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Locally weighted learning based hybrid intelligence models for groundwater potential mapping and modeling: A case study at Gia Lai province, Vietnam

机译:基于地下水潜在测绘和建模的基于局部加权学习的混合智能模型 - 以越南吉亚荔省为例

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The groundwater potential map is an important tool for a sustainable water management and land use planning, particularly for agricultural countries like Vietnam. In this article, we proposed new machine learning ensemble techniques namely AdaBoost ensemble (ABLWL), Bagging ensemble (BLWL), Multi Boost ensemble (MBLWL), Rotation Forest ensemble (RFLWL) with Locally Weighted Learning (LWL) algorithm as a base classifier to build the groundwater potential map of Gia Lai province in Vietnam. For this study, eleven conditioning factors (aspect, altitude, curvature, slope, Stream Transport Index (STI), Topographic Wetness Index (TWI), soil, geology, river density, rainfall, land-use) and 134 wells yield data was used to create training (70%) and testing (30%) datasets for the development and validation of the models. Several statistical indices were used namely Positive Predictive Value (PPV), Negative Predictive Value (NPV), Sensitivity (SST), Specificity (SPF), Accuracy (ACC), Kappa, and Receiver Operating Characteristics (ROC) curve to validate and compare performance of models. Results show that performance of all the models is good to very good (AUC: 0.75 to 0.829) but the ABLWL model with AUC?=?0.89 is the best. All the models applied in this study can support decision-makers to streamline the management of the groundwater and to develop economy not only of specific territories but also in other regions across the world with minor changes of the input parameters.
机译:地下水潜在地图是可持续水管理和土地利用规划的重要工具,特别是对于像越南这样的农业国家。在本文中,我们提出了新的机器学习集合技术即Adaboost集合(ABLWL),袋装集合(BLWL),多升压集合(MBLWL),带有当地加权学习(LWL)算法的旋转林集合(RFLWL)作为基本分类器建立越南吉亚荔省地下水潜在地图。对于本研究,使用11个调节因素(方面,高度,曲率,斜坡,流传输指数(STI),地形湿度指数(TWI),土壤,地质,河流密度,降雨,土地使用)和134孔产量数据为模型的开发和验证创建培训(70%)和测试(30%)数据集。使用几种统计指标即阳性预测值(PPV),负预测值(NPV),灵敏度(SST),特异性(SPF),精度(ACC),KAPPA和接收器操作特性(ROC)曲线来验证和比较性能模型。结果表明,所有模型的性能都很好(AUC:0.75到0.829),但AUC的ABLWL模型?=?0.89是最好的。本研究中的所有型号都可以支持决策者简化地下水的管理,并不仅在世界各地的其他地区开发经济,还具有进入参数的微小变化。

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