Jaafarzadeh Maryam Sadat, Tahmasebipour Naser, Haghizadeh Ali, Pourghasemi Hamid Reza, Rouhani Hamed
Department of Watershed Management Engineering, Faculty of Agriculture, Lorestan University, Khorramabad, Iran.
Department of Natural Resources and Environmental Engineering, College of Agriculture, Shiraz University, Shiraz, Iran.
Sci Rep. 2021 Mar 10;11(1):5587. doi: 10.1038/s41598-021-85205-6.
Many regions in Iran are currently experience water crisis, largely driven by frequent droughts and expanding agricultural land combined with over abstraction of groundwater. Therefore, it is extremely important to identify potential groundwater recharge (GWR) zones to help in prevent water scarcity. The key objective of this research is to applying different scenarios for GWR potential mapping by means of a classifier ensemble approach, namely a combination of Maximum Entropy (ME) and Frequency Ratio (FR) models in a semi-arid mountainous, Marboreh Watershed of Iran. To consider the ensemble effect of these models, 15 input layers were generated and used in two models and then the models were combined in seven scenarios. According to marginal response curves (MRCs) and the Jackknife technique, quaternary formations (Qft1 and Qft2) of lithology, sandy-clay-loam (Sa. Cl. L) class of soil, 0-4% class of slope, and agriculture & rangeland classes of land use, offered the highest percolation potential. Results of the FR model showed that the highest weight belonged to Qft1 rocks and Sa. Cl. L textures. Seven scenarios were used for GWR potential maps by different ensembles based on basic mathematical operations. Correctly Classified Instances (CCI), and the AUC indices were applied to validate model predictions. The validation indices showed that scenarios 5 had the best performance. The combination of models by different ensemble scenarios enhances the efficiency of these models. This study serves as a basis for future investigations and provides useful information for prediction of sites with groundwater recharge potential through combination of state-of-the-art statistical and machine learning models. The proposed ensemble model reduced the machine learning and statistical models' limitations gaps and promoted the accuracy of the model where combining, especially for data-scarce areas. The results of present study can be used for the GWR potential mapping, land use planning, and groundwater development plans.
伊朗的许多地区目前正面临水危机,这主要是由频繁的干旱、不断扩大的农业用地以及地下水的过度开采共同导致的。因此,确定潜在的地下水补给(GWR)区域对于帮助预防水资源短缺极为重要。本研究的主要目标是通过分类器集成方法,即结合最大熵(ME)和频率比(FR)模型,对伊朗半干旱山区马尔博雷赫流域的GWR潜力进行不同情景的制图。为了考虑这些模型的集成效应,生成了15个输入图层并在两个模型中使用,然后将模型组合成七种情景。根据边际响应曲线(MRC)和留一法技术,岩性的第四纪地层(Qft1和Qft2)、土壤的砂质粘壤土(Sa. Cl. L)类别、0 - 4%的坡度类别以及农业和牧场的土地利用类别,具有最高的渗透潜力。FR模型的结果表明,最高权重属于Qft1岩石和Sa. Cl. L质地。基于基本数学运算,通过不同的集成方法对七种情景进行了GWR潜力图绘制。使用正确分类实例(CCI)和AUC指标来验证模型预测。验证指标表明情景5表现最佳。不同集成情景下模型的组合提高了这些模型的效率。本研究为未来的调查提供了基础,并通过结合先进的统计和机器学习模型,为预测具有地下水补给潜力的地点提供了有用信息。所提出的集成模型减少了机器学习和统计模型的局限性差距,并提高了组合模型的准确性,特别是对于数据稀缺地区。本研究结果可用于GWR潜力制图、土地利用规划和地下水开发计划。