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首页> 外文期刊>Environmental earth sciences >A novel geographical information system-based Ant Miner algorithm model for delineating groundwater flowing artesian well boundary: a case study from Iraqi southern and western deserts
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A novel geographical information system-based Ant Miner algorithm model for delineating groundwater flowing artesian well boundary: a case study from Iraqi southern and western deserts

机译:基于新型地理信息系统的Ant Miner算法模型描述地下水自流井边界-以伊拉克南部和西部沙漠为例

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The Ant Miner algorithm was compared with the bivariate frequency ratio (FR) and boosted regression trees (BRT) algorithms in terms of its capacity to assess groundwater potential. A geospatial dataset was prepared that contains two components: a flowing well inventory map and eleven factors relevant to groundwater conditions. Average nearest neighbor technique was used to investigate the spatial pattern of flowing wells and to find the appropriate distance between flowing and nonflowing points in the study area. A wrapper approach known as random forest classifier and a filtering approach known as information gain ratio were used to identify the most relevant groundwater factors. The developed models were validated via the area under the operating characteristic curve. Results revealed that the Ant Miner model performed better in terms of both success (0.944) and prediction (0.92) rates compared to FR and BRT. Furthermore, the Ant Miner algorithm derived five simple, easily interpreted rules for predicting groundwater potential that can be used by hydrogeologists for identifying potential groundwater well locations with minimal effort and cost.
机译:在评估地下水潜力的能力方面,将Ant Miner算法与双变量频率比(FR)和增强回归树(BRT)算法进行了比较。准备了一个包含两个组成部分的地理空间数据集:流动井库存图和与地下水状况有关的十一个因素。使用平均最近邻技术研究流动井的空间格局,并在研究区域内找到流动点与非流动点之间的适当距离。使用一种称为随机森林分类器的包装方法和一种称为信息增益比的过滤方法来识别最相关的地下水因子。通过运行特性曲线下的面积验证了开发的模型。结果显示,与FR和BRT相比,Ant Miner模型在成功率(0.944)和预测率(0.92)方面均表现更好。此外,Ant Miner算法得出了五个简单易懂的预测地下水潜力的规则,水文地质学家可以使用这些规则以最小的努力和最低的成本来确定潜在的地下水井位置。

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