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Comparison of prediction methods for oxygen-18 isotope composition in shallow groundwater

机译:浅层地下水中氧18同位素组成预测方法的比较

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摘要

Groundwater is the most important source of drinking water in the world. Therefore, information on the quality and quantity is important, as is new information related to the characteristics of the aquifer and the recharge area. In the present study we focused on the isotope composition of oxygen (δ18O) in groundwater, which is a natural tracer and provides a better understanding of the water cycle, in terms of origin, dynamics and interaction. The groundwaterδ18O at 83 locations over the entire Slovenian territory was studied. Each location was sampled twice during the period 2009–2011. Geostatistical tools (such us ordinary kriging, simple and multiple linear regressions, and artificial neural networks were used and compared to select the best tool. Measured values ofδ18O in the groundwater were used as the dependent variable, while the spatial characteristics of the territory (elevation, distance from the sea and average annual precipitation) were used as independent variables. Based on validation data sets, the artificial neural network model proved to be the most suitable method for predictingδ18O in the groundwater, since it produced the smallest deviations from the real/measured values in groundwater.
机译:地下水是世界上最重要的饮用水来源。因此,有关质量和数量的信息以及与含水层和补给区特征有关的新信息同样重要。在本研究中,我们重点研究了地下水中的氧的同位素组成(δ18O),这是一种天然示踪剂,可以从起源,动力学和相互作用方面更好地理解水循环。研究了整个斯洛文尼亚境内83个地点的地下水δ18O。在2009-2011年期间,每个地点都采样了两次。使用地统计学工具(例如普通克里金法,简单多元线性回归法和人工神经网络进行比较)以选择最佳工具。地下水中δ18O的测量值用作因变量,而区域的空间特征(海拔,离海的距离和年平均降水量)作为独立变量,基于验证数据集,人工神经网络模型被证明是最适合预测地下水中δ18O的方法,因为它与真实值/地下水中的测量值。

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