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Estimation and scaling of hydrostratigraphic units: application of unsupervised machine learning and multivariate statistical techniques to hydrogeophysical data

机译:水文地层单位的估计和定标:无监督机器学习和多元统计技术在水文地球物理数据中的应用

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Numerical models provide a way to evaluate groundwater systems, but determining the hydrostratigraphic units (HSUs) used in constructing these models remains subjective, nonunique, and uncertain. A three-step machine-learning approach is proposed in which fusion, estimation, and clustering operations are performed on different data sets to arrive at HSUs at different scales. In step one, data fusion is performed by training a self-organizing map (SOM) with sparse borehole hydrogeologic (lithology, hydraulic conductivity, aqueous field parameters, dissolved constituents) and geophysical (gamma, spontaneous potential, and resistivity) measurements. Estimation is handled by iterative least-squares minimization of the SOM quantization and topographical errors. Application of the Davies-Bouldin criteria to k-means clustering of SOM nodes is used to determine the number and location of discontinuous borehole HSUs with low lateral density (based on borehole spacing at 100 s m) and high vertical density (based on cm-scale logging). In step two, a scaling network is trained using the estimated borehole HSUs, airborne electromagnetic measurements, and numerically inverted resistivity profiles. In step three, independent airborne electromagnetic measurements are applied to the scaling network, and the estimation performed to arrive at a set of continuous HSUs with high lateral density (based on sounding locations at meter (m) spacing) and medium vertical density (based on m-layer modeled structure). Performance metrics are used to evaluate each step of the approach. Efficacy of the proposed approach is demonstrated to map local-to-regional scale HSUs using hydrogeophysical data collected at a heterogeneous surficial aquifer in northwestern Nebraska, USA.
机译:数值模型提供了一种评估地下水系统的方法,但是确定用于构建这些模型的水文地层单位(HSU)仍然是主观的,非唯一的和不确定的。提出了一种三步式的机器学习方法,其中对不同的数据集执行融合,估计和聚类操作,以达到不同规模的HSU。在第一步中,通过训练具有稀疏钻孔水文地质(岩性,水力传导率,水田参数,溶解成分)和地球物理(伽马,自发势和电阻率)测量值的自组织图(SOM)进行数据融合。通过SOM量化和地形误差的迭代最小二乘最小化来处理估计。 Davies-Bouldin准则在SOM节点的k均值聚类中的应用用于确定具有低横向密度(基于100 sm的井眼间距)和高垂直密度(基于cm尺度)的不连续钻孔HSU的数量和位置记录)。在第二步中,使用估计的井眼HSU,机载电磁测量值和反演的电阻率数值数值训练缩放网络。在第三步中,将独立的机载电磁测量值应用于缩放网络,并进行估算,以得出一组具有高横向密度(基于米(m)间距的探测位置)和中等垂直密度(基于m层建模结构)。性能指标用于评估方法的每个步骤。通过使用在美国西北内布拉斯加州的一个非均质表面含水层收集的水文地球物理数据,证明了该方法的有效性,可绘制局部至区域规模的HSU。

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