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Groundwater Potential Mapping Using Data Mining Models of Big Data Analysis in Goyang-si, South Korea

机译:地下水潜在映射,采用韩国省古阳 - SI大数据分析的数据挖掘模型

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摘要

Recently, data mining analysis techniques have been developed, as large spatial datasets have accumulated in various fields. Such a data-driven analysis is necessary in areas of high uncertainty and complexity, such as estimating groundwater potential. Therefore, in this study, data mining of various spatial datasets, including those based on remote sensing data, was applied to estimate groundwater potential. For the sustainable development of groundwater resources, a plan for the systematic management of groundwater resources should be established based on a quantitative understanding of the development potential. The purpose of this study was to map and analyze the groundwater potential of Goyang-si in Gyeonggi-do province, South Korea and to evaluate the sensitivity of each factor by applying data mining models for big data analysis. A total of 876 surveyed groundwater pumping capacity data were used, 50% of which were randomly classified into training and test datasets to analyze groundwater potential. A total of 13 factors extracted from satellite-based topographical, land cover, soil, forest, geological, hydrogeological, and survey-based precipitation data were used. The frequency ratio (FR) and boosted classification tree (BCT) models were used to analyze the relationships between the groundwater pumping capacity and related factors. Groundwater potential maps were constructed and validated with the receiver operating characteristic (ROC) curve, with accuracy rates of 68.31% and 69.39% for the FR and BCT models, respectively. A sensitivity analysis for both models was performed to assess the influence of each factor. The results of this study are expected to be useful for establishing an effective groundwater management plan in the future.
机译:最近,已经开发了数据挖掘分析技术,因为大型空间数据集积累在各个领域。在高不确定性和复杂性的区域中需要这种数据驱动分析,例如估计地下水潜力。因此,在本研究中,应用包括基于遥感数据的各种空间数据集的数据挖掘,应用于估计地下水电位。对于地下水资源的可持续发展,应根据对发展潜力的定量理解建立地下水资源系统管理计划。本研究的目的是映射和分析京畿道省,韩国省省古阳的地下水潜力,并通过应用数据挖掘模型进行大数据分析来评估每个因素的敏感性。使用876种测量的地下水泵送能力数据,其中50%是随机分类为训练和测试数据集,以分析地下水潜力。使用了从卫星的地形,陆地,土壤,森林,地质,水文地质和基于测量的降水数据中提取的13个因素。频率比(FR)和提升分类树(BCT)模型用于分析地下水泵送能力与相关因素之间的关系。通过接收器操作特性(ROC)曲线构建和验证地下水潜在地图,分别具有68.31%的精度率和69.39%,为FR和BCT模型为69.39%。进行两种模型的灵敏度分析以评估每个因素的影响。该研究的结果预计将来有助于在未来建立有效的地下水管理计划。

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