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A study on the establishment of groundwater protection area around a saline waterway by combining artificial neural network and GIS-based AHP

机译:结合人工神经网络和基于GIS的层次分析法建立咸水航道地下水保护区的研究

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Because the mixture of seawater and freshwater in the Gyeongin-Ara Waterway in South Korea can lead to the intrusion of saline water into surrounding aquifers, systematic management through the establishment of a groundwater protection area is required. The analytic hierarchy process (AHP) model is used to delineate this protection area based on two primary factors and five secondary factors related to saline water intrusion. The study area is divided into 987 gridded cells with a unit size of 100 x 100 m, and the final evaluation score for each cell is calculated using the AHP model. Consequently, several artificial neural network models based on a multilayer perceptron are developed using the AHP's secondary criteria and the evaluation score. Comparing the evaluation scores of ANN and AHP, more than 180 samples are required in the ANN model to insure high R-2 between the original and estimated values. The ANN model is more consistent than the AHP model when determining groundwater protection area, because it can be re-constructed due to the changes in some secondary criteria and also changed due to a standardization process. The final evaluation score by the ANN model based on 300 samples, with the highest R-2, is calculated and the regions with a score higher than 2.0 are selected as the groundwater protection area, accounting for 15% of the total cells. This area is similar to the range within approximately 200 m of the GA Waterway and also includes some changing sites in hydrogeochemistry and electric conductivity, which is produced by saline water intrusion. If the land-use type, groundwater levels, and some other criteria change at any cell, the ANN model can be re-executed to verify whether the cell belongs to a groundwater protection area. Considering that salinity of groundwater near the waterway can be affected by various factors including well depth, pumping conditions, and groundwater levels, the ANN model, which is a non-linear model, can be more effective for prediction than the AHP model.
机译:由于韩国的庆宁-阿拉水道中的海水和淡水的混合物会导致盐水渗入周围的含水层,因此需要通过建立地下水保护区来进行系统管理。使用层次分析模型(AHP),根据与盐水入侵有关的两个主要因素和五个次要因素来描述保护区。将研究区域划分为987个网格单元,单元大小为100 x 100 m,并使用AHP模型计算每个单元的最终评估得分。因此,使用AHP的次要标准和评估分数,开发了几种基于多层感知器的人工神经网络模型。比较ANN和AHP的评估分数,在ANN模型中需要超过180个样本,以确保原始值和估计值之间的R-2高。在确定地下水保护区时,ANN模型比AHP模型更为一致,因为它可以由于某些次要标准的更改而重新构建,也可以由于标准化过程而更改。 ANN模型基于300个样本(具有最高R-2)计算出最终评估得分,并选择得分高于2.0的区域作为地下水保护区,占总单元数的15%。该区域与GA航道约200 m内的范围相似,并且还包括由盐水入侵产生的水文地球化学和电导率的一些变化点。如果任何单元处的土地利用类型,地下水位和其他一些标准发生变化,则可以重新执行ANN模型以验证该单元是否属于地下水保护区。考虑到水道附近的地下水盐度会受到井深,抽水条件和地下水位等多种因素的影响,因此作为非线性模型的ANN模型比AHP模型更有效。

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