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Evaluating uncertainty in predicting spatially variable representative elementary scales in fractured aquifers, with application to Turkey Creek Basin, Colorado

机译:评估预测裂缝性含水层中空间代表性代表性尺度的不确定性,并将其应用于科罗拉多州的Turkey Creek盆地

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Computational limitations and sparse field data often mandate use of continuum representation for modeling hydrologic processes in large-scale fractured aquifers. Selecting appropriate element size is of primary importance because continuum approximation is not valid for all scales. The traditional approach is to select elements by identifying a single representative elementary scale (RES) for the region of interest. Recent advances indicate RES may be spatially variable, prompting unanswered questions regarding the ability of sparse data to spatially resolve continuum equivalents in fractured aquifers. We address this uncertainty of estimating RES using two techniques. In one technique we employ data-conditioned realizations generated by sequential Gaussian simulation. For the other we develop a new approach using conditioned random walks and nonparametric bootstrapping (CRWN). We evaluate the effectiveness of each method under three fracture densities, three data sets, and two groups of RES analysis parameters. In sum, 18 separate RES analyses are evaluated, which indicate RES magnitudes may be reasonably bounded using uncertainty analysis, even for limited data sets and complex fracture structure. In addition, we conduct a field study to estimate RES magnitudes and resulting uncertainty for Turkey Creek Basin, a crystalline fractured rock aquifer located 30 km southwest of Denver, Colorado. Analyses indicate RES does not correlate to rock type or local relief in several instances but is generally lower within incised creek valleys and higher along mountain fronts. Results of this study suggest that (1) CRWN is an effective and computationally efficient method to estimate uncertainty, (2) RES predictions are well constrained using uncertainty analysis, and (3) for aquifers such as Turkey Creek Basin, spatial variability of RES is significant and complex.
机译:计算的局限性和稀疏的现场数据通常要求使用连续表示法来模拟大型裂缝含水层中的水文过程。选择合适的元素大小是最重要的,因为连续近似不适用于所有比例尺。传统方法是通过识别感兴趣区域的单个代表性基本尺度(RES)来选择元素。最近的进展表明,RES可能在空间上是可变的,这引发了关于稀疏数据在空间上解析裂隙含水层中的连续统等效物的能力的未解决问题。我们使用两种技术来解决估计RES的不确定性。在一种技术中,我们采用了通过顺序高斯仿真生成的数据条件实现。另一方面,我们使用条件随机游走和非参数自举(CRWN)开发了一种新方法。我们在三种断裂密度,三个数据集和两组RES分析参数下评估每种方法的有效性。总之,评估了18个单独的RES分析,这表明RES幅度可以使用不确定性分析合理地界定,即使对于有限的数据集和复杂的裂缝结构也是如此。此外,我们进行了野外研究,以估算火鸡溪盆地(位于科罗拉多州丹佛西南30公里处的结晶裂隙岩性含水层)的RES强度和由此带来的不确定性。分析表明,RES在某些情况下与岩石类型或局部起伏无关,但在切开的小溪谷中通常较低,而在山前则较高。这项研究的结果表明(1)CRWN是一种有效的计算方法,可用于估计不确定性;(2)RES预测受到不确定性分析的很好约束;(3)对于土耳其河盆地等含水层,RES的空间变异性是重要而复杂。

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