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Groundwater Potential Mapping Using GIS-Based Hybrid Artificial Intelligence Methods

机译:基于GIS的混合人工智能方法的地下水电位映射

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摘要

Groundwater is one of the major valuable water resources for the use of communities, agriculture, and industries. In the present study, we have developed three novel hybrid artificial intelligence (AI) models which is a combination of modified RealAdaBoost (MRAB), bagging (BA), and rotation forest (RF) ensembles with functional tree (FT) base classifier for the groundwater potential mapping (GPM) in the basaltic terrain at DakLak province, Highland Centre, Vietnam. Based on the literature survey, these proposed hybrid AI models are new and have not been used in the GPM of an area. Geospatial techniques were used and geo-hydrological data of 130 groundwater wells and 12 topographical and geo-environmental factors were used in the model studies. One-R Attribute Evaluation feature selection method was used for the selection of relevant input parameters for the development of AI models. The performance of these models was evaluated using various statistical measures including area under the receiver operation curve (AUC). Results indicated that though all the hybrid models developed in this study enhanced the goodness-of-fit and prediction accuracy, but MRAB-FT (AUC = 0.742) model outperformed RF-FT (AUC = 0.736), BA-FT (AUC = 0.714), and single FT (AUC = 0.674) models. Therefore, the MRAB-FT model can be considered as a promising AI hybrid technique for the accurate GPM. Accurate mapping of the groundwater potential zones will help in adequately recharging the aquifer for optimum use of groundwater resources by maintaining the balance between consumption and exploitation.
机译:地下水是使用社区,农业和行业的主要有价值水资源之一。在本研究中,我们开发了三种新型混合人工智能(AI)模型,该模型是修改的RealAdaboost(MRAB),袋装(BA)和旋转林(RF)旋转林(RF)合并的组合,其中包含功能树(FT)基本分类器Daklak Province,越南高地中心玄武岩地形地下水潜力测绘(GPM)。基于文献调查,这些提出的混合AI模型是新的,尚未用于区域的GPM。使用地理空间技术,在模型研究中使用了130个地下水井和12个地形和地理环境因素的地质水文数据。 One-R属性评估特征选择方法用于选择AI模型的开发相关输入参数。使用包括接收器操作曲线(AUC)下的各种统计措施来评估这些模型的性能。结果表明,虽然本研究中开发的所有混合模型都增强了拟合的良好和预测准确性,但MRAB-FT(AUC = 0.742)模型优于RF-FT(AUC = 0.736),BA-FT(AUC = 0.714 )和单英尺(AUC = 0.674)型号。因此,MRAB-FT模型可以被认为是准确的GPM的有希望的AI混合技术。地下水潜在地区的精确映射将有助于充分给含水层充分充电,以通过维持消费和剥削之间的平衡来最佳地利用地下水资源。

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  • 来源
    《Ground water》 |2021年第5期|745-760|共16页
  • 作者单位

    Vietnam Acad Sci & Technol Inst Geol Sci 84 Chua Lang St Hanoi Vietnam;

    Univ Transport Technol Hanoi 100000 Vietnam|Hiroshima Univ Civil & Environm Engn Program Grad Sch Adv Sci & Engn 1-4-1 Kagamiyama Higashihiroshima Hiroshima 7398527 Japan;

    Vietnam Acad Sci & Technol Inst Geol Sci 84 Chua Lang St Hanoi Vietnam;

    Univ Transport Technol Hanoi 100000 Vietnam;

    Natl Univ Civil Engn Fac Hydraul Engn Hanoi 100000 Vietnam;

    Univ Transport Technol Hanoi 100000 Vietnam|Hiroshima Univ Civil & Environm Engn Program Grad Sch Adv Sci & Engn 1-4-1 Kagamiyama Higashihiroshima Hiroshima 7398527 Japan;

    Univ Transport Technol Hanoi 100000 Vietnam;

    Vietnam Acad Sci & Technol Inst Geol Sci 84 Chua Lang St Hanoi Vietnam;

    Tarbiat Modares Univ Fac Nat Resources & Marine Sci Dept Watershed Management Engn & Sci Tehran Iran;

    DDG R Geol Survey India Gandhinagar 382010 India;

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  • 入库时间 2022-08-19 03:07:37

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