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Groundwater potential mapping using machine learning models for Northeastern Karbi Anglong district, Assam, India

机译:地下水潜力测绘,使用东北部英市阿萨姆,印度阿萨姆岛岛古龙区的机器学习模型

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Groundwater is an important source of freshwater for mankind that has the unique capability of recharging itself naturally. Unfortunately, decades of over-exploitation has overwhelmed its ability to replenish, so much so that it has recorded unprecedented levels of decline bordering on depletion that is slowly becoming irreversible. In order to reverse the caused damage and prevent further worsening of the situation, it is important to understand the current status and strategize accordingly. The study was undertaken for identifying best model among a variety of machine learning models for groundwater potential mapping in the Karbi Anglong district, Assam, India. Seven groundwater influencing factors of altitude, slope, aspect, land use, normalized difference vegetation index, rainfall and proximity to rivers were chosen for the study. k-nearest neighbours, linear regression, logistic regression, naïve bayes, linear discriminant analysis, quadratic discriminant analysis, decision trees, random forest, support vector machine, gradient boosted trees, and artificial neural networks are the models that were employed in the study and were compared for finding the most accurate model for delineating groundwater potential in the region. The study found that random forest model achieved the highest accuracy of 91.67% and thus concluded it to be the model best suited for such a study and recommends it for similar other geospatial studies.
机译:地下水是人类淡水的重要来源,具有自然充电的独特能力。遗憾的是,几十年过度开采使其能够补充的能力,使其在逐渐变得不可逆转的耗尽上记录了前所未有的衰退水平。为了扭转造成的损害并防止进一步恶化的情况,重要的是要了解当前状态并相应地制定战略。该研究是为了识别印度卡尔齐岛区卡尔龙区地下水潜力测绘的各种机器学习模型中的最佳模型。选择七个地下水影响的海拔,坡,方面,土地利用,归一化差异植被指数,降雨和河流接近河流。 K-最近的邻居,线性回归,Logistic回归,幼稚回归,线性判别分析,二次判别分析,决策树,随机森林,支持向量机,梯度提升树木和人工神经网络是研究中和的模型比较了找到划定该地区地下水潜力的最准确的模型。该研究发现,随机森林模型实现了91.67%的最高精度,因此将其结束为最适合此类研究的模型,并为类似其他地理空间研究推荐它。

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