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A multidimensional fuzzy least-squares regression approach for estimating hydraulic gradients in unconfined aquifer formations and its application to the Gulf Coast aquifer in Goliad County, Texas

机译:一种多维模糊最小二乘回归方法,用于估算无限制含水层中的水力梯度,并将其应用于德克萨斯州戈利亚德县墨西哥湾沿岸含水层

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Epistemic uncertainties arise during the estimation of hydraulic gradients in unconfined aquifers due to planar approximation of the water table as well as data gaps arising from factors such as instrument failures and site inaccessibility. A multidimensional fuzzy least-squares regression approach is proposed here to estimate hydraulic gradients in situations where epistemic uncertainty is present in the observed water table measurements. The hydraulic head at a well is treated as a normal (Gaussian) fuzzy variable characterized by a most likely value and a spread. This treatment results in hydraulic gradients being characterized as normal fuzzy numbers as well. The multidimensional fuzzy least-squares regression has an exact analytical form and as such can be implemented easily using matrix algebra methods. However, the method was noted to be sensitive to round-off and truncation errors when the epistemic uncertainties are small. A closeness index based on the cardinality of a fuzzy number is used to evaluate how well the regression model fits the fuzzy hydraulic head observations. A fuzzy Euclidian distance measure is used to compare two fuzzy numbers and to evaluate how fuzziness in the observed hydraulic heads affects the fuzziness in the estimated hydraulic gradients. The Euclidian distance measure is also used to ascertain the influence of each well on the fuzzy hydraulic gradient estimation. The fuzzy regression framework is illustrated by applying it to evaluate hydraulic gradients in the unconfined portion of the Gulf Coast aquifer in Goliad County, TX. The results from the case-study indicate that there is greater uncertainty associated with the estimation of the hydraulic gradients in the vertical (Z-axis) direction. The epistemic uncertainties in the hydraulic head data at the wells have a significant impact on the gradient estimates when they are of the same order of magnitude as the most likely values of the observed heads. The influence analysis indicated that 5 of the 13 wells in the network had a critical influence on at least one of the hydraulic gradients. Three wells along the northeastern section of the study area and bordering the Victoria County were noted to have the least influence on the regression estimates. The fuzzy regression framework along with the associated goodness-of-fit and influence measures provides a useful set of tools to characterize the uncertainties in the hydraulic heads and gradients arising from data gaps and planar water table approximation.
机译:由于地下水位的平面逼近以及由于仪器故障和现场无法进入等因素引起的数据缺口,在估算无限制含水层的水力梯度时会产生认识上的不确定性。在此提出了多维模糊最小二乘回归方法,以估计在观察到的水位测量结果中存在不确定性的情况下的水力梯度。井中的液压头被视为正常(高斯)模糊变量,其特征在于最可能的值和分布。这种处理导致水力梯度也被表征为正常模糊数。多维模糊最小二乘回归具有精确的分析形式,因此可以使用矩阵代数方法轻松实现。但是,当认知不确定性较小时,该方法对舍入和截断错误敏感。基于模糊数基数的紧密度指数用于评估回归模型对模糊液压头观测值的拟合程度。模糊欧几里得距离度量用于比较两个模糊数,并评估观察到的液压头中的模糊性如何影响估计的液压梯度中的模糊性。 Euclidian距离度量也用于确定每口井对模糊水力梯度估计的影响。通过将模糊回归框架用于评估德克萨斯州戈利亚德县墨西哥湾沿岸含水层的无限制部分的水力梯度,可以说明该模糊回归框架。案例研究的结果表明,与垂直(Z轴)方向上的水力梯度的估计有关的不确定性更大。当井中液压压头数据的认识不确定性与观察到的压头的最可能值处于相同数量级时,会对梯度估计产生重大影响。影响分析表明,网络中的13口井中有5口对至少一个水力梯度具有关键影响。研究区域东北部与维多利亚县接壤的三口井对回归估计的影响最小。模糊回归框架以及相关的拟合优度和影响力度量提供了一组有用的工具,可用于表征液压头的不确定性以及由数据间隙和平面水位逼近引起的梯度。

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