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首页> 外文期刊>Arabian journal of geosciences >Extracting of prospective groundwater potential zones using remote sensing data, GIS, and a probabilistic approach in Bojnourd basin, NE of Iran
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Extracting of prospective groundwater potential zones using remote sensing data, GIS, and a probabilistic approach in Bojnourd basin, NE of Iran

机译:利用遥感数据,GIS和Bojnourd盆地,伊朗NE中的概率方法提取潜在地下水潜在区域

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摘要

Various groundwater potential zones for the assessment of groundwater availability in the Bojnourd basin have been investigated using remote sensing, GIS, and a probabilistic approach. Five independent groundwater factors, including topography, ground slope, stream density, geology units, lineament density, and a groundwater productivity factor, i.e., springs' discharge, were applied. Discharge rates of 226 springs over the area were collected, and the probabilistic model was designed by the discharge rates of springs as the dependent variable. For training the probabilistic model, a ratio of 70/30% of springs' discharge was applied and discharge rates of 151 springs were selected to randomly train the model. The frequency ratio for each factor was calculated, and the groundwater potential zones were extracted by summation of frequency ratio maps. The groundwater potential map was also classified into four classes, viz., "very good" (with a frequency ratio of > 6.75), "good" (5.5FR6.75), "moderate" (4.75FR5.5), and "poor" (FR4.75). Then, the model was verified based on a success-rate curve method which resulted in obtaining an accuracy ratio of 75.77%. Finally, sensitivity analysis was applied by a factor removal method in five steps. Results reveal that topography factor has the biggest effect on the groundwater potential map and removing this factor eventuates in the lowest accuracy of the final map (AUC = 63.73%). The groundwater potential map is fairly affected by removing the lineament density factor with an accuracy of 68.80%. Removing the lineament density factor has the lowest effect on the final map with accuracy of 68.80%.
机译:使用遥感,GIS和概率方法研究了用于评估Bojnourd盆地地下水可用性的各种地下水潜在区域。应用了五种独立地下水因子,包括地形,地面坡,流密度,地质单位,衬线密度和地下水生产率因子,即弹簧放电。收集区域上226个弹簧的放电速率,并且概率模型由弹簧作为依赖变量的放电速率设计。为了训练概率模型,施加70/30%的弹簧放电的比例,选择151个弹簧的放电速率随机培训模型。计算每个因子的频率比,并且通过频率比图的总和提取地下水潜在区域。地下水潜在地图也被分为四个类,viz。“非常好”(频率比> 6.75),“好”(5.5fr6.75),“中等”(4.75FR5.5)和“穷人“(fr4.75)。然后,基于成功率曲线方法验证了模型,导致精度比为75.77%。最后,通过五个步骤中的因子去除方法应用了灵敏度分析。结果表明,地形因素对地下水潜在地图具有最大的影响,并以最终地图(AUC = 63.73%)的最低精度去除该因素。地下水潜在地图采用68.80%的准确度来相当影响。去除谱系密度因子对最终地图具有最低效果,精度为68.80%。

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