bias and underestimation of uncertainty. This has led to a recent emphasis on conducting hydrologic analyses and rendering corresponding predictions by means of multiple models. We develop a theoretical framework of data worth analysis considering model uncertainty, parameter uncertainty and potential sample value uncertainty. The framework entails Bayesian Model Averaging (BMA) with emphasis on its Maximum Likelihood version (MLBMA). An efficient stochastic optimization method, called Differential Evolution Method (DEM), is explored to aid in the design of optimal sampling schemes aiming at maximizing data worth. A synthetic case entailing generated log hydraulic conductivity random fields is used to illustrate the procedure. The proposed data worth analysis framework is applied to field pneumatic permeability data collected from unsaturated fractured tuff at the Apache Leap Research Site (ALRS) near Superior, Arizona.
机译:地下水是水的主要来源,含水层构成了世界范围内主要的储水库和输水系统。过度开发和污染威胁着作为世界人口水源的地下水的生存能力。水资源系统的合理管理需要了解它们对现有和计划中的开采,污染预防和/或补救计划的反应。这种理解需要收集数据以帮助表征系统并监视其对现有压力和未来压力的响应。它还需要将这些数据纳入系统组成,水流量和污染物传输的模型中。由于地下特征和监测数据的收集成本高昂,因此必须设计相应的数据收集方案具有成本效益。新数据的主要好处在于其潜力,可通过减少模型的预测不确定性和相应的故障风险来帮助提高人们对系统的理解。传统上,信息价值或数据价值分析依赖于具有指定参数的站点水文学的单一概念数学模型。然而,人们越来越认识到,忽略模型和参数的不确定性会使模型的预测容易出现统计偏差和不确定性的低估。这导致最近的重点是进行水文分析并通过多种模型进行相应的预测。考虑模型不确定性,参数不确定性和潜在样本值不确定性,我们建立了一个值得分析数据的理论框架。该框架包含贝叶斯模型平均(BMA),重点是其最大似然版本(MLBMA)。探索了一种有效的随机优化方法,称为差分演化方法(DEM),以帮助设计旨在使数据价值最大化的最佳采样方案。使用需要生成对数水力传导率随机场的合成案例来说明该过程。拟议中的数据价值分析框架应用于从亚利桑那州苏必利尔附近的Apache Leap研究站(ALRS)的非饱和裂缝凝灰岩中收集的现场气动渗透率数据。

著录项

  • 作者

    Xue, Liang.;

  • 作者单位

    The University of Arizona.;

  • 授予单位 The University of Arizona.;
  • 学科 Hydrology.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 205 p.
  • 总页数 205
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:45:15

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